Files
ColossalAI/colossalai/cluster/process_group_mesh.py
flybird11111 0c10afd372 [FP8] rebase main (#5963)
* add SimPO

* fix dataloader

* remove debug code

* add orpo

* fix style

* fix colossalai, transformers version

* fix colossalai, transformers version

* fix colossalai, transformers version

* fix torch colossalai version

* update transformers version

* [shardformer] DeepseekMoE support (#5871)

* [Feature] deepseek moe expert parallel implement

* [misc] fix typo, remove redundant file (#5867)

* [misc] fix typo

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* [Feature] deepseek support & unit test

* [misc] remove debug code & useless print

* [misc] fix typos (#5872)

* [Feature] remove modeling file, use auto config. (#5884)

* [misc] fix typos

* [Feature] deepseek support via auto model, remove modeling file

* [misc] delete useless file

* [misc] fix typos

* [Deepseek] remove redundant code (#5888)

* [misc] fix typos

* [Feature] deepseek support via auto model, remove modeling file

* [misc] delete useless file

* [misc] fix typos

* [misc] remove redundant code

* [Feature/deepseek] resolve comment. (#5889)

* [misc] fix typos

* [Feature] deepseek support via auto model, remove modeling file

* [misc] delete useless file

* [misc] fix typos

* [misc] remove redundant code

* [misc] mv module replacement into if branch

* [misc] add some warning message and modify some code in unit test

* [misc] fix typos

---------

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* [Hoxfix] Fix CUDA_DEVICE_MAX_CONNECTIONS for comm overlap

Co-authored-by: Edenzzzz <wtan45@wisc.edu>

* [Feat] Diffusion Model(PixArtAlpha/StableDiffusion3) Support (#5838)

* Diffusion Model Inference support

* Stable Diffusion 3 Support

* pixartalpha support

* [HotFix] CI,import,requirements-test for #5838 (#5892)

* [Hot Fix] CI,import,requirements-test

---------

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* [Feature] Enable PP + SP for llama (#5868)

* fix cross-PP-stage position id length diff bug

* fix typo

* fix typo

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* use a one cross entropy func for all shardformer models

---------

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* [ShardFormer] Add Ulysses Sequence Parallelism support for Command-R, Qwen2 and ChatGLM (#5897)

* add benchmark for sft, dpo, simpo, orpo. Add benchmarking result. Support lora with gradient checkpoint

* fix style

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix eval

* hotfix citation

* [zero] support all-gather overlap (#5898)

* [zero] support all-gather overlap

* [zero] add overlap all-gather flag

* [misc] fix typo

* [zero] update api

* fix orpo cross entropy loss

* [Auto Parallel]: Speed up intra-op plan generation by 44% (#5446)

* Remove unnecessary calls to deepcopy

* Build DimSpec's difference dict only once

This change considerably speeds up construction speed of DimSpec objects. The difference_dict is the same for each DimSpec object, so a single copy of it is enough.

* Fix documentation of DimSpec's difference method

* [ShardFormer] fix qwen2 sp (#5903)

* [compatibility] support torch 2.2 (#5875)

* Support Pytorch 2.2.2

* keep build_on_pr file and update .compatibility

* fix object_to_tensor usage when torch>=2.3.0 (#5820)

* [misc] support torch2.3 (#5893)

* [misc] support torch2.3

* [devops] update compatibility ci

* [devops] update compatibility ci

* [devops] add debug

* [devops] add debug

* [devops] add debug

* [devops] add debug

* [devops] remove debug

* [devops] remove debug

* [release] update version (#5912)

* [plugin] support all-gather overlap for hybrid parallel (#5919)

* [plugin] fixed all-gather overlap support for hybrid parallel

* add kto

* fix style, add kto data sample

* [Examples] Add lazy init to OPT and GPT examples (#5924)

Co-authored-by: Edenzzzz <wtan45@wisc.edu>

* [ColossalChat] Hotfix for ColossalChat (#5910)

* add ignore and tiny llama

* fix path issue

* run style

* fix issue

* update bash

* add ignore and tiny llama

* fix path issue

* run style

* fix issue

* update bash

* fix ddp issue

* add Qwen 1.5 32B

* refactor tokenization

* [FIX BUG] UnboundLocalError: cannot access local variable 'default_conversation' where it is not associated with a value (#5931)

* cannot access local variable 'default_conversation' where it is not associated with a value

set default value for 'default_conversation'

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix test data

* refactor evaluation

* remove real data path

* remove real data path

* Add n_fused as an input from native_module (#5894)

* [FIX BUG] convert env param to int in (#5934)

* [Hotfix] Fix ZeRO typo #5936

Co-authored-by: Edenzzzz <wtan45@wisc.edu>

* [Feature] Add a switch to control whether the model checkpoint needs to be saved after each epoch ends (#5941)

* Add a switch to control whether the model checkpoint needs to be saved after each epoch ends

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix style

* fix style

* fix style

* [shardformer] hotfix attn mask (#5945)

* [shardformer] hotfix attn mask (#5947)

* [Feat] Distrifusion Acceleration Support for Diffusion Inference (#5895)

* Distrifusion Support source

* comp comm overlap optimization

* sd3 benchmark

* pixart distrifusion bug fix

* sd3 bug fix and benchmark

* generation bug fix

* naming fix

* add docstring, fix counter and shape error

* add reference

* readme and requirement

* [zero] hotfix update master params (#5951)

* [release] update version (#5952)

* [Chat] Fix lora (#5946)

* fix merging

* remove filepath

* fix style

* Update README.md (#5958)

* [hotfix] Remove unused plan section (#5957)

* remove readme

* fix readme

* update

* [test] add mixtral for sequence classification

* [test] add mixtral transformer test

* [moe] fix plugin

* [test] mixtra pp shard test

* [chore] handle non member group

* [zero] solve hang

* [test] pass mixtral shardformer test

* [moe] implement transit between non moe tp and ep

* [zero] solve hang

* [misc] solve booster hang by rename the variable

* solve hang when parallel mode = pp + dp

* [moe] implement submesh initialization

* [moe] add mixtral dp grad scaling when not all experts are activated

* [chore] manually revert unintended commit

* [chore] trivial fix

* [chore] arg pass & remove drop token

* [test] add mixtral modelling test

* [moe] implement tp

* [moe] test deepseek

* [moe] clean legacy code

* [Feature] MoE Ulysses Support (#5918)

* moe sp support

* moe sp bug solve

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

---------

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* [chore] minor fix

* [moe] init moe plugin comm setting with sp

* moe sp + ep bug fix

* [moe] finalize test (no pp)

* [moe] full test for deepseek and mixtral (pp + sp to fix)

* [chore] minor fix after rebase

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* [chore] solve moe ckpt test failure and some other arg pass failure

* [moe] remove ops

* [test] fix test: test_zero1_2

* [bug] fix: somehow logger hangs the program

* [moe] deepseek moe sp support

* [test] add check

* [deepseek] replace attn (a workaround for bug in transformers)

* [misc] skip redunant test

* [misc] remove debug/print code

* [moe] refactor mesh assignment

* Revert "[moe] implement submesh initialization"

This reverts commit 2f9bce6686.

* [chore] change moe_pg_mesh to private

* [misc] remove incompatible test config

* [misc] fix ci failure: change default value to false in moe plugin

* [misc] remove useless condition

* [chore] docstring

* [moe] remove force_overlap_comm flag and add warning instead

* [doc] add MoeHybridParallelPlugin docstring

* [moe] solve dp axis issue

* [chore] remove redundant test case, print string & reduce test tokens

* [feat] Dist Loader for Eval (#5950)

* support auto distributed data loader

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* support auto distributed data loader

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix tp error

* remove unused parameters

* remove unused

* update inference

* update docs

* update inference

---------

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* [lora] lora support hybrid parallel plugin (#5956)

* lora support hybrid plugin

* fix

* fix

* fix

* fix

* fp8 operators for compressed communication

cast_to_fp8, cast_from_fp8, all_reduce_fp8

* fix scaling algorithm in FP8 casting

* support fp8 communication in pipeline parallelism

* add fp8_communication flag in the script

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix typo

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* shardformer fp8

* fix rebase

* remove all to all

* fix shardformer fp8 communication training degradation

* [fp8] support all-gather flat tensor (#5932)

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* fix

* Update low_level_optim.py

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2024-08-06 16:29:37 +08:00

274 lines
11 KiB
Python

import gc
import itertools
from functools import reduce
from operator import mul
from typing import Dict, List, Optional, Tuple, Union
import numpy as np
import torch.distributed as dist
from torch.distributed import ProcessGroup
from torch.distributed.distributed_c10d import GroupMember
def prod(nums: List[int]) -> int:
"""Product of a list of numbers.
Args:
nums (List[int]): A list of numbers.
Returns:
int: The product of the numbers.
"""
return reduce(mul, nums)
class ProcessGroupMesh:
"""A helper class to manage the process group mesh. It only describes how to organize process groups, and it's decoupled with parallel method.
It just initialize process groups and cache them. The parallel method should manage them and use them to do the parallel computation.
We use a ND-tuple to represent the process group mesh. And a ND-coordinate is to represent each process.
For example, ``(0, 1, 0)`` represents the process whose rank is 2 in a 3D process group mesh with size ``(2, 2, 2)``.
Args:
*size (int): The size of each dimension of the process group mesh. The product of the size must be equal to the world size.
Attributes:
shape (Tuple[int, ...]): The shape of the process group mesh.
rank (int): The rank of the current process.
"""
def __init__(self, *size: int) -> None:
assert dist.is_initialized(), "Please initialize torch.distributed first."
world_size = dist.get_world_size()
prod_size = prod(size)
assert (
prod_size == world_size
), f"The product of the size({prod_size}) must be equal to the world size({world_size})."
self._shape = size
self._rank = dist.get_rank()
self._coord = ProcessGroupMesh.unravel(self._rank, self._shape)
self._ranks_to_group: Dict[Tuple[int, ...], Union[ProcessGroup, GroupMember.NON_GROUP_MEMBER]] = {}
self._group_to_ranks: Dict[ProcessGroup, Tuple[int, ...]] = {}
def destroy_mesh_process_groups(self):
r"""
Destructor method for the ProcessGroupMesh class.
When the ProcessGroupMesh object is deleted or goes out of scope, this method is called. It is responsible for
cleaning up any process groups that were created during the lifetime of the object.
Note:
All process groups in PyTorch are represented as global variables, and they may not be automatically destroyed
when the ProcessGroupMesh's lifetime ends. This method manually destroys the process groups to release
system resources.
"""
for group in self._ranks_to_group.values():
dist.destroy_process_group(group)
# Manually clear all process groups to save memory
gc.collect()
@property
def shape(self) -> Tuple[int, ...]:
return self._shape
@property
def rank(self) -> int:
return self._rank
def size(self, dim: Optional[int] = None) -> Union[int, Tuple[int, ...]]:
"""Get the size of the process group mesh.
Args:
dim (Optional[int], optional): Dimension of the process group mesh. `None` means all dimensions. Defaults to None.
Returns:
Union[int, Tuple[int, ...]]: Size of the target dimension or the whole process group mesh.
"""
if dim is None:
return self._shape
else:
return self._shape[dim]
def coordinate(self, dim: Optional[int] = None) -> Union[int, Tuple[int, ...]]:
"""Get the coordinate of the process group mesh.
Args:
dim (Optional[int], optional): Dimension of the process group mesh. `None` means all dimensions. Defaults to None.
Returns:
Union[int, Tuple[int, ...]]: Coordinate of the target dimension or the whole process group mesh.
"""
if dim is None:
return self._coord
else:
return self._coord[dim]
@staticmethod
def unravel(rank: int, shape: Tuple[int, ...]) -> Tuple[int, ...]:
"""Convert a rank to a coordinate.
Args:
rank (int): Rank to be converted.
shape (Tuple[int, ...]): Shape of the process group mesh.
Returns:
Tuple[int, ...]: Coordinate of the rank.
"""
return np.unravel_index(rank, shape)
@staticmethod
def ravel(coord: Tuple[int, ...], shape: Tuple[int, ...], mode: str = "raise") -> int:
"""Convert a coordinate to a rank.
mode: ['raise', 'wrap', 'clip'], see https://numpy.org/doc/stable/reference/generated/numpy.ravel_multi_index.html.
with wrap, index out of range would be wrapped around.
For instance, ravel((0, i, 0), (1, 2, 1), 'wrap') returns (i % 2)
Args:
coords (Tuple[int, ...]): Coordinate to be converted.
shape (Tuple[int, ...]): Shape of the process group mesh.
mode (Optional[str]): The mode for numpy.ravel_multi_index.
Returns:
int: Rank of the coordinate.
"""
assert mode in ["raise", "wrap", "clip"]
return int(np.ravel_multi_index(coord, shape, mode))
def _get_group(self, ranks_in_group: List[int], backend: Optional[str] = None) -> ProcessGroup:
"""Get the process group with the given ranks. It the process group doesn't exist, it will be created.
Args:
ranks_in_group (List[int]): Ranks in the process group.
backend (Optional[str], optional): Backend of the process group. Defaults to None.
Returns:
ProcessGroup: The process group with the given ranks.
"""
ranks_in_group = sorted(ranks_in_group)
if tuple(ranks_in_group) not in self._ranks_to_group:
group = dist.new_group(ranks_in_group, backend=backend)
self._ranks_to_group[tuple(ranks_in_group)] = group
if group is not GroupMember.NON_GROUP_MEMBER:
self._group_to_ranks[group] = tuple(ranks_in_group)
return self._ranks_to_group[tuple(ranks_in_group)]
def get_ranks_in_group(self, group: ProcessGroup) -> List[int]:
"""Get the ranks in the given process group. The process group must be created by this class.
Args:
group (ProcessGroup): The process group.
Returns:
List[int]: Ranks in the process group.
"""
return list(self._group_to_ranks[group])
@staticmethod
def get_coords_along_axis(
base_coord: Tuple[int, ...], axis: Union[int, List[int]], indices_at_axis: Union[List[int], List[List[int]]]
) -> List[Tuple[int, ...]]:
"""Get coordinates along the given axis.
Args:
base_coord (Tuple[int, ...]): Base coordinate which the coordinates along the axis are based on.
axis (int): Axis along which the coordinates are generated.
indices_at_axis (List[int]): Indices at the axis.
Returns:
List[Tuple[int, ...]]: Coordinates along the axis.
"""
if isinstance(axis, int):
axis = [
axis,
]
assert isinstance(indices_at_axis[0], int), f"Expected int, but got {type(indices_at_axis[0])}."
indices_at_axis = [
indices_at_axis,
]
def add_index(base_coord, axis, indices_at_axis):
coords_in_group = []
for idx in indices_at_axis:
coords_in_group.append(base_coord[:axis] + (idx,) + base_coord[axis + 1 :])
return coords_in_group
coords_in_group = [base_coord]
for ax, indices_at_ax in zip(axis, indices_at_axis):
new_coords_in_group = []
for coords in coords_in_group:
new_coords_in_group += add_index(coords, ax, indices_at_ax)
coords_in_group = new_coords_in_group
return coords_in_group
def create_group_along_axis(
self,
axis: Union[int, List[int]],
indices_at_axis: Optional[Union[List[int], List[List[int]]]] = None,
backend: Optional[str] = None,
) -> ProcessGroup:
"""Create all process groups along the given axis, and return the one which the current process belongs to.
Args:
axis (int): Axis along which the process groups are created.
indices_at_axis (Optional[List[int]], optional): Indices at the axis. Defaults to None.
backend (Optional[str], optional): Backend of the process group. Defaults to None.
Returns:
ProcessGroup: The process group along the given axis which the current process belongs to.
"""
if isinstance(axis, int):
axis = [
axis,
]
if indices_at_axis is not None:
assert isinstance(indices_at_axis[0], int)
indices_at_axis = [
indices_at_axis,
]
indices_at_axis = indices_at_axis or [list(range(self._shape[ax])) for ax in axis]
reduced_shape = list(self._shape)
# the choices on the axis are reduced to 1, since it's determined by `indices_at_axis`
for ax in axis:
reduced_shape[ax] = 1
target_group = None
# use Cartesian product to generate all combinations of coordinates
for base_coord in itertools.product(*[range(s) for s in reduced_shape]):
coords_in_group = ProcessGroupMesh.get_coords_along_axis(base_coord, axis, indices_at_axis)
ranks_in_group = tuple([ProcessGroupMesh.ravel(coord, self._shape) for coord in coords_in_group])
group = self._get_group(ranks_in_group, backend=backend)
if self._rank in ranks_in_group:
target_group = group
return target_group
def get_group_along_axis(
self, axis: Union[int, List[int]], indices_at_axis: Optional[List[int]] = None, backend: Optional[str] = None
) -> ProcessGroup:
"""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.
Args:
axis (int or list of int): Axes along which the process groups are created.
indices_at_axis (Optional[List[int]], optional): Indices at the axis. Defaults to None.
backend (Optional[str], optional): Backend of the process group. Defaults to None.
Returns:
ProcessGroup: The process group along the given axis which the current process belongs to.
"""
indices_at_axis = indices_at_axis
if indices_at_axis is None:
if isinstance(axis, (list, tuple)):
indices_at_axis = list(list(range(self._shape[ax])) for ax in axis)
else:
indices_at_axis = list(range(self._shape[axis]))
coords_in_group = ProcessGroupMesh.get_coords_along_axis(self._coord, axis, indices_at_axis)
ranks_in_group = tuple([ProcessGroupMesh.ravel(coord, self._shape) for coord in coords_in_group])
if ranks_in_group not in self._ranks_to_group:
# no need to cache it explicitly, since it will be cached in `create_group_along_axis`
return self.create_group_along_axis(axis, indices_at_axis, backend=backend)
return self._ranks_to_group[ranks_in_group]