parallelizer.py 18.5 KB
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#   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.

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import os
import sys
import json
import shlex
import copy
import pathlib
import subprocess
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import logging
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import pickle
import time
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import paddle
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from paddle.fluid.backward import append_backward
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from paddle.distributed.utils import get_logger
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from paddle.distributed.fleet import cloud_utils
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import paddle.fluid.core as core
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from paddle.fluid import program_guard
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from paddle.distributed.passes import new_pass, PassContext
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from .dist_context import DistributedContext
from .dist_context import get_default_distributed_context
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from .dist_context import set_default_distributed_context
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from .completion import complete_annotation, complete_backward_annotation, complete_update_annotation
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from .partitioner import Partitioner
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from .process_group import get_all_process_groups
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from .process_group import get_process_group
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from .process_group import get_world_process_group
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from .process_group import _g_process_group_map, ProcessGroup
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from .utils import make_data_unshard
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from .utils import set_grad_var_shape
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from .utils import print_program_with_dist_attr
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from .utils import SerialProgramInfo
from .reshard import reshard, HAS_SENT, HAS_RECV, HAS_ALLGATHER
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from .cluster import Cluster
from .mapper import mapping
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from .dist_op import DistributedOperator
from .dist_tensor import DistributedTensor
from .planner import Planner
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from paddle.distributed.passes import new_pass, PassContext
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_logger = get_logger(logging.INFO)
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class AutoParallelizer:
    """
    AutoParallelizer is the main controller class to do the auto parallel process.
    And the auto parallel process will be triggered in the wrapped parallelize function.
    To facilitate the auto parallelization, it will contain information about program, cluster and the
    related context. In this basic version, the program information will be retrevied from 
    Fleet object, and the cluster information can be retrevied in the new created Cluster object,
    and the context information can be retrevied in the new created DistributedContext. 
    """

    def __init__(self, fleet):
        self._fleet = fleet
        self._optimizer = self._fleet.user_defined_optimizer
        self._dist_strategy = self._fleet._user_defined_strategy
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        self._dist_context = DistributedContext()
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        self._cluster = None
        self._cluster_topo_path = os.getenv("PADDLE_CLUSTER_TOPO_PATH", None)
        if self._cluster_topo_path is not None:
            self._cluster = Cluster()
            self._cluster.build_from_file(self._cluster_topo_path)
        # Prepare information for auto mapping
        self._rank_mapping_path = os.getenv("PADDLE_RANK_MAPPING_PATH", None)
        enable_auto_mapping_env = os.getenv("PADDLE_ENABLE_AUTO_MAPPING", None)
        if enable_auto_mapping_env is None:
            self._enable_auto_mapping = False
        else:
            self._enable_auto_mapping = True
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        self._pass_context = PassContext()

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        self._need_rank_mapping = os.getenv("PADDLE_NEED_RANK_MAPPING")
        self._need_rank_mapping = True if self._need_rank_mapping and \
            self._need_rank_mapping.lower() == 'true' else False
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        self._pass_context = None
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    def _remove_distributed_attrs(self, main_program):
        suffix = core.kAutoParallelSuffix()
        # distributed attributes for variable have been removed
        # in previous process.
        for block in main_program.blocks:
            for op in block.ops:
                for attr_name in op.attr_names:
                    if suffix in attr_name:
                        op._remove_attr(attr_name)

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    def _apply_pre_optimization_passed(self, main_program, startup_program,
                                       loss, params_grads):
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        # apply amp pass
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        if self._dist_strategy.amp:
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            config = copy.deepcopy(self._dist_strategy.amp_configs)
            config["dist_context"] = self._dist_context
            config["params_grads"] = params_grads
            config["loss"] = loss
            auto_parallel_amp_pass = new_pass("auto_parallel_amp", config)
            auto_parallel_amp_pass.apply([main_program], [startup_program],
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                                         self._pass_context)
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        # apply recompute pass
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        if self._dist_strategy.recompute:
            auto_parallel_recompute_pass = new_pass(
                "auto_parallel_recompute_pass",
                self._dist_strategy.recompute_configs)
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            auto_parallel_recompute_pass.apply(main_program, startup_program,
                                               self._pass_context)
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    def _generate_backward(self, main_program, startup_program, loss,
                           parameter_list, no_grad_set, callbacks):

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        with program_guard(main_program, startup_program):
            params_grads = append_backward(
                loss,
                parameter_list,
                no_grad_set,
                callbacks,
                distop_context=self._dist_context.dist_op_context)
        complete_backward_annotation(
            main_program, dist_context=self._dist_context)
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        return params_grads

    def _apply_optimize(self, main_program, startup_program, params_grads):

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        with program_guard(main_program, startup_program):
            optimize_ops = copy.deepcopy(self._optimizer).apply_gradients(
                params_grads)
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        # update completion 
        complete_update_annotation(
            main_program, dist_context=self._dist_context)

        return optimize_ops

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    def _apply_post_optimization_passed(self, main_program, startup_program,
                                        rank, params_grads):

        if self._dist_strategy.sharding:
            config = copy.deepcopy(self._dist_strategy.sharding_configs)
            config["dist_context"] = self._dist_context
            config["params_grads"] = params_grads
            config["global_rank"] = rank
            auto_parallel_sharding_pass = new_pass("auto_parallel_sharding",
                                                   config)
            auto_parallel_sharding_pass.apply(
                [main_program], [startup_program], self._pass_context)

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        if self._dist_strategy.gradient_merge:
            config = copy.deepcopy(self._dist_strategy.gradient_merge_configs)
            config["dist_context"] = self._dist_context
            config["params_grads"] = params_grads
            auto_parallel_gradient_merge_pass = new_pass(
                "auto_parallel_gradient_merge_pass", config)
            auto_parallel_gradient_merge_pass.apply(
                [main_program], [startup_program], self._pass_context)

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    def _get_dist_program(self, rank, dist_context=None, relaunch_phase=False):
        completed_main_program = None
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        serial_main_program = self._main_program.clone()
        serial_startup_program = self._startup_program.clone()
        serial_loss = serial_main_program.global_block().var(self._loss.name)
        # generating serial 
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        if dist_context is None:
            # Annotation completion
            self._dist_context = DistributedContext()
            _logger.info("Start annotation dist attr.")
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            completed_main_program = complete_annotation(serial_main_program,
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                                                         self._dist_context)
        else:
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            completed_main_program = serial_main_program
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            self._dist_context = copy.deepcopy(dist_context)

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        # serial backward pass
        params_grads = self._generate_backward(
            completed_main_program, serial_startup_program, serial_loss,
            self._parameter_list, self._no_grad_set, self._callbacks)

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        # serial forward pass
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        self._apply_pre_optimization_passed(completed_main_program,
                                            serial_startup_program, serial_loss,
                                            params_grads)
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        # Logical partition 
        partitioner = Partitioner(self._dist_context, rank)
        dist_main_prog, dist_startup_prog, dist_params_grads = partitioner.partition(
            completed_main_program, serial_startup_program, params_grads)

        # TODO refactor the placement of optimizer
        # generate optimize program
        dist_optimize_ops = self._apply_optimize(
            dist_main_prog, dist_startup_prog, dist_params_grads)
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        set_grad_var_shape(dist_main_prog, self._dist_context)
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        make_data_unshard(dist_main_prog, dist_startup_prog, self._dist_context)
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        reshard(dist_main_prog, dist_startup_prog, rank, self._dist_context)
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        self._apply_post_optimization_passed(dist_main_prog, dist_startup_prog,
                                             rank, dist_params_grads)
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        g_process_group_map = None
        if not relaunch_phase:
            g_process_group_map = copy.deepcopy(_g_process_group_map)
            HAS_SENT.clear()
            HAS_RECV.clear()
            HAS_ALLGATHER.clear()
            _g_process_group_map.clear()
            _g_process_group_map[0] = ProcessGroup(0, [])
        return dist_optimize_ops, dist_params_grads, dist_startup_prog, dist_main_prog, g_process_group_map
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    def parallelize(self,
                    loss,
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                    startup_program,
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                    parameter_list=None,
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                    no_grad_set=None,
                    callbacks=None):
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        assert startup_program is not None
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        self._loss = loss
        self._startup_program = startup_program
        self._main_program = loss.block.program
        self._parameter_list = parameter_list
        self._no_grad_set = no_grad_set
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        self._callbacks = callbacks
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        if self._enable_auto_mapping and self._need_rank_mapping:
            # Do the mapping pass before parallelization
            assert self._cluster is not None, \
                "The cluster must not be none when using auto mapping."
            dist_programs = {}
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            world_process_group = get_world_process_group()
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            dist_context = None
            # auto search
            if self._dist_strategy.auto_search:
                logging.info("Start searching dist attr.")
                serial_program_info = SerialProgramInfo(
                    self._main_program, self._startup_program, self._loss,
                    self._optimizer, self._cluster)
                planner = Planner(
                    serial_program_info,
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                    self,
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                    algorithm_config={"name": "mcmc",
                                      "max_search_times": 5})
                dist_context, _ = planner.search()
                logging.info("End searching dist attr.")

            # serialize the dist context by planner
            if dist_context is not None:
                logging.info("Start serialize searched dist attr")
                cwd = pathlib.Path().resolve()
                searched_dist_context_path = os.path.join(
                    cwd, f"searched_dist_context_{time.time()}.pkl")
                saved_dist_context = {}
                ops_dist_attr = {}
                tensors_dist_attr = {}
                for key, dist_op in dist_context._dist_ops_for_program.items():
                    ops_dist_attr[key] = dist_op.dist_attr
                for key, dist_tensor in dist_context._dist_tensors_for_program.items(
                ):
                    tensors_dist_attr[key] = dist_tensor.dist_attr
                saved_dist_context["ops_dist_attr"] = ops_dist_attr
                saved_dist_context["tensors_dist_attr"] = tensors_dist_attr
                saved_dist_context[
                    "process_meshes"] = dist_context._process_meshes
                with open(searched_dist_context_path,
                          "wb") as dist_context_file:
                    pickle.dump(saved_dist_context, dist_context_file)
                    os.environ[
                        'PADDLE_SEARCHED_DIST_CONTEXT_PATH'] = searched_dist_context_path
                    logging.info(
                        f"End serialize searched dist attr to {searched_dist_context_path}"
                    )

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            for rank in world_process_group.ranks:
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                dist_optimize_ops, dist_params_grads, dist_startup_prog, dist_main_prog, g_process_group_map = self._get_dist_program(
                    rank, dist_context)
                dist_programs[rank] = [dist_main_prog, g_process_group_map]
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            # Do the mapping between the distributed program graph and the cluster graph
            rank_mapping_dict = mapping(dist_programs, self._cluster)
            rank_mapping = list(rank_mapping_dict.values())
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            # Relaunch the training by using the rank mapping file
            with open(self._rank_mapping_path, "w") as rank_mapping_file:
                json.dump(rank_mapping, rank_mapping_file)

            enable_elastic = os.getenv("PADDLE_ENABLE_ELASTIC")
            enable_elastic = True if enable_elastic and enable_elastic.lower(
            ) == 'true' else False
            if enable_elastic:
                print("Auto mapping finished, now do elastic re-launch")
                sys.exit(paddle.distributed.fleet.elastic.manager.
                         ELASTIC_AUTO_PARALLEL_EXIT_CODE)

            original_cmd_args = os.getenv("PADDLE_ORIGINAL_CMD_ARGS")
            rank_mapping_args = " ".join(
                ["--rank_mapping_path", self._rank_mapping_path])
            if os.environ.get("WITH_COVERAGE", "OFF") == "ON":
                coverage_args = ["-m", "coverage", "run", "--branch", "-p"]
            else:
                coverage_args = []
            new_cmd_args = "-m paddle.distributed.fleet.launch" + " " + rank_mapping_args + " " + original_cmd_args
            new_cmd = [sys.executable, "-u"] + coverage_args + shlex.split(
                new_cmd_args)
            new_process = subprocess.Popen(new_cmd)
            new_process.wait()
            assert new_process.returncode == 0, \
                "Launch failed with rank mapping"
            print("Successfully do the second launch for auto mapping!")
            sys.exit(0)
        else:
            # Parallelization after the mapping pass
            rank = paddle.distributed.get_rank()
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            dist_context = None
            searched_dist_context_path = os.getenv(
                "PADDLE_SEARCHED_DIST_CONTEXT_PATH", None)
            if searched_dist_context_path is not None:
                with open(searched_dist_context_path,
                          "rb") as dist_context_file:
                    saved_dist_context = pickle.load(dist_context_file)
                    dist_context = DistributedContext()
                    for op in self._main_program.global_block().ops:
                        dist_attr = saved_dist_context["ops_dist_attr"][
                            op.desc.id()]
                        dist_op = DistributedOperator(op, dist_attr)
                        dist_context.add_dist_op_for_program(dist_op)

                    vars = self._main_program.global_block().vars
                    for var in vars.values():
                        dist_attr = saved_dist_context["tensors_dist_attr"][
                            var.desc.id()]
                        dist_tensor = DistributedTensor(var, dist_attr)
                        dist_context.add_dist_tensor_for_program(dist_tensor)

                    dist_context._process_meshes = saved_dist_context[
                        "process_meshes"]

            else:
                if self._dist_strategy.auto_search:
                    serial_program_info = SerialProgramInfo(
                        self._main_program,
                        self._startup_program,
                        self._loss,
                        self._optimizer,
                        cluster=self._cluster)
                    planner = Planner(
                        serial_program_info,
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                        self,
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                        algorithm_config={
                            "name": "mcmc",
                            "max_search_times": 5
                        })
                    dist_context, _ = planner.search()

            # rebuild g_process_group
            if dist_context is not None:
                pg0 = get_process_group(0)
                for process_mesh in dist_context._process_meshes:
                    pg0.add_ranks(process_mesh.processes)
            dist_optimize_ops, dist_params_grads, dist_startup_prog, dist_main_prog, _ = self._get_dist_program(
                rank, dist_context, relaunch_phase=True)
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            # NOTE: This is a trick to fix hang in pipeline mode when dist context is searched by planner
            if self._dist_strategy.auto_search:
                is_pipeline = False
                for op in dist_main_prog.global_block().ops:
                    if op.type == "send_v2" or op.type == "recv_v2":
                        is_pipeline = True
                        break
                if is_pipeline:
                    with paddle.static.program_guard(dist_main_prog):
                        paddle.distributed.barrier()
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            # Traverse different rank programs and traverse each op of them,
            # instantiate communication by process_mapping.
            all_process_groups = get_all_process_groups()
            for process_group in all_process_groups:
                if rank not in process_group.ranks:
                    continue
                process_group.instantiate()
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            # Copy distributed info to the default context
            set_default_distributed_context(self._dist_context)
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            # The last step: remove all distributed attributes to be compatible
            # with inference.
            self._remove_distributed_attrs(dist_main_prog)
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            return dist_optimize_ops, dist_params_grads, dist_startup_prog, dist_main_prog
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    def __deepcopy__(self, memo):
        cls = self.__class__
        result = cls.__new__(cls)
        memo[id(self)] = result
        for k, v in self.__dict__.items():
            if k == "_main_program" or k == "_startup_program" or k == "_dist_context" or k == "_fleet" or k == "_loss":
                setattr(result, k, v)
            else:
                setattr(result, k, copy.deepcopy(v, memo))
        return result