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526 lines
23 KiB
526 lines
23 KiB
"""This code is adapted from Alpa
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https://github.com/alpa-projects/alpa/
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with some changes. """
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import operator
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from dataclasses import dataclass
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from functools import reduce
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from typing import Dict, List, Union
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import torch
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import torch.distributed as dist
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from torch.distributed import ProcessGroup
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@dataclass
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class ProcessGroupContainer:
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process_group: ProcessGroup
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ranks: List[int]
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# modified from alpa LogicalDeviceMesh(https://github.com/alpa-projects/alpa/blob/main/alpa/shard_parallel/auto_sharding.py)
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class DeviceMesh:
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"""A logical view of a physical cluster. For example, we could view a physical cluster
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with 16 devices as a device mesh with shape (2, 2, 4) or (4, 4).
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Arguments:
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physical_mesh_id (torch.Tensor): physical view of the devices in global rank.
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logical_mesh_id (torch.Tensor): logical view of the devices in global rank.
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mesh_shape (torch.Size, optional): shape of logical view.
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mesh_alpha (List[float], optional): coefficients used for computing
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communication cost (default: None)
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mesh_beta (List[float], optional): coefficients used for computing
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communication cost (default: None)
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init_process_group (bool, optional): initialize logical process group
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during initializing the DeviceMesh instance if the init_process_group set to True.
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Otherwise, users need to call create_process_groups_for_logical_mesh manually to init logical process group.
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(default: False)
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device (str): the device for the process groups used by the DeviceMesh instance. (default: 'cuda')
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"""
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_DIST_BACKEND = {"cuda": "nccl", "cpu": "gloo", "npu": "hccl"}
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def __init__(
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self,
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physical_mesh_id: torch.Tensor,
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mesh_shape: torch.Size = None,
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logical_mesh_id: torch.Tensor = None,
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mesh_alpha: List[float] = None,
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mesh_beta: List[float] = None,
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init_process_group: bool = False,
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device: str = "cuda",
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):
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# ============================
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# Physical & Logical Mesh IDs
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# ============================
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self._physical_mesh_id = physical_mesh_id
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assert physical_mesh_id.dim() == 1, "physical_mesh_id should be a 1D tensor."
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# logical mesh ids can be obtained via two ways
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# 1. provide physical mesh id and provide mesh shape
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# 2. directly supply the logical mesh id
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assert mesh_shape is None or logical_mesh_id is None, (
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"Only one of mesh_shape and logical_mesh_id can be specified."
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"Logical mesh IDs are obtained from either mesh_shape + physical_mesh_id or directly from the user-supplied logical_mesh_id"
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)
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if logical_mesh_id is None:
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self._mesh_shape = mesh_shape
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self._logical_mesh_id = self._physical_mesh_id.reshape(self._mesh_shape)
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else:
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self._logical_mesh_id = logical_mesh_id
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self._mesh_shape = self._logical_mesh_id.shape
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# ensure two things:
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# 1. logical and physical mesh IDs should contain the same elements
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# 2. there is no duplicate IDs in each mesh, e.g. [2, 2] is not allowed
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assert torch.equal(
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torch.unique(self._physical_mesh_id), torch.unique(self.logical_mesh_id)
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), "physical and logical mesh IDs should contain the same elements, please check if you have consistent physical_mesh_id and logical_mesh_id."
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assert (
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torch.unique(self._physical_mesh_id).numel() == self._physical_mesh_id.numel()
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), "Found duplicate IDs in the physical_mesh_id and this is not allowed, please check your physical_mesh_id again."
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assert (
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torch.unique(self.logical_mesh_id).numel() == self.logical_mesh_id.numel()
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), "Found duplicate IDs in the logical_mesh_id and this is not allowed, please check your logical_mesh_id again."
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# ===============================================
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# coefficient for alpha-beta communication model
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# alpha is latency and beta is bandwidth
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# ===============================================
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# if the values are not provided, we assume they are 1 for simplicity
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if mesh_alpha is None:
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mesh_alpha = [1] * len(self._mesh_shape)
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if mesh_beta is None:
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mesh_beta = [1] * len(self._mesh_shape)
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self.mesh_alpha = tuple(mesh_alpha)
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self.mesh_beta = tuple(mesh_beta)
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# ensure the alpha and beta have the same shape
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assert len(self.mesh_alpha) == len(
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self.mesh_beta
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), "mesh_alpha and mesh_beta should have the same length, please check your mesh_alpha and mesh_beta again."
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# =========================
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# Device for Process Group
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# =========================
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self._device = device
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self._dist_backend = self._DIST_BACKEND[device]
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# =========================
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# Process Group Management
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# =========================
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# the _global_to_local_rank_mapping is structured as follows
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# {
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# <global-rank>: [ <local-rank-on-axis-0>, <local-rank-on-axis-1>, <local-rank-on-axis-2>, ...]
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# }
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self._global_to_local_rank_mapping = dict()
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self._init_global_to_logical_rank_mapping(
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mapping=self._global_to_local_rank_mapping, tensor=self.logical_mesh_id
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)
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# create process group
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self._process_group_dict = {}
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self._ranks_in_the_process_group = {}
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self._global_rank_of_current_process = None
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self._is_initialized = False
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# attribute used to indicate whether this object
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# is created using DeviceMesh.from_process_group
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# this attribute can be used to do some check in methods
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# such get_process_group as no global rank information
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# is known if created with from_process_group
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self._is_init_from_process_group = False
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# initialize process group if specified
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self._init_ranks_in_the_same_group()
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self._init_process_group = init_process_group
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if init_process_group:
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self.init_logical_process_group()
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@property
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def shape(self) -> torch.Size:
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"""
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Return the shape of the logical mesh.
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"""
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return self._mesh_shape
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@property
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def num_devices(self) -> int:
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"""
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Return the number of devices contained in the device mesh.
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"""
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return reduce(operator.mul, self._physical_mesh_id.shape, 1)
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@property
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def logical_mesh_id(self) -> torch.Tensor:
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"""
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Return the logical mesh id.
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"""
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return self._logical_mesh_id
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@property
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def is_initialized(self) -> bool:
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"""
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Return whether the process group is initialized.
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"""
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return self._is_initialized
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@staticmethod
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def from_process_group(process_group: Union[ProcessGroup, List[ProcessGroup]]) -> "DeviceMesh":
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"""
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Create a DeviceMesh instance from the current process group. Please note that the DeviceMesh object created with this method
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will not have information about the physical mesh id, and thus will not be able to query for other ranks and perform alpha-beta communication.
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Args:
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process_group (Union[ProcessGroup, List[ProcessGroup]]): the process group or a list of process groups for the device mesh.
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If the input is a ProcessGroup object, a 1D DeviceMesh object will be created. If the input is a list of ProcessGroup objects,
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the ProcessGroup at the ith index will correspond to the process group in the ith axis of the device mesh.
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Returns:
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DeviceMesh: the device mesh instance.
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"""
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def _get_device_by_backend(process_group):
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"""
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Get the device type given a process group's backend.
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"""
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backend = dist.get_backend(process_group)
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for _device, _backend in DeviceMesh._DIST_BACKEND.items():
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if _backend == backend:
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return _device
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return None
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if isinstance(process_group, ProcessGroup):
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process_group = [process_group]
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# get mesh shape
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mesh_shape = [dist.get_world_size(pg) for pg in process_group]
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# get device
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device_list = [_get_device_by_backend(pg) for pg in process_group]
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# make sure all devices are the same
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assert all(
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[device == device_list[0] for device in device_list]
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), "All devices should be the same, please check your input process groups are created with the same distributed backend."
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# create a fake physical mesh id
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# as we only get the process group associated with the current process,
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# we cannot get the global ranks for all processes in the mesh
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# therefore, we only use this fake physical mesh id to create the device mesh
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# and will remove this fake physical mesh id later
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fake_physical_mesh_id = torch.arange(reduce(operator.mul, mesh_shape, 1))
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# create the device mesh
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device_mesh = DeviceMesh(physical_mesh_id=fake_physical_mesh_id, mesh_shape=mesh_shape, device=device_list[0])
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# hack the device attribute
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device_mesh._physical_mesh_id = None
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device_mesh._logical_mesh_id = None
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device_mesh._global_rank_of_current_process = dist.get_rank()
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device_mesh._is_initialized = False
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device_mesh._process_group_dict = {
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device_mesh._global_rank_of_current_process: {axis: pg for axis, pg in enumerate(process_group)}
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}
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return device_mesh
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def get_process_group(self, axis: int, global_rank: int = None) -> ProcessGroup:
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"""
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Return the process group on the specified axis.
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Args:
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axis (int): the axis of the process group.
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global_rank (int, optional): the global rank of the process group. If not specified, the current process is used. (default: None)
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"""
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if global_rank is None:
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global_rank = self._global_rank_of_current_process
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elif self._is_init_from_process_group:
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raise RuntimeError(
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"The logical device mesh is create with DeviceMesh.from_process_group, this method is not supported for this creation method as no global rank information is known."
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)
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return self._process_group_dict[global_rank][axis]
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def get_process_group_for_all_axes(self, global_rank: int = None) -> Dict[int, ProcessGroup]:
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"""
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Return the process groups for all axes.
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Args:
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global_rank (int, optional): the global rank of the process
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"""
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if global_rank is None:
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global_rank = self._global_rank_of_current_process
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elif self._is_init_from_process_group:
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raise RuntimeError(
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"The logical device mesh is create with DeviceMesh.from_process_group, this method is not supported for this creation method as no global rank information is known."
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)
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return self._process_group_dict[global_rank]
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def get_ranks_in_process_group(self, axis: int, global_rank: int = None) -> List[int]:
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"""
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Return the ranks in the process group on the specified axis.
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Args:
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axis (int): the axis of the process group.
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global_rank (int, optional): the global rank of the process
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"""
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if global_rank is None:
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global_rank = self._global_rank_of_current_process
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elif self._is_init_from_process_group:
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raise RuntimeError(
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"The logical device mesh is create with DeviceMesh.from_process_group, this method is not supported for this creation method as no global rank information is known."
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)
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return self._ranks_in_the_process_group[global_rank][axis]
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def __deepcopy__(self, memo) -> "DeviceMesh":
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cls = self.__class__
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result = cls.__new__(cls)
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memo[id(self)] = result
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for k, v in self.__dict__.items():
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if k != "_process_group_dict":
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setattr(result, k, __import__("copy").deepcopy(v, memo))
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else:
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# process group cannot be copied
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# thus, we share them directly
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setattr(result, k, v)
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return result
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def _init_global_to_logical_rank_mapping(
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self, mapping: Dict, tensor: torch.Tensor, index_list: List[int] = []
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) -> Dict[int, List[int]]:
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"""
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Build a global rank to local rank mapping for each process group in different axis in the logical device mesh.
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Args:
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mapping (Dict): a dictionary that maps the global rank to the local rank in the logical device mesh.
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tensor (torch.Tensor): the tensor that contains the logical mesh ids.
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index_list (List[int])
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Returns:
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mapping (Dict): a dictionary that maps the global rank to the local rank in the logical device mesh.
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The value is a list of integers and each integer represents the local rank in the indexed axis.
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"""
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for index, inner_tensor in enumerate(tensor):
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# index means the local rank in the current axis
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# inner_tensor refers to the processes with the same local rank
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if inner_tensor.dim() == 0:
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# if the inner_tensor already reaches the last axis,
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# we append its local_rank in the last axis to the index_list
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# and assign to the mapping
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# the value of the mapping is the the local rank at the indexed axis of the device mesh
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mapping[int(inner_tensor)] = index_list + [index]
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else:
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# we recursively go into the function until we reach the last axis
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# meanwhile, we should add the local rank in the current axis in the index_list
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self._init_global_to_logical_rank_mapping(mapping, inner_tensor, index_list + [index])
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def init_logical_process_group(self):
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"""
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This method is used to initialize the logical process groups which will be used in communications
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among logical device mesh.
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Note: if init_process_group set to False, you have to call this method manually. Otherwise,
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the communication related function, such as ShapeConsistencyManager.apply will raise errors.
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"""
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# sanity check
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assert (
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dist.is_initialized
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), "The torch.distributed should be initialized before calling init_logical_process_group"
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assert (
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not self._is_initialized
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), "The logical process group has been initialized, do not call init_logical_process_group twice"
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# update the global rank of the current process
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self._global_rank_of_current_process = dist.get_rank()
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duplicate_check_list = []
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# flatten the global ranks to 1D list
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global_rank_flatten_list = self._physical_mesh_id.view(-1).tolist()
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for global_rank in global_rank_flatten_list:
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# find the other ranks which are in the same process group as global_rank
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ranks_in_same_group_by_axis = self._collate_global_ranks_in_same_process_group(global_rank)
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for axis, ranks_in_same_group in ranks_in_same_group_by_axis.items():
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# skip duplicated process group creation
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if ranks_in_same_group in duplicate_check_list:
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continue
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# create the process group
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pg_handler = dist.new_group(ranks=ranks_in_same_group, backend=self._dist_backend)
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# keep this process group in the process_groups_dict
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for rank in ranks_in_same_group:
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if rank not in self._process_group_dict:
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self._process_group_dict[rank] = dict()
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self._process_group_dict[rank][axis] = pg_handler
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# update the init flag
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# we only allow init for once
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self._is_initialized = True
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def _init_ranks_in_the_same_group(self):
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"""
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This method is used to initialize the ranks_in_the_same_group dictionary.
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"""
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# flatten the global ranks to 1D list
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global_rank_flatten_list = self._physical_mesh_id.view(-1).tolist()
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for global_rank in global_rank_flatten_list:
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# find the other ranks which are in the same process group as global_rank
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ranks_in_same_group_by_axis = self._collate_global_ranks_in_same_process_group(global_rank)
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for axis, ranks_in_same_group in ranks_in_same_group_by_axis.items():
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# create dict for each rank
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if global_rank not in self._process_group_dict:
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self._ranks_in_the_process_group[global_rank] = dict()
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# keep this process group in the process_groups_dict
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self._ranks_in_the_process_group[global_rank][axis] = ranks_in_same_group
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def global_rank_to_local_rank(self, rank: int, axis: int = None) -> Union[List[int], int]:
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"""
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Return the local rank of the given global rank in the logical device mesh.
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Args:
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rank (int): the global rank in the logical device mesh.
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axis (int): the axis of the logical device mesh.
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"""
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if self._is_init_from_process_group:
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raise RuntimeError(
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"The logical device mesh is create with DeviceMesh.from_process_group, this method is not supported for this creation method as no global rank information is known."
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)
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local_ranks = self._global_to_local_rank_mapping[rank]
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if axis:
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return local_ranks[axis]
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else:
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return local_ranks
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def _collate_global_ranks_in_same_process_group(self, global_rank):
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"""
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Give a global rank and return all global ranks involved in its associated process group in each axis.
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Example:
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```python
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physical_mesh_id = torch.arange(0, 16)
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mesh_shape = (4, 4)
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# logical mesh will look like
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# [[0, 1, 2, 3],
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# [4, 5, 6, 7],
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# [8, 9, 10,11],
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# [12,13,14,15]]
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device_mesh = DeviceMesh(physical_mesh_id, mesh_shape)
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print(device_mesh.collate_global_ranks_in_same_process_group(0))
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# key is axis name
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# value is a list of global ranks in same axis with rank 0
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# output will look like
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# {
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0: [0, 4, 8, 12],
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1: [0, 1, 2, 3]
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# }
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"""
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# We have init the global rank to local rank by calling _init_global_to_logical_rank_mapping
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# for self._global_to_local_rank_mapping
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# the key is the global rank
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# the value is the list of local ranks corresponding to the global rank with respect of different axes
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# we can see the list of local ranks as the process coordinates for simplicity
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# the key and value are all unique, therefore,
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# we can also to use the coordinates to find the global rank
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# =========================================================================
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# Step 1
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# find all the process_coordinates for processes in the same process group
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# as the given global rank
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# =========================================================================
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# each
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processes_in_the_same_process_group = {}
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for dim in range(self.logical_mesh_id.dim()):
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# iterate over the dimension size so that we can include all processes
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# in the same process group in the given axis
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# the _local_rank refers to the local rank of the current process
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for _local_rank in range(self.logical_mesh_id.shape[dim]):
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# if this dimension is not initialized yet,
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# initialize it with an empty array
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if dim not in processes_in_the_same_process_group:
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processes_in_the_same_process_group[dim] = []
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# get the local rank corresponding to the global rank
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process_coordinates = self._global_to_local_rank_mapping[global_rank].copy()
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# replace the local rank in the given dimension with the
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# local rank of the current process iterated
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process_coordinates[dim] = _local_rank
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processes_in_the_same_process_group[dim].append(process_coordinates)
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# =================================================================
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# Step 2
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# Use local rank combination to find its corresponding global rank
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# =================================================================
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# the key of the dict is the axis
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# the value is the list of global ranks which are in the same process group as the given global rank
|
|
global_pg_ranks = {}
|
|
for dim, coordinates_of_all_processes in processes_in_the_same_process_group.items():
|
|
global_pg_ranks[dim] = []
|
|
for process_coordinates in coordinates_of_all_processes:
|
|
# find the global rank by local rank combination
|
|
for _global_rank, _process_coordinates in self._global_to_local_rank_mapping.items():
|
|
if process_coordinates == _process_coordinates:
|
|
global_pg_ranks[dim].append(_global_rank)
|
|
return global_pg_ranks
|
|
|
|
def flatten(self):
|
|
"""
|
|
Flatten the logical mesh into an effective 1d logical mesh,
|
|
"""
|
|
if self._is_init_from_process_group:
|
|
raise RuntimeError(
|
|
"The logical device mesh is create with DeviceMesh.from_process_group, this method is not supported for this creation method as no global rank information is known."
|
|
)
|
|
|
|
flatten_mesh_shape_size = len(self._mesh_shape)
|
|
flatten_mesh_shape = [self.num_devices]
|
|
return DeviceMesh(
|
|
self._physical_mesh_id,
|
|
tuple(flatten_mesh_shape),
|
|
mesh_alpha=[max(self.mesh_alpha)] * (flatten_mesh_shape_size - 1),
|
|
mesh_beta=[max(self.mesh_beta)] * (flatten_mesh_shape_size - 1),
|
|
init_process_group=self._init_process_group,
|
|
)
|
|
|
|
def all_gather_cost(self, num_bytes, mesh_dim):
|
|
num_devices = self.logical_mesh_id.shape[mesh_dim]
|
|
return self.mesh_alpha[mesh_dim] + self.mesh_beta[mesh_dim] * (num_devices - 1) / num_devices * num_bytes + 0.1
|
|
|
|
def all_reduce_cost(self, num_bytes, mesh_dim):
|
|
num_devices = self.logical_mesh_id.shape[mesh_dim]
|
|
return (
|
|
self.mesh_alpha[mesh_dim]
|
|
+ self.mesh_beta[mesh_dim] * 2 * (num_devices - 1) / num_devices * num_bytes
|
|
+ 0.01
|
|
)
|
|
|
|
def reduce_scatter_cost(self, num_bytes, mesh_dim):
|
|
num_devices = self.logical_mesh_id.shape[mesh_dim]
|
|
return (
|
|
self.mesh_alpha[mesh_dim] + self.mesh_beta[mesh_dim] * (num_devices - 1) / num_devices * num_bytes + 0.001
|
|
)
|
|
|
|
def all_to_all_cost(self, num_bytes, mesh_dim):
|
|
num_devices = self.logical_mesh_id.shape[mesh_dim]
|
|
penalty_factor = num_devices / 2.0
|
|
return (
|
|
self.mesh_alpha[mesh_dim]
|
|
+ self.mesh_beta[mesh_dim] * (num_devices - 1) / num_devices / num_devices * num_bytes * penalty_factor
|
|
+ 0.001
|
|
)
|