mirror of https://github.com/hpcaitech/ColossalAI
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260 lines
11 KiB
260 lines
11 KiB
import gc |
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import itertools |
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from functools import reduce |
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from operator import mul |
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from typing import Dict, List, Optional, Tuple, Union |
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import numpy as np |
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import torch.distributed as dist |
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from torch.distributed import ProcessGroup |
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def prod(nums: List[int]) -> int: |
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"""Product of a list of numbers. |
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Args: |
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nums (List[int]): A list of numbers. |
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Returns: |
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int: The product of the numbers. |
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""" |
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return reduce(mul, nums) |
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class ProcessGroupMesh: |
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"""A helper class to manage the process group mesh. It only describes how to organize process groups, and it's decoupled with parallel method. |
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It just initialize process groups and cache them. The parallel method should manage them and use them to do the parallel computation. |
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We use a ND-tuple to represent the process group mesh. And a ND-coordinate is to represent each process. |
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For example, ``(0, 1, 0)`` represents the process whose rank is 2 in a 3D process group mesh with size ``(2, 2, 2)``. |
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Args: |
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*size (int): The size of each dimension of the process group mesh. The product of the size must be equal to the world size. |
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Attributes: |
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shape (Tuple[int, ...]): The shape of the process group mesh. |
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rank (int): The rank of the current process. |
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""" |
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def __init__(self, *size: int) -> None: |
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assert dist.is_initialized(), "Please initialize torch.distributed first." |
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assert prod(size) == dist.get_world_size(), "The product of the size must be equal to the world size." |
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self._shape = size |
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self._rank = dist.get_rank() |
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self._coord = ProcessGroupMesh.unravel(self._rank, self._shape) |
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self._ranks_to_group: Dict[Tuple[int, ...], ProcessGroup] = {} |
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self._group_to_ranks: Dict[ProcessGroup, Tuple[int, ...]] = {} |
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def destroy_mesh_process_groups(self): |
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r""" |
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Destructor method for the ProcessGroupMesh class. |
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When the ProcessGroupMesh object is deleted or goes out of scope, this method is called. It is responsible for |
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cleaning up any process groups that were created during the lifetime of the object. |
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Note: |
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All process groups in PyTorch are represented as global variables, and they may not be automatically destroyed |
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when the ProcessGroupMesh's lifetime ends. This method manually destroys the process groups to release |
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system resources. |
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""" |
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for group in self._ranks_to_group.values(): |
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dist.destroy_process_group(group) |
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# Manually clear all process groups to save memory |
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gc.collect() |
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@property |
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def shape(self) -> Tuple[int, ...]: |
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return self._shape |
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@property |
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def rank(self) -> int: |
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return self._rank |
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def size(self, dim: Optional[int] = None) -> Union[int, Tuple[int, ...]]: |
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"""Get the size of the process group mesh. |
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Args: |
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dim (Optional[int], optional): Dimension of the process group mesh. `None` means all dimensions. Defaults to None. |
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Returns: |
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Union[int, Tuple[int, ...]]: Size of the target dimension or the whole process group mesh. |
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""" |
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if dim is None: |
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return self._shape |
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else: |
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return self._shape[dim] |
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def coordinate(self, dim: Optional[int] = None) -> Union[int, Tuple[int, ...]]: |
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"""Get the coordinate of the process group mesh. |
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Args: |
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dim (Optional[int], optional): Dimension of the process group mesh. `None` means all dimensions. Defaults to None. |
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Returns: |
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Union[int, Tuple[int, ...]]: Coordinate of the target dimension or the whole process group mesh. |
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""" |
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if dim is None: |
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return self._coord |
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else: |
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return self._coord[dim] |
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@staticmethod |
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def unravel(rank: int, shape: Tuple[int, ...]) -> Tuple[int, ...]: |
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"""Convert a rank to a coordinate. |
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Args: |
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rank (int): Rank to be converted. |
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shape (Tuple[int, ...]): Shape of the process group mesh. |
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Returns: |
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Tuple[int, ...]: Coordinate of the rank. |
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""" |
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return np.unravel_index(rank, shape) |
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@staticmethod |
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def ravel(coord: Tuple[int, ...], shape: Tuple[int, ...], mode: str = "raise") -> int: |
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"""Convert a coordinate to a rank. |
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mode: ['raise', 'wrap', 'clip'], see https://numpy.org/doc/stable/reference/generated/numpy.ravel_multi_index.html. |
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with wrap, index out of range would be wrapped around. |
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For instance, ravel((0, i, 0), (1, 2, 1), 'wrap') returns (i % 2) |
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Args: |
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coords (Tuple[int, ...]): Coordinate to be converted. |
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shape (Tuple[int, ...]): Shape of the process group mesh. |
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mode (Optional[str]): The mode for numpy.ravel_multi_index. |
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Returns: |
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int: Rank of the coordinate. |
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""" |
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assert mode in ["raise", "wrap", "clip"] |
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return np.ravel_multi_index(coord, shape, mode) |
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def get_group(self, ranks_in_group: List[int], backend: Optional[str] = None) -> ProcessGroup: |
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"""Get the process group with the given ranks. It the process group doesn't exist, it will be created. |
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Args: |
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ranks_in_group (List[int]): Ranks in the process group. |
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backend (Optional[str], optional): Backend of the process group. Defaults to None. |
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Returns: |
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ProcessGroup: The process group with the given ranks. |
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""" |
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ranks_in_group = sorted(ranks_in_group) |
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if tuple(ranks_in_group) not in self._group_to_ranks: |
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group = dist.new_group(ranks_in_group, backend=backend) |
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self._ranks_to_group[tuple(ranks_in_group)] = group |
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self._group_to_ranks[group] = tuple(ranks_in_group) |
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return self._ranks_to_group[tuple(ranks_in_group)] |
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def get_ranks_in_group(self, group: ProcessGroup) -> List[int]: |
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"""Get the ranks in the given process group. The process group must be created by this class. |
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Args: |
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group (ProcessGroup): The process group. |
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Returns: |
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List[int]: Ranks in the process group. |
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""" |
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return list(self._group_to_ranks[group]) |
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@staticmethod |
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def get_coords_along_axis( |
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base_coord: Tuple[int, ...], axis: Union[int, List[int]], indices_at_axis: Union[List[int], List[List[int]]] |
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) -> List[Tuple[int, ...]]: |
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"""Get coordinates along the given axis. |
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Args: |
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base_coord (Tuple[int, ...]): Base coordinate which the coordinates along the axis are based on. |
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axis (int): Axis along which the coordinates are generated. |
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indices_at_axis (List[int]): Indices at the axis. |
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Returns: |
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List[Tuple[int, ...]]: Coordinates along the axis. |
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""" |
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if isinstance(axis, int): |
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axis = [ |
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axis, |
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] |
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assert isinstance(indices_at_axis[0], int) |
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indices_at_axis = [ |
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indices_at_axis, |
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] |
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def add_index(base_coord, axis, indices_at_axis): |
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coords_in_group = [] |
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for idx in indices_at_axis: |
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coords_in_group.append(base_coord[:axis] + (idx,) + base_coord[axis + 1 :]) |
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return coords_in_group |
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coords_in_group = [base_coord] |
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for ax, indices_at_ax in zip(axis, indices_at_axis): |
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new_coords_in_group = [] |
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for coords in coords_in_group: |
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new_coords_in_group += add_index(coords, ax, indices_at_ax) |
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coords_in_group = new_coords_in_group |
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return coords_in_group |
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def create_group_along_axis( |
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self, |
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axis: Union[int, List[int]], |
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indices_at_axis: Optional[Union[List[int], List[List[int]]]] = None, |
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backend: Optional[str] = None, |
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) -> ProcessGroup: |
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"""Create all process groups along the given axis, and return the one which the current process belongs to. |
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Args: |
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axis (int): Axis along which the process groups are created. |
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indices_at_axis (Optional[List[int]], optional): Indices at the axis. Defaults to None. |
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backend (Optional[str], optional): Backend of the process group. Defaults to None. |
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Returns: |
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ProcessGroup: The process group along the given axis which the current process belongs to. |
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""" |
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if isinstance(axis, int): |
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axis = [ |
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axis, |
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] |
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if indices_at_axis is not None: |
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assert isinstance(indices_at_axis[0], int) |
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indices_at_axis = [ |
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indices_at_axis, |
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] |
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indices_at_axis = indices_at_axis or [list(range(self._shape[ax])) for ax in axis] |
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reduced_shape = list(self._shape) |
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# the choices on the axis are reduced to 1, since it's determined by `indices_at_axis` |
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for ax in axis: |
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reduced_shape[ax] = 1 |
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target_group = None |
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# use Cartesian product to generate all combinations of coordinates |
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for base_coord in itertools.product(*[range(s) for s in reduced_shape]): |
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coords_in_group = ProcessGroupMesh.get_coords_along_axis(base_coord, axis, indices_at_axis) |
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ranks_in_group = tuple([ProcessGroupMesh.ravel(coord, self._shape) for coord in coords_in_group]) |
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group = self.get_group(ranks_in_group, backend=backend) |
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if self._rank in ranks_in_group: |
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target_group = group |
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return target_group |
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def get_group_along_axis( |
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self, axis: int, indices_at_axis: Optional[List[int]] = None, backend: Optional[str] = None |
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) -> ProcessGroup: |
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"""Get the process group along the given axis which the current process belongs to. If the process group doesn't exist, it will be created. |
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Args: |
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axis (int): Axis along which the process groups are created. |
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indices_at_axis (Optional[List[int]], optional): Indices at the axis. Defaults to None. |
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backend (Optional[str], optional): Backend of the process group. Defaults to None. |
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Returns: |
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ProcessGroup: The process group along the given axis which the current process belongs to. |
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""" |
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indices_at_axis = indices_at_axis or list(range(self._shape[axis])) |
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coords_in_group = ProcessGroupMesh.get_coords_along_axis(self._coord, axis, indices_at_axis) |
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ranks_in_group = tuple([ProcessGroupMesh.ravel(coord, self._shape) for coord in coords_in_group]) |
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if ranks_in_group not in self._ranks_to_group: |
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# no need to cache it explicitly, since it will be cached in `create_group_along_axis` |
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return self.create_group_along_axis(axis, indices_at_axis, backend=backend) |
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return self._ranks_to_group[ranks_in_group]
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