parallel.py 15.2 KB
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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 jin 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 six
import warnings
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from multiprocessing import Process  # noqa: F401
from multiprocessing import Manager  # noqa: F401
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import time
import sys
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import paddle
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from paddle import compat as cpt

# deprecated module import
from paddle.fluid import core
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from paddle.fluid.framework import in_dygraph_mode
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from paddle.fluid.framework import _set_expected_place
from paddle.fluid.dygraph import parallel_helper
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from paddle.distributed.fleet.launch_utils import check_backend
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from paddle.fluid.dygraph.parallel import ParallelEnv
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from paddle.distributed.fleet.base.private_helper_function import wait_server_ready  # noqa: F401
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from paddle.distributed import collective
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from paddle.distributed.collective import _set_group_map
from paddle.distributed.collective import _set_group_map_by_name
from paddle.distributed.collective import _get_group_map_by_name
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from paddle.distributed.collective import _group_map_by_name
from paddle.distributed.collective import _default_group_name
from paddle.distributed.collective import _valid_backend_list
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from paddle.distributed.collective import _set_default_backend
from paddle.distributed.collective import _set_default_store
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from paddle.distributed.collective import _new_process_group_impl
from paddle.distributed.collective import Group
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__all__ = []
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ParallelStrategy = core.ParallelStrategy

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# NOTE(chenweihang): Maintain a global parallel env to avoid
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# initializing ParallelEnv every time and improve performance
_global_parallel_env = None


def _get_global_parallel_env():
    global _global_parallel_env
    if _global_parallel_env is None:
        _global_parallel_env = ParallelEnv()
    return _global_parallel_env

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def _start_kv_server(port, http_server_d, size):
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    from paddle.distributed.fleet.utils.http_server import KVServer
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    http_server = KVServer(int(port), size=size)
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    http_server.start()
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    wait_seconds = 3
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    while http_server_d.get("running", False) or not http_server.should_stop():
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        time.sleep(wait_seconds)
    http_server.stop()


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def _is_cpuonly(backend):
    check_backend(backend)
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    if backend in [
            'auto', 'nccl', 'bkcl', 'hccl', 'heter', 'cncl'
    ] and (core.is_compiled_with_cuda() or core.is_compiled_with_xpu()
           or core.is_compiled_with_npu() or core.is_compiled_with_mlu()):
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        # passes 'auto' and can use cuda or xpu, use the default logics. so return False
        return False
    else:
        return True


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def _check_var_exists(var_name):
    var = os.environ.get(var_name, None)
    if var is None:
        raise ValueError("paddle.distributed initialize error, "
                         "environment variable %s is needed, but not set." %
                         var_name)


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def init_parallel_env():
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    """
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    Initialize parallel training environment in dynamic graph mode.
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    .. note::
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        Now initialize both `NCCL` and `GLOO` contexts for communication.
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    Args:
        backend (string): A string represents the backend used by DataParallel,
            should be one of 'gloo'(for cpu), 'nccl'(for cuda), 'bkcl'(for xpu), 'auto'(auto detect).
            The auto detection prefer 'nccl', 'bkcl' than 'gloo'.

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    Returns:
        None
        
    Examples:
        .. code-block:: python
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            # required: gpu
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            import paddle
            import paddle.nn as nn
            import paddle.optimizer as opt
            import paddle.distributed as dist

            class LinearNet(nn.Layer):
                def __init__(self):
                    super(LinearNet, self).__init__()
                    self._linear1 = nn.Linear(10, 10)
                    self._linear2 = nn.Linear(10, 1)
                    
                def forward(self, x):
                    return self._linear2(self._linear1(x))

            def train():
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                # 1. initialize parallel environment
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                dist.init_parallel_env()

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                # 2. create data parallel layer & optimizer
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                layer = LinearNet()
                dp_layer = paddle.DataParallel(layer)

                loss_fn = nn.MSELoss()
                adam = opt.Adam(
                    learning_rate=0.001, parameters=dp_layer.parameters())

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                # 3. run layer
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                inputs = paddle.randn([10, 10], 'float32')
                outputs = dp_layer(inputs)
                labels = paddle.randn([10, 1], 'float32')
                loss = loss_fn(outputs, labels)
                
                loss.backward()

                adam.step()
                adam.clear_grad()

            if __name__ == '__main__':
                dist.spawn(train)
    """

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    # 0. get env & check world size
    global _global_parallel_env
    # when call init_parallel_env, need update `_global_parallel_env`
    _global_parallel_env = ParallelEnv()
    parallel_env = _global_parallel_env
    # if not parallel, `init_parallel_env` do nothing
    if parallel_env.world_size < 2:
        warnings.warn(
            "Currently not a parallel execution environment, `paddle.distributed.init_parallel_env` will not do anything."
        )
        return
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    # NOTE(xiongkun): support cpu gloo only, add this environment variable to
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    #                 enable cpu only gloo prarllel training)
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    backend = os.environ.get('PADDLE_DISTRI_BACKEND', 'auto')
    is_cpu_only = _is_cpuonly(backend)
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    # 1. gpu xpu check, must be gpu or xpu,
    if not (is_cpu_only or core.is_compiled_with_cuda()
            or core.is_compiled_with_xpu() or core.is_compiled_with_npu()
            or core.is_compiled_with_mlu()):
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        raise NotImplementedError(
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            "If you want to use CPU-only version, please use 'gloo' as backend")
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    if not is_cpu_only and core.is_compiled_with_cuda():
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        _check_var_exists("FLAGS_selected_gpus")
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        backend = "nccl" if backend == "auto" else backend
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    elif not is_cpu_only and core.is_compiled_with_xpu():
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        _check_var_exists('FLAGS_selected_xpus')
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        backend = "bkcl" if backend == "auto" else backend
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    elif not is_cpu_only and core.is_compiled_with_npu():
        _check_var_exists('FLAGS_selected_npus')
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        backend = "hccl" if backend == "auto" else backend
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    elif not is_cpu_only and core.is_compiled_with_mlu():
        _check_var_exists('FLAGS_selected_mlus')
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        backend = "cncl" if backend == "auto" else backend
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    _check_var_exists("PADDLE_TRAINER_ID")
    _check_var_exists("PADDLE_CURRENT_ENDPOINT")
    _check_var_exists("PADDLE_TRAINERS_NUM")
    _check_var_exists("PADDLE_TRAINER_ENDPOINTS")

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    # NOTE(chenweihang): [ why config global place here? ]
    # the dygraph mode will be set to default mode,
    # users will not call `dygraph.guard` or `enable_dygraph`
    # directly, if they want to switch default place,
    # they need to call a function to change default place,
    # here just set correctly place to users
    if is_cpu_only:
        place = core.CPUPlace()
    elif core.is_compiled_with_cuda():
        place = core.CUDAPlace(parallel_env.device_id)
    elif core.is_compiled_with_xpu():
        place = core.XPUPlace(parallel_env.device_id)
    elif core.is_compiled_with_npu():
        place = core.NPUPlace(parallel_env.device_id)
    elif core.is_compiled_with_mlu():
        place = core.MLUPlace(parallel_env.device_id)

    _set_expected_place(place)

    group = None
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    if backend in _valid_backend_list and in_dygraph_mode():
        if _default_group_name in _get_group_map_by_name():
            return _get_group_map_by_name()[_default_group_name]
        _set_default_backend(backend)
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        rank = int(os.getenv("PADDLE_TRAINER_ID"))
        world_size = int(os.getenv("PADDLE_TRAINERS_NUM"))
        assert rank >= 0 and world_size > rank and world_size > 1, (
            "rank must be non-negative and world_size must be the "
            "maximum rank plus one. Moreover, at least two processes are "
            "required to create a process group.")
        master_addr = os.getenv("MASTER_ADDR", None)
        master_port = os.getenv("MASTER_PORT", None)
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        endpoints = ":".join([master_addr, master_port
                              ]) if master_addr and master_port else None
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        if endpoints is None:
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            endpoints = os.getenv("PADDLE_MASTER", None)
        if endpoints is None:
            endpoints = os.getenv("PADDLE_TRAINER_ENDPOINTS").split(',')[0]
        assert endpoints, (
            "The environment variable 'MASTER_ADDR' and 'MASTER_PORT' "
            "must be specified, for example 'export MASTER_ADDR=127.0.0.1' "
            "and 'export MASTER_ADDR=54612'. Or you can start your training"
            "with paddle.distributed.run module.")
        master_addr, master_port = endpoints.split(":")
        master_port = int(master_port)
        is_master = rank == 0
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        stop_check_timeout = int(os.getenv("FLAGS_stop_check_timeout", "900"))
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        default_store = core.TCPStore(master_addr,
                                      master_port,
                                      is_master,
                                      world_size,
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                                      timeout=stop_check_timeout)
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        _set_default_store(default_store)
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        pg = _new_process_group_impl(backend,
                                     default_store,
                                     rank,
                                     world_size,
                                     _default_group_name,
                                     pg_options=None)
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        ranks = list(range(world_size))
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        group = Group(rank,
                      world_size,
                      id=0,
                      ranks=ranks,
                      pg=pg,
                      name=_default_group_name)
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        _set_group_map_by_name(_default_group_name, group)
        _set_group_map(0, group)
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        parallel_helper._set_parallel_ctx(True)
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        paddle.distributed.barrier(group=group)
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        return group

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    node_num = set([i.split(":")[0] for i in parallel_env.trainer_endpoints])
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    # 3: init gloo context (step 1: httpsever start)
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    init_gloo = int(os.getenv("PADDLE_WITH_GLOO", "0"))
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    if is_cpu_only or init_gloo or backend == "heter":
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        ep_rank_0 = parallel_env.trainer_endpoints[0].split(":")
        manager = Manager()
        # glboal dict to store status
        http_server_d = manager.dict()
        http_server_d["running"] = False
        if parallel_env.rank == 0:
            # The scope for worker used by http server is '_worker'
            size = {'_worker': parallel_env.world_size}
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            if backend == "heter":
                size = {'_worker': len(node_num)}
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            http_server = Process(target=_start_kv_server,
                                  args=(int(ep_rank_0[1]), http_server_d, size))
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            http_server.daemon = True
            http_server_d["running"] = True
            http_server.start()
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    # 4. init NCCL ParallelStrategy
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    strategy = ParallelStrategy()
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    if parallel_helper._is_parallel_ctx_initialized():
        warnings.warn("The parallel environment has been initialized.")
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    strategy.nranks = parallel_env.world_size
    strategy.local_rank = parallel_env.rank
    strategy.trainer_endpoints = parallel_env.trainer_endpoints
    strategy.current_endpoint = parallel_env.current_endpoint
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    strategy.nrings = parallel_env.nrings
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    # init nccl or hccl or bkcl or heter context
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    if is_cpu_only:
        parallel_helper._set_parallel_ctx(
            core.GLOOParallelContext(strategy, place))
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    elif (backend == "heter"):
        parallel_helper._set_parallel_ctx(
            core.HeterParallelContext(strategy, parallel_env.device_id))
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    elif core.is_compiled_with_cuda():
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        parallel_helper._set_parallel_ctx(
            core.NCCLParallelContext(strategy, place))
    elif core.is_compiled_with_xpu():
        parallel_helper._set_parallel_ctx(
            core.BKCLParallelContext(strategy, place))
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    elif core.is_compiled_with_npu():
        parallel_helper._set_parallel_ctx(
            core.HCCLParallelContext(strategy, place))
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    elif core.is_compiled_with_mlu():
        parallel_helper._set_parallel_ctx(
            core.CNCLParallelContext(strategy, place))
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    if backend != "heter":
        other_endpoints = strategy.trainer_endpoints[:]
        other_endpoints.remove(strategy.current_endpoint)
        if not is_cpu_only and strategy.local_rank == 0:
            wait_server_ready(other_endpoints)
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    parallel_helper._init_parallel_ctx()
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    # 5: init gloo context (step 2: gloo init)
    # dividing init_gloo into two part beacause nccl and gloo
    # are separately looking for free ports which sometimes
    # leads to port-conflict.
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    if (is_cpu_only or backend == "heter") and parallel_env.rank == 0:
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        # compare to init_gloo, we don't need to
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        # init gloo, because we do this in _init_parallel_ctx;
        http_server_d["running"] = False
        http_server.join()
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    elif init_gloo:
        wait_server_ready([parallel_env.trainer_endpoints[0]])
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        gloo_strategy = core.GlooParallelStrategy()
        gloo_strategy.rank = parallel_env.rank
        gloo_strategy.rank_num = parallel_env.world_size
        gloo_strategy.ip_address = ep_rank_0[0]
        gloo_strategy.ip_port = int(ep_rank_0[1])
        default_init_timeout_seconds = 3600
        default_run_timeout_seconds = 9999999
        gloo_strategy.init_seconds = default_init_timeout_seconds
        gloo_strategy.run_seconds = default_run_timeout_seconds
        gloo = core.GlooParallelContext(gloo_strategy)
        gloo.init()
        if parallel_env.rank == 0:
            http_server_d["running"] = False
            http_server.join()
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    return group
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def get_rank():
    """
    Returns the rank of current trainer.

    Its value is equal to the value of the environment variable ``PADDLE_TRAINER_ID`` . 
    The default value is 0.

    Returns:
        (int) The rank of current trainer.

    Examples:
        .. code-block:: python

            import paddle
            import paddle.distributed as dist

            # execute this command in terminal: export PADDLE_TRAINER_ID=0
            print("The rank is %d" % dist.get_rank())
            # The rank is 0
    """
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    return _get_global_parallel_env().rank
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def get_world_size():
    """
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    Returns the number of trainers (number of processes participating in current job).
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    Its value is equal to the value of the environment variable ``PADDLE_TRAINERS_NUM`` . 
    The default value is 1.

    Returns:
        (int) The number of trainers.

    Examples:
        .. code-block:: python

            import paddle
            import paddle.distributed as dist

            # execute this command in terminal: export PADDLE_TRAINERS_NUM=4
            print("The world_size is %d" % dist.get_world_size())
            # The world_size is 4
    """
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    return _get_global_parallel_env().world_size