dist_tensor.py 16.3 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

import copy
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import inspect

import paddle
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from paddle.fluid import core
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from paddle.fluid.framework import Parameter, Block, Variable
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from .dist_attribute import TensorDistributedAttribute
from .dist_attribute import get_tensor_dist_attr_field_keys
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from .utils import _linear_idx2coordinate
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class DistributedTensor:
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    """
    DistributedTensor represents the distribution of tensor on the process group and 
    local tensors can be created by DistributedTensor.
    Only support even sharding now and uneven sharding will be supported in the future.
    Local tensor information can be obtained from the DistributedTensor instance object, 
    or obtained by the static methods provided by DistributedTensor, 
    including shard (i.e. the index in the serial tensor), offsets, and sizes.
    """

    @staticmethod
    def _validate_sizes_and_dist_attr(sizes,
                                      dims_mapping,
                                      topology,
                                      processes,
                                      rank=None,
                                      shard_sizes=None):
        if not (isinstance(sizes, (list, tuple)) and
                all(map(lambda x: isinstance(x, int) and x > 0, sizes))):
            raise ValueError(
                "The sizes must be list or tuple and item in sizes must be non-negative integer, but got {}".
                format(sizes))
        if not (isinstance(dims_mapping, (list, tuple)) and all(
                map(lambda x: isinstance(x, int) and x >= -1, dims_mapping))):
            raise ValueError(
                "The dims_mapping must be list or tuple and item in dims_mapping must >= -1, but got {}".
                format(dims_mapping))
        if not (isinstance(processes, (list, tuple)) and
                all(map(lambda x: isinstance(x, int) and x >= 0, processes))):
            raise ValueError(
                "The processes must be list or tuple and item in processes must be integer, but got {}".
                format(processes))
        if not (isinstance(topology, (list, tuple)) and
                all(map(lambda x: isinstance(x, int) and x > 0, topology))):
            raise ValueError(
                "The topology must be list or tuple and item in topology must be non-negative integer, but got {}".
                format(topology))
        if rank is not None and not (isinstance(rank, int) and rank >= 0):
            raise ValueError("The rank must >= 0, but got {}".format(rank))

        # NOTE: Only support even sharding now
        if shard_sizes is not None:
            raise ValueError("Only support even sharding now.")

    @staticmethod
    def get_local_sizes(global_sizes,
                        dims_mapping,
                        topology,
                        processes,
                        rank=None,
                        shard_sizes=None):
        DistributedTensor._validate_sizes_and_dist_attr(
            global_sizes, dims_mapping, topology, processes, rank, shard_sizes)

        local_sizes = []
        # for even sharding, the local sizes of every rank are equal
        for idx, item in enumerate(global_sizes):
            if dims_mapping[idx] == -1:
                local_sizes.append(item)
            else:
                local_sizes.append(item // topology[dims_mapping[idx]])

        return local_sizes

    @staticmethod
    def get_local_offsets(global_sizes,
                          dims_mapping,
                          topology,
                          processes,
                          rank,
                          shard_sizes=None):
        local_sizes = DistributedTensor.get_local_sizes(
            global_sizes, dims_mapping, topology, processes, rank, shard_sizes)
        local_offsets = []
        rank_relatvie = processes.index(rank)
        coordinate = _linear_idx2coordinate(topology, rank_relatvie)

        for i in range(len(global_sizes)):
            if dims_mapping[i] == -1:
                local_offsets.append(0)
            else:
                local_offsets.append(coordinate[dims_mapping[i]] *
                                     local_sizes[i])
        return local_offsets

    @staticmethod
    def get_global_sizes(local_sizes,
                         dims_mapping,
                         topology,
                         processes,
                         rank=None,
                         shard_sizes=None):
        DistributedTensor._validate_sizes_and_dist_attr(
            local_sizes, dims_mapping, topology, processes, rank, shard_sizes)
        global_sizes = []
        for idx, item in enumerate(local_sizes):
            if dims_mapping[idx] == -1:
                global_sizes.append(item)
            else:
                global_sizes.append(item * topology[dims_mapping[idx]])
        return global_sizes

    @staticmethod
    def get_local_shard(global_sizes,
                        dims_mapping,
                        topology,
                        processes,
                        rank,
                        shard_sizes=None):
        local_offsets = DistributedTensor.get_local_offsets(
            global_sizes, dims_mapping, topology, processes, rank, shard_sizes)
        local_sizes = DistributedTensor.get_local_sizes(
            global_sizes, dims_mapping, topology, processes, rank, shard_sizes)
        assert len(local_sizes) == len(
            local_offsets
        ), "The length of local_sizes must be equal to local_offsets, but got {} and {}.".format(
            len(local_sizes), len(local_offsets))

        local_end_offsets = list(
            map(lambda x: x[0] + x[1], zip(local_offsets, local_sizes)))
        local_shard = list(zip(local_offsets, local_end_offsets))
        return local_shard

    def __init__(self, serial_tensor, dist_attr=None, dist_context=None):
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        self._serial_tensor = serial_tensor
        self._dist_attr = None
        self._batch_dim = 0
        # Reuse the dist_attr setter to initialize _dist_attr
        self.dist_attr = dist_attr
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        self._local_sizes_map = {}
        self._local_offsets_map = {}
        self._local_shard_map = {}
        self._local_tensor_map = {}

        from .dist_context import get_default_distributed_context
        self._dist_context = dist_context if dist_context is not None else get_default_distributed_context(
        )
        # TODO: Add Automatically to dist_context after initialized and it will be adapted in the future.
        # self._dist_context.add_dist_tensor_for_program(self)
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    @property
    def serial_tensor(self):
        return self._serial_tensor

    @property
    def dist_attr(self):
        return self._dist_attr

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    @property
    def dist_context(self):
        return self._dist_context

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    @dist_attr.setter
    def dist_attr(self, dist_attr):
        if self._dist_attr is None:
            self._dist_attr = TensorDistributedAttribute()
        self._dist_attr.init(dist_attr)
        self._init_default_dist_attr()

    def _init_default_dist_attr(self):
        if self._dist_attr.dims_mapping is None:
            if self.serial_tensor.type == core.VarDesc.VarType.READER:
                tensor_shape = []
            else:
                tensor_shape = self._serial_tensor.shape
            tensor_dims_mapping = [-1 for _ in range(len(tensor_shape))]
            self._dist_attr.dims_mapping = tensor_dims_mapping

    def validate_dist_attr(self):
        if self.serial_tensor.type == core.VarDesc.VarType.READER:
            return True
        tensor_shape = self.serial_tensor.shape
        if len(tensor_shape) != len(self.dist_attr.dims_mapping):
            return False
        for i in range(len(self.dist_attr.dims_mapping)):
            if self.dist_attr.dims_mapping[
                    i] < -1 or self.dist_attr.dims_mapping[i] >= len(
                        self.dist_attr.process_mesh.topology):
                return False
        for i in range(len(self.dist_attr.process_mesh.topology)):
            if self.dist_attr.dims_mapping.count(i) > 1:
                return False
        return True

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    def local_sizes(self, rank=None):
        rank = paddle.distributed.get_rank() if rank is None else rank
        local_sizes = None
        if rank in self._local_sizes_map.keys():
            local_sizes = self._local_sizes_map[rank]
        else:
            global_sizes = self.serial_tensor.shape
            dims_mapping = self.dist_attr.dims_mapping
            shard_sizes = self.dist_attr.shard_sizes
            processes = self.dist_attr.process_mesh.processes
            topology = self.dist_attr.process_mesh.topology
            local_sizes = DistributedTensor.get_local_sizes(
                global_sizes, dims_mapping, topology, processes, rank,
                shard_sizes)
            self._local_sizes_map[rank] = local_sizes

        return local_sizes

    def local_offsets(self, rank=None):
        rank = paddle.distributed.get_rank() if rank is None else rank
        local_offsets = None
        if rank in self._local_offsets_map.keys():
            local_offsets = self._local_offsets_map[rank]
        else:
            global_sizes = self.serial_tensor.shape
            dims_mapping = self.dist_attr.dims_mapping
            shard_sizes = self.dist_attr.shard_sizes
            processes = self.dist_attr.process_mesh.processes
            topology = self.dist_attr.process_mesh.topology
            local_offsets = DistributedTensor.get_local_offsets(
                global_sizes, dims_mapping, topology, processes, rank,
                shard_sizes)
            self._local_offsets_map[rank] = local_offsets

        return local_offsets

    def global_sizes(self):
        return self.serial_tensor.shape

    def local_shard(self, rank=None):
        rank = paddle.distributed.get_rank() if rank is None else rank
        local_shard = None
        if rank in self._local_shard_map.keys():
            local_shard = self._local_shard_map[rank]
        else:
            global_sizes = self.serial_tensor.shape
            dims_mapping = self.dist_attr.dims_mapping
            shard_sizes = self.dist_attr.shard_sizes
            processes = self.dist_attr.process_mesh.processes
            topology = self.dist_attr.process_mesh.topology
            local_shard = DistributedTensor.get_local_shard(
                global_sizes, dims_mapping, topology, processes, rank,
                shard_sizes)
            self._local_shard_map[rank] = local_shard

        return local_shard

    def new_local_tensor(self, block=None, rank=None, name=None):
        """
        Create a new local tensor of serial tensor corresponding to rank.

        Args:
            block (Block): The block contains the new tensor. Default value is recommend and it will be created in the block of dist main program corresponding to the serial tensor block id. Default: None.
            rank (int): The rank id. Default value is recommend and it will be the current rank. Default: None.
        """

        def _copy_kwargs(serial_tensor):
            kwargs = {}
            no_need_copy_args = ["self", "block", "shape", "name"]
            arg_spec = inspect.getargspec(Variable.__init__)

            for key in arg_spec.args:
                # TODO: Check the copied attribute from serial tensor whether valid
                if key in no_need_copy_args:
                    continue
                elif key not in kwargs:
                    if key == "type":
                        kwargs[key] = serial_tensor.desc.type()
                    elif key == "dtype":
                        kwargs[key] = serial_tensor.desc.dtype()
                    elif key == "lod_level":
                        kwargs[key] = serial_tensor.desc.lod_level()
                    elif key == "persistable":
                        kwargs[key] = serial_tensor.desc.persistable()
                    elif key == "stop_gradient":
                        kwargs[key] = serial_tensor.desc.stop_gradient()
                    elif key == "need_check_feed":
                        kwargs[key] = serial_tensor.desc.need_check_feed()
                    # TODO: Get capacity by framework
                    elif key == "capacity":
                        continue
                    else:
                        kwargs[key] = self.serial_tensor.__dict__[key]

            if isinstance(serial_tensor, Parameter):
                kwargs["trainable"] = serial_tensor.trainable
                kwargs["optimize_attr"] = serial_tensor.trainable
                kwargs["regularizer"] = serial_tensor.regularizer
                kwargs["do_model_average"] = serial_tensor.do_model_average
                kwargs["need_clip"] = serial_tensor.need_clip
                kwargs["is_distributed"] = serial_tensor.is_distributed
                kwargs["is_parameter"] = serial_tensor.is_parameter

            return kwargs

        if rank is not None and not (isinstance(rank, int) and rank >= 0):
            raise ValueError("The rank must >= 0, but got {}".format(rank))
        if block is not None and not isinstance(block, Block):
            raise TypeError("The block must be Block, but got {}.".format(
                type(block)))
        rank = paddle.distributed.get_rank() if rank is None else rank

        if block is None:
            block_id = self.serial_tensor.block.idx
            block = self.dist_context.dist_main_programs[rank].block(block_id)

        # copy serial tensor attribute
        kwargs = _copy_kwargs(self.serial_tensor)
        kwargs["name"] = name
        kwargs["shape"] = self.local_sizes(rank)

        if isinstance(self.serial_tensor, Parameter):
            kwargs.pop("persistable")
            local_tensor = Parameter(block=block, **kwargs)
        else:
            local_tensor = block.create_var(**kwargs)

        # TODO: Set original id when set original_id is approved
        local_tensor.desc.set_original_id(self.serial_tensor.desc.id())
        self._local_tensor_map[rank] = local_tensor
        return local_tensor

    def local_tensor(self, rank=None):
        rank = paddle.distributed.get_rank() if rank is None else rank
        assert rank in self._local_tensor_map, "The rank {} local tensor has not been created.".format(
            rank)
        return self._local_tensor_map[rank]

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    def __deepcopy__(self, memo):
        cls = self.__class__
        result = cls.__new__(cls)
        memo[id(self)] = result
        for k, v in self.__dict__.items():
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            if k == "_serial_tensor" or k == "_local_tensor_map":
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                setattr(result, k, v)
            else:
                setattr(result, k, copy.deepcopy(v, memo))
        return result

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    def __str__(self):
        str = "{{tensor name: {}, tensor id: {}".format(
            self.serial_tensor.desc.name(), self.serial_tensor.desc.id())

        # str += ", {}".format(self.dist_attr)
        # return str

        if self.dist_attr.is_annotated("process_mesh"):
            annotated_str = "annotated"
        else:
            annotated_str = "non-annotated"
        str += ", process_mesh ({}): {}".format(annotated_str,
                                                self.dist_attr.process_mesh)

        str += ", is_parameter: {}".format(self.serial_tensor.is_parameter)

        if self.dist_attr.is_annotated("dims_mapping"):
            annotated_str = "annotated"
        else:
            annotated_str = "non-annotated"
        str += ", dims_mapping ({}): {}".format(annotated_str,
                                                self.dist_attr.dims_mapping)

        if self.dist_attr.is_annotated("shard_mask"):
            annotated_str = "annotated"
        else:
            annotated_str = "non-annotated"
        str += ", shard_mask ({}): {}".format(annotated_str, None)

        if self.dist_attr.is_annotated("offload_device"):
            annotated_str = "annotated"
        else:
            annotated_str = "non-annotated"
        str += ", offload_device ({}): {} }}".format(annotated_str, None)
        return str