ColossalAI/colossalai/pipeline/p2p.py
linsj20 fcf776ff1b
[Feature] LoRA rebased to main branch (#5622)
* [Inference]ADD Bench Chatglm2 script (#4963)

* add bench chatglm

* fix bug and make utils

---------

Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [Pipeline inference] Combine kvcache with pipeline inference (#4938)

* merge kvcache with pipeline inference and refactor the code structure

* support ppsize > 2

* refactor pipeline code

* do pre-commit

* modify benchmark

* fix bench mark

* polish code

* add docstring and update readme

* refactor the code

* fix some logic bug of ppinfer

* polish readme

* fix typo

* skip infer test

* updated c++17 compiler flags (#4983)

* [Inference] Dynamic Batching Inference, online and offline (#4953)

* [inference] Dynamic Batching for Single and Multiple GPUs (#4831)

* finish batch manager

* 1

* first

* fix

* fix dynamic batching

* llama infer

* finish test

* support different lengths generating

* del prints

* del prints

* fix

* fix bug

---------

Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [inference] Async dynamic batching  (#4894)

* finish input and output logic

* add generate

* test forward

* 1

* [inference]Re push async dynamic batching (#4901)

* adapt to ray server

* finish async

* finish test

* del test

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>

* Revert "[inference]Re push async dynamic batching (#4901)" (#4905)

This reverts commit fbf3c09e67.

* Revert "[inference] Async dynamic batching  (#4894)"

This reverts commit fced140250.

* Revert "[inference] Async dynamic batching  (#4894)" (#4909)

This reverts commit fced140250.

* Add Ray Distributed Environment Init Scripts

* support DynamicBatchManager base function

* revert _set_tokenizer version

* add driver async generate

* add async test

* fix bugs in test_ray_dist.py

* add get_tokenizer.py

* fix code style

* fix bugs about No module named 'pydantic' in ci test

* fix bugs in ci test

* fix bugs in ci test

* fix bugs in ci test

* [infer]Add Ray Distributed Environment Init Scripts (#4911)

* Revert "[inference] Async dynamic batching  (#4894)"

This reverts commit fced140250.

* Add Ray Distributed Environment Init Scripts

* support DynamicBatchManager base function

* revert _set_tokenizer version

* add driver async generate

* add async test

* fix bugs in test_ray_dist.py

* add get_tokenizer.py

* fix code style

* fix bugs about No module named 'pydantic' in ci test

* fix bugs in ci test

* fix bugs in ci test

* fix bugs in ci test

* support dynamic batch for bloom model and is_running function

* [Inference]Test for new Async engine (#4935)

* infer engine

* infer engine

* test engine

* test engine

* new manager

* change step

* add

* test

* fix

* fix

* finish test

* finish test

* finish test

* finish test

* add license

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>

* add assertion for config (#4947)

* [Inference] Finish dynamic batching offline test (#4948)

* test

* fix test

* fix quant

* add default

* fix

* fix some bugs

* fix some bugs

* fix

* fix bug

* fix bugs

* reset param

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>
Co-authored-by: Cuiqing Li <lixx3527@gmail.com>
Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [Kernels]Updated Triton kernels into 2.1.0 and adding flash-decoding for llama token attention  (#4965)

* adding flash-decoding

* clean

* adding kernel

* adding flash-decoding

* add integration

* add

* adding kernel

* adding kernel

* adding triton 2.1.0 features for inference

* update bloom triton kernel

* remove useless vllm kernels

* clean codes

* fix

* adding files

* fix readme

* update llama flash-decoding

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* fix ColossalEval (#4992)

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>

* [doc]Update doc for colossal-inference (#4989)

* update doc

* Update README.md

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* [hotfix] Fix the bug where process groups were not being properly released. (#4940)

* Fix the bug where process groups were not being properly released.

* test

* Revert "test"

This reverts commit 479900c139.

* [hotfix] fix the bug of repeatedly storing param group (#4951)

* [doc] add supported feature diagram for hybrid parallel plugin (#4996)

* [Pipeline Inference] Merge pp with tp (#4993)

* refactor pipeline into new CaiInferEngine

* updata llama modeling forward

* merge tp with pp

* update docstring

* optimize test workflow and example

* fix typo

* add assert and todo

* [release] update version (#4995)

* [release] update version

* [hotfix] fix ci

* [moe] merge moe into main (#4978)

* update moe module
* support openmoe

* [hotfix] fix grad accumulation plus clipping for gemini (#5002)

* [hotfix] Add layer norm gradients all-reduce for sequence parallel (#4926)

* [hotfix] Add layer norm gradients all-reduce for sequence parallel. (#4915)

* Add layer norm gradients all-reduce for sequence parallel.

* skip pipeline inference test

* [hotfix] fixing polices of sequence parallel (#4922)

* Add layer norm gradients all-reduce for sequence parallel.

* fix parameter passing when calling get_autopolicy

---------

Co-authored-by: littsk <1214689160@qq.com>

* Hotfix/add grad all reduce for sequence parallel (#4927)

* Add layer norm gradients all-reduce for sequence parallel.


* fix parameter passing when calling get_autopolicy

* fix bug using wrong variables

---------

Co-authored-by: littsk <1214689160@qq.com>

* fix policy initialization

* fix bloom and chatglm policices

* polish code of handling layernorm

* fix moe module

* polish code of class initializing

---------

Co-authored-by: Zhongkai Zhao <kanezz620@gmail.com>

* [format] applied code formatting on changed files in pull request 4926 (#5007)

Co-authored-by: github-actions <github-actions@github.com>

* [Inference] Fix bug in ChatGLM2 Tensor Parallelism (#5014)

* fix bug

* fix

* fix multiquery

* fix multiquery

---------

Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [misc] add code owners (#5024)

* [moe] support optimizer checkpoint (#5015)

* Refactor MoE Manager setup method

* unshard optim ckpt

* optim io

* update transformer version

* update requirements

* update ckpt

* update ckpt

* update ckpt

* fix engine

* fix engine

* Support mtbench (#5025)

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>

* [moe]: fix ep/tp tests, add hierarchical all2all (#4982)

* fix: add warning for EP different behavior

* fix: use shard_data in ep & tp model

* to: add used_capacity

* fix: fix router test

* feat: add create_ep_node_group

* feat: add create_ep_hierarchical_group fn

* feat: add HierarchicalAllToAll

* test: add hierarchical all2all test

* fix: fix test errors

* fix: simplify create_ep_hierarchical_group

* fix: add hierarchical_alltoall arg

* fix: fix environ typo

* revert: revert process mesh order

* to: add todo mark

* fix: skip hierarchical_comm if torch < 1.13.1

* [shardformer] Fix serialization error with Tensor Parallel state saving (#5018)

* Fix serialization error with Tensor Parallel state saving

* Refactor state_dict CPU transfer using tree_map

* [gemini] gemini support tensor parallelism. (#4942)

* [colossalai]fix typo

* [inference] Add smmoothquant for llama (#4904)

* [inference] add int8 rotary embedding kernel for smoothquant (#4843)

* [inference] add smoothquant llama attention (#4850)

* add smoothquant llama attention

* remove uselss code

* remove useless code

* fix import error

* rename file name

* [inference] add silu linear fusion for smoothquant llama mlp  (#4853)

* add silu linear

* update skip condition

* catch smoothquant cuda lib exception

* prcocess exception for tests

* [inference] add llama mlp for smoothquant (#4854)

* add llama mlp for smoothquant

* fix down out scale

* remove duplicate lines

* add llama mlp check

* delete useless code

* [inference] add smoothquant llama (#4861)

* add smoothquant llama

* fix attention accuracy

* fix accuracy

* add kv cache and save pretrained

* refactor example

* delete smooth

* refactor code

* [inference] add smooth function and delete useless code for smoothquant (#4895)

* add smooth function and delete useless code

* update datasets

* remove duplicate import

* delete useless file

* refactor codes (#4902)

* rafactor code

* add license

* add torch-int and smoothquant license

* Update flash_attention_patch.py

To be compatible with the new change in the Transformers library, where a new argument 'padding_mask' was added to forward function of attention layer.
https://github.com/huggingface/transformers/pull/25598

* [kernel] support pure fp16 for cpu adam and update gemini optim tests (#4921)

* [kernel] support pure fp16 for cpu adam (#4896)

* [kernel] fix cpu adam kernel for pure fp16 and update tests (#4919)

* [kernel] fix cpu adam

* [test] update gemini optim test

* [format] applied code formatting on changed files in pull request 4908 (#4918)

Co-authored-by: github-actions <github-actions@github.com>

* [gemini] support gradient accumulation (#4869)

* add test

* fix no_sync bug in low level zero plugin

* fix test

* add argument for grad accum

* add grad accum in backward hook for gemini

* finish implementation, rewrite tests

* fix test

* skip stuck model in low level zero test

* update doc

* optimize communication & fix gradient checkpoint

* modify doc

* cleaning codes

* update cpu adam fp16 case

* [hotfix] fix torch 2.0 compatibility (#4936)

* [hotfix] fix launch

* [test] fix test gemini optim

* [shardformer] fix vit

* [test] add no master test for low level zero plugin (#4934)

* [format] applied code formatting on changed files in pull request 4820 (#4886)

Co-authored-by: github-actions <github-actions@github.com>

* [nfc] fix some typo with colossalai/ docs/ etc. (#4920)

* [Refactor] Integrated some lightllm kernels into token-attention  (#4946)

* add some req for inference

* clean codes

* add codes

* add some lightllm deps

* clean codes

* hello

* delete rms files

* add some comments

* add comments

* add doc

* add lightllm deps

* add lightllm cahtglm2 kernels

* add lightllm cahtglm2 kernels

* replace rotary embedding with lightllm kernel

* add some commnets

* add some comments

* add some comments

* add

* replace fwd kernel att1

* fix a arg

* add

* add

* fix token attention

* add some comments

* clean codes

* modify comments

* fix readme

* fix bug

* fix bug

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>
Co-authored-by: CjhHa1 <cjh18671720497@outlook.com>

* [test] merge old components to test to model zoo (#4945)

* [test] add custom models in model zoo

* [test] update legacy test

* [test] update model zoo

* [test] update gemini test

* [test] remove components to test

* [inference] add reference and fix some bugs (#4937)

* add reference and fix some bugs

* update gptq init

---------

Co-authored-by: Xu Kai <xukai16@foxamil.com>

* [Inference]ADD Bench Chatglm2 script (#4963)

* add bench chatglm

* fix bug and make utils

---------

Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [Pipeline inference] Combine kvcache with pipeline inference (#4938)

* merge kvcache with pipeline inference and refactor the code structure

* support ppsize > 2

* refactor pipeline code

* do pre-commit

* modify benchmark

* fix bench mark

* polish code

* add docstring and update readme

* refactor the code

* fix some logic bug of ppinfer

* polish readme

* fix typo

* skip infer test

* updated c++17 compiler flags (#4983)

* [Inference] Dynamic Batching Inference, online and offline (#4953)

* [inference] Dynamic Batching for Single and Multiple GPUs (#4831)

* finish batch manager

* 1

* first

* fix

* fix dynamic batching

* llama infer

* finish test

* support different lengths generating

* del prints

* del prints

* fix

* fix bug

---------

Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [inference] Async dynamic batching  (#4894)

* finish input and output logic

* add generate

* test forward

* 1

* [inference]Re push async dynamic batching (#4901)

* adapt to ray server

* finish async

* finish test

* del test

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>

* Revert "[inference]Re push async dynamic batching (#4901)" (#4905)

This reverts commit fbf3c09e67.

* Revert "[inference] Async dynamic batching  (#4894)"

This reverts commit fced140250.

* Revert "[inference] Async dynamic batching  (#4894)" (#4909)

This reverts commit fced140250.

* Add Ray Distributed Environment Init Scripts

* support DynamicBatchManager base function

* revert _set_tokenizer version

* add driver async generate

* add async test

* fix bugs in test_ray_dist.py

* add get_tokenizer.py

* fix code style

* fix bugs about No module named 'pydantic' in ci test

* fix bugs in ci test

* fix bugs in ci test

* fix bugs in ci test

* [infer]Add Ray Distributed Environment Init Scripts (#4911)

* Revert "[inference] Async dynamic batching  (#4894)"

This reverts commit fced140250.

* Add Ray Distributed Environment Init Scripts

* support DynamicBatchManager base function

* revert _set_tokenizer version

* add driver async generate

* add async test

* fix bugs in test_ray_dist.py

* add get_tokenizer.py

* fix code style

* fix bugs about No module named 'pydantic' in ci test

* fix bugs in ci test

* fix bugs in ci test

* fix bugs in ci test

* support dynamic batch for bloom model and is_running function

* [Inference]Test for new Async engine (#4935)

* infer engine

* infer engine

* test engine

* test engine

* new manager

* change step

* add

* test

* fix

* fix

* finish test

* finish test

* finish test

* finish test

* add license

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>

* add assertion for config (#4947)

* [Inference] Finish dynamic batching offline test (#4948)

* test

* fix test

* fix quant

* add default

* fix

* fix some bugs

* fix some bugs

* fix

* fix bug

* fix bugs

* reset param

---------

Co-authored-by: yuehuayingxueluo <867460659@qq.com>
Co-authored-by: Cuiqing Li <lixx3527@gmail.com>
Co-authored-by: CjhHa1 <cjh18671720497outlook.com>

* [Kernels]Updated Triton kernels into 2.1.0 and adding flash-decoding for llama token attention  (#4965)

* adding flash-decoding

* clean

* adding kernel

* adding flash-decoding

* add integration

* add

* adding kernel

* adding kernel

* adding triton 2.1.0 features for inference

* update bloom triton kernel

* remove useless vllm kernels

* clean codes

* fix

* adding files

* fix readme

* update llama flash-decoding

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* fix ColossalEval (#4992)

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>

* [doc]Update doc for colossal-inference (#4989)

* update doc

* Update README.md

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* [hotfix] Fix the bug where process groups were not being properly released. (#4940)

* Fix the bug where process groups were not being properly released.

* test

* Revert "test"

This reverts commit 479900c139.

* [hotfix] fix the bug of repeatedly storing param group (#4951)

* [doc] add supported feature diagram for hybrid parallel plugin (#4996)

* [Pipeline Inference] Merge pp with tp (#4993)

* refactor pipeline into new CaiInferEngine

* updata llama modeling forward

* merge tp with pp

* update docstring

* optimize test workflow and example

* fix typo

* add assert and todo

* [release] update version (#4995)

* [release] update version

* [hotfix] fix ci

* [gemini] gemini support tp

[gemini] gemini support tp

[gemini] gemini support tp

[gemini] gemini support tp

[gemini] gemini support tp

* fix

fix

fix

* update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

update checkpointIO

* support fused layernorm

support fused layernorm

support fused layernorm

* update fusedlayernorm

update fusedlayernorm

update fusedlayernorm

* add sequence parallel to gemini

add sequence parallel to gemini

* fix

* fix comments

fix comments

fix comments

* fix

* fix t5

* clear cache

* fix

* activate ci

* activate ci

* fix

* fix

* fix

* fix

* revert

* modify tp gather method

modify tp gather method

modify tp gather method

modify tp gather method

* fix test

---------

Co-authored-by: Xu Kai <xukai16@foxmail.com>
Co-authored-by: Zian(Andy) Zheng <62330719+Orion-Zheng@users.noreply.github.com>
Co-authored-by: Hongxin Liu <lhx0217@gmail.com>
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
Co-authored-by: github-actions <github-actions@github.com>
Co-authored-by: Baizhou Zhang <eddiezhang@pku.edu.cn>
Co-authored-by: Zhongkai Zhao <kanezz620@gmail.com>
Co-authored-by: digger yu <digger-yu@outlook.com>
Co-authored-by: Cuiqing Li <lixx3527@gmail.com>
Co-authored-by: cuiqing.li <lixx336@gmail.com>
Co-authored-by: CjhHa1 <cjh18671720497@outlook.com>
Co-authored-by: Xu Kai <xukai16@foxamil.com>
Co-authored-by: Jianghai <72591262+CjhHa1@users.noreply.github.com>
Co-authored-by: Bin Jia <45593998+FoolPlayer@users.noreply.github.com>
Co-authored-by: アマデウス <kurisusnowdeng@users.noreply.github.com>
Co-authored-by: yuehuayingxueluo <867460659@qq.com>
Co-authored-by: Yuanchen <70520919+chengeharrison@users.noreply.github.com>
Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>
Co-authored-by: littsk <1214689160@qq.com>
Co-authored-by: ppt0011 <143150326+ppt0011@users.noreply.github.com>

* [hotfix] Suport extra_kwargs in ShardConfig (#5031)

* [refactor]: replace inference args with extra_kwargs in ShardConfig

* modify shardconfig

* polish code

* fix policy bug in llama

* fix bug in auto policy

* remove setattr in ShardConfig

* fix wrong EOS token in ColossalChat

* [Kernels]Update triton kernels into 2.1.0 (#5046)

* update flash-context-attention

* adding kernels

* fix

* reset

* add build script

* add building process

* add llama2 exmaple

* add colossal-llama2 test

* clean

* fall back test setting

* fix test file

* clean

* clean

* clean

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* [pipeline,shardformer] Fix p2p efficiency in pipeline, allow skipping loading weight not in weight_map when `strict=False`, fix llama flash attention forward, add flop estimation by megatron in llama benchmark (#5017)

* Use p2p

* Cannot bidirectonal send p2p

* Refactor tensor creation and serialization in P2P
communication

* Fix llama forward args in flash attention

* Add flop estimate from megatron

* Support loading weight not in weight_map when strict=False in hybrid_parallel

* Use send_forward_recv_backward, etc in 1f1b

* Use dataclass for metdata
Remove torch.cuda.synchronize() as suggested

* Add comment about the torch.cuda.synchronize for potential error

* Typo

* Update hybrid_parallel_checkpoint_io.py

* Update p2p.py

* Update one_f_one_b.py

* Update p2p.py

---------

Co-authored-by: flybird11111 <1829166702@qq.com>

* [gemini] gemini support extra-dp (#5043)

* support ddp

* fix

* fix

* fix

fix

* support ddp

* fix

* fix

* fix

fix

* simplify tests

* fix

* fix

* fix

fix

fix

* fix

* [shardformer] fix llama error when transformers upgraded. (#5055)

* fix-llama

* Update llama.py

* [hotfix]: modify create_ep_hierarchical_group and add test (#5032)

* feat: modify create_ep_hierarchical_group args

* test: add ep tests

* fix: remove get_process_group_ranks

* fix: fix src_rank

* [exampe] fix llama example' loss error when using gemini plugin (#5060)

fix llama example

* [inference] Refactor inference architecture (#5057)

* [inference] support only TP (#4998)

* support only tp

* enable tp

* add support for bloom (#5008)

* [refactor] refactor gptq and smoothquant llama (#5012)

* refactor gptq and smoothquant llama

* fix import error

* fix linear import torch-int

* fix smoothquant llama import error

* fix import accelerate error

* fix bug

* fix import smooth cuda

* fix smoothcuda

* [Inference Refactor] Merge chatglm2 with pp and tp (#5023)

merge chatglm with pp and tp

* [Refactor] remove useless inference code (#5022)

* remove useless code

* fix quant model

* fix test import bug

* mv original inference legacy

* fix chatglm2

* [Refactor] refactor policy search and quant type controlling in inference (#5035)

* [Refactor] refactor policy search and quant type controling in inference

* [inference] update readme (#5051)

* update readme

* update readme

* fix architecture

* fix table

* fix table

* [inference] udpate example (#5053)

* udpate example

* fix run.sh

* fix rebase bug

* fix some errors

* update readme

* add some features

* update interface

* update readme

* update benchmark

* add requirements-infer

---------

Co-authored-by: Bin Jia <45593998+FoolPlayer@users.noreply.github.com>
Co-authored-by: Zhongkai Zhao <kanezz620@gmail.com>

* [Kernels]added flash-decoidng of triton (#5063)

* added flash-decoidng of triton based on lightllm kernel

* add req

* clean

* clean

* delete build.sh

---------

Co-authored-by: cuiqing.li <lixx336@gmail.com>

* [misc] remove outdated submodule (#5070)

* [npu] add npu support for gemini and zero (#5067)

* [npu] setup device utils (#5047)

* [npu] add npu device support

* [npu] support low level zero

* [test] update npu zero plugin test

* [hotfix] fix import

* [test] recover tests

* [npu] gemini support npu (#5052)

* [npu] refactor device utils

* [gemini] support npu

* [example] llama2+gemini support npu

* [kernel] add arm cpu adam kernel (#5065)

* [kernel] add arm cpu adam

* [optim] update adam optimizer

* [kernel] arm cpu adam remove bf16 support

* [hotfix/hybridengine] fix bug when tp*pp size = 1 (#5069)

* [inference] update examples and engine (#5073)

* update examples and engine

* fix choices

* update example

* [format] applied code formatting on changed files in pull request 5067 (#5072)

Co-authored-by: github-actions <github-actions@github.com>

* [hotfix/hybridengine] Fix init model with random parameters in benchmark (#5074)

* fix init model with random parameters

* fix example

* [inference] refactor examples and fix schedule (#5077)

* [setup] refactor infer setup

* [hotfix] fix infenrece behavior on 1 1 gpu

* [exmaple] refactor inference examples

* fix thrust-transform-reduce error (#5078)

* [nfc] fix typo in docs/ (#4972)

* [nfc] fix typo and author name (#5089)

* [gemini]fix gemini optimzer, saving Shardformer in Gemini got list assignment index out of range (#5085)

* [Hotfix] Fix model policy matching strategy in ShardFormer (#5064)

* hotfix/Fix get model policy strategy in ShardFormer

* fix bug in auto policy

* [shardformer]fix flash attention, when mask is casual, just don't unpad it (#5084)

* fix flash attn

* fix

fix

* [npu] add npu support for hybrid plugin and llama (#5090)

* llama 3d

* update

* fix autocast

* [Feature] Add document retrieval QA (#5020)

* add langchain

* add langchain

* Add files via upload

* add langchain

* fix style

* fix style: remove extra space

* add pytest; modified retriever

* add pytest; modified retriever

* add tests to build_on_pr.yml

* fix build_on_pr.yml

* fix build on pr; fix environ vars

* seperate unit tests for colossalqa from build from pr

* fix container setting; fix environ vars

* commented dev code

* add incremental update

* remove stale code

* fix style

* change to sha3 224

* fix retriever; fix style; add unit test for document loader

* fix ci workflow config

* fix ci workflow config

* add set cuda visible device script in ci

* fix doc string

* fix style; update readme; refactored

* add force log info

* change build on pr, ignore colossalqa

* fix docstring, captitalize all initial letters

* fix indexing; fix text-splitter

* remove debug code, update reference

* reset previous commit

* update LICENSE update README add key-value mode, fix bugs

* add files back

* revert force push

* remove junk file

* add test files

* fix retriever bug, add intent classification

* change conversation chain design

* rewrite prompt and conversation chain

* add ui v1

* ui v1

* fix atavar

* add header

* Refactor the RAG Code and support Pangu

* Refactor the ColossalQA chain to Object-Oriented Programming and the UI demo.

* resolved conversation. tested scripts under examples. web demo still buggy

* fix ci tests

* Some modifications to add ChatGPT api

* modify llm.py and remove unnecessary files

* Delete applications/ColossalQA/examples/ui/test_frontend_input.json

* Remove OpenAI api key

* add colossalqa

* move files

* move files

* move files

* move files

* fix style

* Add Readme and fix some bugs.

* Add something to readme and modify some code

* modify a directory name for clarity

* remove redundant directory

* Correct a type in  llm.py

* fix AI prefix

* fix test_memory.py

* fix conversation

* fix some erros and typos

* Fix a missing import in RAG_ChatBot.py

* add colossalcloud LLM wrapper, correct issues in code review

---------

Co-authored-by: YeAnbang <anbangy2@outlook.com>
Co-authored-by: Orion-Zheng <zheng_zian@u.nus.edu>
Co-authored-by: Zian(Andy) Zheng <62330719+Orion-Zheng@users.noreply.github.com>
Co-authored-by: Orion-Zheng <zhengzian@u.nus.edu>

* remove duplicate import (#5100)

* fix typo change lazy_iniy to lazy_init (#5099)

* [nfc] fix typo change directoty to directory (#5111)

* [FEATURE] Add Safety Eval Datasets to ColossalEval (#5095)

* add safetybench and cvalues(responsibility) eval dataset

* Modify code according to review suggestions

---------

Co-authored-by: Orion-Zheng <zhengzian@u.nus.edu>

* [hotfix] fixed memory usage of shardformer module replacement (#5122)

* [shardformer]: support gpt-j, falcon, Mistral and add interleaved pipeline for bert (#5088)

* [shardformer] implement policy for all GPT-J models and test

* [shardformer] support interleaved pipeline parallel for bert finetune

* [shardformer] shardformer support falcon (#4883)

* [shardformer]: fix interleaved pipeline for bert model (#5048)

* [hotfix]: disable seq parallel for gptj and falcon, and polish code (#5093)

* Add Mistral support for Shardformer (#5103)

* [shardformer] add tests to mistral (#5105)

---------

Co-authored-by: Pengtai Xu <henryxu880@gmail.com>
Co-authored-by: ppt0011 <143150326+ppt0011@users.noreply.github.com>
Co-authored-by: flybird11111 <1829166702@qq.com>
Co-authored-by: eric8607242 <e0928021388@gmail.com>

* [doc] add moe news (#5128)

* [doc] add moe news

* [doc] add moe news

* [doc] add moe news

* [doc] updated paper citation (#5131)

* fix typo change JOSNL TO JSONL etc. (#5116)

* [format] applied code formatting on changed files in pull request 5088 (#5127)

Co-authored-by: github-actions <github-actions@github.com>

* [format] applied code formatting on changed files in pull request 5124 (#5125)

Co-authored-by: github-actions <github-actions@github.com>

* [format] applied code formatting on changed files in pull request 5115 (#5118)

Co-authored-by: github-actions <github-actions@github.com>

* [accelerator] init the accelerator module (#5129)

* [accelerator] init the accelerator module

* polish code

* polish code

* polish code

* polish code

* [npu] support triangle attention for llama (#5130)

* update fused attn

* update spda

* tri attn

* update triangle

* import

* fix

* fix

* [plugin]fix 3d checkpoint load when booster boost without optimizer. (#5135)

* fix 3d checkpoint load when booster boost without optimizer

fix 3d checkpoint load when booster boost without optimizer

* test ci

* revert ci

* fix

fix

* [ColossalQA] refactor server and webui & add new feature (#5138)

* refactor server and webui & add new feature

* add requirements

* modify readme and ui

* [doc] fix colossalqa document (#5146)

* fix doc

* modify doc

* fix (#5158)

fix

* [Colossal-Llama-2] Add finetuning Colossal-Llama-2 example (#4878)

* Add finetuning Colossal-Llama-2 example

* Add finetuning Colossal-Llama-2 example 2

* Add finetuning Colossal-Llama-2 example and support NEFTuning

* Add inference example and refine neftune

* Modify readme file

* update the imports

---------

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>
Co-authored-by: Camille Zhong <44392324+Camille7777@users.noreply.github.com>

* [gemini]  hotfix NaN loss while using Gemini + tensor_parallel (#5150)

* fix

aaa

fix

fix

fix

* fix

* fix

* test ci

* fix ci

fix

* [colossalqa] fix pangu api (#5170)

* fix pangu api

* add comment

* [ColossalEval] Support GSM, Data Leakage Evaluation and Tensor Parallel (#5169)

* Support GSM, Data Leakage Evaluation and Tensor Parallel

* remove redundant code and update inference.py in examples/gpt_evaluation

---------

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>

* [shardformer] llama support DistCrossEntropy (#5176)

* fix

aaa

fix

fix

fix

* fix

* fix

* test ci

* fix ci

fix

* llama support dist-cross

fix

fix

fix

fix

fix

fix

fix

fix

* fix

* fix

* fix

fix

* test ci

* test ci

* fix

* [Colossal-Llama-2] Add finetuning Colossal-Llama-2 example (#4878)

* Add finetuning Colossal-Llama-2 example

* Add finetuning Colossal-Llama-2 example 2

* Add finetuning Colossal-Llama-2 example and support NEFTuning

* Add inference example and refine neftune

* Modify readme file

* update the imports

---------

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>
Co-authored-by: Camille Zhong <44392324+Camille7777@users.noreply.github.com>

* llama support dist-cross

fix

fix

fix

fix

fix

fix

fix

fix

* fix

* fix

* fix

fix

* test ci

* test ci

* fix

* fix ci

* fix ci

---------

Co-authored-by: Yuanchen <70520919+chengeharrison@users.noreply.github.com>
Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>
Co-authored-by: Camille Zhong <44392324+Camille7777@users.noreply.github.com>

* Fix ColossalEval (#5186)

Co-authored-by: Xu Yuanchen <yuanchen.xu00@gmail.com>

* [doc] update pytorch version in documents. (#5177)

* fix

aaa

fix

fix

fix

* fix

* fix

* test ci

* fix ci

fix

* update pytorch version in documents

* polish readme in application/chat (#5194)

* [pipeline]: fix p2p comm, add metadata cache and support llama interleaved pp (#5134)

* test: add more p2p tests

* fix: remove send_forward_recv_forward as p2p op list need to use the same group

* fix: make send and receive atomic

* feat: update P2PComm fn

* feat: add metadata cache in 1f1b

* feat: add metadata cache in interleaved pp

* feat: modify is_xx_stage fn

* revert: add _broadcast_object_list

* feat: add interleaved pp in llama policy

* feat: set NCCL_BUFFSIZE in HybridParallelPlugin

* Improve logic for selecting metrics (#5196)

Co-authored-by: Xu <yuanchen.xu00@gmail.com>

* [doc] Update required third-party library list for testing and torch comptibility checking (#5207)

* doc/update requirements-test.txt

* update torch-cuda compatibility check

* support linear accumulation fusion (#5199)

support linear accumulation fusion

support linear accumulation fusion

fix

* [pipeline]: support arbitrary batch size in forward_only mode (#5201)

* fix: remove drop last in val & test dataloader

* feat: add run_forward_only, support arbitrary bs

* chore: modify ci script

* [pipeline]: add p2p fallback order and fix interleaved pp deadlock (#5214)

* fix: add fallback order option and update 1f1b

* fix: fix deadlock comm in interleaved pp

* test: modify p2p test

* [devops] update torch versoin in ci (#5217)

* fix-test (#5210)

fix-test

fix-test

* fix flash attn (#5209)

* [nfc] fix typo colossalai/shardformer/ (#5133)

* [Colossal-LLaMA-2] Release Colossal-LLaMA-2-13b-base model (#5224)

* update readme

* update readme

* update link

* update

* update readme

* update

* update

* update

* update title

* update example

* update example

* fix content

* add conclusion

* add license

* update

* update

* update version

* fix minor

* [doc] Update README.md of Colossal-LLAMA2 (#5233)

* Update README.md

* Update README.md

* [doc] Make leaderboard format more uniform and good-looking (#5231)

* Make leaderboard format more unifeid and good-looking

* Update README.md

* Update README.md

* [doc] add Colossal-LLaMA-2-13B (#5234)

* [doc] add Colossal-LLaMA-2-13B

* [doc] add Colossal-LLaMA-2-13B

* [doc] add Colossal-LLaMA-2-13B

* [format] applied code formatting on changed files in pull request 5234 (#5235)

Co-authored-by: github-actions <github-actions@github.com>

* [doc] SwiftInfer release (#5236)

* [doc] SwiftInfer release

* [doc] SwiftInfer release

* [doc] SwiftInfer release

* [doc] SwiftInfer release

* [doc] SwiftInfer release

* [npu] use extension for op builder (#5172)

* update extension

* update cpu adam

* update is

* add doc for cpu adam

* update kernel

* update commit

* update flash

* update memory efficient

* update flash attn

* update flash attention loader

* update api

* fix

* update doc

* update example time limit

* reverse change

* fix doc

* remove useless kernel

* fix

* not use warning

* update

* update

* [pipeline] A more general _communicate in p2p (#5062)

* A more general _communicate

* feat: finish tree_flatten version p2p

* fix: update p2p api calls

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [npu] change device to accelerator api (#5239)

* update accelerator

* fix timer

* fix amp

* update

* fix

* update bug

* add error raise

* fix autocast

* fix set device

* remove doc accelerator

* update doc

* update doc

* update doc

* use nullcontext

* update cpu

* update null context

* change time limit for example

* udpate

* update

* update

* update

* [npu] polish accelerator code

---------

Co-authored-by: Xuanlei Zhao <xuanlei.zhao@gmail.com>
Co-authored-by: zxl <43881818+oahzxl@users.noreply.github.com>

* [hotfix] removed unused flag (#5242)

* [doc] fix typo in Colossal-LLaMA-2/README.md (#5247)

* [workflow] fixed build CI (#5240)

* [workflow] fixed build CI

* polish

* polish

* polish

* polish

* polish

* [ci] fixed booster test (#5251)

* [ci] fixed booster test

* [ci] fixed booster test

* [ci] fixed booster test

* [ci] fixed ddp test (#5254)

* [ci] fixed ddp test

* polish

* fix typo in  applications/ColossalEval/README.md (#5250)

* [ci] fix shardformer tests. (#5255)

* fix ci

fix

* revert: revert p2p

* feat: add enable_metadata_cache option

* revert: enable t5 tests

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [doc] fix doc typo (#5256)

* [doc] fix annotation display

* [doc] fix llama2 doc

* [hotfix]: add pp sanity check and fix mbs arg (#5268)

* fix: fix misleading mbs arg

* feat: add pp sanity check

* fix: fix 1f1b sanity check

* [workflow] fixed incomplete bash command (#5272)

* [workflow] fixed oom tests (#5275)

* [workflow] fixed oom tests

* polish

* polish

* polish

* [ci] fix test_hybrid_parallel_plugin_checkpoint_io.py (#5276)

* fix ci

fix

* fix test

* revert: revert p2p

* feat: add enable_metadata_cache option

* revert: enable t5 tests

* fix

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [shardformer] hybridparallelplugin support gradients accumulation. (#5246)

* support gradients acc

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

* fix

fix

* fix

fix

fix

* [hotfix] Fix ShardFormer test execution path when using sequence parallelism (#5230)

* fix auto loading gpt2 tokenizer (#5279)

* [doc] add llama2-13B disyplay (#5285)

* Update README.md

* fix 13b typo

---------

Co-authored-by: binmakeswell <binmakeswell@gmail.com>

* fix llama pretrain (#5287)

* [hotfix] fix 3d plugin test (#5292)

* fix bug for mefture (#5299)

* [NFC] polish applications/Colossal-LLaMA-2/colossal_llama2/tokenizer/init_tokenizer.py code style (#5228)

* fix some typo (#5307)

* [feat] refactored extension module (#5298)

* [feat] refactored extension module

* polish

* polish

* polish

* polish

* polish

* polish

* polish

* polish

* polish

* polish

* [workflow] updated CI image (#5318)

* [accelerator] fixed npu api

* [tests] fix t5 test. (#5322)

* [ci] fix shardformer tests. (#5255)

* fix ci

fix

* revert: revert p2p

* feat: add enable_metadata_cache option

* revert: enable t5 tests

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* fix t5 test

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [doc] added docs for extensions (#5324)

* [doc] added docs for extensions

* polish

* polish

* fix typo under extensions/ (#5330)

* fix typo change dosen't to doesn't (#5308)

* [extension] fixed exception catch (#5342)

* [Chat] fix sft loss nan (#5345)

* fix script

* fix script

* fix chat nan

* fix chat nan

* [checkpointio] fix gemini and hybrid parallel optim checkpoint (#5347)

* [checkpointio] fix hybrid parallel optim checkpoint

* [extension] fix cuda extension

* [checkpointio] fix gemini optimizer checkpoint

* polish code

* [fix] remove unnecessary dp_size assert  (#5351)

* fix: remove unnecessary assert

* test: add more 3d plugin tests

* fix: add warning

* [gemini] fix param op hook when output is tuple (#5355)

* [gemini] fix param op hook when output is tuple

* [gemini] fix param op hook

* [llama] fix dataloader for hybrid parallel (#5358)

* [plugin] refactor prepare dataloader

* [plugin] update train script

* [llama] update training script (#5360)

* [llama] update training script

* [doc] polish docstr

* [llama] add flash attn patch for npu (#5362)

* [llama] fix neftune & pbar with start_step (#5364)

* [eval] update llama npu eval (#5366)

* [llama] polish training script and fix optim ckpt (#5368)

* [lr-scheduler] fix load state dict and add test (#5369)

* [llama] fix memory issue (#5371)

* [llama] fix memory issue

* [llama] add comment

* [moe] init mixtral impl

* [moe] update capacity computing (#5253)

* [moe] top2 allow uneven input

* [moe] update capacity computing

* [moe] remove debug info

* [moe] update capacity computing

* [moe] update capacity computing

* [moe] support mixtral (#5309)

* [moe] add mixtral block for single expert

* [moe] mixtral block fwd support uneven ep

* [moe] mixtral block bwd support uneven ep

* [moe] add mixtral moe layer

* [moe] simplify replace

* [meo] support save sharded mixtral

* [meo] support load sharded mixtral

* [meo] support save sharded optim

* [meo] integrate moe manager into plug

* [meo] fix optimizer load

* [meo] fix mixtral layer

* [moe] fix mixtral checkpoint io (#5314)

* [moe] fix mixtral forward default value (#5329)

* [moe] fix mixtral optim checkpoint (#5344)

* [moe] fix tests

* [release] update version (#5380)

* [llama] fix training and inference scripts (#5384)

* [llama] refactor inference example to fit sft

* [llama] fix training script to fit gemini

* [llama] fix inference script

* [doc] Fix typo (#5361)

* [doc] updated installation command (#5389)

* [hotfix] fix variable type for top_p (#5313)

Co-authored-by: binmakeswell <binmakeswell@gmail.com>

* [hotfix] Fix wrong import in meta_registry (#5392)

* [extension] hotfix jit extension setup (#5402)

* [example] reuse flash attn patch (#5400)

* [fsdp] impl save/load shard model/optimizer (#5357)

* [setup] fixed nightly release (#5388)

* [shardformer]gather llama logits (#5398)

* gather llama logits

* fix

* update requirements (#5407)

* [workflow] added pypi channel (#5412)

* [doc] fix blog link

* [doc] fix blog link

* fix sft single turn inference example (#5416)

* [example]add gpt2 benchmark example script. (#5295)

* benchmark gpt2

* fix

fix

fix

fix

* [doc] fix typo in Colossal-LLaMA-2/README.md (#5247)

* [workflow] fixed build CI (#5240)

* [workflow] fixed build CI

* polish

* polish

* polish

* polish

* polish

* [ci] fixed booster test (#5251)

* [ci] fixed booster test

* [ci] fixed booster test

* [ci] fixed booster test

* [ci] fixed ddp test (#5254)

* [ci] fixed ddp test

* polish

* fix typo in  applications/ColossalEval/README.md (#5250)

* [ci] fix shardformer tests. (#5255)

* fix ci

fix

* revert: revert p2p

* feat: add enable_metadata_cache option

* revert: enable t5 tests

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [doc] fix doc typo (#5256)

* [doc] fix annotation display

* [doc] fix llama2 doc

* [hotfix]: add pp sanity check and fix mbs arg (#5268)

* fix: fix misleading mbs arg

* feat: add pp sanity check

* fix: fix 1f1b sanity check

* [workflow] fixed incomplete bash command (#5272)

* [workflow] fixed oom tests (#5275)

* [workflow] fixed oom tests

* polish

* polish

* polish

* [ci] fix test_hybrid_parallel_plugin_checkpoint_io.py (#5276)

* fix ci

fix

* fix test

* revert: revert p2p

* feat: add enable_metadata_cache option

* revert: enable t5 tests

* fix

---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

* [shardformer] hybridparallelplugin support gradients accumulation. (#5246)

* support gradients acc

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

fix

* fix

fix

* fix

fix

fix

* [hotfix] Fix ShardFormer test execution path when using sequence parallelism (#5230)

* fix auto loading gpt2 tokenizer (#5279)

* [doc] add llama2-13B disyplay (#5285)

* Update README.md

* fix 13b typo

---------

Co-authored-by: binmakeswell <binmakeswell@gmail.com>

* fix llama pretrain (#5287)

* fix

* fix

* fix

fix

* fix

fix

fix

* fix

fix

* benchmark gpt2

* fix

fix

fix

fix

* [workflow] fixed build CI (#5240)

* [workflow] fixed build CI

* polish

* polish

* polish

* polish

* polish

* [ci] fixed booster test (#5251)

* [ci] fixed booster test

* [ci] fixed booster test

* [ci] fixed booster test

* fix

fix

* fix

fix

fix

* fix

* fix

fix

fix

fix

fix

* fix

* Update shardformer.py

---------

Co-authored-by: digger yu <digger-yu@outlook.com>
Co-authored-by: Frank Lee <somerlee.9@gmail.com>
Co-authored-by: Wenhao Chen <cwher@outlook.com>
Co-authored-by: binmakeswell <binmakeswell@gmail.com>
Co-authored-by: Zhongkai Zhao <kanezz620@gmail.com>
Co-authored-by: Michelle <97082656+MichelleMa8@users.noreply.github.com>
Co-authored-by: Desperado-Jia <502205863@qq.com>

* [doc] sora release (#5425)

* [doc] sora release

* [doc] sora release

* [doc] sora release

* [doc] sora release

* [devops] fix extention building (#5427)

* [hotfix] fix sd vit import error (#5420)

* fix import error

* Update dpt_depth.py

---------

Co-authored-by: binmakeswell <binmakeswell@gmail.com>

* [hotfix] fix typo of openmoe model source (#5403)

* [doc] update some translations with README-zh-Hans.md (#5382)

* [hotfix] fix typo change _descrption to _description (#5331)

* [hotfix] fix typo change enabel to enable under colossalai/shardformer/ (#5317)

* [eval-hotfix] set few_shot_data to None when few shot is disabled (#5422)

* [hotfix] fix typo change MoECheckpintIO to MoECheckpointIO (#5335)

Co-authored-by: binmakeswell <binmakeswell@gmail.com>

* [doc] Fix typo s/infered/inferred/ (#5288)

Signed-off-by: hugo-syn <hugo.vincent@synacktiv.com>

* [hotfix] fix stable diffusion inference bug. (#5289)

* Update train_ddp.yaml

delete  "strategy" to fix DDP config loading bug in "main.py"

* Update train_ddp.yaml

fix inference with scripts/txt2img.py config file load bug.

* Update README.md

add pretrain model test code.

* [colossal-llama2] add stream chat examlple for chat version model (#5428)

* add stream chat for chat version

* remove os.system clear

* modify function name

* [release] update version (#5411)

* fix tensor data update for gemini loss caluculation (#5442)

* [hotfix] fix typo s/keywrods/keywords etc. (#5429)

* [devops] fix compatibility (#5444)

* [devops] fix compatibility

* [hotfix] update compatibility test on pr

* [devops] fix compatibility

* [devops] record duration during comp test

* [test] decrease test duration

* fix falcon

* [shardformer] fix gathering output when using tensor parallelism (#5431)

* fix

* padding vocab_size when using pipeline parallellism

padding vocab_size when using pipeline parallellism

fix

fix

* fix

* fix

fix

fix

* fix gather output

* fix

* fix

* fix

fix resize embedding

fix resize embedding

* fix resize embedding

fix

* revert

* revert

* revert

* [doc] release Open-Sora 1.0 with model weights (#5468)

* [doc] release Open-Sora 1.0 with model weights

* [doc] release Open-Sora 1.0 with model weights

* [doc] release Open-Sora 1.0 with model weights

* [doc] update open-sora demo (#5479)

* [doc] update open-sora demo

* [doc] update open-sora demo

* [doc] update open-sora demo

* [example] add grok-1 inference (#5485)

* [misc] add submodule

* remove submodule

* [example] support grok-1 tp inference

* [example] add grok-1 inference script

* [example] refactor code

* [example] add grok-1 readme

* [exmaple] add test ci

* [exmaple] update readme

* [release] grok-1 314b inference (#5490)

* [release] grok-1 inference

* [release] grok-1 inference

* [release] grok-1 inference

* [example] update Grok-1 inference (#5495)

* revise grok-1 example

* remove unused arg in scripts

* prevent re-installing torch

* update readme

* revert modifying colossalai requirements

* add perf

* trivial

* add tokenizer url

* [hotfix] set return_outputs=False in examples and polish code (#5404)

* fix: simplify merge_batch

* fix: use return_outputs=False to eliminate extra memory consumption

* feat: add return_outputs warning

* style: remove `return_outputs=False` as it is the default value

* [release] grok-1 inference benchmark (#5500)

* [release] grok-1 inference benchmark

* [release] grok-1 inference benchmark

* [release] grok-1 inference benchmark

* [release] grok-1 inference benchmark

* [release] grok-1 inference benchmark

* [shardformer]Fix lm parallel. (#5480)

* fix

* padding vocab_size when using pipeline parallellism

padding vocab_size when using pipeline parallellism

fix

fix

* fix

* fix

fix

fix

* fix gather output

* fix

* fix

* fix

fix resize embedding

fix resize embedding

* fix resize embedding

fix

* revert

* revert

* revert

* fix lm forward distribution

* fix

* test ci

* fix

* [fix] fix grok-1 example typo (#5506)

* [devops] fix example test ci (#5504)

* Fix ColoTensorSpec for py11 (#5440)

* fixed layout converter caching and updated tester

* Empty-Commit

* [shardformer] update colo attention to support custom mask (#5510)

* [feature] refactor colo attention (#5462)

* [extension] update api

* [feature] add colo attention

* [feature] update sdpa

* [feature] update npu attention

* [feature] update flash-attn

* [test] add flash attn test

* [test] update flash attn test

* [shardformer] update modeling to fit colo attention (#5465)

* [misc] refactor folder structure

* [shardformer] update llama flash-attn

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Co-authored-by: github-actions <github-actions@github.com>

* [shardformer] fix pipeline forward error if custom layer distribution is used (#5189)

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* Replace whisper policy usage with self one

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---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

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Co-authored-by: Tong Li <tong.li352711588@gmail.com>

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

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* fix pp bugs and sp bugs for LlaMa model

* integrating ring-based sequence parallelism into ShardFormer

* [sequence parallelism]: Add fused megatron function

* integrating ring-based sequence parallelism into ShardFormer

---------

Co-authored-by: linsj20 <linsj20@mails.tsinghua.edu.cn>

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---------

Co-authored-by: linsj20 <linsj20@mails.tsinghua.edu.cn>

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

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Co-authored-by: Hongxin Liu <lhx0217@gmail.com>
Co-authored-by: digger yu <digger-yu@outlook.com>
Co-authored-by: binmakeswell <binmakeswell@gmail.com>

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Co-authored-by: Hongxin Liu <lhx0217@gmail.com>
Co-authored-by: digger yu <digger-yu@outlook.com>
Co-authored-by: binmakeswell <binmakeswell@gmail.com>

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Co-authored-by: github-actions <github-actions@github.com>

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---------

Co-authored-by: Wenhao Chen <cwher@outlook.com>

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Co-authored-by: Tong Li <tong.li352711588@gmail.com>

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

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* fix pp bugs and sp bugs for LlaMa model

* integrating ring-based sequence parallelism into ShardFormer

* [sequence parallelism]: Add fused megatron function

* integrating ring-based sequence parallelism into ShardFormer

---------

Co-authored-by: linsj20 <linsj20@mails.tsinghua.edu.cn>

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---------

Co-authored-by: linsj20 <linsj20@mails.tsinghua.edu.cn>

* [hotfix] quick fixes to make legacy tutorials runnable (#5559)

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

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

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

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Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>

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Co-authored-by: binmakeswell <binmakeswell@gmail.com>
Co-authored-by: Yuanheng Zhao <54058983+yuanheng-zhao@users.noreply.github.com>
Co-authored-by: Wenhao Chen <cwher@outlook.com>
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Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>

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Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
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Co-authored-by: Hongxin Liu <lhx0217@gmail.com>
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Co-authored-by: Edenzzzz <wtan45@wisc.edu>

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* fix

fix

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Update low_level_zero_plugin.py

Update low_level_zero_plugin.py

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701 lines
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Python

#!/usr/bin/env python
# -*- encoding: utf-8 -*-
import io
import pickle
import re
from collections import namedtuple
from typing import Any, Callable, List, Optional, Tuple, Union
import torch
import torch.distributed as dist
from packaging.version import Version
from torch.distributed import ProcessGroup
from torch.distributed import distributed_c10d as c10d
from torch.utils._pytree import tree_flatten, tree_unflatten
from .stage_manager import PipelineStageManager
def _cuda_safe_tensor_to_object(tensor: torch.Tensor, tensor_size: torch.Size) -> Any:
"""transform tensor to object with unpickle.
Info of the device in bytes stream will be modified into current device before unpickling
Args:
tensor (:class:`torch.tensor`): tensor to be unpickled
tensor_size (:class:`torch.Size`): Size of the real info in bytes
Returns:
Any: object after unpickled
"""
buf = tensor.numpy().tobytes()[:tensor_size]
if b"cuda" in buf:
buf_array = bytearray(buf)
device_index = torch.cuda.current_device()
# There might be more than one output tensors during forward
for cuda_str in re.finditer(b"cuda", buf_array):
pos = cuda_str.start()
buf_array[pos + 5] = 48 + device_index
buf = bytes(buf_array)
io_bytes = io.BytesIO(buf)
byte_pickler = pickle.Unpickler(io_bytes)
unpickle = byte_pickler.load()
return unpickle
def check_for_nccl_backend(group):
pg = group or c10d._get_default_group()
# Gate PG wrapper check on Gloo availability.
if c10d._GLOO_AVAILABLE:
# It is not expected for PG to be wrapped many times, but support it just
# in case
while isinstance(pg, c10d._ProcessGroupWrapper):
pg = pg.wrapped_pg
return c10d.is_nccl_available() and pg.name() == c10d.Backend.NCCL
# NOTE: FIXME: NPU DOES NOT support isend nor irecv, so broadcast is kept for future use
def _broadcast_object_list(
object_list: List[Any], src: int, group: ProcessGroup, device: Optional[Union[torch.device, str, int]] = None
):
"""This is a modified version of the broadcast_object_list in torch.distribution
The only difference is that object will be move to correct device after unpickled.
If local_rank = src, then object list will be sent to rank src. Otherwise, object list will
be updated with data sent from rank src.
Args:
object_list (List[Any]): list of object to broadcast
src (int): source rank to broadcast
dst (int): dst rank to broadcast
device (:class:`torch.device`): device to do broadcast. current device in default
"""
if c10d._rank_not_in_group(group):
c10d._warn_not_in_group("broadcast_object_list")
return
is_nccl_backend = _check_for_nccl_backend(group)
current_device = None
if device is not None:
if is_nccl_backend and device.type != "cuda":
raise ValueError("device type must be cuda for nccl backend")
current_device = device
else:
current_device = torch.device("cpu")
if is_nccl_backend:
current_device = torch.device("cuda", torch.cuda.current_device())
my_rank = dist.get_rank()
# Serialize object_list elements to tensors on src rank.
if my_rank == src:
if Version(torch.__version__) >= Version("1.13.0"):
tensor_list, size_list = zip(*[c10d._object_to_tensor(obj, device=current_device) for obj in object_list])
else:
tensor_list, size_list = zip(*[c10d._object_to_tensor(obj) for obj in object_list])
object_sizes_tensor = torch.cat(size_list)
else:
object_sizes_tensor = torch.empty(len(object_list), dtype=torch.long)
if is_nccl_backend:
object_sizes_tensor = object_sizes_tensor.to(current_device)
# Broadcast object sizes
c10d.broadcast(object_sizes_tensor, src=src, group=group, async_op=False)
# Concatenate and broadcast serialized object tensors
if my_rank == src:
object_tensor = torch.cat(tensor_list)
else:
object_tensor = torch.empty( # type: ignore[call-overload]
torch.sum(object_sizes_tensor).item(), # type: ignore[arg-type]
dtype=torch.uint8,
)
if is_nccl_backend:
object_tensor = object_tensor.to(current_device)
c10d.broadcast(object_tensor, src=src, group=group, async_op=False)
# Deserialize objects using their stored sizes.
offset = 0
if my_rank != src:
for i, obj_size in enumerate(object_sizes_tensor):
obj_view = object_tensor[offset : offset + obj_size]
obj_view = obj_view.type(torch.uint8)
if obj_view.device != torch.device("cpu"):
obj_view = obj_view.cpu()
offset += obj_size
# unpickle
unpickle_object = _cuda_safe_tensor_to_object(obj_view, obj_size)
# unconsistence in device
if (
isinstance(unpickle_object, torch.Tensor)
and unpickle_object.device.index != torch.cuda.current_device()
):
unpickle_object = unpickle_object.cuda()
object_list[i] = unpickle_object
def _check_for_nccl_backend(group):
pg = group or c10d._get_default_group()
# Gate PG wrapper check on Gloo availability.
if c10d._GLOO_AVAILABLE:
# It is not expected for PG to be wrapped many times, but support it just in case
while isinstance(pg, c10d._ProcessGroupWrapper):
pg = pg.wrapped_pg
return c10d.is_nccl_available() and pg.name() == c10d.Backend.NCCL
def _check_device(group):
is_nccl_backend = _check_for_nccl_backend(group)
current_device = torch.device("cpu")
if is_nccl_backend:
current_device = torch.device("cuda", torch.cuda.current_device())
return current_device, is_nccl_backend
TensorMetadata = namedtuple("TensorMetadata", ["shape", "dtype", "requires_grad"])
P2PMetadata = namedtuple("P2PMetadata", ["tree_spec", "tensor_metadata", "non_tensor_obj_idx", "non_tensor_objs"])
def create_send_metadata(
object: Any, strict: bool = True, return_tensor: bool = False
) -> Union[P2PMetadata, Tuple[P2PMetadata, List[torch.Tensor]]]:
"""
Args:
object (Any): object needed to be sent
strict (bool, optional): whether to check if the object is supported for fast send
return_tensor (bool, optional): whether to return tensor objects
"""
objs, tree_spec = tree_flatten(object)
tensor_metadata, tensor_objs = [], []
non_tensor_obj_idx, non_tensor_objs = [], []
for idx, obj in enumerate(objs):
if isinstance(obj, torch.Tensor):
tensor_objs.append(obj)
tensor_metadata.append(TensorMetadata(obj.shape, obj.dtype, obj.requires_grad))
else:
non_tensor_obj_idx.append(idx)
non_tensor_objs.append(obj)
assert not strict or len(non_tensor_objs) == 0, "Only support tensor for fast send"
metadata = P2PMetadata(tree_spec, tensor_metadata, non_tensor_obj_idx, non_tensor_objs)
return metadata if not return_tensor else (metadata, tensor_objs)
def _filling_ops_queue(
obj: Union[torch.Tensor, List[torch.Tensor]],
comm_op: Callable,
comm_rank: int,
ops_queue: List,
group: ProcessGroup,
):
if isinstance(obj, torch.Tensor):
obj = obj.contiguous()
op_to_add = dist.P2POp(comm_op, obj, comm_rank, group)
ops_queue.append(op_to_add)
else:
for tensor_to_comm in obj:
assert isinstance(tensor_to_comm, torch.Tensor)
_filling_ops_queue(tensor_to_comm, comm_op, comm_rank, ops_queue, group)
def _create_recv_buffer(tensor_metadata: List[TensorMetadata], current_device) -> List[torch.Tensor]:
buffer_recv = []
for metadata in tensor_metadata:
tensor_recv = torch.empty(
metadata.shape, requires_grad=metadata.requires_grad, device=current_device, dtype=metadata.dtype
)
buffer_recv.append(tensor_recv)
return buffer_recv
def _batch_send_recv_tensor(
send_tensor_list: Optional[List[torch.Tensor]],
recv_tensor_metadata: Optional[List[TensorMetadata]],
send_dst: Optional[int],
recv_src: Optional[int],
send_group: Optional[ProcessGroup],
recv_group: Optional[ProcessGroup],
current_device: Any,
) -> Optional[Union[torch.Tensor, List[torch.Tensor]]]:
buffer_recv = None
if recv_tensor_metadata is not None:
buffer_recv = _create_recv_buffer(recv_tensor_metadata, current_device)
ops = []
if send_dst is not None and send_tensor_list is not None:
assert send_group is not None
_filling_ops_queue(send_tensor_list, dist.isend, send_dst, ops, send_group)
if recv_src is not None and buffer_recv is not None:
assert recv_group is not None
_filling_ops_queue(buffer_recv, dist.irecv, recv_src, ops, recv_group)
if len(ops) > 0:
reqs = dist.batch_isend_irecv(ops)
for req in reqs:
req.wait()
# Remove synchronization according to Pytorch's documentation
# However, the Megatron-LM does synchronization here
# https://github.com/microsoft/Megatron-DeepSpeed/blob/ef13d099c2a1609225a4ce4c1a1753cc76dd90a1/megatron/p2p_communication.py#L111-L112
# In case there is potential error, uncomment the following `torch.cuda.synchronize()`
# torch.cuda.synchronize()
return buffer_recv
def _send_recv_serialization_object(
object: Optional[P2PMetadata],
send_dst: Optional[int],
recv_src: Optional[int],
send_group: Optional[ProcessGroup],
recv_group: Optional[ProcessGroup],
current_device: Any,
is_nccl_backend: bool,
) -> Optional[P2PMetadata]:
ops = []
send_object_tensor = None
if object is not None and send_dst is not None:
if Version(torch.__version__) >= Version("1.13.0"):
send_object_tensor, send_object_size_tensor = c10d._object_to_tensor(object, device=current_device)
else:
send_object_tensor, send_object_size_tensor = c10d._object_to_tensor(object)
if is_nccl_backend:
send_object_size_tensor = send_object_size_tensor.to(current_device)
send_object_tensor = send_object_tensor.to(current_device)
_filling_ops_queue(send_object_size_tensor, dist.isend, send_dst, ops, send_group)
recv_object_size_tensor = None
if recv_src is not None:
recv_object_size_tensor = torch.empty(1, dtype=torch.long)
if is_nccl_backend:
recv_object_size_tensor = recv_object_size_tensor.to(current_device)
_filling_ops_queue(recv_object_size_tensor, dist.irecv, recv_src, ops, recv_group)
if len(ops) > 0:
reqs = dist.batch_isend_irecv(ops)
for req in reqs:
req.wait()
# See the comment in `_batch_send_recv_tensor`
# torch.cuda.synchronize()
ops = []
if send_dst is not None and send_object_tensor is not None:
_filling_ops_queue(send_object_tensor, dist.isend, send_dst, ops, send_group)
recv_object_tensor = None
if recv_src is not None and recv_object_size_tensor is not None:
recv_object_tensor = torch.empty(recv_object_size_tensor.item(), dtype=torch.uint8)
if is_nccl_backend:
recv_object_tensor = recv_object_tensor.to(current_device)
_filling_ops_queue(recv_object_tensor, dist.irecv, recv_src, ops, recv_group)
if len(ops) > 0:
reqs = dist.batch_isend_irecv(ops)
for req in reqs:
req.wait()
# See the comment in `_batch_send_recv_tensor`
# torch.cuda.synchronize()
if recv_object_tensor is not None and recv_object_size_tensor is not None:
recv_object_tensor = recv_object_tensor.type(torch.uint8)
if recv_object_tensor.device != torch.device("cpu"):
recv_object_tensor = recv_object_tensor.cpu()
unpickle_object = _cuda_safe_tensor_to_object(recv_object_tensor, recv_object_size_tensor.item())
if isinstance(unpickle_object, torch.Tensor) and unpickle_object.device.index != torch.cuda.current_device():
unpickle_object = unpickle_object.cuda()
return unpickle_object
def _communicate(
object: Any,
send_dst: Optional[int],
recv_src: Optional[int],
send_group: Optional[ProcessGroup] = None,
recv_group: Optional[ProcessGroup] = None,
send_metadata: bool = True,
metadata_recv: Optional[P2PMetadata] = None,
send_prior_fallback: Optional[bool] = None,
) -> Any:
"""
Send and receive object from send_dst and recv_src respectively
Args:
object (Any): object needed to be sent
send_dst (int): rank of the destination
recv_src (int): rank of the source
send_group (ProcessGroup, optional): process group of sender
recv_group (ProcessGroup, optional): process group of receiver
send_metadata (bool, optional): whether to send metadata
metadata_recv (P2PMetadata, optional): metadata of the object to be received
"""
assert send_dst is not None or recv_src is not None, "send_dst and recv_src cannot be both None"
assert send_dst is None or send_group is not None, "send_group must be specified when send_dst is not None"
assert recv_src is None or recv_group is not None, "recv_group must be specified when recv_src is not None"
assert (
metadata_recv is None or len(metadata_recv.non_tensor_obj_idx) == 0
), "metadata_recv should not contain non-tensor objects"
metadata_send, tensor_objs = None, None
if object is not None:
# NOTE: if object contains non-tensor objects, we have to send metadata
metadata_send, tensor_objs = create_send_metadata(object, strict=False, return_tensor=True)
send_metadata = send_metadata or len(metadata_send.non_tensor_obj_idx) > 0
# NOTE: send & recv should be atomic operations. However, if we need to send metadata or receive metadata,
# we are not able to do that (1. send & recv metadata 2. send & recv). So we need to split the send & recv into two parts in this case.
if (send_dst is not None and recv_src is not None) and (send_metadata or metadata_recv is None):
assert send_prior_fallback is not None, "Priority must be set if fallback happens"
if send_prior_fallback:
_communicate(object, send_dst=send_dst, recv_src=None, send_group=send_group, send_metadata=send_metadata)
return _communicate(
None, send_dst=None, recv_src=recv_src, recv_group=recv_group, metadata_recv=metadata_recv
)
else:
recv_data = _communicate(
None, send_dst=None, recv_src=recv_src, recv_group=recv_group, metadata_recv=metadata_recv
)
_communicate(object, send_dst=send_dst, recv_src=None, send_group=send_group, send_metadata=send_metadata)
return recv_data
# NOTE: only the following 5 cases are valid:
# 1. send() [needs extra metadata] and no recv()
# 2. recv() [needs extra metadata] and no send()
# 3. neither send() nor recv() need extra metadata
assert not (send_dst is not None and send_metadata) or recv_src is None
assert not (recv_src is not None and metadata_recv is None) or send_dst is None
assert not (send_dst is not None and recv_src is not None) or (not send_metadata and metadata_recv is not None)
assert not c10d._rank_not_in_group(send_group) and not c10d._rank_not_in_group(recv_group)
current_send_device, is_send_nccl_backend = _check_device(send_group)
current_recv_device, is_recv_nccl_backend = _check_device(recv_group)
is_nccl_backend = is_send_nccl_backend and is_recv_nccl_backend
assert current_send_device == current_recv_device
current_device = current_send_device
if (send_dst is not None and send_metadata) or (recv_src is not None and metadata_recv is None):
# Send and receive metadata
_metadata_recv = _send_recv_serialization_object(
object=metadata_send,
send_dst=send_dst if send_metadata else None,
recv_src=recv_src if metadata_recv is None else None,
send_group=send_group if send_metadata else None,
recv_group=recv_group if metadata_recv is None else None,
current_device=current_device,
is_nccl_backend=is_nccl_backend,
)
assert metadata_recv is None or _metadata_recv is None
metadata_recv = _metadata_recv if metadata_recv is None else metadata_recv
# Send and receive data
recv_tensor_metadata = None if metadata_recv is None else metadata_recv.tensor_metadata
recv_tensor_objs = _batch_send_recv_tensor(
tensor_objs, recv_tensor_metadata, send_dst, recv_src, send_group, recv_group, current_device
)
if metadata_recv is not None:
assert isinstance(metadata_recv, P2PMetadata)
tree_spec = metadata_recv.tree_spec
non_tensor_obj_idx = metadata_recv.non_tensor_obj_idx
non_tensor_objs = metadata_recv.non_tensor_objs
if recv_tensor_objs is None:
recv_tensor_objs = []
for idx in non_tensor_obj_idx:
recv_tensor_objs.insert(idx, non_tensor_objs.pop(0))
recv_object = tree_unflatten(recv_tensor_objs, tree_spec)
return recv_object
def _send_object(object: Any, src: int, dst: int, group: ProcessGroup, **kwargs) -> None:
"""send anything to dst rank
Args:
object (Any): object needed to be sent
dst (int): rank of the destination
Returns:
None
"""
_communicate(object, send_dst=dst, recv_src=None, send_group=group, **kwargs)
def _recv_object(src: int, dst: int, group: ProcessGroup, **kwargs) -> Any:
"""recv anything from src
Args:
src (int): source rank of data. local rank will receive data from src rank.
Returns:
Any: Object received from src.
"""
return _communicate(None, send_dst=None, recv_src=src, recv_group=group, **kwargs)
def _p2p_comm(
tensor_send_next: torch.Tensor,
recv_prev: bool,
peer: int,
group: ProcessGroup,
comm_dtype: torch.dtype = torch.float16,
):
"""
Send and recv tensor using P2P communication, used when pipeline size is 2 to solve the race communication.
Args:
tensor_send_next (torch.Tensor): tensor to be sent to next stage
recv_prev (bool): whether to receive tensor from previous stage
peer (int): rank of the peer
group (ProcessGroup): process group
comm_dtype (torch.dtype): dtype of the tensor to be sent
Returns:
torch.Tensor: tensor received from previous stage
"""
# send and recv shape
send_next_shape = None
recv_prev_shape = None
if tensor_send_next is not None:
send_next_shape = torch.tensor(tensor_send_next.size(), device=torch.cuda.current_device(), dtype=torch.int64)
if recv_prev:
recv_prev_shape = torch.empty((3), device=torch.cuda.current_device(), dtype=torch.int64)
ops = []
if send_next_shape is not None:
send_next_op = dist.P2POp(dist.isend, send_next_shape, peer=peer, group=group)
ops.append(send_next_op)
if recv_prev_shape is not None:
recv_prev_op = dist.P2POp(
dist.irecv,
recv_prev_shape,
peer=peer,
group=group,
)
ops.append(recv_prev_op)
if len(ops) > 0:
reqs = dist.batch_isend_irecv(ops)
for req in reqs:
req.wait()
if recv_prev_shape is not None:
recv_prev_shape = recv_prev_shape.tolist()
# send and recv data
tensor_recv_prev = None
if recv_prev:
tensor_recv_prev = torch.empty(recv_prev_shape, device=torch.cuda.current_device(), dtype=comm_dtype)
ops = []
if tensor_send_next is not None:
send_next_op = dist.P2POp(
dist.isend,
tensor_send_next,
peer=peer,
group=group,
)
ops.append(send_next_op)
if tensor_recv_prev is not None:
recv_prev_op = dist.P2POp(
dist.irecv,
tensor_recv_prev,
peer=peer,
group=group,
)
ops.append(recv_prev_op)
if len(ops) > 0:
reqs = dist.batch_isend_irecv(ops)
for req in reqs:
req.wait()
return tensor_recv_prev
class PipelineP2PCommunication:
def __init__(self, stage_manager: PipelineStageManager) -> None:
self.stage_manager = stage_manager
def recv_forward(self, prev_rank: Optional[int] = None, metadata_recv: Optional[P2PMetadata] = None) -> Any:
"""Copy the forward output from the previous stage in pipeline as the input tensor of this stage.
Args:
prev_rank (int, optional): The rank of the source of the tensor.
Returns:
Any: The input tensor or input tensor list.
"""
if prev_rank is None:
prev_rank = self.stage_manager.get_prev_rank()
cur_rank = self.stage_manager.get_rank()
input_tensor = _recv_object(
prev_rank,
cur_rank,
self.stage_manager.get_p2p_process_group(prev_rank, cur_rank),
metadata_recv=metadata_recv,
)
return input_tensor
def recv_backward(self, next_rank: Optional[int] = None, metadata_recv: Optional[P2PMetadata] = None) -> Any:
"""Copy the gradient tensor from the next stage in pipeline as the input gradient of this stage.
Args:
next_rank (int, optional): The rank of the source of the tensor.
Returns:
Any: The input gradient tensor or gradient tensor list.
"""
if next_rank is None:
next_rank = self.stage_manager.get_next_rank()
cur_rank = self.stage_manager.get_rank()
output_tensor_grad = _recv_object(
next_rank,
cur_rank,
self.stage_manager.get_p2p_process_group(next_rank, cur_rank),
metadata_recv=metadata_recv,
)
return output_tensor_grad
def send_forward(self, output_object: Any, next_rank: Optional[int] = None, send_metadata: bool = True) -> None:
"""Sends the input tensor to the next stage in pipeline.
Args:
output_object (Any): Object to be sent.
next_rank (int, optional): The rank of the recipient of the tensor.
"""
if next_rank is None:
next_rank = self.stage_manager.get_next_rank()
cur_rank = self.stage_manager.get_rank()
_send_object(
output_object,
cur_rank,
next_rank,
self.stage_manager.get_p2p_process_group(cur_rank, next_rank),
send_metadata=send_metadata,
)
def send_backward(self, input_object: Any, prev_rank: Optional[int] = None, send_metadata: bool = True) -> None:
"""Sends the gradient tensor to the previous stage in pipeline.
Args:
input_object (Any): Object to be sent.
prev_rank (int, optional): The rank of the recipient of the tensor
"""
if prev_rank is None:
prev_rank = self.stage_manager.get_prev_rank()
cur_rank = self.stage_manager.get_rank()
_send_object(
input_object,
cur_rank,
prev_rank,
self.stage_manager.get_p2p_process_group(cur_rank, prev_rank),
send_metadata=send_metadata,
)
def send_forward_recv_backward(
self,
input_object: Any,
next_rank: Optional[int] = None,
send_metadata: bool = True,
metadata_recv: Optional[P2PMetadata] = None,
send_prior_fallback: Optional[bool] = None,
) -> Any:
"""Sends the gradient tensor to and copy the gradient tensor from the next stage in pipeline
Args:
input_object (Any): Object to be sent.
next_rank (int, optional): The rank of the sender and recipient of the tensor
"""
if next_rank is None:
next_rank = self.stage_manager.get_next_rank()
cur_rank = self.stage_manager.get_rank()
group = self.stage_manager.get_p2p_process_group(cur_rank, next_rank)
return _communicate(
input_object,
next_rank,
next_rank,
send_group=group,
recv_group=group,
send_metadata=send_metadata,
metadata_recv=metadata_recv,
send_prior_fallback=send_prior_fallback,
)
def send_backward_recv_forward(
self,
input_object: Any,
prev_rank: Optional[int] = None,
send_metadata: bool = True,
metadata_recv: Optional[P2PMetadata] = None,
send_prior_fallback: Optional[bool] = None,
) -> Any:
"""Sends the gradient tensor to and copy the gradient tensor from the previous stage in pipeline
Args:
input_object (Any): Object to be sent.
prev_rank (int, optional): The rank of the sender and recipient of the tensor
"""
if prev_rank is None:
prev_rank = self.stage_manager.get_prev_rank()
cur_rank = self.stage_manager.get_rank()
group = self.stage_manager.get_p2p_process_group(prev_rank, cur_rank)
return _communicate(
input_object,
prev_rank,
prev_rank,
send_group=group,
recv_group=group,
send_metadata=send_metadata,
metadata_recv=metadata_recv,
send_prior_fallback=send_prior_fallback,
)
def p2p_communicate(
self,
output_object: Any,
recv_pre: bool,
next_rank: Optional[int] = None,
comm_dtype: torch.dtype = torch.float16,
) -> None:
"""
Sends the input tensor to the next stage in pipeline, using `P2Pop` in torch.
Args:
output_object (Any): Object to be sent.
next_rank (int, optional): The rank of the recipient of the tensor.
"""
if next_rank is None:
next_rank = self.stage_manager.get_next_rank()
cur_rank = self.stage_manager.get_rank()
recv_tensor = _p2p_comm(
output_object,
recv_pre,
next_rank,
self.stage_manager.get_p2p_process_group(cur_rank, next_rank),
comm_dtype,
)
return recv_tensor