reshard.py 114.8 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

from functools import reduce

import paddle
import paddle.fluid.core as core
import paddle.fluid.layers.utils as utils
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from paddle.distributed.fleet.meta_optimizers.common import OpRole
from paddle.fluid.framework import OpProtoHolder, Program
from paddle.fluid.layer_helper import LayerHelper
from paddle.utils import unique_name

from .cost import (
    AllgatherOpCost,
    CommContext,
    ConcatOpCost,
    SendOpCost,
    SliceOpCost,
    SplitOpCost,
    build_comm_desc,
)
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from .dist_attribute import TensorDistributedAttribute
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from .dist_context import DistributedContext
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from .process_group import new_process_group
from .utils import is_gradient_clip_op
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# NOTE: If op in _g_special_ops or _g_gradient_clip_ops, it will not be resharded.
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_g_special_ops = ['check_finite_and_unscale', 'update_loss_scaling']
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_g_gradient_clip_ops = [
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    "sum",
    "sqrt",
    "fill_constant",
    "elementwise_max",
    "elementwise_div",
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]
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_g_subblock_ops = ["while", "conditional_block"]
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def get_var_with_recursion(var_name, block, program):
    """Get var in the parent block if not found in the current block"""
    var = None
    if var_name in block.vars:
        var = block.vars[var_name]
    else:
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        var = block._var_recursive(var_name)
        # parent_block = program.blocks[block.parent_idx]
        # if var_name in parent_block.vars:
        #     var = parent_block.vars[var_name]
    assert var is not None, "{} is not found".format(var.name)
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    return var
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class AllGatherOpDesc:
    """
    Describe the allgather op in the reshard phase.

    Args:
        group (list): Process group.
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        shape (list): The tensor shape.
        is_bool (bool): Whether allgather bool data. Default: False.
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    """

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    def __init__(self, group, shape, is_bool=False):
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        self._group = group
        self._desc = "all_gather"
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        self._shape = shape
        self._is_bool = is_bool

    @property
    def is_bool(self):
        return self._is_bool
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    @property
    def group(self):
        return self._group

    @property
    def desc(self):
        return self._desc

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    @property
    def shape(self):
        return self._shape

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    def __repr__(self):
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        return f"op: {self._desc}, group: {self._group}, shape: {self._shape}, is_bool: {self._is_bool}."
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class AllGatherConcatOpDesc:
    """
    Describe the c_concat op in the reshard phase.

    Args:
        group (list): Process group.
        shape (list): The tensor shape.
        is_bool (bool): Whether c_concat bool data. Default: False.
    """

    def __init__(self, group, shape, is_bool=False):
        self._group = group
        self._desc = "c_concat"
        self._shape = shape
        self._is_bool = is_bool

    @property
    def is_bool(self):
        return self._is_bool

    @property
    def group(self):
        return self._group

    @property
    def desc(self):
        return self._desc

    @property
    def shape(self):
        return self._shape

    def __repr__(self):
        return f"op: {self._desc}, group: {self._group}, shape: {self._shape}, is_bool: {self._is_bool}."


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class SendOpDesc:
    """
    Describe the send op in the reshard phase.

    Args:
        partition_index (list): The index of partition in complete tensor.
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        src (int): The source process to send.
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        dst (int): The destination process to receive.
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        is_bool (bool): Whether send bool data. Default: False.
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    """

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    def __init__(self, partition_index, src, dst, is_bool=False):
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        self._dst = dst
        self._partition_index = partition_index
        self._desc = "send"
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        self._shape = []
        self._is_bool = is_bool
        self._src = src

    @property
    def src(self):
        return self._src

    @property
    def is_bool(self):
        return self._is_bool
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    @property
    def partition_index(self):
        return self._partition_index

    @property
    def dst(self):
        return self._dst

    @property
    def desc(self):
        return self._desc

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    @property
    def shape(self):
        if not self._shape:
            for item in self.partition_index:
                self._shape.append(item[1] - item[0])
        return self._shape

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    def __repr__(self):
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        return f"op: {self._desc}, partition_index: {self._partition_index}, dst: {self._dst}, shape: {self._shape}, is_bool: {self._is_bool}."
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class RecvOpDesc:
    """
    Describe the recv op in the reshard op.

    Args:
        partition_index (list): The index of partition in complete tensor.
        src (int): The source process to send.
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        dst (int): The destination process to receive.
        is_bool (bool): Whether receive bool data. Default: False.
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    """

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    def __init__(self, partition_index, src, dst, is_bool=False):
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        self._src = src
        self._partition_index = partition_index
        self._desc = "recv"
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        self._shape = []
        self._is_bool = is_bool
        self._dst = dst

    @property
    def dst(self):
        return self._dst

    @property
    def is_bool(self):
        return self._is_bool
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    @property
    def partition_index(self):
        return self._partition_index

    @property
    def src(self):
        return self._src

    @property
    def desc(self):
        return self._desc

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    @property
    def shape(self):
        if not self._shape:
            for item in self.partition_index:
                self._shape.append(item[1] - item[0])
        return self._shape

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    def __repr__(self):
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        return f"op: {self._desc}, partition_index: {self._partition_index}, dst: {self._dst}, shape: {self._shape}, is_bool: {self._is_bool}."
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class SliceOpDesc:
    """
    Describe the slice op in the reshard phase.

    Args:
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        starts (list): It represents start indices of corresponding axis in ``axes``.
        ends (list):  It represents end indices of corresponding axis in ``axes``.
        axes (list):  Axes that `starts` and `ends` apply to.
        shape (list): The shape of the tensor to be sliced.
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    """

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    def __init__(self, starts, ends, axes, shape=None):
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        self._starts = starts
        self._ends = ends
        self._axes = axes
        self._desc = "slice"
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        self._shape = shape
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    @property
    def starts(self):
        return self._starts

    @property
    def ends(self):
        return self._ends

    @property
    def axes(self):
        return self._axes

    @property
    def desc(self):
        return self._desc

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    @property
    def shape(self):
        return self._shape

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    def __repr__(self):
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        if self._shape is not None:
            return f"op: {self._desc}, starts: {self._starts}, ends: {self._ends}, axes: {self._axes}, shape: {self._shape}."
        else:
            return f"op: {self._desc}, starts: {self._starts}, ends: {self._ends}, axes: {self._axes}."
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class ConcatOpDesc:
    """
    Describe the concat op in the reshard phase.

    Args:
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        partition_index_list (list): The list contains all partition index.
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    """

    def __init__(self, partition_index_list):
        self._partition_index_list = partition_index_list
        self._desc = "concat"

    @property
    def partition_index_list(self):
        return self._partition_index_list

    @property
    def desc(self):
        return self._desc

    def __repr__(self):
        return f"op: {self._desc}, partition_index_list: {self._partition_index_list}."


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class Inserter:
    """Insert op required in the reshard process."""
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    @staticmethod
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    def insert_cast_op(block, idx, tensor, op_role, tensor_type):
        # to avoid name conflict with framework
        new_var_name = paddle.fluid.unique_name.generate_with_ignorable_key(
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            ".".join(["cast@RESHARD", 'tmp'])
        )
        out = block.create_var(
            name=new_var_name,
            dtype=tensor_type,
            type=tensor.type,
            lod_level=tensor.lod_level,
        )
        cast_op = block._insert_op(
            idx,
            type='cast',
            inputs={'X': [tensor]},
            outputs={'Out': [out]},
            attrs={
                'in_dtype': tensor.dtype,
                'out_dtype': out.dtype,
                'op_role': op_role,
            },
        )
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        cast_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        return out

    @staticmethod
    def insert_send_op(block, idx, tensor, src, dst, op_role):
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        """Insert send op into block at the given index."""
        op_type = 'send_v2'
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        # use pair comm group
        process_group = new_process_group([src, dst])
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        send_op = block._insert_op(
            idx,
            type=op_type,
            inputs={'X': [tensor]},
            attrs={
                'ring_id': process_group.id,
                'peer': process_group.ranks.index(dst),
                'use_calc_stream': True,
                'op_role': op_role,
                'dynamic_shape': True,
            },
        )
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        send_op._set_attr('op_namescope', "/auto_parallel/reshard")
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    @staticmethod
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    def insert_recv_op(block, idx, tensor, src, dst, op_role):
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        """Insert recv op into block at the given index."""
        op_type = 'recv_v2'
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        # use pair group
        process_group = new_process_group([src, dst])
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        recv_op = block._insert_op(
            idx,
            type=op_type,
            inputs={'X': [tensor]},
            outputs={'Out': [tensor]},
            attrs={
                'ring_id': process_group.id,
                'peer': process_group.ranks.index(src),
                'out_shape': tensor.shape,
                'dtype': tensor.dtype,
                'use_calc_stream': True,
                'op_role': op_role,
                'dynamic_shape': True,
            },
        )
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        recv_op._set_attr('op_namescope', "/auto_parallel/reshard")
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    @staticmethod
    def insert_reset_lod_op(block, idx, X, Y, op_role):
        """Insert reset_lod op into block at the given index."""

        new_var_name = paddle.fluid.unique_name.generate_with_ignorable_key(
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            ".".join(["reset_lod@RESHARD", 'tmp'])
        )
        reset_lod_out = block.create_var(
            name=new_var_name,
            shape=X.shape,
            type=X.type,
            dtype=X.dtype,
            lod_level=X.lod_level,
        )

        reset_op = block._insert_op(
            idx,
            type="lod_reset",
            inputs={'X': X, 'Y': Y},
            outputs={'Out': reset_lod_out},
            attrs={'op_role': op_role},
        )
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        reset_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        return reset_lod_out

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    @staticmethod
    def insert_concat_op(block, idx, tensors, axis, op_role):
        """Insert concat op into block at the given block."""
        inputs = {'X': tensors}
        attrs = {}
        attrs['axis'] = axis
        attrs['op_role'] = op_role
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        # to avoid name conflict with framework
        helper = LayerHelper('concat@RESHARD', **locals())
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        with paddle.static.program_guard(block.program):
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            out = block.create_var(
                name=paddle.fluid.unique_name.generate_with_ignorable_key(
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                    ".".join([helper.name, 'tmp'])
                ),
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                dtype=tensors[0].dtype,
                shape=None,
                lod_level=tensors[0].lod_level,
                type=tensors[0].type,
                persistable=False,
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                stop_gradient=False,
            )
        concat_op = block._insert_op(
            idx,
            type='concat',
            inputs=inputs,
            outputs={'Out': [out]},
            attrs=attrs,
        )
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        concat_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        return out
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    @staticmethod
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    def insert_slice_op(
        block, idx, tensor, starts, ends, axes, new_var_name, op_role
    ):
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        """Insert slice op into block at the given block."""
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        # This is a hack to insert split op to get slice tensor
        # 1. [128, 128] => [64, 128]: split
        # 2. [128, 128] => [128, 128]: assign
        # 3. [128, 128] => [64, 64]: slice, it will replaced by multi split
        global_shape = tensor.shape
        slice_shape = [ends[i] - starts[i] for i in range(len(starts))]
        diff_dims = []
        for index, item in enumerate(slice_shape):
            if item != global_shape[index]:
                diff_dims.append(index)

        # use assign
        if len(diff_dims) == 0:
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            out = block.create_var(
                name=new_var_name,
                dtype=tensor.dtype,
                type=tensor.type,
                shape=slice_shape,
                lod_level=tensor.lod_level,
            )
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            inputs = {'X': [tensor]}
            outputs = {"Out": [out]}
            attrs = {"in_place": False}
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            slice_op = block._insert_op(
                idx, type="assign", inputs=inputs, outputs=outputs, attrs=attrs
            )
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            slice_op._set_attr('op_namescope', "/auto_parallel/reshard")
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            return out

        # use split once
        elif len(diff_dims) == 1:
            diff_dim = diff_dims[0]
            num_or_sections = global_shape[diff_dim] // slice_shape[diff_dim]
            axis = diff_dim
            cur_idx = starts[diff_dim] // slice_shape[diff_dim]
            input_shape = global_shape
            inputs = {'X': tensor}
            attrs = {'num': num_or_sections, 'axis': axis, 'op_role': op_role}
            new_shape = []
            for index, item in enumerate(tensor.shape):
                if index != axis:
                    new_shape.append(item)
                else:
                    new_shape.append(item // num_or_sections)
            with paddle.static.program_guard(block.program):
                outs = [
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                    block.create_var(
                        name=paddle.fluid.unique_name.generate_with_ignorable_key(
                            ".".join(['split@RESHARD', 'tmp'])
                        ),
                        dtype=tensor.dtype,
                        shape=None,
                        type=tensor.type,
                        persistable=False,
                        lod_level=tensor.lod_level,
                        stop_gradient=False,
                    )
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                    for i in range(num_or_sections)
                ]
                out = outs[cur_idx]
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            split_op = block._insert_op(
                idx,
                type="split",
                inputs=inputs,
                outputs={'Out': outs},
                attrs=attrs,
            )
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            split_op._set_attr('op_namescope', "/auto_parallel/reshard")
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            return out

        # use slice
        else:
            inputs = {'Input': tensor}
            infer_flags = list(1 for i in range(len(axes)))
            attrs = {
                "axes": axes,
                "starts": starts,
                "ends": ends,
                "infer_flags": infer_flags,
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                'op_role': op_role,
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            }
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            out = block.create_var(
                name=new_var_name,
                dtype=tensor.dtype,
                type=tensor.type,
                lod_level=tensor.lod_level,
            )
            slice_op = block._insert_op(
                idx,
                type="slice",
                inputs=inputs,
                outputs={'Out': [out]},
                attrs=attrs,
            )
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            slice_op._set_attr('op_namescope', "/auto_parallel/reshard")
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            return out
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    @staticmethod
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    def insert_split_op(block, idx, tensor, num_or_sections, op_role, axis=0):
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        """Insert split op into block at the given index."""
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        helper = LayerHelper('split@RESHARD', **locals())
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        input_shape = tensor.shape
        inputs = {'X': tensor}
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        attrs = {'num': num_or_sections, 'axis': axis, 'op_role': op_role}
        new_shape = []
        for index, item in enumerate(tensor.shape):
            if index != axis:
                new_shape.append(item)
            else:
                new_shape.append(item // num_or_sections)
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        with paddle.static.program_guard(block.program):
            outs = [
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                block.create_var(
                    name=paddle.fluid.unique_name.generate_with_ignorable_key(
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                        ".".join([helper.name, 'tmp'])
                    ),
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                    dtype=tensor.dtype,
                    shape=None,
                    lod_level=tensor.lod_level,
                    type=tensor.type,
                    persistable=False,
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                    stop_gradient=False,
                )
                for i in range(num_or_sections)
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            ]
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        split_op = block._insert_op(
            idx, type="split", inputs=inputs, outputs={'Out': outs}, attrs=attrs
        )
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        split_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        return outs
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    @staticmethod
    def insert_fill_constant_op(block, idx, op_role):
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        """Insert fill constant op into block at the given index."""
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        # to avoid name conflict with framework
        helper = LayerHelper('fill_constant@RESHARD', **locals())
        # use paddle.int64 as dtype
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        with paddle.static.program_guard(block.program):
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            out = block.create_var(
                name=paddle.fluid.unique_name.generate_with_ignorable_key(
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                    ".".join([helper.name, 'tmp'])
                ),
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                dtype=paddle.int64,
                shape=None,
                type=core.VarDesc.VarType.LOD_TENSOR,
                persistable=False,
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                stop_gradient=False,
            )
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        inputs = {}
        attrs = {'force_cpu': False}
        attrs['str_value'] = str(int("1"))
        attrs['value'] = int("1")
        attrs['dtype'] = out.dtype
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        attrs['op_role'] = op_role
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        utils.get_shape_tensor_inputs(
            inputs=inputs, attrs=attrs, shape=[0], op_type='fill_constant'
        )
        fillconstant_op = block._insert_op(
            idx,
            type='fill_constant',
            inputs=inputs,
            outputs={'Out': [out]},
            attrs=attrs,
        )
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        out.stop_gradient = True
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        fillconstant_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        return out

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    @staticmethod
    def insert_allgather_op(block, idx, tensor, ranks, op_role):
        """Insert allgather op into block at the given index."""
        tensor_list = []
        group = new_process_group(ranks)
        idx_offset = 0

        # instant process group before insert allgather op.
        if not group.is_instantiate():
            # insert fill_constant op
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            fill_constant_out = Inserter.insert_fill_constant_op(
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                block, idx, op_role
            )
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            fill_constant_out.stop_gradient = True

            # insert c_allreduce_sum op
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            allreduce_op = block._insert_op(
                idx + 1,
                type="c_allreduce_sum",
                inputs={'X': [fill_constant_out]},
                outputs={'Out': [fill_constant_out]},
                attrs={
                    'ring_id': 0,
                    'use_calc_stream': True,
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                    'op_role': op_role,
                },
            )
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            allreduce_op._set_attr('op_namescope', "/auto_parallel/reshard")
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            # insert c_sync_calc_stream op
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            sync_calc_op = block._insert_op(
                idx + 2,
                type="c_sync_calc_stream",
                inputs={'X': [fill_constant_out]},
                outputs={'Out': [fill_constant_out]},
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                attrs={'op_role': op_role},
            )
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            sync_calc_op._set_attr('op_namescope', "/auto_parallel/reshard")
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            idx_offset = 3

        # insert c_allgather op
        op_type = 'c_allgather'
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        # to avoid name conflict with framework
        helper = LayerHelper(op_type + "@RESHARD", **locals())
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        with paddle.static.program_guard(block.program):
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            allgather_out = block.create_var(
                name=paddle.fluid.unique_name.generate_with_ignorable_key(
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                    ".".join([helper.name, 'tmp'])
                ),
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                dtype=tensor.dtype,
                shape=None,
                lod_level=tensor.lod_level,
                type=tensor.type,
                persistable=False,
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                stop_gradient=False,
            )
        allgather_op = block._insert_op(
            idx + idx_offset,
            type=op_type,
            inputs={'X': [tensor]},
            outputs={'Out': [allgather_out]},
            attrs={
                'ring_id': group.id,
                'use_calc_stream': True,
                'nranks': group.nranks,
                'op_role': op_role,
            },
        )
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        allgather_op._set_attr('op_namescope', "/auto_parallel/reshard")
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        idx_offset += 1

        # insert split op
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        split_out = Inserter.insert_split_op(
            block, idx + idx_offset, allgather_out, group.nranks, op_role
        )
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        idx_offset += 1
        tensor_list.extend(split_out)
        return tensor_list, idx_offset

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    @staticmethod
    def insert_c_concat_op(block, idx, tensor, ranks, op_role):
        """Insert c_concat op into block at the given index."""
        group = new_process_group(ranks)
        idx_offset = 0

        # insert c_concat op
        op_type = 'c_concat'
        # to avoid name conflict with framework
        helper = LayerHelper(op_type + "@RESHARD", **locals())
        with paddle.static.program_guard(block.program):
            c_concat_out = block.create_var(
                name=paddle.fluid.unique_name.generate_with_ignorable_key(
                    ".".join([helper.name, 'tmp'])
                ),
                dtype=tensor.dtype,
                shape=None,
                lod_level=tensor.lod_level,
                type=tensor.type,
                persistable=False,
                stop_gradient=False,
            )
        cur_rank = paddle.distributed.get_rank()
        c_concat_op = block._insert_op(
            idx + idx_offset,
            type=op_type,
            inputs={'X': [tensor]},
            outputs={'Out': [c_concat_out]},
            attrs={
                'ring_id': group.id,
                'use_calc_stream': True,
                'use_model_parallel': True,
                'nranks': group.nranks,
                'op_role': op_role,
                'rank': group.ranks.index(cur_rank) if cur_rank in ranks else 0,
            },
        )
        c_concat_op._set_attr('op_namescope', "/auto_parallel/reshard")
        return c_concat_out

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    @staticmethod
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    def concat_partitions_with_op(
        partition_tensor_list, tensor, partition_index, block, idx, op_role
    ):
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        """Concat the tensors and insert concat op."""
        if not partition_tensor_list:
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            partition_tensor_list.append((tensor, partition_index))
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        else:
            i = 0
            has_concat = False
            while i < len(partition_tensor_list):
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                (
                    concat_axis,
                    first_order,
                    new_partition,
                ) = Resharder.compute_concat_info(
                    partition_tensor_list[i][1], partition_index
                )
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                if concat_axis != -1:
                    has_concat = True
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                    _ = (
                        Inserter.insert_concat_op(
                            block,
                            idx[0],
                            [partition_tensor_list[i][0], tensor],
                            concat_axis,
                            op_role,
                        )
                        if first_order == 0
                        else Inserter.insert_concat_op(
                            block,
                            idx[0],
                            [tensor, partition_tensor_list[i][0]],
                            concat_axis,
                            op_role,
                        )
                    )
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                    partition_tensor_list.pop(i)
                    idx[0] += 1
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                    Inserter.concat_partitions_with_op(
                        partition_tensor_list,
                        _,
                        new_partition,
                        block,
                        idx,
                        op_role,
                    )
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                    break
                i += 1
            if not has_concat:
                partition_tensor_list.append((tensor, partition_index))


class Remover:
    """Remove var and op in the reshard process."""

    @staticmethod
    def remove_no_need_ops(auto_parallel_main_prog, dist_context, rank_id):
        """Remove no need ops in the main program"""
        not_remove_op_ref = [
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            "create_py_reader",
            "create_double_buffer_reader",
            "read",
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        ]
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        # NOTE: The nested sub block is not be supported now.
        remove_block_order = []
        for block_idx in Resharder.while_block_info:
            remove_block_order.append(block_idx)
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        for block_idx, block in enumerate(auto_parallel_main_prog.blocks):
            if block_idx not in remove_block_order:
                remove_block_order.append(block_idx)

        # the sub block should be removed first
        for block_idx in remove_block_order:
            remove_op_idx = []
            block = auto_parallel_main_prog.blocks[block_idx]
            ops = block.ops
            vars = block.vars
            for idx, op in enumerate(ops):
                if op.type == "read":
                    dim_list = []
                    for var_name in op.output_arg_names:
                        dim_list.extend(
                            get_var_with_recursion(
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                                var_name, block, auto_parallel_main_prog
                            ).shape
                        )
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                    for i in range(idx, -1, -1):
                        if ops[i].type == "create_py_reader":
                            ops[i]._set_attr("shape_concat", dim_list)
                            break
                    continue
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                # replace the input and output of c_sync_comm_stream op when in pipeline scene.
                if op.type == "c_sync_comm_stream":
                    need_save = []
                    for var_name in op.input_arg_names:
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                        process_mesh = (
                            dist_context.get_tensor_dist_attr_for_program(
                                get_var_with_recursion(
                                    var_name, block, auto_parallel_main_prog
                                )
                            ).process_mesh
                        )
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                        if rank_id in process_mesh.processes:
                            need_save.append(var_name)
                    if not need_save:
                        remove_op_idx.append(idx)
                        continue
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                    proto = OpProtoHolder.instance().get_op_proto(op.type)
                    op.desc.set_input(proto.inputs[0].name, need_save)
                    op.desc.set_output(proto.outputs[0].name, need_save)
                    continue
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                # judge the other op whether should be removed.
                op_dist_attr = dist_context.get_op_dist_attr_for_program(op)
                if op_dist_attr is not None:
                    op_process_mesh = op_dist_attr.process_mesh
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                    if (
                        rank_id not in op_process_mesh.processes
                        and op.type not in not_remove_op_ref
                    ):
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                        remove_op_idx.append(idx)

            for idx in remove_op_idx[::-1]:
                block._remove_op(idx)

    @staticmethod
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    def remove_no_need_vars(
        auto_parallel_main_prog, dist_params_grads, feed_var_names
    ):
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        """Remove no need vars in the main program"""
        for block_idx, block in enumerate(auto_parallel_main_prog.blocks):
            remove_vars = set()
            ops = block.ops
            vars = block.vars
            need_vars = set()
            for op in ops:
                for var_name in op.input_arg_names:
                    if var_name in vars:
                        need_vars.add(var_name)
                for var_name in op.output_arg_names:
                    if var_name in vars:
                        need_vars.add(var_name)
            for var in vars:
                if var not in need_vars:
                    remove_vars.add(var)

            # change dist_params_grads, the optimize op just in block 0.
            if block_idx == 0:
                param_grad_map = {}
                for op in ops:
                    if int(op.attr('op_role')) == int(OpRole.Optimize):
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                        if (
                            "Param" in op.input_names
                            and "Grad" in op.input_names
                        ):
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                            param_name = op.input("Param")[0]
                            grad_name = op.input("Grad")[0]
                            param_grad_map[param_name] = grad_name

                need_remove_idx = []
                for idx, item in enumerate(dist_params_grads):
                    if item[0].name not in param_grad_map.keys():
                        need_remove_idx.append(idx)

                for idx in need_remove_idx[::-1]:
                    dist_params_grads.pop(idx)

                idx = 0
                while idx < len(dist_params_grads):
                    param_name = dist_params_grads[idx][0].name
                    grad_name = dist_params_grads[idx][1].name
                    if grad_name != param_grad_map[param_name]:
                        dist_params_grads[idx] = (
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                            vars[param_name],
                            vars[param_grad_map[param_name]],
                        )
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                    idx += 1

            for var in remove_vars:
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                if var in feed_var_names:
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                    continue
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                block._remove_var(var)

    @staticmethod
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    def remove_no_need_in_main(
        auto_parallel_main_prog, dist_context, rank_id, dist_params_grads
    ):
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        """Remove no need vars and ops in the main program."""
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        Remover.remove_no_need_ops(
            auto_parallel_main_prog, dist_context, rank_id
        )
        Resharder.change_while_op_input_and_output(
            auto_parallel_main_prog, dist_context
        )
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        # 'feed_var_names' cannot be removed from auto_parallel_main_prog
        feed_var_names = []
        for var in sum(list(dist_context.serial_feed_vars.values()), []):
            feed_var_names.append(var.name)
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        Remover.remove_no_need_vars(
            auto_parallel_main_prog, dist_params_grads, feed_var_names
        )
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    @staticmethod
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    def remove_no_need_in_startup(
        auto_parallel_main_prog, auto_parallel_startup_prog
    ):
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        """Remove no need vars and ops in the startup program."""
        main_input_vars = set()
        main_ops = auto_parallel_main_prog.global_block().ops
        for op in main_ops:
            for var_name in op.input_arg_names:
                main_input_vars.add(var_name)
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        startup_block = auto_parallel_startup_prog.global_block()
        startup_output_vars = set()
        startup_ops = startup_block.ops
        for op in startup_ops:
            # skip c_sync_comm_stream op
            if op.type == "c_sync_comm_stream":
                continue
            for var_name in op.output_arg_names:
                startup_output_vars.add(var_name)
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        need_vars = set()
        for var_name in startup_output_vars:
            if var_name in main_input_vars:
                need_vars.add(var_name)

        startup_ops = startup_block.ops
        actual_need_vars = set()
        for idx, op in enumerate(startup_ops):
            is_need_op = False
            if op.type == "c_sync_comm_stream":
                continue
            for var_name in op.output_arg_names:
                if var_name in need_vars:
                    is_need_op = True
                    break
            if is_need_op:
                for var_name in op.output_arg_names:
                    actual_need_vars.add(var_name)
                for var_name in op.input_arg_names:
                    actual_need_vars.add(var_name)
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        remove_vars = set()
        for var_name in startup_block.vars:
            if var_name not in actual_need_vars:
                remove_vars.add(var_name)
        for var in remove_vars:
            startup_block._remove_var(var)
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        remove_op_idx = []
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        vars = startup_block.vars
        for idx, op in enumerate(startup_block.ops):
            is_no_need_op = False
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            if op.type == "c_sync_comm_stream":
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                var_names = []
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                for var_name in op.input_arg_names:
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                    if var_name in vars:
                        var_names.append(var_name)
                if not var_names:
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                    remove_op_idx.append(idx)
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                else:
                    proto = OpProtoHolder.instance().get_op_proto(op.type)
                    op.desc.set_input(proto.inputs[0].name, var_names)
                    op.desc.set_output(proto.outputs[0].name, var_names)
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                continue
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            for var_name in op.output_arg_names:
                if var_name not in vars:
                    is_no_need_op = True
                    break
            if is_no_need_op:
                remove_op_idx.append(idx)
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        for idx in remove_op_idx[::-1]:
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            startup_block._remove_op(idx)
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class Resharder:
    """
    Reshard tensor in the program according to its distributed attribute and corresponding op distributed attribute.
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    Args:
        auto_parallel_main_prog (Program): An auto parallel main program.
        auto_parallel_startup_prog (Program): An auto parallel startup program.
        rank_id (int): The process id.
        dist_context (DistributedContext): The distributed context of this rank.
        dist_params_grads (list): The list contains the tuple of param and grad.
        batch_size (int): The batch size. Default: None.
    """
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    while_block_info = {}

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    def __init__(
        self,
        auto_parallel_main_prog,
        auto_parallel_startup_prog,
        rank_id,
        dist_context,
        dist_params_grads,
        batch_size=None,
    ):
        assert isinstance(auto_parallel_main_prog, Program), (
            "The type of auto_parallel_main_prog should be Program, "
            "but got {}.".format(type(auto_parallel_main_prog))
        )
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        if auto_parallel_startup_prog is not None:
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            assert isinstance(auto_parallel_main_prog, Program), (
                "The type of auto_parallel_startup_prog should be Program or None, "
                "but got {}.".format(type(auto_parallel_startup_prog))
            )
        assert isinstance(
            rank_id, int
        ), "The type of rank_id should be int, " "but got {}.".format(
            type(rank_id)
        )
        assert isinstance(dist_context, DistributedContext), (
            "The type of dist_context should be DistributedContext, "
            "but got {}.".format(type(dist_context))
        )
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        if batch_size is not None:
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            assert isinstance(
                batch_size, int
            ), "The type of batch_size should be int, " "but got {}.".format(
                type(batch_size)
            )
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        self._auto_parallel_main_prog = auto_parallel_main_prog
        self._auto_parallel_startup_prog = auto_parallel_startup_prog
        self._rank_id = rank_id
        self._dist_context = dist_context
        self._dist_params_grads = dist_params_grads
        self._batch_size = batch_size
        self._has_sent = {}
        self._has_recv = {}
        self._has_allgather = {}
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        # to avoid reshard repeatly
        self._has_resharded = {}
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    @property
    def auto_parallel_main_prog(self):
        return self._auto_parallel_main_prog
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    @property
    def auto_parallel_startup_prog(self):
        return self._auto_parallel_startup_prog
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    @property
    def rank_id(self):
        return self._rank_id
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    @property
    def dist_context(self):
        return self._dist_context
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    @property
    def dist_params_grads(self):
        return self._dist_params_grads
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    @property
    def batch_size(self):
        return self._batch_size
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    @property
    def has_sent(self):
        return self._has_sent
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    @property
    def has_recv(self):
        return self._has_recv
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    @property
    def has_allgather(self):
        return self._has_allgather

    @staticmethod
    def compute_partition_shape(complete_shape, dims_mapping, process_shape):
        """Compute the shape of partition."""
        partition_shape = []
        for idx, item in enumerate(complete_shape):
            if dims_mapping[idx] == -1:
                partition_shape.append(item)
            else:
                partition_shape.append(item // process_shape[dims_mapping[idx]])
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        return partition_shape
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    @staticmethod
    def compute_process_index(process, process_group, process_shape):
        """Compute the index of process_shape corresponding to the process."""
        relative_process = process_group.index(process)
        process_index = []
        product = reduce(lambda x, y: x * y, process_shape)

        for i in range(len(process_shape)):
            idx = relative_process // (product // process_shape[i])
            product = product // process_shape[i]
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            relative_process = (
                relative_process - relative_process // product * product
            )
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            process_index.append(idx)

        return process_index

    @staticmethod
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    def compute_partition_index(
        process, complete_shape, dims_mapping, process_shape, process_group
    ):
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        """Compute the partition index in complete tensor."""
        partition_shape = Resharder.compute_partition_shape(
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            complete_shape, dims_mapping, process_shape
        )
        process_index = Resharder.compute_process_index(
            process, process_group, process_shape
        )
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        partition_index = []

        for i in range(len(complete_shape)):
            if dims_mapping[i] == -1:
                partition_index.append([0, partition_shape[i]])
            else:
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                partition_index.append(
                    [
                        process_index[dims_mapping[i]] * partition_shape[i],
                        (process_index[dims_mapping[i]] + 1)
                        * partition_shape[i],
                    ]
                )
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        return partition_index

    @staticmethod
    def compute_concat_info(partition_index_x, partition_index_y):
        """Judge whether two partition can be concatenated and compute concatenated partition index."""
        differ_count = 0
        concat_axis = -1
        first_order = 0
        new_partition = []

        for idx, item in enumerate(partition_index_x):
            if item != partition_index_y[idx]:
                differ_count += 1
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                if (
                    item[1] == partition_index_y[idx][0]
                    and item[0] < partition_index_y[idx][1]
                ):
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                    concat_axis = idx
                    new_partition.append([item[0], partition_index_y[idx][1]])
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                elif (
                    item[0] == partition_index_y[idx][1]
                    and item[1] > partition_index_y[idx][0]
                ):
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                    first_order = 1
                    concat_axis = idx
                    new_partition.append([partition_index_y[idx][0], item[1]])
            else:
                new_partition.append(item)
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        if differ_count == 1:
            return concat_axis, first_order, new_partition
        else:
            return -1, first_order, new_partition

    @staticmethod
    def compute_complete_shape(slice_shape, process_shape, dims_mapping):
        """compute the complete shape of the slice tensor  with its process mesh and dims mapping"""
        complete_shape = []
        for idx, item in enumerate(slice_shape):
            if dims_mapping[idx] == -1:
                complete_shape.append(item)
            else:
                complete_shape.append(item * process_shape[dims_mapping[idx]])
        return complete_shape
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    @staticmethod
    def concat_partitions(partition_index_list, partition_index):
        """Concat the given partitions without inserting concat op."""
        if not partition_index_list:
            partition_index_list.append(partition_index)
        else:
            i = 0
            has_concat = False
            while i < len(partition_index_list):
                concat_axis, _, new_partition = Resharder.compute_concat_info(
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                    partition_index_list[i], partition_index
                )
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                if concat_axis != -1:
                    has_concat = True
                    partition_index_list.pop(i)
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                    Resharder.concat_partitions(
                        partition_index_list, new_partition
                    )
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                    break
                i += 1
            if not has_concat:
                partition_index_list.append(partition_index)

    @staticmethod
    def change_while_op_input_and_output(auto_parallel_main_prog, dist_context):
        """Change while op input and output after the corresponding sub block ops removed"""
        for sub_block_idx in Resharder.while_block_info:
            sub_block = auto_parallel_main_prog.blocks[sub_block_idx]
            parent_while_op_id = Resharder.while_block_info[sub_block_idx][
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                "op_id"
            ]
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            parent_block = auto_parallel_main_prog.blocks[sub_block.parent_idx]

            sub_block_op_inputs = set()
            sub_block_op_outputs = []
            for op in sub_block.ops:
                # skip the input and output of operators inserted in the reshard phase
                dist_op = dist_context.get_dist_op_for_program(op)
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                if (
                    dist_op
                    or (op.type == "slice" and not dist_op)
                    or (op.type == "split" and not dist_op)
                    or (op.type == "assign" and not dist_op)
                ):
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                    for var_name in op.output_arg_names:
                        if var_name not in sub_block_op_outputs:
                            sub_block_op_outputs.append(var_name)
                    for var_name in op.input_arg_names:
                        sub_block_op_inputs.add(var_name)

            # find the while op
            while_op = None
            for op in parent_block.ops:
                if op.desc.id() == parent_while_op_id and op.type == "while":
                    while_op = op
                    break

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            if while_op is None:
                continue
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            # find the actual input and output of while op
            proto = OpProtoHolder.instance().get_op_proto(while_op.type)
            new_X = []
            for var_name in while_op.input("X"):
                if var_name in sub_block_op_inputs:
                    new_X.append(var_name)
            assert new_X
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            new_X.sort()
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            while_op.desc.set_input(proto.inputs[0].name, new_X)

            new_Out = []
            for var_name in while_op.output("Out"):
                for output_name in sub_block_op_outputs[::-1]:
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                    if output_name.find(var_name) != -1 and (
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                        len(var_name) == len(output_name)
                        or "@RESHARD" in output_name
                    ):
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                        if output_name not in new_Out:
                            new_Out.append(output_name)
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            assert new_Out
            while_op.desc.set_output(proto.outputs[0].name, new_Out)

    def is_overlapped(self, shape_x, shape_y):
        """Judge whether two partitions intersect on the specified dimension."""
        overlapped = False
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        if (shape_y[0] <= shape_x[0] < shape_y[1]) or (
            shape_x[0] <= shape_y[0] < shape_x[1]
        ):
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            overlapped = True
        return overlapped

    def is_unshard(self, dims_mapping):
        for dim in dims_mapping:
            if dim != -1:
                return False
        return True

    def is_special_op(self, op):
1304
        global _g_special_ops, _g_gradient_clip_ops
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        if op.type in _g_special_ops:
            return True
1307
        if is_gradient_clip_op(op) and op.type in _g_gradient_clip_ops:
1308
            return True
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        return False

1311 1312
    def is_condition_replicative(self, op):
        sub_block = self.auto_parallel_main_prog.blocks[op.attr("sub_block").id]
1313 1314 1315 1316 1317

        if op.type == "while":
            input_cond = op.input("Condition")
        elif op.type == "conditional_block":
            input_cond = op.input("Cond")
1318 1319

        # the dims mapping of condition tensor should be replicative
1320
        for var_name in input_cond:
1321 1322 1323
            var = get_var_with_recursion(
                var_name, sub_block, self.auto_parallel_main_prog
            )
1324 1325 1326 1327 1328 1329
            dist_tensor = self.dist_context.get_dist_tensor_for_program(var)
            tensor_dist_attr = dist_tensor.dist_attr
            var_dims_mapping = tensor_dist_attr.dims_mapping
            for dim in var_dims_mapping:
                if dim != -1:
                    return False
1330

1331 1332
        return True

1333
    def need_reshard(self, dist_tensor, dist_attr, op_input=True, dist_op=None):
1334 1335 1336 1337 1338
        """Judge the tensor whether needs to be resharded."""
        is_reshard = False
        tensor_dist_attr = dist_tensor.dist_attr
        tensor_dims_mapping = tensor_dist_attr.dims_mapping
        tensor_process_mesh = tensor_dist_attr.process_mesh
1339 1340 1341 1342

        # dist_attr is [process_mesh, dims_mapping] and process_mesh is not a union
        op_process_mesh = dist_attr[0]

1343
        if op_input:
1344
            op_input_dims_mapping = dist_attr[1]
1345
            if all(
1346 1347 1348 1349 1350 1351 1352 1353 1354 1355
                map(
                    lambda x: x,
                    [
                        tensor_dims_mapping,
                        tensor_process_mesh,
                        op_input_dims_mapping,
                        op_process_mesh,
                    ],
                )
            ):
1356
                # judge whether need reshard by dims_mapping
1357
                if tensor_dims_mapping != op_input_dims_mapping:
1358 1359 1360 1361
                    if (
                        tensor_process_mesh
                        not in self.dist_context.process_meshes
                    ):
1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372
                        # assert whether -1 when union.
                        for item in tensor_dims_mapping:
                            if item != -1:
                                raise ValueError(
                                    "The dim must be -1 when tensor process mesh is a union."
                                )
                        # tensor process_mesh: [0, 1, 2, 3], dims_mapping: [-1, -1]
                        # op process_mesh: [4, 5], dims_mapping: [0, -1]
                        # reshard is not supported such as above
                        if not is_reshard:
                            return is_reshard
1373
                        else:
1374 1375 1376 1377 1378 1379 1380 1381
                            raise ValueError(
                                "it is not supported that tensor process mesh is a union and needs reshard."
                            )
                    is_reshard = True

                # judge whether need reshard by process_mesh
                if tensor_process_mesh != op_process_mesh:
                    is_reshard = True
1382
        else:
1383
            op_output_dims_mapping = dist_attr[1]
1384
            if all(
1385 1386 1387 1388 1389 1390 1391 1392 1393 1394
                map(
                    lambda x: x,
                    [
                        tensor_dims_mapping,
                        tensor_process_mesh,
                        op_output_dims_mapping,
                        op_process_mesh,
                    ],
                )
            ):
1395 1396 1397 1398
                if tensor_dims_mapping != op_output_dims_mapping:
                    raise ValueError(
                        "It is not supported that tensor dims mapping is different from op output dims mapping."
                    )
1399 1400
                if tensor_process_mesh != op_process_mesh:
                    is_reshard = True
1401 1402 1403 1404

        return is_reshard

    def get_op_process_meshes(self, op):
1405
        """Get sub process meshes of the given op if op process mesh is a union."""
1406 1407 1408
        process_meshes = []
        dist_op = self.dist_context.get_dist_op_for_program(op)
        op_process_mesh = dist_op.dist_attr.process_mesh
1409

1410
        for process_mesh in self.dist_context.process_meshes:
1411 1412 1413
            if set(process_mesh.processes) & (
                set(op_process_mesh.processes)
            ) and len(process_mesh.processes) < len(op_process_mesh.processes):
1414 1415 1416 1417 1418 1419 1420 1421
                process_meshes.append(process_mesh)

        # it means the process mesh is not a union when process meshes is null
        if not process_meshes:
            process_meshes.append(op_process_mesh)

        return process_meshes

1422
    def find_op_desc_seq(self, dist_tensor, dist_attr, serial=False):
1423 1424 1425 1426 1427
        """
        Find the op description sequence to reshard the source tensor for matching the op requirement.

        Args:
            dist_tensor (DistributedTensor): A distributed tensor.
1428 1429
            dist_attr (list): A list contains process_mesh and dims_mapping such as [process_mesh, dims_mapping].
            serial (bool): If serial is true, the dist tensor and dist op come from serial program. Otherwise, they come from auto program.
1430 1431 1432 1433 1434 1435 1436 1437

        Returns:
            Dict, the dict represents the required op description sequence corresponding to process, The key of dict is
            process and value is a list containing op description.
        """
        tensor_dist_attr = dist_tensor.dist_attr
        source_tensor = dist_tensor.serial_tensor
        tensor_name = source_tensor.name
1438

1439 1440 1441 1442 1443
        source_dims_mapping = tensor_dist_attr.dims_mapping
        source_process_mesh = tensor_dist_attr.process_mesh
        source_process_group = source_process_mesh.processes
        source_process_shape = source_process_mesh.topology

1444 1445
        target_process_mesh = dist_attr[0]
        target_dims_mapping = dist_attr[1]
1446 1447 1448 1449
        target_process_group = target_process_mesh.processes
        target_process_shape = target_process_mesh.topology

        if source_tensor.shape[0] < 0:
1450
            assert source_tensor.shape[0] == -1
1451 1452 1453 1454
            new_shape = list(source_tensor.shape)
            new_shape[0] = self.batch_size
            source_tensor.desc.set_shape(new_shape)

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        complete_shape = (
            Resharder.compute_complete_shape(
                source_tensor.shape, source_process_shape, source_dims_mapping
            )
            if not serial
            else source_tensor.shape
        )
1462 1463 1464
        op_desc_seq = {}

        # TODO: if the target process group has the same process with source process group
1465 1466 1467
        if set(target_process_group).intersection(
            set(source_process_group)
        ) and set(target_process_group).difference(set(source_process_group)):
1468 1469 1470 1471 1472
            pass

        elif target_process_group != source_process_group:
            partition_process_mapping_list = []
            for source_process in source_process_group:
1473
                # get partition index of source process
1474 1475 1476 1477 1478 1479 1480
                source_partition_index = Resharder.compute_partition_index(
                    source_process,
                    complete_shape,
                    source_dims_mapping,
                    source_process_shape,
                    source_process_group,
                )
1481
                if not partition_process_mapping_list:
1482
                    # the item in partition_process_mapping_list is source_partition_index, which processes and whether has been used
1483
                    partition_process_mapping_list.append(
1484 1485
                        [source_partition_index, [source_process], [False]]
                    )
1486
                else:
1487
                    partition_list = list(
1488 1489
                        [item[0] for item in partition_process_mapping_list]
                    )
1490
                    process_list = list(
1491 1492
                        [item[1] for item in partition_process_mapping_list]
                    )
1493
                    has_used = list(
1494 1495
                        [item[2] for item in partition_process_mapping_list]
                    )
1496

1497 1498 1499 1500 1501
                    if partition_list.count(source_partition_index) == 1:
                        index = partition_list.index(source_partition_index)
                        process_list[index].append(source_process)
                        has_used[index].append(False)
                    else:
1502
                        partition_process_mapping_list.append(
1503 1504
                            [source_partition_index, [source_process], [False]]
                        )
1505 1506

            for target_process in target_process_group:
1507
                # has_sent means the source_partition_index has been sent to target_process
1508 1509
                has_sent = []
                target_partition_index = Resharder.compute_partition_index(
1510 1511 1512 1513 1514 1515
                    target_process,
                    complete_shape,
                    target_dims_mapping,
                    target_process_shape,
                    target_process_group,
                )
1516 1517 1518 1519
                partition_index_list = []
                all_partition_index_list = []
                for source_process in source_process_group:
                    source_partition_index = Resharder.compute_partition_index(
1520 1521 1522 1523 1524 1525
                        source_process,
                        complete_shape,
                        source_dims_mapping,
                        source_process_shape,
                        source_process_group,
                    )
1526
                    to_send_process = None
1527 1528 1529 1530 1531 1532 1533 1534 1535 1536 1537 1538 1539 1540 1541 1542 1543 1544 1545 1546 1547 1548
                    if (
                        all(
                            _
                            for _ in list(
                                map(
                                    self.is_overlapped,
                                    source_partition_index,
                                    target_partition_index,
                                )
                            )
                        )
                        and source_partition_index not in has_sent
                    ):
                        idx = list(
                            [item[0] for item in partition_process_mapping_list]
                        ).index(source_partition_index)
                        has_used = list(
                            [item[2] for item in partition_process_mapping_list]
                        )[idx]
                        process_list = list(
                            [item[1] for item in partition_process_mapping_list]
                        )[idx]
1549 1550 1551 1552 1553 1554 1555
                        i = 0
                        while i < len(has_used):
                            if not has_used[i]:
                                to_send_process = process_list[i]
                                has_used[i] = True
                                break
                            i += 1
1556

1557 1558 1559 1560
                        if i == len(has_used):
                            has_used = list(map(lambda x: False, has_used))
                            to_send_process = process_list[0]
                            has_used[0] = True
1561 1562 1563
                        assert (
                            to_send_process is not None
                        ), "Failed to find the send process."
1564 1565 1566 1567 1568 1569 1570 1571

                        if to_send_process not in op_desc_seq.keys():
                            op_desc_seq[to_send_process] = []
                        if target_process not in op_desc_seq.keys():
                            op_desc_seq[target_process] = []
                        all_partition_index_list.append(source_partition_index)

                        # append send and recv op desc
1572 1573 1574 1575 1576 1577 1578 1579 1580 1581 1582 1583 1584
                        is_bool = dist_tensor.serial_tensor.dtype == paddle.bool
                        send_op_desc = SendOpDesc(
                            source_partition_index,
                            to_send_process,
                            target_process,
                            is_bool=is_bool,
                        )
                        recv_op_desc = RecvOpDesc(
                            source_partition_index,
                            to_send_process,
                            target_process,
                            is_bool=is_bool,
                        )
1585 1586 1587
                        op_desc_seq[to_send_process].append(send_op_desc)
                        op_desc_seq[target_process].append(recv_op_desc)
                        has_sent.append(source_partition_index)
1588 1589 1590
                        Resharder.concat_partitions(
                            partition_index_list, source_partition_index
                        )
1591 1592 1593

                # append concat op desc
                op_desc_seq[target_process].append(
1594 1595
                    ConcatOpDesc(all_partition_index_list)
                )
1596 1597 1598 1599 1600 1601

                # append slice op desc
                slice_starts = []
                slice_ends = []
                slices_axes = []
                concatenated_partition_index = partition_index_list[0]
1602 1603
                to_slice_tensor_shape = []

1604
                for idx, item in enumerate(concatenated_partition_index):
1605 1606 1607
                    slice_starts.append(
                        target_partition_index[idx][0] - item[0]
                    )
1608 1609
                    slice_ends.append(target_partition_index[idx][1] - item[0])
                    slices_axes.append(idx)
1610 1611
                    to_slice_tensor_shape.append(item[1] - item[0])

1612
                op_desc_seq[target_process].append(
1613 1614 1615 1616 1617 1618 1619
                    SliceOpDesc(
                        slice_starts,
                        slice_ends,
                        slices_axes,
                        shape=to_slice_tensor_shape,
                    )
                )
1620

1621
        # In the same process group, it will use allgahther and slice op.
1622
        else:
1623
            # NOTE: It just supports even partition scene.
1624 1625 1626 1627 1628
            partition_index_list = []
            all_partition_index_list = []
            process_index = []
            for source_process in source_process_group:
                source_partition_index = Resharder.compute_partition_index(
1629 1630 1631 1632 1633 1634
                    source_process,
                    complete_shape,
                    source_dims_mapping,
                    source_process_shape,
                    source_process_group,
                )
1635 1636
                if source_partition_index not in partition_index_list:
                    partition_index_list.append(source_partition_index)
1637 1638 1639 1640 1641 1642 1643 1644
                    process_index.append(
                        [
                            [
                                source_process,
                            ],
                            source_partition_index,
                        ]
                    )
1645
                else:
1646 1647 1648
                    process_index[
                        partition_index_list.index(source_partition_index)
                    ][0].append(source_process)
1649 1650 1651 1652 1653 1654 1655 1656 1657 1658 1659 1660 1661

            for i in range(len(process_index[0][0])):
                group = []
                for j in range(len(process_index)):
                    group.append(process_index[j][0][i])
                    if i == 0:
                        all_partition_index_list.append(process_index[j][1])
                for process in group:
                    # append slice op desc
                    slice_starts = []
                    slice_ends = []
                    slices_axes = []
                    target_partition_index = Resharder.compute_partition_index(
1662 1663 1664 1665 1666 1667
                        process,
                        complete_shape,
                        target_dims_mapping,
                        target_process_shape,
                        target_process_group,
                    )
1668 1669 1670 1671 1672
                    for idx, item in enumerate(target_partition_index):
                        slice_starts.append(item[0])
                        slice_ends.append(item[1])
                        slices_axes.append(idx)

1673
                    to_slice_tensor_shape = dist_tensor.global_sizes()
1674 1675 1676 1677 1678 1679 1680 1681 1682 1683 1684
                    slice_op_desc = SliceOpDesc(
                        starts=slice_starts,
                        ends=slice_ends,
                        axes=slices_axes,
                        shape=to_slice_tensor_shape,
                    )
                    allgather_shape = (
                        None
                        if not serial
                        else dist_tensor.local_sizes(rank=process)
                    )
1685 1686 1687 1688 1689 1690 1691 1692 1693 1694 1695 1696
                    # c_concat pass
                    if (
                        target_dims_mapping.count(-1)
                        == len(target_dims_mapping)
                        and source_dims_mapping[:-1].count(-1)
                        == len(source_dims_mapping[:-1])
                        and source_dims_mapping[-1] != -1
                    ):
                        op_desc_seq[process] = [
                            AllGatherConcatOpDesc(
                                group=group, shape=allgather_shape
                            )
1697
                        ]
1698 1699 1700 1701 1702 1703 1704 1705 1706 1707 1708 1709 1710 1711 1712 1713 1714 1715
                    else:
                        op_desc_seq[process] = (
                            [
                                AllGatherOpDesc(
                                    group=group,
                                    shape=allgather_shape,
                                    is_bool=(
                                        source_tensor.dtype == paddle.bool
                                    ),
                                ),
                                ConcatOpDesc(
                                    partition_index_list=all_partition_index_list
                                ),
                                slice_op_desc,
                            ]
                            if len(group) > 1
                            else [slice_op_desc]
                        )
1716 1717 1718

        return op_desc_seq

1719 1720 1721
    def parse_op_desc(
        self, block, op_desc_seq, var_name, reshard_op, dist_attr
    ):
1722 1723 1724 1725 1726 1727 1728 1729 1730 1731 1732 1733
        """Parse op desc sequence and insert op in the block"""
        tensor_list = []
        partition_tensor_list = []
        if self.rank_id not in op_desc_seq.keys():
            return
        op_desc_list = op_desc_seq[self.rank_id]

        idx = None
        for index, op in list(enumerate(block.ops)):
            if op.desc.id == reshard_op.desc.id:
                idx = index
                break
1734 1735 1736 1737 1738
        assert (
            idx is not None
        ), "The op for reshard cannot be found in the rank {} program.".format(
            self.rank_id
        )
1739 1740

        matched_op = block.ops[idx]
1741 1742 1743
        source_tensor = get_var_with_recursion(
            var_name, block, self.auto_parallel_main_prog
        )
1744 1745 1746 1747
        for op_desc in op_desc_list:
            if isinstance(op_desc, AllGatherOpDesc):  # noqa: F401
                if var_name not in self.has_allgather.keys():
                    self.has_allgather[var_name] = []
1748 1749 1750 1751 1752
                if not self.has_allgather[
                    var_name
                ] or op_desc.group not in list(
                    map(lambda x: x[0], self.has_allgather[var_name])
                ):
1753 1754 1755
                    if op_desc.is_bool:
                        # for bool data allgather, cast to int64 -> allgather -> cast bool
                        out_cast = Inserter.insert_cast_op(
1756 1757 1758 1759 1760 1761
                            block,
                            idx,
                            source_tensor,
                            reshard_op.attr('op_role'),
                            paddle.int64,
                        )
1762
                        tensor_list, idx_offset = Inserter.insert_allgather_op(
1763 1764 1765 1766 1767 1768
                            block,
                            idx + 1,
                            out_cast,
                            op_desc.group,
                            reshard_op.attr('op_role'),
                        )
1769 1770 1771 1772
                        idx += idx_offset
                        tensor_name_list = []
                        for var in tensor_list:
                            out_cast = Inserter.insert_cast_op(
1773 1774 1775 1776 1777 1778
                                block,
                                idx,
                                var,
                                reshard_op.attr('op_role'),
                                paddle.bool,
                            )
1779 1780 1781
                            tensor_name_list.append(out_cast.name)
                            idx += 1
                        self.has_allgather[var_name].append(
1782 1783
                            [op_desc.group, tensor_name_list]
                        )
1784 1785
                    else:
                        tensor_list, idx_offset = Inserter.insert_allgather_op(
1786 1787 1788 1789 1790 1791
                            block,
                            idx,
                            source_tensor,
                            op_desc.group,
                            reshard_op.attr('op_role'),
                        )
1792 1793 1794
                        idx += idx_offset
                        tensor_name_list = [var.name for var in tensor_list]
                        self.has_allgather[var_name].append(
1795 1796
                            [op_desc.group, tensor_name_list]
                        )
1797 1798 1799 1800
                else:
                    for item in self.has_allgather[var_name]:
                        if op_desc.group == item[0]:
                            tensor_list = [
C
caozhou 已提交
1801
                                get_var_with_recursion(
1802 1803 1804 1805
                                    var_name,
                                    block,
                                    self.auto_parallel_main_prog,
                                )
1806 1807 1808
                                for var_name in item[1]
                            ]
                            break
1809 1810 1811
                assert (
                    tensor_list
                ), "The result of parsing allgather op should not be None."
1812 1813 1814 1815 1816

            elif isinstance(op_desc, SendOpDesc):
                if var_name not in self.has_sent.keys():
                    self.has_sent[var_name] = []
                if op_desc.dst not in self.has_sent[var_name]:
1817 1818
                    if op_desc.is_bool:
                        out_cast = Inserter.insert_cast_op(
1819 1820 1821 1822 1823 1824 1825 1826 1827 1828 1829 1830 1831 1832
                            block,
                            idx,
                            source_tensor,
                            reshard_op.attr('op_role'),
                            paddle.int64,
                        )
                        Inserter.insert_send_op(
                            block,
                            idx + 1,
                            out_cast,
                            op_desc.src,
                            op_desc.dst,
                            reshard_op.attr('op_role'),
                        )
1833 1834
                        idx += 2
                    else:
1835 1836 1837 1838 1839 1840 1841 1842
                        Inserter.insert_send_op(
                            block,
                            idx,
                            source_tensor,
                            op_desc.src,
                            op_desc.dst,
                            reshard_op.attr('op_role'),
                        )
1843
                        idx += 1
1844 1845 1846 1847 1848 1849 1850 1851 1852 1853
                    self.has_sent[var_name].append(op_desc.dst)

            elif isinstance(op_desc, RecvOpDesc):
                if var_name not in self.has_recv.keys():
                    self.has_recv[var_name] = {}
                if op_desc.src not in self.has_recv[var_name].keys():
                    partition_index = op_desc.partition_index
                    shape = []
                    for index in partition_index:
                        shape.append(index[1] - index[0])
1854 1855 1856 1857 1858 1859 1860
                    if op_desc.is_bool:
                        # for bool data, recv int64 -> cast to bool
                        recv_tensor = block.create_var(
                            name=unique_name.generate(var_name + "@recv"),
                            shape=shape,
                            lod_level=source_tensor.lod_level,
                            dtype=paddle.int64,
1861 1862 1863 1864 1865 1866 1867 1868 1869 1870
                            type=source_tensor.type,
                        )
                        Inserter.insert_recv_op(
                            block,
                            idx,
                            recv_tensor,
                            op_desc.src,
                            op_desc.dst,
                            reshard_op.attr('op_role'),
                        )
1871
                        out_cast = Inserter.insert_cast_op(
1872 1873 1874 1875 1876 1877
                            block,
                            idx + 1,
                            recv_tensor,
                            reshard_op.attr('op_role'),
                            paddle.bool,
                        )
1878 1879 1880 1881 1882 1883 1884 1885 1886
                        tensor_list.append(out_cast)
                        idx += 2
                        self.has_recv[var_name][op_desc.src] = out_cast
                    else:
                        recv_tensor = block.create_var(
                            name=unique_name.generate(var_name + "@recv"),
                            shape=shape,
                            lod_level=source_tensor.lod_level,
                            dtype=source_tensor.dtype,
1887 1888 1889 1890 1891 1892 1893 1894 1895 1896
                            type=source_tensor.type,
                        )
                        Inserter.insert_recv_op(
                            block,
                            idx,
                            recv_tensor,
                            op_desc.src,
                            op_desc.dst,
                            reshard_op.attr('op_role'),
                        )
1897 1898 1899 1900 1901

                        # for lod tensor, need reset lod after received
                        if recv_tensor.lod_level != 0:
                            set_lod = False
                            # use data lod to reset tensor lod
1902 1903 1904
                            for (
                                tmp_block
                            ) in self.auto_parallel_main_prog.blocks:
1905 1906
                                for tmp_var_name in tmp_block.vars:
                                    tmp_var = tmp_block.vars[tmp_var_name]
1907 1908 1909 1910 1911 1912 1913 1914 1915 1916 1917 1918 1919 1920
                                    if (
                                        tmp_var.is_data
                                        and tmp_var.lod_level
                                        == recv_tensor.lod_level
                                    ):
                                        reset_lod_out = (
                                            Inserter.insert_reset_lod_op(
                                                block,
                                                idx + 1,
                                                recv_tensor,
                                                tmp_var,
                                                reshard_op.attr('op_role'),
                                            )
                                        )
1921 1922 1923
                                        tensor_list.append(reset_lod_out)
                                        idx += 2
                                        self.has_recv[var_name][
1924 1925
                                            op_desc.src
                                        ] = reset_lod_out
1926 1927 1928 1929 1930 1931 1932 1933 1934
                                        set_lod = True
                                        break
                                if set_lod:
                                    break
                            assert set_lod is True
                        else:
                            tensor_list.append(recv_tensor)
                            idx += 1
                            self.has_recv[var_name][op_desc.src] = recv_tensor
1935 1936 1937 1938 1939 1940 1941 1942
                else:
                    tensor_list.append(self.has_recv[var_name][op_desc.src])

            elif isinstance(op_desc, ConcatOpDesc):
                partition_index_list = op_desc.partition_index_list
                idx_list = [idx]
                for index, tensor in enumerate(tensor_list):
                    Inserter.concat_partitions_with_op(
1943 1944 1945 1946 1947 1948 1949
                        partition_tensor_list,
                        tensor,
                        partition_index_list[index],
                        block,
                        idx_list,
                        reshard_op.attr('op_role'),
                    )
1950 1951
                idx = idx_list[0]

1952 1953 1954 1955 1956 1957 1958 1959 1960 1961 1962 1963 1964 1965 1966 1967 1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984
            elif isinstance(op_desc, SliceOpDesc) or isinstance(
                op_desc, AllGatherConcatOpDesc
            ):
                target_tensor = None
                if isinstance(op_desc, SliceOpDesc):
                    assert (
                        len(partition_tensor_list) == 1
                        or not partition_tensor_list
                    )
                    to_slice_tensor = (
                        partition_tensor_list[0][0]
                        if len(partition_tensor_list) == 1
                        else source_tensor
                    )
                    new_name = unique_name.generate(var_name + "@RESHARD")
                    target_tensor = Inserter.insert_slice_op(
                        block,
                        idx,
                        to_slice_tensor,
                        starts=op_desc.starts,
                        ends=op_desc.ends,
                        axes=op_desc.axes,
                        new_var_name=new_name,
                        op_role=reshard_op.attr('op_role'),
                    )
                else:
                    target_tensor = Inserter.insert_c_concat_op(
                        block,
                        idx,
                        source_tensor,
                        op_desc.group,
                        reshard_op.attr('op_role'),
                    )
1985

1986
                assert target_tensor is not None
1987 1988 1989
                process_mesh = dist_attr[0]
                dims_mapping = dist_attr[1]

1990 1991 1992 1993
                tensor_attr = TensorDistributedAttribute()
                tensor_attr.dims_mapping = dims_mapping
                tensor_attr.process_mesh = process_mesh
                self.dist_context.set_tensor_dist_attr_for_program(
1994 1995
                    target_tensor, tensor_attr
                )
1996

1997
                if matched_op.type == "while":
1998
                    # var_reshard_mapping means the while op input need be changed to
1999 2000 2001 2002 2003 2004
                    if (
                        "var_reshard_mapping"
                        not in Resharder.while_block_info[
                            op.attr("sub_block").id
                        ].keys()
                    ):
2005
                        Resharder.while_block_info[op.attr("sub_block").id][
2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016
                            "var_reshard_mapping"
                        ] = {}
                    if (
                        var_name
                        not in Resharder.while_block_info[
                            op.attr("sub_block").id
                        ]["var_reshard_mapping"].keys()
                    ):
                        Resharder.while_block_info[op.attr("sub_block").id][
                            "var_reshard_mapping"
                        ][var_name] = []
2017
                    Resharder.while_block_info[op.attr("sub_block").id][
2018 2019
                        "var_reshard_mapping"
                    ][var_name].append([dist_attr, target_tensor.name])
2020 2021 2022

                # rename op input name according to new name
                for op in block.ops:
2023 2024
                    # just for while op
                    while_op_X_append = []
2025
                    for name in op.input_arg_names:
2026 2027 2028
                        op_dist_attr = (
                            self.dist_context.get_op_dist_attr_for_program(op)
                        )
2029 2030
                        if name == var_name and op_dist_attr is not None:
                            if op.desc.id() == matched_op.desc.id():
2031 2032 2033 2034
                                if matched_op.type == "while":
                                    old_name = name
                                    new_name = target_tensor.name
                                    assert old_name != new_name
2035 2036 2037 2038 2039
                                    op_input_dist_attr = (
                                        op_dist_attr.get_input_dist_attr(
                                            old_name
                                        )
                                    )
2040
                                    op_dist_attr.set_input_dist_attr(
2041 2042
                                        new_name, op_input_dist_attr
                                    )
2043
                                    op_dist_attr.set_input_dims_mapping(
2044 2045 2046 2047 2048 2049
                                        new_name, dims_mapping
                                    )
                                    if (
                                        old_name
                                        in op_dist_attr._inputs_dist_attrs
                                    ):
2050
                                        op_dist_attr.del_input_dist_attr(
2051 2052
                                            old_name
                                        )
2053 2054 2055 2056
                                    while_op_X_append.append(new_name)
                                    continue
                                else:
                                    op.desc._rename_input(
2057 2058
                                        name, target_tensor.name
                                    )
2059 2060 2061
                                    old_name = name
                                    new_name = target_tensor.name
                                    assert old_name != new_name
2062 2063 2064 2065 2066
                                    op_input_dist_attr = (
                                        op_dist_attr.get_input_dist_attr(
                                            old_name
                                        )
                                    )
2067
                                    op_dist_attr.set_input_dist_attr(
2068 2069
                                        new_name, op_input_dist_attr
                                    )
2070
                                    op_dist_attr.set_input_dims_mapping(
2071 2072
                                        new_name, dims_mapping
                                    )
2073 2074
                                    op_dist_attr.del_input_dist_attr(old_name)
                                    continue
2075 2076

                            op_process_mesh = op_dist_attr.process_mesh
2077 2078 2079
                            op_input_dims_mapping = (
                                op_dist_attr.get_input_dims_mapping(var_name)
                            )
2080
                            # NOTE: For op whose process mesh is a union, its input will not be renamed by other op reshard result now which means that it will have more reshard operation.
2081 2082 2083 2084
                            if (
                                op_process_mesh == process_mesh
                                and op_input_dims_mapping == dims_mapping
                            ):
2085
                                op.desc._rename_input(name, target_tensor.name)
2086 2087 2088
                                old_name = name
                                new_name = target_tensor.name
                                assert old_name != new_name
2089 2090 2091
                                op_input_dist_attr = (
                                    op_dist_attr.get_input_dist_attr(old_name)
                                )
2092
                                op_dist_attr.set_input_dist_attr(
2093 2094
                                    new_name, op_input_dist_attr
                                )
2095
                                op_dist_attr.set_input_dims_mapping(
2096 2097
                                    new_name, dims_mapping
                                )
2098
                                op_dist_attr.del_input_dist_attr(old_name)
2099

2100 2101 2102
                    # for while op, the input X should reset
                    if while_op_X_append:
                        proto = OpProtoHolder.instance().get_op_proto(op.type)
2103 2104 2105 2106
                        op.desc.set_input(
                            proto.inputs[0].name,
                            op.input("X") + while_op_X_append,
                        )
2107

2108
    def _get_subblock_input_attrs(self, op, var_name):
2109
        # NOTE: Multi while loop is not supported
2110
        assert op.type in _g_subblock_ops
2111 2112 2113 2114 2115 2116 2117 2118 2119 2120 2121 2122 2123
        sub_block = self.auto_parallel_main_prog.blocks[op.attr("sub_block").id]
        ops = sub_block.ops
        input_attrs = []

        for op in ops:
            dist_op = self.dist_context.get_dist_op_for_program(op)
            if not dist_op:
                continue
            dist_attr = dist_op.dist_attr
            for name in op.input_arg_names:
                if name == var_name:
                    process_mesh = dist_attr.process_mesh
                    input_dims_mapping = dist_attr.get_input_dims_mapping(
2124 2125
                        var_name
                    )
2126 2127
                    has_exist = False
                    for input_attr in input_attrs:
2128 2129 2130 2131
                        if (
                            process_mesh == input_attr[0]
                            and input_dims_mapping == input_attr[1]
                        ):
2132 2133 2134 2135 2136 2137 2138 2139 2140 2141 2142 2143
                            has_exist = True
                            break
                    if not has_exist:
                        input_attrs.append([process_mesh, input_dims_mapping])
        return input_attrs

    def _get_common_op_input_attrs(self, op, var_name):
        process_meshes = []
        dist_op = self.dist_context.get_dist_op_for_program(op)
        dist_attr = dist_op.dist_attr
        op_process_mesh = dist_attr.process_mesh
        for process_mesh in self.dist_context.process_meshes:
2144 2145 2146
            if set(process_mesh.processes) & (
                set(op_process_mesh.processes)
            ) and len(process_mesh.processes) < len(op_process_mesh.processes):
2147 2148 2149 2150 2151 2152 2153 2154 2155 2156 2157 2158 2159 2160 2161
                process_meshes.append(process_mesh)

        # it means that the process mesh is not a union when process meshes is none
        if not process_meshes:
            process_meshes.append(op_process_mesh)

        input_dims_mapping = dist_attr.get_input_dims_mapping(var_name)
        input_attrs = []
        for process_mesh in process_meshes:
            input_attrs.append([process_mesh, input_dims_mapping])

        return input_attrs

    def get_op_input_attrs(self, op, var_name):
        op_input_attrs = []
2162

2163 2164
        if op.type in _g_subblock_ops:
            op_input_attrs = self._get_subblock_input_attrs(op, var_name)
2165 2166 2167 2168 2169 2170 2171 2172 2173 2174 2175 2176 2177 2178 2179 2180 2181
        else:
            op_input_attrs = self._get_common_op_input_attrs(op, var_name)

        assert op_input_attrs

        return op_input_attrs

    def _remove_global_process_mesh(self):
        """Remove global process mesh from dist_context.process_meshes"""
        processes = set()
        process_mesh_count = len(self.dist_context.process_meshes)
        if process_mesh_count > 1:
            global_process_mesh_idx = None
            for process_mesh in self.dist_context.process_meshes:
                for process in process_mesh.processes:
                    processes.add(process)
            for idx, process_mesh in enumerate(
2182 2183
                self.dist_context.process_meshes
            ):
2184 2185 2186
                if len(set(process_mesh.processes)) == len(processes):
                    global_process_mesh_idx = idx
                    break
2187

2188
            if global_process_mesh_idx is not None:
2189 2190 2191 2192 2193 2194 2195 2196 2197 2198
                is_removed = False
                global_mesh = self.dist_context.process_meshes[idx]
                for i, mesh in enumerate(self.dist_context.process_meshes):
                    if i == idx:
                        continue
                    if set(mesh.processes) < set(global_mesh.processes):
                        is_removed = True

                if is_removed:
                    self.dist_context.process_meshes.pop(idx)
2199 2200 2201 2202

    def _change_subblock_op_input_and_output(self, block_idx, block):
        if "var_reshard_mapping" in Resharder.while_block_info[block_idx]:
            var_reshard_mapping = Resharder.while_block_info[block_idx][
2203 2204
                "var_reshard_mapping"
            ]
2205 2206 2207 2208 2209 2210 2211 2212
            for op in block.ops:
                for var_name in op.input_arg_names:
                    if var_name in var_reshard_mapping:
                        # in while sub block, the union process mesh is not split before reshard sub block
                        dist_op = self.dist_context.get_dist_op_for_program(op)
                        dist_attr = dist_op.dist_attr
                        target_name = None
                        for item in var_reshard_mapping[var_name]:
2213 2214 2215 2216 2217
                            if (
                                dist_attr.process_mesh == item[0][0]
                                and dist_attr.get_input_dims_mapping(var_name)
                                == item[0][1]
                            ):
2218 2219 2220 2221 2222 2223 2224
                                target_name = item[1]
                                break
                        if target_name is None:
                            continue
                        else:
                            op.desc._rename_input(var_name, target_name)
                            dist_op = self.dist_context.get_dist_op_for_program(
2225 2226
                                op
                            )
2227 2228 2229 2230
                            op_dist_attr = dist_op.dist_attr
                            old_name = var_name
                            new_name = target_name
                            assert old_name != new_name
2231 2232 2233
                            op_input_dist_attr = (
                                op_dist_attr.get_input_dist_attr(old_name)
                            )
2234
                            op_dist_attr.set_input_dist_attr(
2235 2236
                                new_name, op_input_dist_attr
                            )
2237 2238 2239 2240 2241 2242 2243
                            op_dist_attr.del_input_dist_attr(old_name)

                # the outputs also need to be renamed when the output name is the same with input name in inplace op
                for var_name in op.output_arg_names:
                    # if the tensor has been resharded multiply, it is not supported now.
                    if var_name in var_reshard_mapping:
                        if len(var_reshard_mapping[var_name]) > 1:
2244
                            raise ValueError(
2245
                                "The scene is not supported that the output is inplaced and the tensor has been resharded multiply when as input."
2246
                            )
2247 2248 2249 2250 2251 2252 2253 2254 2255
                        target_name = var_reshard_mapping[var_name][0][1]

                        op.desc._rename_output(var_name, target_name)
                        dist_op = self.dist_context.get_dist_op_for_program(op)
                        op_dist_attr = dist_op.dist_attr
                        old_name = var_name
                        new_name = target_name
                        assert old_name != new_name
                        op_output_dist_attr = op_dist_attr.get_output_dist_attr(
2256 2257
                            old_name
                        )
2258
                        op_dist_attr.set_output_dist_attr(
2259 2260
                            new_name, op_output_dist_attr
                        )
2261 2262 2263 2264 2265 2266 2267 2268 2269 2270 2271 2272 2273 2274
                        op_dist_attr.del_output_dist_attr(old_name)

    def _reshard_input(self, block):
        idx = 0
        while idx < len(block.ops):
            pre_op_count = len(block.ops)
            op = block.ops[idx]

            if self.is_special_op(op):
                idx += 1
                continue

            dist_op = self.dist_context.get_dist_op_for_program(op)
            if dist_op is not None:
2275 2276 2277
                op_input_dist_attrs = (
                    []
                )  # [(op_process_mesh, op_input_dims_mapping), (op_process_mesh, op_input_dims_mapping)]
2278
                if op.type in _g_subblock_ops:
2279 2280 2281 2282
                    if not self.is_condition_replicative(op):
                        raise ValueError(
                            "Please check the condition due to the dims mapping is not replicative."
                        )
2283 2284 2285 2286
                    if (
                        op.attr("sub_block").id
                        not in Resharder.while_block_info
                    ):
2287
                        Resharder.while_block_info[op.attr("sub_block").id] = {}
2288 2289 2290
                    Resharder.while_block_info[op.attr("sub_block").id][
                        "op_id"
                    ] = op.desc.id()
2291 2292 2293 2294

                if op.type == "while":
                    # condition var process mesh is the same with op and dims_mapping is replicative, so it do not need reshard
                    input_var_names = op.input("X")
2295 2296
                elif op.type == "conditional_block":
                    input_var_names = op.input("Input")
2297
                else:
2298 2299 2300 2301 2302 2303
                    input_var_names = op.input_arg_names
                # to avoid while op X order different
                input_var_names.sort()

                idx_offset = 0
                for var_name in input_var_names:
2304 2305
                    # skip lod_tensor_blocking_queue_? name
                    if "lod_tensor_blocking_queue" in var_name:
2306
                        continue
2307 2308 2309
                    var = get_var_with_recursion(
                        var_name, block, self.auto_parallel_main_prog
                    )
2310
                    dist_tensor = self.dist_context.get_dist_tensor_for_program(
2311 2312
                        var
                    )
2313 2314 2315

                    # judge whether union tensor dims_mapping all -1
                    is_union_process_mesh_tensor = False
2316 2317 2318 2319 2320
                    if (
                        dist_tensor.dist_attr.process_mesh
                        not in self.dist_context.process_meshes
                        and self.dist_context.process_meshes
                    ):
2321 2322
                        is_union_process_mesh_tensor = True
                        assert dist_tensor.dist_attr.dims_mapping.count(
2323 2324
                            -1
                        ) == len(dist_tensor.dist_attr.dims_mapping)
2325 2326 2327 2328 2329 2330 2331 2332 2333

                    op_input_attrs = self.get_op_input_attrs(op, var_name)
                    for input_attr in op_input_attrs:
                        input_process_mesh = None

                        # deal with union tensor
                        if is_union_process_mesh_tensor:
                            # if op process mesh is subset of union tensor process mesh, need no reshard
                            if set(input_attr[0].processes) <= set(
2334
                                dist_tensor.dist_attr.process_mesh.processes
2335 2336
                            ):
                                continue
2337 2338

                        if dist_tensor is not None and self.need_reshard(
2339 2340
                            dist_tensor, input_attr
                        ):
2341
                            reshard_op_desc = self.find_op_desc_seq(
2342 2343 2344 2345 2346
                                dist_tensor, input_attr
                            )
                            self.parse_op_desc(
                                block, reshard_op_desc, var_name, op, input_attr
                            )
2347
                            cur_op_count = len(block.ops)
2348 2349 2350
                            idx_offset = (
                                idx_offset + cur_op_count - pre_op_count
                            )
2351
                            pre_op_count = cur_op_count
2352 2353 2354 2355 2356 2357 2358 2359 2360 2361 2362 2363 2364
                idx = idx + idx_offset + 1
            else:
                idx += 1

    def _hadnle_recv(self, block, idx, var, op, send_rank, recv_rank):
        if self.rank_id == recv_rank:
            # if recv bool data, recv then cast
            if var.dtype == paddle.bool:
                recv_cast_out = block.create_var(
                    name=unique_name.generate(var.name + "@recv"),
                    shape=var.shape,
                    lod_level=var.lod_level,
                    dtype=paddle.int64,
2365 2366 2367 2368 2369 2370 2371 2372 2373 2374
                    type=var.type,
                )
                Inserter.insert_recv_op(
                    block,
                    idx + 1,
                    recv_cast_out,
                    send_rank,
                    recv_rank,
                    op.attr('op_role'),
                )
2375 2376 2377 2378 2379 2380
                reset_lod_out = None
                if var.lod_level != 0:
                    set_lod = False
                    for tmp_block in self.auto_parallel_main_prog.blocks:
                        for tmp_var_name in tmp_block.vars:
                            tmp_var = tmp_block.vars[tmp_var_name]
2381 2382 2383 2384
                            if (
                                tmp_var.is_data
                                and tmp_var.lod_level == var.lod_level
                            ):
2385
                                reset_lod_out = block.create_var(
2386 2387 2388
                                    name=unique_name.generate(
                                        var.name + "@RESETLOD"
                                    ),
2389 2390 2391
                                    shape=recv_cast_out.shape,
                                    type=recv_cast_out.type,
                                    dtype=recv_cast_out.dtype,
2392 2393
                                    lod_level=recv_cast_out.lod_level,
                                )
2394 2395 2396 2397
                                idx += 1
                                block._insert_op(
                                    idx,
                                    type="lod_reset",
2398
                                    inputs={'X': recv_cast_out, 'Y': tmp_var},
2399
                                    outputs={'Out': reset_lod_out},
2400 2401
                                    attrs={'op_role': op.attr("op_role")},
                                )
2402 2403 2404 2405 2406 2407 2408
                                set_lod = True
                                break
                        if set_lod:
                            break
                    assert set_lod is True

                # cast int64 to bool
2409 2410 2411 2412 2413 2414 2415 2416 2417 2418 2419 2420 2421 2422 2423
                block._insert_op(
                    idx + 2,
                    type='cast',
                    inputs={
                        'X': [recv_cast_out]
                        if reset_lod_out is None
                        else [reset_lod_out]
                    },
                    outputs={'Out': [var]},
                    attrs={
                        'in_dtype': recv_cast_out.dtype,
                        'out_dtype': var.dtype,
                        'op_role': op.attr('op_role'),
                    },
                )
2424 2425 2426 2427 2428 2429 2430
            else:
                if var.lod_level != 0:
                    recv_out = block.create_var(
                        name=unique_name.generate(var.name + "@recv"),
                        shape=var.shape,
                        lod_level=var.lod_level,
                        dtype=var.int64,
2431 2432 2433 2434 2435 2436 2437 2438 2439 2440
                        type=var.type,
                    )
                    Inserter.insert_recv_op(
                        block,
                        idx + 1,
                        recv_out,
                        send_rank,
                        recv_rank,
                        op.attr('op_role'),
                    )
2441 2442 2443 2444
                    set_lod = False
                    for tmp_block in self.auto_parallel_main_prog.blocks:
                        for tmp_var_name in tmp_block.vars:
                            tmp_var = tmp_block.vars[tmp_var_name]
2445 2446 2447 2448
                            if (
                                tmp_var.is_data
                                and tmp_var.lod_level == var.lod_level
                            ):
2449 2450 2451 2452
                                idx += 1
                                block._insert_op(
                                    idx,
                                    type="lod_reset",
2453
                                    inputs={'X': recv_out, 'Y': tmp_var},
2454
                                    outputs={'Out': var},
2455 2456
                                    attrs={'op_role': op.attr("op_role")},
                                )
2457 2458 2459 2460 2461
                                set_lod = True
                                break
                        if set_lod:
                            break
                    assert set_lod is True
2462
                else:
2463 2464 2465 2466 2467 2468 2469 2470
                    Inserter.insert_recv_op(
                        block,
                        idx + 1,
                        var,
                        send_rank,
                        recv_rank,
                        op.attr('op_role'),
                    )
2471 2472 2473

    def _handle_send(self, block, idx, var, op, send_rank, recv_rank):
        if var.dtype == paddle.bool:
2474 2475 2476 2477 2478 2479 2480 2481 2482 2483 2484
            cast_out = Inserter.insert_cast_op(
                block, idx + 1, var, op.attr('op_role'), paddle.int64
            )
            Inserter.insert_send_op(
                block,
                idx + 2,
                cast_out,
                send_rank,
                recv_rank,
                op.attr('op_role'),
            )
2485
        else:
2486 2487 2488
            Inserter.insert_send_op(
                block, idx + 1, var, send_rank, recv_rank, op.attr('op_role')
            )
2489 2490 2491 2492 2493 2494

    def _reshard_output(self, block):
        # insert send and recv op if output process mesh is different from tensor process mesh
        idx = 0
        # skip reader and ops whose process mesh is union
        skip_ops = [
2495 2496 2497 2498 2499
            "create_py_reader",
            "create_double_buffer_reader",
            "read",
            "write_to_array",
            "read_from_array",
2500 2501 2502
        ]
        global _g_special_ops
        skip_ops += _g_special_ops
2503
        skip_ops += _g_subblock_ops
2504 2505 2506 2507 2508 2509 2510
        while idx < len(block.ops):
            pre_op_count = len(block.ops)
            op = block.ops[idx]
            dist_op = self.dist_context.get_dist_op_for_program(op)
            if dist_op is not None and op.type not in skip_ops:
                idx_offset = 0
                for var_name in op.output_arg_names:
2511 2512 2513
                    var = get_var_with_recursion(
                        var_name, block, self.auto_parallel_main_prog
                    )
2514
                    dist_tensor = self.dist_context.get_dist_tensor_for_program(
2515 2516
                        var
                    )
2517 2518 2519
                    tensor_process_mesh = dist_tensor.dist_attr.process_mesh
                    output_attr = [
                        dist_op.dist_attr.process_mesh,
2520
                        dist_op.dist_attr.get_output_dims_mapping(var_name),
2521 2522
                    ]
                    if dist_tensor is not None and self.need_reshard(
2523 2524
                        dist_tensor, output_attr, False
                    ):
2525
                        tensor_processes = set(
2526 2527 2528 2529 2530
                            tensor_process_mesh.processes
                        ) - (
                            set(tensor_process_mesh.processes)
                            & set(output_attr[0].processes)
                        )
2531 2532
                        if tensor_processes:
                            if len(tensor_processes) != len(
2533 2534
                                output_attr[0].processes
                            ):
2535
                                if dist_tensor.dist_attr.dims_mapping.count(
2536 2537 2538 2539 2540 2541 2542 2543 2544 2545
                                    -1
                                ) != len(
                                    dist_tensor.dist_attr.dims_mapping
                                ) or output_attr[
                                    1
                                ].count(
                                    -1
                                ) != len(
                                    output_attr[1]
                                ):
2546
                                    raise ValueError(
2547 2548
                                        "The dims_mapping must be -1"
                                    )
2549 2550
                                else:
                                    for index, tensor_process in enumerate(
2551 2552
                                        tensor_processes
                                    ):
2553 2554 2555
                                        recv_rank = tensor_process
                                        actual_index = index
                                        if index >= len(
2556 2557
                                            output_attr[0].processes
                                        ):
2558
                                            actual_index = (
2559 2560
                                                index
                                                - len(output_attr[0].processes)
2561 2562
                                            ) % len(output_attr[0].processes)
                                        item = output_attr[0].processes[
2563 2564
                                            actual_index
                                        ]
2565 2566 2567 2568 2569
                                        if recv_rank == item:
                                            continue
                                        if self.rank_id == item:
                                            # if send bool data, cast then send
                                            self._handle_send(
2570 2571 2572 2573 2574 2575 2576
                                                block,
                                                idx,
                                                var,
                                                op,
                                                item,
                                                recv_rank,
                                            )
2577 2578 2579
                                        if self.rank_id == recv_rank:
                                            # if recv bool data, recv then cast
                                            self._hadnle_recv(
2580 2581 2582 2583 2584 2585 2586
                                                block,
                                                idx,
                                                var,
                                                op,
                                                item,
                                                recv_rank,
                                            )
2587 2588
                            else:
                                for index, tensor_process in enumerate(
2589 2590
                                    tensor_processes
                                ):
2591 2592 2593 2594 2595 2596 2597
                                    recv_rank = tensor_process
                                    item = output_attr[0].processes[index]
                                    if recv_rank == item:
                                        continue
                                    if self.rank_id == item:
                                        # if send bool data, cast then send
                                        self._handle_send(
2598 2599
                                            block, idx, var, op, item, recv_rank
                                        )
2600 2601 2602
                                    if self.rank_id == recv_rank:
                                        # if recv bool data, recv then cast
                                        self._hadnle_recv(
2603 2604
                                            block, idx, var, op, item, recv_rank
                                        )
2605 2606

                            cur_op_count = len(block.ops)
2607 2608 2609
                            idx_offset = (
                                idx_offset + cur_op_count - pre_op_count
                            )
2610 2611 2612 2613 2614 2615 2616 2617 2618 2619 2620 2621 2622 2623 2624 2625 2626 2627 2628
                            pre_op_count = cur_op_count

                idx = idx + idx_offset + 1
            else:
                idx += 1

    def reshard(self):
        self._remove_global_process_mesh()
        for block_idx, block in enumerate(self.auto_parallel_main_prog.blocks):
            # change the var_name before resharding sub block
            if block_idx in Resharder.while_block_info:
                self._change_subblock_op_input_and_output(block_idx, block)

            # reshard input
            self._reshard_input(block)

            # reshard output
            # NOTE: Only support that insert send and recv op if output process mesh is different from tensor process mesh
            self._reshard_output(block)
2629 2630

        # remove no need vars and ops in the main program
2631 2632 2633 2634 2635 2636
        Remover.remove_no_need_in_main(
            self.auto_parallel_main_prog,
            self.dist_context,
            self.rank_id,
            self.dist_params_grads,
        )
2637

2638
        # remove no need vars and ops in the startip program
2639 2640 2641
        Remover.remove_no_need_in_startup(
            self.auto_parallel_main_prog, self.auto_parallel_startup_prog
        )
C
caozhou 已提交
2642

2643 2644
        # reset some variable when remove operation ended
        Resharder.while_block_info = {}
2645 2646 2647 2648 2649 2650 2651 2652 2653 2654 2655 2656 2657 2658

    def get_cost(self, op, tensor, cluster):
        # NOTE: The program should be the serial_program which is not been parted
        global _g_special_ops
        not_supported_op_type = _g_special_ops + ["while"]
        reshard_op_cost = None
        if op.type in not_supported_op_type:
            return reshard_op_cost
        else:
            tensor_name = tensor.name
            if tensor_name == "lod_tensor_blocking_queue_0":
                return reshard_op_cost
            else:
                dist_tensor = self.dist_context.get_dist_tensor_for_program(
2659 2660
                    tensor
                )
2661 2662 2663
                # simplified processing: ignore union process mesh and output reshard
                dist_op = self.dist_context.get_dist_op_for_program(op)
                dims_mapping = dist_op.dist_attr.get_input_dims_mapping(
2664 2665
                    tensor.name
                )
2666 2667 2668
                process_mesh = dist_op.dist_attr.process_mesh
                dist_attr = [process_mesh, dims_mapping]
                if dist_tensor is not None and self.need_reshard(
2669 2670
                    dist_tensor, dist_attr
                ):
2671 2672 2673 2674 2675
                    if tensor_name not in self._has_resharded:
                        self._has_resharded[tensor_name] = [dist_op]
                    else:
                        for item in self._has_resharded[tensor_name]:
                            item_dist_attr = item.dist_attr
2676 2677 2678 2679 2680
                            item_dims_mapping = (
                                item_dist_attr.get_input_dims_mapping(
                                    tensor_name
                                )
                            )
2681
                            item_process_mesh = item_dist_attr.process_mesh
2682 2683 2684 2685
                            if (
                                dims_mapping == item_dims_mapping
                                and item_process_mesh == process_mesh
                            ):
2686 2687 2688
                                return reshard_op_cost
                        self._has_resharded[tensor_name].append(dist_op)

2689 2690 2691
                    reshard_op_desc = self.find_op_desc_seq(
                        dist_tensor, dist_attr, serial=True
                    )
2692 2693
                    dtype = dist_tensor.serial_tensor.dtype
                    reshard_op_cost = self.parse_op_desc_for_cost(
2694 2695
                        reshard_op_desc, dtype, cluster
                    )
2696 2697 2698

        return reshard_op_cost

2699 2700 2701 2702 2703 2704 2705 2706 2707
    def _concat_partitions_for_cost(
        self,
        partition_tensor_list,
        partition_index,
        dtype,
        rank_id,
        local_rank_comp_cost,
        cluster,
    ):
2708 2709 2710 2711 2712 2713
        if not partition_tensor_list:
            partition_tensor_list.append(partition_index)
        else:
            i = 0
            has_concat = False
            while i < len(partition_tensor_list):
2714 2715 2716 2717 2718 2719 2720
                (
                    concat_axis,
                    first_order,
                    new_partition,
                ) = Resharder.compute_concat_info(
                    partition_tensor_list[i], partition_index
                )
2721 2722 2723 2724 2725 2726 2727
                if concat_axis != -1:
                    has_concat = True
                    concat_desc = {}
                    concat_desc["op"] = "concat"
                    concat_desc["attrs"] = {"axis": concat_axis}
                    if first_order == 0:
                        concat_desc["inputs"] = {
2728 2729 2730 2731
                            "X": [
                                (dtype, partition_tensor_list[i]),
                                (dtype, partition_index),
                            ]
2732 2733 2734
                        }
                    else:
                        concat_desc["inputs"] = {
2735 2736 2737 2738
                            "X": [
                                (dtype, partition_index),
                                (dtype, partition_tensor_list[i]),
                            ]
2739 2740 2741 2742 2743
                        }
                    partition_tensor_list.pop(i)
                    if rank_id not in local_rank_comp_cost:
                        local_rank_comp_cost[rank_id] = []
                    local_rank_comp_cost[rank_id].append(
2744 2745 2746 2747 2748 2749 2750 2751 2752 2753
                        ConcatOpCost(op_desc=concat_desc, cluster=cluster)
                    )
                    self._concat_partitions_for_cost(
                        partition_tensor_list,
                        new_partition,
                        dtype,
                        rank_id,
                        local_rank_comp_cost,
                        cluster,
                    )
2754 2755 2756 2757 2758 2759 2760 2761 2762 2763 2764 2765 2766 2767 2768 2769 2770 2771 2772 2773 2774 2775 2776 2777 2778 2779 2780 2781 2782 2783 2784 2785 2786 2787 2788 2789
                    break
                i += 1
            if not has_concat:
                partition_tensor_list.append(partition_index)

    def parse_op_desc_for_cost(self, reshard_op_desc, dtype, cluster):
        def _get_idx(comm_ranks, group_ranks):
            res, is_the_same = None, False
            idx = 0
            while idx < len(comm_ranks):
                if comm_ranks[idx] == set(group_ranks):
                    is_the_same = True

                for rank in group_ranks:
                    if rank in comm_ranks[idx]:
                        res = idx
                        comm_ranks[idx].add(rank)
                if res is None:
                    idx += 1
                else:
                    break
            return res, is_the_same

        comm_context = CommContext(cluster)
        # run communication op before computation op
        # TODO: Communication cost is not calculated when the var has been transfered by the same group in the past
        comm_costs = []
        comm_ranks = []
        local_rank_comp_cost = {}
        for key in reshard_op_desc:
            partition_tensor_list = []
            op_desc_list = reshard_op_desc[key]
            for op_desc in op_desc_list:
                if isinstance(op_desc, SendOpDesc):
                    group_ranks = [key, op_desc.dst]
                    shape = op_desc.shape
2790 2791 2792
                    send_desc = build_comm_desc(
                        "send_v2", group_ranks, dtype, shape
                    )
2793 2794
                    idx, is_the_same = _get_idx(comm_ranks, group_ranks)
                    if idx is None:
2795 2796 2797 2798 2799 2800 2801 2802 2803 2804 2805
                        comm_costs.append(
                            [
                                (
                                    group_ranks,
                                    SendOpCost(
                                        op_desc=send_desc,
                                        comm_context=comm_context,
                                    ),
                                )
                            ]
                        )
2806 2807 2808 2809
                        comm_ranks.append(set(group_ranks))
                    else:
                        if not is_the_same:
                            comm_costs[idx].append(
2810 2811 2812 2813 2814 2815 2816 2817
                                (
                                    group_ranks,
                                    SendOpCost(
                                        op_desc=send_desc,
                                        comm_context=comm_context,
                                    ),
                                )
                            )
2818 2819 2820 2821
                elif isinstance(op_desc, AllGatherOpDesc):
                    # NOTE: fill_const and other unnecessary op is not calculated because those cost is very small
                    group_ranks = op_desc.group
                    shape = op_desc.shape
2822 2823 2824
                    allgather_desc = build_comm_desc(
                        "c_allgather", group_ranks, dtype, shape
                    )
2825 2826 2827 2828 2829 2830 2831 2832
                    split_inputs_shape = []
                    for idx, dim in enumerate(shape):
                        if idx == 0:
                            split_inputs_shape.append(dim * len(group_ranks))
                        else:
                            split_inputs_shape.append(dim)
                    idx, is_the_same = _get_idx(comm_ranks, group_ranks)
                    if idx is None:
2833 2834 2835 2836 2837 2838 2839 2840 2841 2842 2843
                        comm_costs.append(
                            [
                                (
                                    group_ranks,
                                    AllgatherOpCost(
                                        op_desc=allgather_desc,
                                        comm_context=comm_context,
                                    ),
                                )
                            ]
                        )
2844 2845 2846 2847
                        comm_ranks.append(set(group_ranks))
                    else:
                        if not is_the_same:
                            comm_costs[idx].append(
2848 2849 2850 2851 2852 2853 2854 2855
                                (
                                    group_ranks,
                                    AllgatherOpCost(
                                        op_desc=allgather_desc,
                                        comm_context=comm_context,
                                    ),
                                )
                            )
2856 2857 2858 2859 2860 2861 2862 2863 2864 2865
                    # calc the split op cost
                    if key not in local_rank_comp_cost:
                        local_rank_comp_cost[key] = []
                    split_desc = {}
                    split_desc["op"] = "split"
                    split_desc["inputs"] = {
                        "inputs": [(dtype, split_inputs_shape)]
                    }
                    split_desc["attrs"] = {"num": len(group_ranks), "axis": 0}
                    local_rank_comp_cost[key].append(
2866 2867
                        SplitOpCost(op_desc=split_desc, cluster=cluster)
                    )
2868 2869 2870 2871
                elif isinstance(op_desc, ConcatOpDesc):
                    partition_index_list = op_desc._partition_index_list
                    for idx, partion_idex in enumerate(partition_index_list):
                        self._concat_partitions_for_cost(
2872 2873 2874 2875 2876 2877 2878
                            partition_tensor_list,
                            partion_idex,
                            dtype,
                            key,
                            local_rank_comp_cost,
                            cluster,
                        )
2879 2880 2881 2882

                elif isinstance(op_desc, SliceOpDesc):
                    if key not in local_rank_comp_cost:
                        local_rank_comp_cost[key] = []
2883 2884 2885 2886
                    assert (
                        len(partition_tensor_list) == 1
                        or not partition_tensor_list
                    )
2887 2888 2889 2890 2891 2892 2893 2894 2895 2896 2897 2898 2899
                    to_slice_tensor_shape = []
                    if len(partition_tensor_list) == 1:
                        for item in partition_tensor_list[0]:
                            to_slice_tensor_shape.append(item[1] - item[0])
                    else:
                        to_slice_tensor_shape = op_desc.shape
                    slice_desc = {}
                    slice_desc["op"] = "slice"
                    infer_flags = list(1 for i in range(len(op_desc.axes)))
                    slice_desc["attrs"] = {
                        "axes": op_desc.axes,
                        "starts": op_desc.starts,
                        "ends": op_desc.ends,
2900
                        "infer_flags": infer_flags,
2901 2902 2903 2904 2905
                    }
                    slice_desc["inputs"] = {
                        "Input": [(dtype, to_slice_tensor_shape)]
                    }
                    local_rank_comp_cost[key].append(
2906 2907
                        SliceOpCost(op_desc=slice_desc, cluster=cluster)
                    )
2908 2909 2910 2911

        res = (comm_costs, local_rank_comp_cost)

        return res