group_sharded_optimizer_stage2.py 22.3 KB
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#   Copyright (c) 2022 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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# The file has been adapted from fairscale file:
# https://github.com/facebookresearch/fairscale/blob/main/fairscale/optim/oss.py
# Git commit hash: 8acbec718f3c70a6b9785470bb9e05cd84fc3f8e
# We retain the following license from the original files:

# Copyright (c) Facebook, Inc. and its affiliates. All rights reserved.
#
# This source code is licensed under the BSD license found in the
# LICENSE file in the root directory of this source tree.
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import logging
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import warnings

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from collections import OrderedDict

import paddle
from paddle.fluid import core
from paddle.optimizer import Optimizer
from paddle.fluid.clip import ClipGradByGlobalNorm
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from paddle.distributed.collective import _get_global_group, broadcast, new_group
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from .group_sharded_storage import ParamStorage, GradStorage
from .group_sharded_utils import Type, device_guard, GroupShardedClipGrad

# CUDA alignment 256 bytes, cpu alignment 4096 bytes
alignment = {"gpu": 256, "cpu": 4096}
align = {
    Type.fp16.value: 2,
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    Type.bf16.value: 2,
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    Type.fp32.value: 4,
}


class GroupShardedOptimizerStage2(Optimizer):
    """
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    A wrapper for Sharding Stage2 Optimizer in Dygraph.
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    .. warning: ShardingOptimizer encapsulates the optimization strategy and integrates it into the optimizer.

    .. ZeRO: 1.https://arxiv.org/pdf/1910.02054.pdf 2.https://arxiv.org/pdf/1910.02054.pdf.

    """

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    # TODO (Baibaifan)
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    # Feature Notes:
    # 1. Unified memory for parameters and parameters.grad to InternalStorage.
    # 2. Support the segmentation of optimizer parameters and partial updating of parameters.
    # 3. Dynamically adjust training parameters and models.
    # 4. Support offload function.
    # 5. Support the establishment of independent communication groups.
    # 6. Broadcast_fp16 is not supported now.
    def __init__(self,
                 params,
                 optim,
                 group=None,
                 offload=False,
                 device="gpu",
                 pertrain_sync_models=True,
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                 dp_group=None,
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                 **kw):

        super().__init__(learning_rate=optim._learning_rate, parameters=params)
        assert core.is_compiled_with_cuda(), "Only GPU is supported now"

        # Segmentation information
        self._dtype_rank_params = OrderedDict(
        )  # {dtype:[param1,param2]} device, rank, params
        self._param2rank = {}
        self.__segment_params = []
        self._rank_buffer_size = {}  # {dtype: {rank: numel+alignment}}
        self._param2align = {}  # {param.name: align}

        # Default information
        self._optim = optim

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        # sharing stage 2 comm overlap flag
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        self._reduce_overlap = False
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        # record the last task used for comm overlap for sharding stage 2
        self._comm_task = None

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        assert hasattr(self._optim, "_master_weights"
                       ), "Must use optimizer with _master_weights attribute"

        # Support parameter group and parameter list
        self._local_params = []
        if isinstance(params[0], dict):
            for param_group in params:
                self._local_params.extend(list(param_group["params"]))
        else:
            self._local_params.extend(list(params))

        self._default_device = device
        self._pfp16 = len(
            list(
                filter(lambda x: x.trainable and x.dtype == Type.fp16.value,
                       self._local_params))) > 0

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        self._broadcast_overlap = False
        self._forward_pre_hook_remove_helper = []
        try:
            # The fp32 params such as layer_norm_0.w_0 will be at the end of param_list.
            # Have to sort the params to make sure all params are in the forward using order.
            self._broadcast_order_params = sorted(
                self.local_params,
                key=lambda x: int(x.name.split('.')[0].split('_')[-1]))
        except ValueError:
            self._broadcast_order_params = None

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        self._group = new_group(
            _get_global_group().ranks) if group is None else group
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        # only support to combine stage2 and dp hybrid parallel now.
        self._dp_group = dp_group
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        self.world_size = self._group.nranks
        self._rank = self._group.rank
        self._global_root_rank = self._group.ranks[0]

        # Synchronous all ranks models
        if pertrain_sync_models:
            self._sync_params_and_buffers()

        self.param_storages = {}  # {dtype: {rank: InternalStorage}}

        if isinstance(self._optim._grad_clip, ClipGradByGlobalNorm):
            logging.warning(
                "While using ClipGradByGlobalNorm in GroupShardedOptimizerStage2, the grad clip of original optimizer will be changed."
            )

            self._optim._grad_clip = GroupShardedClipGrad(
                self._optim._grad_clip, paddle.get_device(), self._group)
            if self._optim._parameter_list and isinstance(
                    self._optim._parameter_list[0], dict):
                for item in self._optim._param_groups:
                    if "grad_clip" in item.keys():
                        item["grad_clip"] = self._optim._grad_clip

        if offload:
            assert self._pfp16, "Only support offload strategy while using \'Adam\', \'AdamW\' and \'Momentum\' optimizer with AMP/Pure FP16"

        self.offload = offload  # Using for offload
        self.offload_device = "cpu"
        self.offload_buffer_size = 0
        self.offload_param2align = {}
        self.offload_params = None
        self.offload_grads = None
        self.dev_id = int(paddle.get_device().split(":")[1])

        self._master_params = {}

        # Update optimizer parameters and adjust parameter storage and use according to rank.
        self._update_opt_status()

    @paddle.autograd.no_grad()
    def _sync_params_and_buffers(self):
        """
        Sync all model states for all ranks
        """

        for p in self._local_params:
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            broadcast(p,
                      src=self._global_root_rank,
                      group=self._group,
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                      sync_op=True)
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            if self._dp_group:
                broadcast(p,
                          src=self._dp_group.ranks[0],
                          group=self._dp_group,
                          sync_op=True)

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    def _update_task(self, task):
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        if self._reduce_overlap:
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            assert task is not None
        # Only track of the last reduce task.
        # Since all tasks are on the same stream, only need to wait the last one.
        # After waiting for the last reduce task, all reduce tasks before have already finished.
        self._comm_task = task

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    def _set_reduce_overlap(self, reduce_overlap):
        # Enable gradients' reduces overlap with backward calculation.
        self._reduce_overlap = reduce_overlap

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    def _set_broadcast_overlap(self,
                               broadcast_overlap,
                               layers=None,
                               num_groups=None):
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        # Enable post optimizer broadcasts overlap with the forward calculation of next batch.
        self._broadcast_overlap = broadcast_overlap
        if self._broadcast_overlap:
            assert layers is not None, \
                "To enable broadcast overlap forward, please pass the module to the function."
            self._layers = layers
            warnings.warn(
                "Setting overlap broadcast means the `paddle.device.cuda.synchronize()` "
                "must be called manually before calling `paddle.save()` and before and inference."
            )
            if self._broadcast_order_params is None:
                # Params' names should be like column_linear_32.w_0 patter to get the best performance.
                warnings.warn(
                    "The param name passed to the optimizer doesn't follow .+_[0-9]+\..+ patter, "
                    "overlap broadcast may harm the performance.")
                self._broadcast_order_params = self._local_params
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        if num_groups is None or num_groups > len(self._broadcast_order_params):
            warnings.warn(
                "The num_groups for broadcast is larger than the number of params to be broadcast. "
                "It will set to default value: 1 (use the default sharding group)."
            )
            num_groups = 1

        assert isinstance(
            num_groups,
            int) and num_groups > 0, "num_groups should be a positive integer"

        self._number_of_broadcast_groups = num_groups
        self._broadcast_groups = [
            None for _ in range(self._number_of_broadcast_groups)
        ]
        self._broadcast_groups[0] = self._group

        ranks = self._group.ranks
        for i in range(1, self._number_of_broadcast_groups):
            self._broadcast_groups[i] = new_group(ranks)

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    def _generate_master_params(self, trainable_params):
        if self.offload:
            for param in trainable_params:
                if param.name not in self._master_params.keys():
                    self._master_params[param.name] = core.eager.Tensor(
                        name=param.name,
                        value=param.cast(dtype=Type.fp32.value).numpy(),
                        place=core.CPUPlace(),
                        stop_gradient=param.stop_gradient)
        else:
            for param in trainable_params:
                if param.dtype == Type.fp16.value:
                    master_tensor = paddle.cast(param, Type.fp32.value)
                    master_tensor.name = param.name
                    self._optim._master_weights[param.name] = master_tensor

    def _update_opt_status(self):
        """Update optimizer status and parameter storage information, and special functions to be developed.
        """
        # func 1
        self._integration_params()

    # Segement helpers

    def _segment_params(self):
        """
        Divide all optimizer parameters equally into rank.
        """
        if len(self.__segment_params) == 0:
            self.__segment_params, param_lists = [
                [] for _ in range(self.world_size)
            ], [[] for _ in range(self.world_size)]
            sizes = [0] * self.world_size
            for param in self._local_params:
                # Add this param to rank with smallest size.
                rank = sizes.index(min(sizes))
                param_lists[rank].append(param)

                # Statistical real numels
                sizes[rank] += param._numel() if param.trainable else 0

            for rank, params in enumerate(param_lists):
                self.__segment_params[rank].extend(params)
        return self.__segment_params

    @property
    def local_params(self):
        return self._local_params

    @property
    def param2rank(self):
        """Map the params to the rank which owns them"""
        if len(self._param2rank) == 0:
            for rank, params in enumerate(self._segment_params()):
                for param in params:
                    self._param2rank[param.name] = rank
        return self._param2rank

    @property
    def dtype_rank_params(self):
        """
        Divide the parameters into groups according to rank and dtype.
        """
        if len(self._dtype_rank_params) == 0:
            # Assign the parameters of each rank according to the type
            for param in self._local_params:
                if param.dtype not in self._dtype_rank_params.keys():
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                    self._dtype_rank_params[param.dtype] = [
                        [] for _ in range(self.world_size)
                    ]
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                self._dtype_rank_params[param.dtype][self.param2rank[
                    param.name]].append(param)

            # Sort per rank params by size
            for dtype in self._dtype_rank_params.keys():
                for rank_params in self._dtype_rank_params[dtype]:
                    rank_params.sort(key=lambda x: x._numel())

        return self._dtype_rank_params

    @property
    def rank_buffer_size(self):
        """
        Count the memory size of the parameters corresponding to rank under the corresponding dtype.
        """
        # CUDA alignment 256 bytes
        if len(self._rank_buffer_size) == 0:
            for dtype in self.dtype_rank_params.keys():
                if dtype not in self._rank_buffer_size.keys():
                    self._rank_buffer_size[dtype] = {}
                for dst_rank, per_rank_params in enumerate(
                        self.dtype_rank_params[dtype]):
                    if dst_rank not in self._rank_buffer_size[dtype].keys():
                        self._rank_buffer_size[dtype][dst_rank] = 0
                    for param in per_rank_params:
                        if not param.trainable:
                            continue
                        size = param._numel() * align[dtype]
                        remaining = size % alignment[self._default_device]
                        ali = 0 if remaining == 0 else alignment[
                            self._default_device] - remaining
                        align_ = ali // align[dtype]
                        self._rank_buffer_size[dtype][dst_rank] += param._numel(
                        ) + align_
                        self._param2align[param.name] = align_

        return self._rank_buffer_size

    def _integration_params(self):
        """
        Integrate the parameters into a continuous memory according to rank, and support the update of training parameters.
        """

        for dtype, per_rank_params in self.dtype_rank_params.items():
            if dtype not in self.param_storages.keys():
                self.param_storages[dtype] = {}

            for dst_rank, params in enumerate(per_rank_params):
                if len(params) > 0:

                    # Merge all the trainable params in a single InternalStorage
                    trainable_params = list(
                        filter(lambda x: x.trainable, params))
                    if self._pfp16 and dst_rank == self._rank:
                        self._generate_master_params(trainable_params)
                    if trainable_params:
                        param_storage = ParamStorage(
                            size=self.rank_buffer_size[dtype][dst_rank],
                            dtype=dtype,
                            device=self._default_device)

                        param_storage.add_rank_params(trainable_params,
                                                      self._param2align)
                        self.param_storages[dtype][dst_rank] = param_storage

        # Clear the InternalStorage keys which are not in use anymore
        dtype_in_use = list(self.dtype_rank_params.keys())
        dtype_to_pop = list(
            filter(lambda x: x not in dtype_in_use, self.param_storages.keys()))
        for d in dtype_to_pop:
            self.param_storages.pop(d)

        if self.offload:
            self._optim._master_weights = self._master_params
            cpu_master_params = [p for p in self._master_params.values()]
            for param in cpu_master_params:
                size = param._numel() * align[Type.fp32.value]
                remaining = size % alignment[self.offload_device]
                ali = 0 if remaining == 0 else alignment[
                    self.offload_device] - remaining
                align_ = ali // align[Type.fp32.value]
                self.offload_buffer_size += param._numel() + align_
                self.offload_param2align[param.name] = align_

            if cpu_master_params:
                with device_guard(self._rank, self.offload_device):
                    self.offload_params = ParamStorage(
                        size=self.offload_buffer_size,
                        dtype=Type.fp32.value,
                        device=self.offload_device)
                    self.offload_params.buffer.name = "offload_buffer"
                    self.offload_params.add_rank_params(
                        cpu_master_params, self.offload_param2align, False)
                    self.offload_params.buffer.stop_gradient = False

                    self.offload_grads = GradStorage(
                        size=self.offload_buffer_size,
                        dtype=Type.fp32.value,
                        device=self.offload_device,
                        destination=self._rank,
                        parm2align=self.offload_param2align,
                        convert_cpu=True)
                    for p in cpu_master_params:
                        self.offload_grads.add_grad(
                            p, self.offload_param2align[p.name])

                    self._optim._master_weights[
                        self.offload_params.buffer.
                        name] = self.offload_params.buffer

    def _offload_acc_grad(self, param_name, grad_fp32_cpu):
        """accumulate grads with offload strategy"""
        with device_guard(self._rank, self.offload_device):
            if param_name in self._master_params.keys():
                if self._master_params[param_name].grad is None:
                    self._master_params[param_name]._copy_gradient_from(
                        grad_fp32_cpu)
                else:
                    self._master_params[param_name].grad.add_(grad_fp32_cpu)

        self.offload_params.buffer._copy_gradient_from(
            self.offload_grads.buffer)

    def _offload_scale_grad(self, scale_size):
        """scale grads with offload strategy"""
        with device_guard(self._rank, self.offload_device):
            self.offload_grads.buffer.scale_(scale=scale_size)

    def _offload_clear_grad(self):
        """clear grads with offload strategy"""
        with device_guard(self._rank, self.offload_device):
            self.offload_grads.buffer.zero_()

    def step(self):
        """
        A wrapper for Optimizer's step function to finish the update operation of the optimizer.
        """
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        # This method won't be called directly by opt.step()!
        # The _redefine_opt_step() in class GroupShardedStage2 will wrap this function.
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        if self._broadcast_overlap:
            # Clear the pre forward hook in the optimizer step.
            for hook_remove in self._forward_pre_hook_remove_helper:
                hook_remove.remove()
            self._forward_pre_hook_remove_helper = []

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        if self.offload:
            params_list = [self.offload_params.buffer]

            #TODO(Baibaifan): Offload will support param_groups later
            if not isinstance(self._optim._param_groups[0], dict):
                self._optim._parameter_list = params_list
                self._optim._param_groups = params_list

        # Run the optimizer of the current rank step
        if self.offload:
            with device_guard(device=self.offload_device):
                self._optim.step()

            for param in self._local_params:
                if param.name in self._master_params.keys():
                    param.set_value(self._master_params[param.name].cuda(
                        self.dev_id).cast(dtype=param.dtype))
        else:
            self._optim.step()

        # Synchronize all the updated shards in between the ranks
        self._broadcast_params()

    def minimize(self):
        raise RuntimeError(
            "optimizer.minimize() not support now, please use optimizer.step()")

    def set_state_dict(self, state_dict):
        self._optim.set_state_dict(state_dict)

    def state_dict(self):
        return self._optim.state_dict()

    def _clear_cache(self):
        self.__segment_params.clear()
        self._dtype_rank_params.clear()
        self._param2rank.clear()

    @paddle.autograd.no_grad()
    def _broadcast_params(self):
        """Broadcast the parameters of the current rank to each rank"""

        # Exchange all the shards with the other ranks
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        if self._broadcast_overlap:
            self._broadcast_params_overlap_forward()
        else:
            for dtype_per_rank in self.param_storages.values():
                for dst_rank, internal_storage in dtype_per_rank.items():
                    broadcast(tensor=internal_storage.buffer,
                              src=self._group.ranks[dst_rank],
                              group=self._group,
                              sync_op=True)

    def _forward_pre_hook_function(self, tasks):
        # Since the layers will call pre hook by `forward_pre_hook(self, inputs)`,
        # the helper functions needs the x and y to take those params.
        def __impl__(x, y):
            for task in tasks:
                # Wait for broadcast task before using the result of the broadcast.
                task.wait()

        return __impl__

    @paddle.autograd.no_grad()
    def _broadcast_params_overlap_forward(self):
        # Exchange all the shards with the other ranks,
        # but overlap the broadcast with next batch's calculation.
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        group_idx = 0

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        param2task = {}
        for x in self._broadcast_order_params:
            if x.trainable:
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                group = self._broadcast_groups[group_idx]
                group_idx = (group_idx + 1) % self._number_of_broadcast_groups
                task = broadcast(tensor=x,
                                 src=group.ranks[self._param2rank[x.name]],
                                 group=group,
                                 sync_op=False)
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                assert x.name not in param2task
                param2task[x.name] = task

        for layer in self._layers.sublayers():
            if len(layer.sublayers()) == 0:
                # Register forward pre hood for leaf layers. This will get the best performance.
                tasks = []
                for param in layer.parameters():
                    if param.trainable:
                        if param.name in param2task:
                            tasks.append(param2task[param.name])
                self._forward_pre_hook_remove_helper.append(
                    layer.register_forward_pre_hook(
                        self._forward_pre_hook_function(tasks)))