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188 Commits

Author SHA1 Message Date
db9dfcfa6a [Docs] Add Ollama meetup slides (#15905)
Signed-off-by: simon-mo <simon.mo@hey.com>
2025-04-01 13:58:59 -07:00
9ef98d527e [Model][MiniMaxText01] Support MiniMaxText01 model inference (#13454)
Signed-off-by: qscqesze <475517977@qq.com>
Co-authored-by: qingjun <qingjun@minimaxi.com>
Co-authored-by: qscqesze <475517977@qq.com>
2025-04-01 16:23:55 -04:00
93491aefc7 [BugFix] make sure socket close (#15875)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-04-01 13:10:24 -07:00
7acd539cd7 [Docs] update usage stats language (#15898)
Signed-off-by: simon-mo <simon.mo@hey.com>
2025-04-01 12:54:13 -07:00
e75a6301bd [V1][Spec Decode] Implement Eagle Proposer [1/N] (#15729)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-04-01 12:33:16 -07:00
a79cc68b3a [V1][Metrics] Initial speculative decoding metrics (#15151)
Signed-off-by: Mark McLoughlin <markmc@redhat.com>
2025-04-01 10:45:04 -07:00
7e3f7a4ee7 [CI] Disable flaky structure decoding test temporarily. (#15892)
Signed-off-by: Roger Wang <ywang@roblox.com>
2025-04-01 17:42:34 +00:00
9ec8257914 [Model] Add module name prefixes to gemma3 (#15889)
Signed-off-by: Bartholomew Sabat <bartek@recursal.ai>
Co-authored-by: Bartholomew Sabat <bartek@recursal.ai>
2025-04-01 10:13:40 -07:00
38327cf454 [Model] Aya Vision (#15441)
Signed-off-by: Jennifer Zhao <ai.jenniferzhao@gmail.com>
Signed-off-by: Roger Wang <ywang@roblox.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2025-04-01 16:30:43 +00:00
dfa82e2a3d [CI/Build] Clean up LoRA tests (#15867)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-04-01 16:28:50 +00:00
e59ca942f5 Add option to use DeepGemm contiguous grouped gemm kernel for fused MoE operations. (#13932)
Signed-off-by: Bill Nell <bnell@redhat.com>
2025-04-01 12:07:43 -04:00
a57a3044aa [ROCm][Build][Bugfix] Bring the base dockerfile in sync with the ROCm fork (#15820)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
2025-04-01 08:56:39 -07:00
4e5a0f6ae2 [Misc] Allow using OpenCV as video IO fallback (#15055)
Signed-off-by: Isotr0py <2037008807@qq.com>
Co-authored-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-04-01 15:55:13 +00:00
b63bd14999 Reinstate format.sh and make pre-commit installation simpler (#15890)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-04-01 15:41:30 +00:00
2041c0e360 [Doc] Quark quantization documentation (#15861)
Signed-off-by: chaow <chaow@amd.com>
2025-04-01 08:32:45 -07:00
085cbc4f9f [New Model]: jinaai/jina-reranker-v2-base-multilingual (#15876)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-04-01 08:32:26 -07:00
2b93162fb0 Remove format.sh as it's been unsupported >70 days (#15884)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-04-01 22:27:46 +08:00
2e45bd29fe [Misc] remove unused script (#15746)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-04-01 13:58:05 +00:00
51d7c6a2b2 [Model] Support Mistral3 in the HF Transformers format (#15505)
Signed-off-by: mgoin <mgoin64@gmail.com>
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2025-04-01 06:10:05 -07:00
f3aca1ee30 setup correct nvcc version with CUDA_HOME (#15725)
Signed-off-by: Yang Chen <yangche@fb.com>
2025-04-01 06:09:40 -07:00
8dd41d6bcc [Misc] Use envs.VLLM_USE_RAY_COMPILED_DAG_CHANNEL_TYPE (#15831)
Signed-off-by: Rui Qiao <ruisearch42@gmail.com>
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-04-01 06:07:53 -07:00
0a298ea418 [Bugfix] Fix no video/image profiling edge case for MultiModalDataParser (#15828)
Signed-off-by: Isotr0py <2037008807@qq.com>
2025-04-01 18:17:11 +08:00
d330558bab [Docs] Fix small error in link text (#15868)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-04-01 10:05:14 +00:00
656fd72976 [Misc] Fix speculative config repr string (#15860)
Signed-off-by: Shangming Cai <caishangming@linux.alibaba.com>
2025-04-01 02:26:22 -07:00
79455cf421 [Misc] Enable V1 LoRA by default (#15320)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-04-01 16:53:56 +08:00
30d6a015e0 [Feature] specify model in config.yaml (#15798)
Signed-off-by: weizeng <weizeng@roblox.com>
2025-04-01 01:20:06 -07:00
8af5a5c4e5 fix: can not use uv run collect_env close #13888 (#15792)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-04-01 07:45:49 +00:00
3a5f0afcd2 [V1] Implement sliding window attention in kv_cache_manager (#14097)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
2025-04-01 00:33:17 -07:00
c7e63aa4d8 [ROCm] Use device name in the warning (#15838)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
2025-04-01 00:10:48 -07:00
4a9ce1784c [sleep mode] clear pytorch cache after sleep (#15248)
Signed-off-by: <villard@us.ibm.com>
2025-03-31 22:58:58 -07:00
7e4e709b43 [V1] TPU - Fix fused MOE (#15834)
Signed-off-by: Alexander Matveev <amatveev@redhat.com>
2025-03-31 22:58:07 -07:00
63d8eabed0 [Bugfix]: Fix is_embedding_layer condition in VocabParallelEmbedding (#15824)
Signed-off-by: alexwl <alexey.a.kiryushin@gmail.com>
2025-03-31 22:57:59 -07:00
e830b01383 [Bugfix] Fix extra comma (#15851)
Signed-off-by: haochengxia <xhc_1007@163.com>
2025-03-31 22:57:28 -07:00
ff6473980d [Bugfix][Model] fix mllama multi-image (#14883)
Signed-off-by: yan ma <yan.ma@intel.com>
2025-03-31 22:53:37 -07:00
a164aea35d [Frontend] Add Phi-4-mini function calling support (#14886)
Signed-off-by: Kinfey <kinfeylo@microsoft.com>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2025-03-31 22:50:05 -07:00
a76f547e11 Rename fallback model and refactor supported models section (#15829)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-31 22:49:41 -07:00
b7b7676d67 [Distributed] Add custom allreduce support for ROCM (#14125)
Signed-off-by: ilmarkov <imarkov@redhat.com>
Co-authored-by: ilmarkov <imarkov@redhat.com>
2025-03-31 22:49:12 -07:00
e6e3c55ef2 Move dockerfiles into their own directory (#14549)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-31 13:47:32 -07:00
f98a4920f9 [V1][Core] Remove unused speculative config from scheduler (#15818)
Signed-off-by: Mark McLoughlin <markmc@redhat.com>
2025-03-31 19:15:21 +00:00
d4bfc23ef0 Fix Transformers backend compatibility check (#15290)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-31 10:27:07 -07:00
9a2160fa55 [V1] TPU CI - Add basic perf regression test (#15414)
Signed-off-by: Alexander Matveev <amatveev@redhat.com>
2025-03-31 13:25:20 -04:00
2de4118243 fix: change GB to GiB in logging close #14979 (#15807)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-03-31 10:00:50 -07:00
239b7befdd [V1][Spec Decode] Remove deprecated spec decode config params (#15466)
Signed-off-by: Shangming Cai <caishangming@linux.alibaba.com>
2025-03-31 09:19:35 -07:00
09e974d483 [Bugfix] Check dimensions of multimodal embeddings in V1 (#15816)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-31 09:01:35 -07:00
e5ef4fa99a Upgrade transformers to v4.50.3 (#13905)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-31 08:59:37 -07:00
Mrm
037bcd942c [Bugfix] Fix missing return value in load_weights method of adapters.py (#15542)
Signed-off-by: noc-turne <2270929247@qq.com>
2025-03-31 06:56:42 -07:00
c2e7507ad4 [Bugfix] Fix Crashing When Loading Modules With Batchnorm Stats (#15813)
Signed-off-by: Alex-Brooks <Alex.Brooks@ibm.com>
2025-03-31 13:23:53 +00:00
3aa2b6a637 [Model] Update support for NemotronNAS models (#15008)
Signed-off-by: Nave Assaf <nassaf@nvidia.com>
2025-03-31 20:35:14 +08:00
555aa21905 [V1] Fully Transparent Implementation of CPU Offloading (#15354)
Signed-off-by: youkaichao <youkaichao@gmail.com>
2025-03-31 20:22:34 +08:00
e7ae3bf3d6 fix: better install requirement for install in setup.py (#15796)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-03-31 05:13:32 -07:00
b932c048ac Recommend developing with Python 3.12 in developer guide (#15811)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2025-03-31 11:54:49 +00:00
e85829450d [Feature][ROCm]Enable fusion pass for torch.compile on ROCm (#15050)
Signed-off-by: charlifu <charlifu@amd.com>
2025-03-31 04:42:18 -07:00
effc5d24fa [Benchmark] Update Vision Arena Dataset and HuggingFaceDataset Setup (#15748)
Signed-off-by: Jennifer Zhao <ai.jenniferzhao@gmail.com>
2025-03-31 15:38:58 +08:00
18ed3132d2 [Misc] update the comments (#15780)
Signed-off-by: chengyang liu <lcy4869@gmail.com>
Co-authored-by: chengyang liu <lcy4869@gmail.com>
2025-03-30 19:39:56 -07:00
9b459eca88 [V1][Scheduler] Avoid calling _try_schedule_encoder_inputs for every request (#15778)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-03-30 14:10:42 -07:00
70fedd0f79 fix: Comments to English for better dev experience (#15768)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-03-30 10:47:57 -07:00
bb103b29bf [Bugfix] Added embed_is_patch mask for fuyu model (#15731)
Signed-off-by: Kyle Huang <kylhuang@nvidia.com>
2025-03-30 03:45:08 -07:00
248e76c4df fix: lint fix a ruff checkout syntax error (#15767)
Signed-off-by: yihong0618 <zouzou0208@gmail.com>
2025-03-30 03:36:02 -07:00
803d5c35f3 [V1] Override mm_counts for dummy data creation (#15703)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-30 03:20:42 -07:00
7fd8c0f85c fix test_phi3v (#15321)
Signed-off-by: pansicheng <sicheng.pan.chn@gmail.com>
2025-03-30 02:01:34 -07:00
44c3a5abc3 [doc] update conda to usage link in installation (#15761)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-30 08:12:13 +00:00
6909a76201 [Bugfix] Fix Mistral guided generation using xgrammar (#15704)
Signed-off-by: Julien Denize <julien.denize@mistral.ai>
2025-03-29 20:20:19 -07:00
045533716b [CI] xgrammar structured output supports Enum. (#15757)
Signed-off-by: chaunceyjiang <chaunceyjiang@gmail.com>
2025-03-29 20:20:02 -07:00
3c0ff914ac [Bugfix] Fix Mllama interleaved images input support (#15564)
Signed-off-by: Isotr0py <2037008807@qq.com>
Co-authored-by: Chen Zhang <zhangch99@outlook.com>
2025-03-29 18:11:15 +00:00
2bc4be4e32 [V1][Minor] Simplify rejection sampler's parse_output (#15741)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-03-29 09:25:17 -07:00
c67abd614f [V1] Support interleaved modality items (#15605)
Signed-off-by: Roger Wang <ywang@roblox.com>
2025-03-29 06:30:09 -07:00
6fa7cd3dbc [Feature][Disaggregated] Support XpYd disaggregated prefill with MooncakeStore (#12957)
Signed-off-by: Shangming Cai <caishangming@linux.alibaba.com>
2025-03-29 04:01:46 -07:00
94744ba41a [V1] [Feature] Collective RPC (#15444)
Signed-off-by: wwl2755 <wangwenlong2755@gmail.com>
2025-03-29 03:39:14 -07:00
4965ec42d2 [FEAT] [ROCm] Add AITER int8 scaled gemm kernel (#15433)
Signed-off-by: tjtanaa <tunjian.tan@embeddedllm.com>
2025-03-29 03:33:56 -07:00
73aa7041bf [doc] update doc (#15740)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-29 04:27:22 +00:00
7c1f760024 [Kernel][TPU][ragged-paged-attn] vLLM code change for PR#8896 (#15659)
Signed-off-by: Yarong Mu <ymu@google.com>
2025-03-28 21:13:15 -07:00
da461f3cbf [TPU][V1][Bugfix] Fix w8a8 recompiilation with GSM8K (#15714)
Signed-off-by: NickLucche <nlucches@redhat.com>
2025-03-28 21:13:06 -07:00
5b800f0932 [Bugfix] set VLLM_WORKER_MULTIPROC_METHOD=spawn for vllm.entrypoionts.openai.api_server (#15700)
Signed-off-by: Jinzhen Lin <linjinzhen@hotmail.com>
2025-03-28 21:12:26 -07:00
8427f70493 Use numba 0.61 for python 3.10+ to support numpy>=2 (#15692)
Signed-off-by: cyy <cyyever@outlook.com>
2025-03-29 12:11:51 +08:00
7a7992085b [CI] Speed up V1 structured output tests (#15718)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
2025-03-28 21:10:45 -07:00
1286211f57 [Bugfix] LoRA V1: add and fix entrypoints tests (#15715)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-03-28 21:10:41 -07:00
6d531ad7b8 [Misc][V1] Misc code streamlining (#15723)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-03-28 20:59:47 -07:00
762b424a52 [Docs] Document v0 engine support in reasoning outputs (#15739)
Signed-off-by: Ce Gao <cegao@tensorchord.ai>
2025-03-29 03:46:57 +00:00
de1cb38769 [Model] Support Skywork-R1V (#15397)
Signed-off-by: jiacai.liu <932997367@qq.com>
Co-authored-by: jiacai.liu <932997367@qq.com>
2025-03-28 20:39:21 -07:00
c802f5430d [ROCm][AMD][Build] Update AMD supported arch list (#15632)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
2025-03-28 20:39:18 -07:00
cff8991a50 [Docs][V1] Optimize diagrams in prefix caching design (#15716) 2025-03-29 03:33:58 +00:00
f3f8d8fff4 implement prometheus fast-api-instrumentor for http service metrics (#15657) 2025-03-29 00:12:02 +00:00
26df46ee59 [Misc] cli auto show default value (#15582)
Signed-off-by: reidliu41 <reid201711@gmail.com>
2025-03-28 22:23:00 +00:00
c3f687ac22 [V1] TPU - Fix the chunked prompt bug (#15713)
Signed-off-by: Alexander Matveev <amatveev@redhat.com>
2025-03-28 20:19:04 +00:00
04437e313d [Bugfix] [torch.compile] Add Dynamo metrics context during compilation (#15639)
Signed-off-by: luka <luka@neuralmagic.com>
2025-03-28 14:01:09 -06:00
038bededba [TPU] [Perf] Improve Memory Usage Estimation (#15671)
Signed-off-by: Robert Shaw <robshaw@redhat.com>
Co-authored-by: Robert Shaw <robshaw@redhat.com>
2025-03-28 17:37:52 +00:00
d03308be0c [Misc] Remove stale func in KVTransferConfig (#14746)
Signed-off-by: Shangming Cai <caishangming@linux.alibaba.com>
2025-03-28 17:33:32 +00:00
c6bc0034d0 [Misc] Remove unused utils and clean up imports (#15708)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-28 09:41:16 -07:00
70e132244a [Minor] Remove TGI launching script (#15646)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-03-28 09:30:08 -07:00
47e9038d23 Fix cpu offload testing for gptq/awq/ct (#15648)
Signed-off-by: mgoin <mgoin64@gmail.com>
2025-03-29 00:29:32 +08:00
432cf22a6a [Bugfix] Fix regex compile display format (#15368)
Signed-off-by: Kebe <mail@kebe7jun.com>
2025-03-28 08:58:44 -07:00
2914006fe0 [doc] add missing imports (#15699)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-28 15:56:48 +00:00
7329ff5468 [V1] Support disable_any_whtespace for guidance backend (#15584)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
2025-03-28 23:46:45 +08:00
541d1df486 [Bugfix] embed_is_patch for Idefics3 (#15696)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-28 08:27:52 -07:00
3b00ff9138 [Bugfix][v1] xgrammar structured output supports Enum. (#15594)
Signed-off-by: chaunceyjiang <chaunceyjiang@gmail.com>
2025-03-28 06:14:53 -07:00
91276c5721 [Model] Adding torch compile annotations to chatglm (#15624)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-03-28 21:14:09 +08:00
0b4167526d [Docs] Add "Generation quality changed" section to troubleshooting (#15701)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-28 13:03:21 +00:00
fd5fd26902 [Frontend] update priority for --api-key and VLLM_API_KEY (#15588)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-28 19:40:12 +08:00
3bbaacbe15 [Bugfix][Frontend] Eliminate regex based check in reasoning full generator (#14821)
Signed-off-by: Ce Gao <cegao@tensorchord.ai>
2025-03-28 11:20:35 +00:00
a10314c6b3 [Misc] Fix test_sleep to use query parameters (#14373)
Signed-off-by: Lize Cai <lize.cai@sap.com>
Signed-off-by: youkaichao <youkaichao@gmail.com>
Co-authored-by: youkaichao <youkaichao@gmail.com>
2025-03-28 18:00:14 +08:00
70f2c2a709 [Bugfix] Fix 'InductorAdaptor object has no attribute 'cache_dir' (#15674)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-03-28 17:10:40 +08:00
280d074103 [CPU][CI] Improve CPU Dockerfile (#15690)
Signed-off-by: jiang1.li <jiang1.li@intel.com>
2025-03-28 01:36:31 -07:00
32b14baf8a [Refactor][Frontend] Keep all logic about reasoning into one class (#14428)
Signed-off-by: Ce Gao <cegao@tensorchord.ai>
2025-03-28 00:23:30 -07:00
2d9045fce8 [TPU][CI] Fix TPUModelRunner Test (#15667)
Signed-off-by: Robert Shaw <robshaw@redhat.com>
Co-authored-by: Robert Shaw <robshaw@redhat.com>
2025-03-28 00:01:26 -07:00
355f66348c [V1] Remove legacy input registry (#15673)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 23:34:34 -07:00
8693e47e6a [Bugfix] Fix mm_hashes forgetting to be passed (#15668)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-28 05:51:05 +00:00
cec8c7d7f8 Refactor error handling for multiple exceptions in preprocessing (#15650)
Signed-off-by: JasonZhu1313 <jasonchu13@outlook.com>
2025-03-28 03:27:20 +00:00
4d0ec37267 [Quantization][FP8] Adding support for fp8 gemm layer input in fp8 (#14578)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
Co-authored-by: Luka Govedič <ProExpertProg@users.noreply.github.com>
2025-03-28 02:58:16 +00:00
e7f720ea56 [Misc]add coding benchmark for speculative decoding (#15303)
Signed-off-by: CXIAAAAA <cxia0209@gmail.com>
2025-03-28 10:47:05 +08:00
Wes
4ae17bf1e2 Revert "Use Cache Hinting for fused_moe kernel (#15511)" (#15645)
Signed-off-by: Wes Medford <wryanmedford@gmail.com>
2025-03-27 19:45:55 -07:00
8a49eea74b [CI][TPU] Temporarily Disable Quant Test on TPU (#15649)
Signed-off-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
2025-03-27 19:45:05 -07:00
b4245a48df [Doc] Fix dead links in Job Board (#15637)
Signed-off-by: wwl2755 <wangwenlong2755@gmail.com>
2025-03-28 02:43:40 +00:00
4e0f6076be [Bugfix] Fix failure to launch in Tensor Parallel TP mode on macOS. (#14948)
Signed-off-by: Kebe <mail@kebe7jun.com>
Signed-off-by: youkaichao <youkaichao@gmail.com>
Co-authored-by: youkaichao <youkaichao@gmail.com>
2025-03-28 10:13:41 +08:00
726efc6a32 [Quantization][V1] BitsAndBytes support V1 (#15611)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-03-28 10:12:47 +08:00
bd45912b99 [TPU] Lazy Import (#15656)
Signed-off-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
2025-03-28 09:57:01 +08:00
15dac210f0 [V1] AsyncLLM data parallel (#13923)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-03-27 16:14:41 -07:00
112b3e5b3b [CI] Update rules for applying tpu label. (#15634)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
2025-03-27 22:15:26 +00:00
32d669275b Correct PowerPC to modern IBM Power (#15635)
Signed-off-by: Christy Norman <christy@linux.vnet.ibm.com>
2025-03-27 15:04:32 -07:00
4098b72210 [Bugfix][TPU][V1] Fix recompilation (#15553)
Signed-off-by: NickLucche <nlucches@redhat.com>
2025-03-27 19:15:06 +00:00
46450b8d33 Use absolute placement for Ask AI button (#15628)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-27 18:52:18 +00:00
13ac9cab21 [Misc] Avoid direct access of global mm_registry in compute_encoder_budget (#15621)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 17:52:00 +00:00
66aa4c0bf4 [Feature] Add middleware to log API Server responses (#15593)
Signed-off-by: Yuan Tang <terrytangyuan@gmail.com>
2025-03-27 17:49:38 +00:00
247181536f [Misc] Replace is_encoder_decoder_inputs with split_enc_dec_inputs (#15620)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 17:36:32 +00:00
07bf813fb5 [Doc] Link to onboarding tasks (#15629)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 16:30:53 +00:00
8958217ad5 [Bugfix] Fix use_cascade_attention handling for Alibi-based models on vllm/v1 (#15211)
Signed-off-by: h-sugi <h.sugi@ieee.org>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-03-27 22:29:29 +08:00
ac5bc615b0 [Model] MiniCPM-V/O supports V1 (#15487)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 06:07:29 -07:00
8063dfc61a [Doc] update --system for transformers installation in docker doc (#15616)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-27 20:38:46 +08:00
6278bc829e Fix incorrect filenames in vllm_compile_cache.py (#15494)
Signed-off-by: <zou3519@gmail.com>
Signed-off-by: youkaichao <youkaichao@gmail.com>
Co-authored-by: youkaichao <youkaichao@gmail.com>
2025-03-27 18:33:41 +08:00
3f532cb6a6 [Misc] Use model_redirect to redirect the model name to a local folder. (#14116) 2025-03-27 02:21:23 -07:00
e6c9053f9e [Misc] Clean up scatter_patch_features (#15559)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-27 07:45:00 +00:00
43ed4143c4 [Quantization] Fp8 Channelwise Dynamic Per Token GroupedGEMM (#15587)
Signed-off-by: ElizaWszola <eliza@neuralmagic.com>
Signed-off-by: ElizaWszola <ewszola@redhat.com>
Signed-off-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
Co-authored-by: ElizaWszola <eliza@neuralmagic.com>
Co-authored-by: Lucas Wilkinson <wilkinson.lucas@gmail.com>
Co-authored-by: ElizaWszola <ewszola@redhat.com>
2025-03-27 06:47:25 +00:00
f4c98b4d4c [Misc] Consolidate LRUCache implementations (#15481)
Signed-off-by: Bella kira <2374035698@qq.com>
2025-03-27 06:43:43 +00:00
e1e0fd7543 [TPU] Avoid Triton Import (#15589)
Signed-off-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
2025-03-27 06:43:02 +00:00
df8d3d1287 [Misc] Restrict ray version dependency and update PP feature warning in V1 (#15556) 2025-03-27 06:21:07 +00:00
619d3de8bd [TPU] [V1] fix cases when max_num_reqs is set smaller than MIN_NUM_SEQS (#15583)
Signed-off-by: Chengji Yao <chengjiyao@google.com>
2025-03-26 22:46:26 -07:00
ecff8309a3 [ROCm] Env variable to trigger custom PA (#15557)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
2025-03-26 22:46:12 -07:00
dcf2a590f5 Allow torchao quantization in SiglipMLP (#15575) 2025-03-26 22:45:51 -07:00
54aa619459 [V1] Refactor num_computed_tokens logic (#15307)
Signed-off-by: Cody Yu <hao.yu.cody@gmail.com>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-03-27 04:54:36 +00:00
fb22be5817 [moe][quant] add weight name case for offset (#15515)
Signed-off-by: Mengqing Cao <cmq0113@163.com>
2025-03-27 04:50:29 +00:00
7f301dd8ef [Doc] Update V1 user guide for fp8 kv cache support (#15585)
Signed-off-by: weizeng <weizeng@roblox.com>
2025-03-26 19:39:03 -07:00
8095341a01 [misc] LoRA: Remove unused long context test data (#15558)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-03-27 10:04:51 +08:00
69db16a46a add platform check back (#15578)
Signed-off-by: Chenyaaang <llccyy1212@gmail.com>
2025-03-27 01:50:27 +00:00
ce78f9af4e Add automatic tpu label to mergify.yml (#15560) 2025-03-26 21:39:58 -04:00
9239bf718e [Kernel] CUTLASS grouped gemm fp8 MoE kernel (#13972)
Signed-off-by: ElizaWszola <eliza@neuralmagic.com>
Signed-off-by: ElizaWszola <ewszola@redhat.com>
Co-authored-by: Lucas Wilkinson <wilkinson.lucas@gmail.com>
2025-03-27 00:54:44 +00:00
7a6d45bc8a Support FIPS enabled machines with MD5 hashing (#15299)
Signed-off-by: Matthew Vine <32849887+MattTheCuber@users.noreply.github.com>
2025-03-26 20:19:46 -04:00
e74ff409e0 [TPU] support disabling xla compilation cache (#15567)
Signed-off-by: Chengji Yao <chengjiyao@google.com>
2025-03-27 00:09:28 +00:00
Wes
7a888271f5 Use Cache Hinting for fused_moe kernel (#15511) 2025-03-26 23:21:34 +00:00
9d119a86ae [V1] TPU CI - Fix test_compilation.py (#15570)
Signed-off-by: Alexander Matveev <amatveev@redhat.com>
2025-03-26 21:51:54 +00:00
b2e85e26f4 [V1] TPU - Revert to exponential padding by default (#15565)
Signed-off-by: Alexander Matveev <amatveev@redhat.com>
2025-03-26 21:35:05 +00:00
dd8a29da99 Applying some fixes for K8s agents in CI (#15493)
Signed-off-by: Alexei V. Ivanov <alexei.ivanov@amd.com>
2025-03-26 20:35:11 +00:00
27df5199d9 Support SHA256 as hash function in prefix caching (#15297)
Signed-off-by: Marko Rosenmueller <5467316+dr75@users.noreply.github.com>
2025-03-26 11:11:28 -07:00
35fad35a48 [V1][Sampler] Faster top-k only implementation (#15478)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-03-26 10:56:47 -07:00
733e7c9e95 [Refactor] Remove unnecessary backend parameter in structured output interface (#15317)
Signed-off-by: Aaron Pham <contact@aarnphm.xyz>
2025-03-26 17:51:56 +00:00
0af4d764d6 Fix weight loading for some models in Transformers backend (#15544)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-26 10:17:53 -07:00
e64afa455c multi-node offline DP+EP example (#15484)
Signed-off-by: youkaichao <youkaichao@gmail.com>
2025-03-26 23:54:24 +08:00
1711b929b6 [Model] Add Reasoning Parser for Granite Models (#14202)
Signed-off-by: Alex-Brooks <Alex.brooks@ibm.com>
Co-authored-by: Joe Runde <joe@joerun.de>
2025-03-26 14:28:07 +00:00
c091c0a588 Improve validation of TP in Transformers backend (#15540)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-26 07:26:48 -07:00
1aa162e030 Apply torchfix (#15532)
Signed-off-by: cyy <cyyever@outlook.com>
2025-03-26 12:09:06 +00:00
cf5c8f1686 Separate base model from TransformersModel (#15467)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Signed-off-by: Isotr0py <2037008807@qq.com>
Co-authored-by: Isotr0py <2037008807@qq.com>
Co-authored-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-03-26 18:13:38 +08:00
4ec2cee000 [Misc] improve example script output (#15528)
Signed-off-by: reidliu41 <reid201711@gmail.com>
Co-authored-by: reidliu41 <reid201711@gmail.com>
2025-03-26 10:12:47 +00:00
99f536f830 [Misc] Enhance warning information to user-defined chat template (#15408)
Signed-off-by: wwl2755 <wangwenlong2755@gmail.com>
2025-03-26 02:21:15 -07:00
5ebf66748b [FEAT][ROCm] Integrate Fused MoE Kernels from AITER (#14967)
Signed-off-by: vllmellm <vllm.ellm@embeddedllm.com>
Signed-off-by: tjtanaa <tunjian.tan@embeddedllm.com>
Co-authored-by: tjtanaa <tunjian.tan@embeddedllm.com>
2025-03-26 16:30:30 +08:00
781d056280 [Feature] Enhance EAGLE Architecture with Proper RMS Norms (#14990)
Signed-off-by: Bryan Lu <yuzhelu@amazon.com>
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2025-03-26 08:24:07 +00:00
5aefd6ac31 Fix raw_request extraction in load_aware_call decorator (#15382)
Signed-off-by: Daniel Salib <danielsalib@meta.com>
2025-03-25 22:29:54 -07:00
6c663dfd5e [misc] LoRA - Skip LoRA kernels when not required (#15152)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-03-26 11:33:45 +08:00
33437bc6e7 [BugFix] Fix nightly MLA failure (FA2 + MLA chunked prefill, i.e. V1, producing bad results) (#15492)
Signed-off-by: LucasWilkinson <lwilkinson@neuralmagic.com>
2025-03-25 20:33:22 -07:00
23114d3364 [Misc] Warn about v0 in benchmark_paged_attn.py (#15495)
Signed-off-by: Tyler Michael Smith <tyler@neuralmagic.com>
2025-03-25 20:31:04 -07:00
997c8811d6 [Model] Support multi-image for Molmo (#15438)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-26 11:26:33 +08:00
e42389f9d7 Transformers backend already supports V1 (#15463)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-03-25 20:26:16 -07:00
ff38f0a32c [CI/Build] LoRA: Delete long context tests (#15503)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-03-25 17:18:34 -07:00
a5cfbab3c8 [Core] LoRA: V1 Scheduler optimization (#15422)
Signed-off-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2025-03-25 22:50:09 +00:00
ac3cd6e83c [core] add bucket padding to tpu_model_runner (#14995)
Signed-off-by: Chenyaaang <llccyy1212@gmail.com>
Signed-off-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
Co-authored-by: rshaw@neuralmagic.com <robertgshaw2@gmail.com>
2025-03-25 17:27:22 -04:00
082ab86f5f [V1] Support long_prefill_token_threshold in v1 scheduler (#15419)
Signed-off-by: Lu Fang <lufang@fb.com>
2025-03-25 14:22:26 -07:00
6aa196c8dc [V1][Minor] Use SchedulerInterface type for engine scheduler field (#15499)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-03-25 14:21:36 -07:00
a0dd7dcd49 [TPU][V1] Fix Sampler recompilation (#15309)
Signed-off-by: NickLucche <nlucches@redhat.com>
2025-03-25 16:43:54 -04:00
e977c11111 Add workaround for shared field_names in pydantic model class (#13925)
Signed-off-by: Max de Bayser <mbayser@br.ibm.com>
2025-03-25 20:31:08 +00:00
5f063a80bd [bugfix] add supports_v1 platform interface (#15417)
Signed-off-by: Joe Runde <Joseph.Runde@ibm.com>
2025-03-25 15:00:32 -04:00
5d8e1c9279 [Bugfix] Support triton==3.3.0+git95326d9f for RTX 5090 (Unsloth + vLLM compatibility) (#15471)
Co-authored-by: ServerAI <ai@exc-mad-ai.com>
2025-03-25 17:59:25 +00:00
0a049c7d86 [CI/Build] Add tests for the V1 tpu_model_runner. (#14843)
Signed-off-by: Yarong Mu <ymu@google.com>
2025-03-25 12:27:16 -04:00
d0cfec7ab9 [bugfix] fix inductor cache on max_position_embeddings (#15436)
Signed-off-by: youkaichao <youkaichao@gmail.com>
2025-03-25 07:05:39 -07:00
a608160027 [Kernel] Fix conflicting macro names for gguf kernels (#15456)
Signed-off-by: SzymonOzog <szymon.ozog@gmail.com>
2025-03-25 13:50:49 +00:00
3f04a7fbf2 [Doc] Update V1 user guide for multi-modality (#15460)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-25 11:01:58 +00:00
5994430b84 [Misc] Remove redundant num_embeds (#15443)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-25 18:27:57 +08:00
a9e879b316 [Misc] Clean up MiniCPM-V/O code (#15337)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-03-25 10:22:52 +00:00
3e2f37a69a Dockerfile.ppc64le changes to move to UBI (#15402)
Signed-off-by: Md. Shafi Hussain <Md.Shafi.Hussain@ibm.com>
2025-03-25 10:15:14 +00:00
4f044b1d67 [Kernel][CPU] CPU MLA (#14744)
Signed-off-by: Thien Tran <gau.nernst@yahoo.com.sg>
2025-03-25 09:34:59 +00:00
4157f563b4 [Hardware][TPU][Bugfix] Fix v1 mp profiler (#15409)
Signed-off-by: Siyuan Liu <lsiyuan@google.com>
2025-03-25 01:43:00 -07:00
051da7efe3 Fix CUDA kernel index data type in vllm/csrc/quantization/gptq_marlin/awq_marlin_repack.cu +10 (#15160)
Signed-off-by: Lu Fang <lufang@fb.com>
Co-authored-by: Richard Barnes <rbarnes@meta.com>
2025-03-25 15:36:45 +08:00
421 changed files with 21990 additions and 6422 deletions

View File

@ -63,10 +63,12 @@
"model": "meta-llama/Meta-Llama-3.1-70B-Instruct",
"disable_log_requests": "",
"tensor_parallel_size": 4,
"swap_space": 16,
"speculative_model": "turboderp/Qwama-0.5B-Instruct",
"num_speculative_tokens": 4,
"speculative_draft_tensor_parallel_size": 1
"swap_space": 16,
"speculative_config": {
"model": "turboderp/Qwama-0.5B-Instruct",
"num_speculative_tokens": 4,
"draft_tensor_parallel_size": 1
}
},
"client_parameters": {
"model": "meta-llama/Meta-Llama-3.1-70B-Instruct",

View File

@ -3,7 +3,7 @@ steps:
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.4.0 --tag vllm-ci:build-image --target build --progress plain ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.4.0 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/upload-wheels.sh"
@ -14,7 +14,7 @@ steps:
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.1.0 --tag vllm-ci:build-image --target build --progress plain ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.1.0 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/upload-wheels.sh"
@ -31,7 +31,7 @@ steps:
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=11.8.0 --tag vllm-ci:build-image --target build --progress plain ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=11.8.0 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/upload-wheels.sh"
@ -48,7 +48,7 @@ steps:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.4.0 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT --target vllm-openai --progress plain ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.4.0 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- label: "Build and publish TPU release image"
@ -57,7 +57,7 @@ steps:
agents:
queue: tpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --tag vllm/vllm-tpu:nightly --tag vllm/vllm-tpu:$BUILDKITE_COMMIT --progress plain -f Dockerfile.tpu ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --tag vllm/vllm-tpu:nightly --tag vllm/vllm-tpu:$BUILDKITE_COMMIT --progress plain -f docker/Dockerfile.tpu ."
- "docker push vllm/vllm-tpu:nightly"
- "docker push vllm/vllm-tpu:$BUILDKITE_COMMIT"
plugins:
@ -82,7 +82,7 @@ steps:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest --progress plain -f Dockerfile.cpu ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest --progress plain --target vllm-openai -f docker/Dockerfile.cpu ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version)"
env:
DOCKER_BUILDKIT: "1"

View File

@ -134,9 +134,10 @@ if [[ $commands == *"--shard-id="* ]]; then
# assign shard-id for each shard
commands_gpu=${commands//"--shard-id= "/"--shard-id=${GPU} "}
echo "Shard ${GPU} commands:$commands_gpu"
echo "Render devices: $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES"
docker run \
--device /dev/kfd --device /dev/dri \
--network host \
--device /dev/kfd $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES \
--network=host \
--shm-size=16gb \
--rm \
-e HIP_VISIBLE_DEVICES="${GPU}" \
@ -163,9 +164,10 @@ if [[ $commands == *"--shard-id="* ]]; then
fi
done
else
echo "Render devices: $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES"
docker run \
--device /dev/kfd --device /dev/dri \
--network host \
--device /dev/kfd $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES \
--network=host \
--shm-size=16gb \
--rm \
-e HIP_VISIBLE_DEVICES=0 \

View File

@ -10,5 +10,5 @@ trap remove_docker_container EXIT
remove_docker_container
# Try building the docker image
docker build -t cpu-test -f Dockerfile.ppc64le .
docker build -t cpu-test -f docker/Dockerfile.ppc64le .

View File

@ -8,15 +8,19 @@ set -ex
CORE_RANGE=${CORE_RANGE:-48-95}
NUMA_NODE=${NUMA_NODE:-1}
# Try building the docker image
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build -t cpu-test-"$BUILDKITE_BUILD_NUMBER" -f Dockerfile.cpu .
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" -t cpu-test-"$BUILDKITE_BUILD_NUMBER"-avx2 -f Dockerfile.cpu .
# Setup cleanup
remove_docker_container() { set -e; docker rm -f cpu-test-"$BUILDKITE_BUILD_NUMBER"-"$NUMA_NODE" cpu-test-"$BUILDKITE_BUILD_NUMBER"-avx2-"$NUMA_NODE" || true; }
remove_docker_container() {
set -e;
docker rm -f cpu-test-"$BUILDKITE_BUILD_NUMBER"-"$NUMA_NODE" cpu-test-"$BUILDKITE_BUILD_NUMBER"-avx2-"$NUMA_NODE" || true;
docker image rm cpu-test-"$BUILDKITE_BUILD_NUMBER" cpu-test-"$BUILDKITE_BUILD_NUMBER"-avx2 || true;
}
trap remove_docker_container EXIT
remove_docker_container
# Try building the docker image
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --tag cpu-test-"$BUILDKITE_BUILD_NUMBER" --target vllm-test -f docker/Dockerfile.cpu .
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" --tag cpu-test-"$BUILDKITE_BUILD_NUMBER"-avx2 --target vllm-test -f docker/Dockerfile.cpu .
# Run the image, setting --shm-size=4g for tensor parallel.
docker run -itd --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --cpuset-cpus="$CORE_RANGE" \
--cpuset-mems="$NUMA_NODE" --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=4 --shm-size=4g --name cpu-test-"$BUILDKITE_BUILD_NUMBER"-"$NUMA_NODE" cpu-test-"$BUILDKITE_BUILD_NUMBER"
@ -36,8 +40,8 @@ function cpu_tests() {
# Run basic model test
docker exec cpu-test-"$BUILDKITE_BUILD_NUMBER"-"$NUMA_NODE" bash -c "
set -e
pip install -r vllm/requirements/test.txt
pip install -r vllm/requirements/cpu.txt
pytest -v -s tests/kernels/test_cache.py -m cpu_model
pytest -v -s tests/kernels/test_mla_decode_cpu.py -m cpu_model
pytest -v -s tests/models/decoder_only/language -m cpu_model
pytest -v -s tests/models/embedding/language -m cpu_model
pytest -v -s tests/models/encoder_decoder/language -m cpu_model

View File

@ -9,6 +9,7 @@ python3 use_existing_torch.py
# Try building the docker image
DOCKER_BUILDKIT=1 docker build . \
--file docker/Dockerfile \
--target vllm-openai \
--platform "linux/arm64" \
-t gh200-test \

View File

@ -5,7 +5,7 @@
set -ex
# Try building the docker image
docker build -t hpu-test-env -f Dockerfile.hpu .
docker build -t hpu-test-env -f docker/Dockerfile.hpu .
# Setup cleanup
# certain versions of HPU software stack have a bug that can

View File

@ -35,7 +35,7 @@ else
date "+%s" > /tmp/neuron-docker-build-timestamp
fi
docker build -t "${image_name}" -f Dockerfile.neuron .
docker build -t "${image_name}" -f docker/Dockerfile.neuron .
# Setup cleanup
remove_docker_container() {

View File

@ -3,7 +3,7 @@
set -e
# Build the docker image.
docker build -f Dockerfile.tpu -t vllm-tpu .
docker build -f docker/Dockerfile.tpu -t vllm-tpu .
# Set up cleanup.
remove_docker_container() { docker rm -f tpu-test || true; }
@ -21,8 +21,10 @@ docker run --privileged --net host --shm-size=16G -it \
&& python3 -m pip install lm_eval[api]==0.4.4 \
&& export VLLM_USE_V1=1 \
&& export VLLM_XLA_CHECK_RECOMPILATION=1 \
&& echo TEST_0 \
&& pytest -v -s /workspace/vllm/tests/v1/tpu/test_perf.py \
&& echo TEST_1 \
&& pytest /workspace/vllm/tests/tpu/test_compilation.py \
&& pytest -v -s /workspace/vllm/tests/tpu/test_compilation.py \
&& echo TEST_2 \
&& pytest -v -s /workspace/vllm/tests/v1/tpu/test_basic.py \
&& echo TEST_3 \
@ -30,9 +32,12 @@ docker run --privileged --net host --shm-size=16G -it \
&& echo TEST_4 \
&& pytest -s -v /workspace/vllm/tests/tpu/test_quantization_accuracy.py \
&& echo TEST_5 \
&& python3 /workspace/vllm/examples/offline_inference/tpu.py" \
&& python3 /workspace/vllm/examples/offline_inference/tpu.py \
&& echo TEST_6 \
&& pytest -s -v /workspace/vllm/tests/v1/tpu/worker/test_tpu_model_runner.py \
&& echo TEST_7 \
&& pytest -s -v /workspace/vllm/tests/v1/tpu/test_sampler.py" \
# TODO: This test fails because it uses RANDOM_SEED sampling
# && VLLM_USE_V1=1 pytest -v -s /workspace/vllm/tests/tpu/test_custom_dispatcher.py \

View File

@ -8,7 +8,7 @@ image_name="xpu/vllm-ci:${BUILDKITE_COMMIT}"
container_name="xpu_${BUILDKITE_COMMIT}_$(tr -dc A-Za-z0-9 < /dev/urandom | head -c 10; echo)"
# Try building the docker image
docker build -t ${image_name} -f Dockerfile.xpu .
docker build -t ${image_name} -f docker/Dockerfile.xpu .
# Setup cleanup
remove_docker_container() {

View File

@ -135,12 +135,14 @@ steps:
- examples/offline_inference/rlhf.py
- examples/offline_inference/rlhf_colocate.py
- tests/examples/offline_inference/data_parallel.py
- tests/v1/test_async_llm_dp.py
commands:
# test with tp=2 and external_dp=2
- VLLM_USE_V1=0 torchrun --nproc-per-node=4 distributed/test_torchrun_example.py
- torchrun --nproc-per-node=4 distributed/test_torchrun_example.py
# test with internal dp
- python3 ../examples/offline_inference/data_parallel.py
- TP_SIZE=2 DP_SIZE=2 pytest -v -s v1/test_async_llm_dp.py
- pytest -v -s distributed/test_utils.py
- pytest -v -s compile/test_basic_correctness.py
- pytest -v -s distributed/test_pynccl.py
@ -148,8 +150,8 @@ steps:
# TODO: create a dedicated test section for multi-GPU example tests
# when we have multiple distributed example tests
- pushd ../examples/offline_inference
- VLLM_ENABLE_V1_MULTIPROCESSING=0 python3 rlhf.py
- VLLM_ENABLE_V1_MULTIPROCESSING=0 RAY_DEDUP_LOGS=0 python3 rlhf_colocate.py
- python3 rlhf.py
- RAY_DEDUP_LOGS=0 python3 rlhf_colocate.py
- popd
- label: Metrics, Tracing Test # 10min
@ -287,7 +289,7 @@ steps:
source_file_dependencies:
- vllm/lora
- tests/lora
command: pytest -v -s lora --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --ignore=lora/test_long_context.py --ignore=lora/test_chatglm3_tp.py --ignore=lora/test_llama_tp.py --ignore=lora/test_minicpmv_tp.py --ignore=lora/test_transfomers_model.py
command: pytest -v -s lora --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --ignore=lora/test_chatglm3_tp.py --ignore=lora/test_llama_tp.py --ignore=lora/test_minicpmv_tp.py --ignore=lora/test_transfomers_model.py
parallelism: 4
- label: PyTorch Fullgraph Smoke Test # 9min
@ -429,6 +431,7 @@ steps:
- pytest -v -s models/encoder_decoder/audio_language -m core_model
- pytest -v -s models/encoder_decoder/language -m core_model
- pytest -v -s models/encoder_decoder/vision_language -m core_model
- pytest -v -s models/decoder_only/vision_language/test_interleaved.py
- label: Multi-Modal Models Test (Extended) 1 # 48m
optional: true
@ -514,8 +517,11 @@ steps:
- vllm/worker/worker.py
- vllm/worker/model_runner.py
- entrypoints/llm/test_collective_rpc.py
- tests/v1/test_async_llm_dp.py
- vllm/v1/engine/
commands:
- VLLM_ENABLE_V1_MULTIPROCESSING=0 pytest -v -s entrypoints/llm/test_collective_rpc.py
- TP_SIZE=1 DP_SIZE=2 pytest -v -s v1/test_async_llm_dp.py
- pytest -v -s entrypoints/llm/test_collective_rpc.py
- pytest -v -s ./compile/test_basic_correctness.py
- pytest -v -s ./compile/test_wrapper.py
- VLLM_TEST_SAME_HOST=1 torchrun --nproc-per-node=4 distributed/test_same_node.py | grep 'Same node test passed'
@ -592,8 +598,6 @@ steps:
# FIXIT: find out which code initialize cuda before running the test
# before the fix, we need to use spawn to test it
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
# This test runs llama 13B, so it is required to run on 4 GPUs.
- pytest -v -s -x lora/test_long_context.py
# There is some Tensor Parallelism related processing logic in LoRA that
# requires multi-GPU testing for validation.
- pytest -v -s -x lora/test_chatglm3_tp.py

32
.github/mergify.yml vendored
View File

@ -19,7 +19,7 @@ pull_request_rules:
- files~=\.buildkite/
- files~=^cmake/
- files=CMakeLists.txt
- files~=^Dockerfile
- files~=^docker/Dockerfile
- files~=^requirements.*\.txt
- files=setup.py
actions:
@ -88,6 +88,36 @@ pull_request_rules:
add:
- v1
- name: label-tpu
description: Automatically apply tpu label
# Keep this list in sync with `label-tpu-remove` conditions
conditions:
- or:
- files~=tpu.py
- files~=_tpu
- files~=tpu_
- files~=/tpu/
- files~=pallas
actions:
label:
add:
- tpu
- name: label-tpu-remove
description: Automatically remove tpu label
# Keep this list in sync with `label-tpu` conditions
conditions:
- and:
- -files~=tpu.py
- -files~=_tpu
- -files~=tpu_
- -files~=/tpu/
- -files~=pallas
actions:
label:
remove:
- tpu
- name: ping author on conflicts and add 'needs-rebase' label
conditions:
- conflict

View File

@ -50,7 +50,7 @@ jobs:
uses: helm/kind-action@a1b0e391336a6ee6713a0583f8c6240d70863de3 # v1.12.0
- name: Build the Docker image vllm cpu
run: docker buildx build -f Dockerfile.cpu -t vllm-cpu-env .
run: docker buildx build -f docker/Dockerfile.cpu -t vllm-cpu-env .
- name: Configuration of docker images, network and namespace for the kind cluster
run: |

View File

@ -1,3 +1,6 @@
default_install_hook_types:
- pre-commit
- commit-msg
default_stages:
- pre-commit # Run locally
- manual # Run in CI

View File

@ -34,7 +34,7 @@ set(PYTHON_SUPPORTED_VERSIONS "3.9" "3.10" "3.11" "3.12")
set(CUDA_SUPPORTED_ARCHS "7.0;7.2;7.5;8.0;8.6;8.7;8.9;9.0;10.0;10.1;12.0")
# Supported AMD GPU architectures.
set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101")
set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx942;gfx950;gfx1030;gfx1100;gfx1101;gfx1200;gfx1201")
#
# Supported/expected torch versions for CUDA/ROCm.
@ -44,7 +44,7 @@ set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101")
#
# Note: the CUDA torch version is derived from pyproject.toml and various
# requirements.txt files and should be kept consistent. The ROCm torch
# versions are derived from Dockerfile.rocm
# versions are derived from docker/Dockerfile.rocm
#
set(TORCH_SUPPORTED_VERSION_CUDA "2.6.0")
set(TORCH_SUPPORTED_VERSION_ROCM "2.6.0")
@ -234,6 +234,7 @@ set(VLLM_EXT_SRC
"csrc/activation_kernels.cu"
"csrc/layernorm_kernels.cu"
"csrc/layernorm_quant_kernels.cu"
"csrc/cuda_view.cu"
"csrc/quantization/gptq/q_gemm.cu"
"csrc/quantization/compressed_tensors/int8_quant_kernels.cu"
"csrc/quantization/fp8/common.cu"
@ -241,6 +242,7 @@ set(VLLM_EXT_SRC
"csrc/quantization/gguf/gguf_kernel.cu"
"csrc/cuda_utils_kernels.cu"
"csrc/prepare_inputs/advance_step.cu"
"csrc/custom_all_reduce.cu"
"csrc/torch_bindings.cpp")
if(VLLM_GPU_LANG STREQUAL "CUDA")
@ -282,7 +284,6 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
"csrc/mamba/causal_conv1d/causal_conv1d.cu"
"csrc/quantization/aqlm/gemm_kernels.cu"
"csrc/quantization/awq/gemm_kernels.cu"
"csrc/custom_all_reduce.cu"
"csrc/permute_cols.cu"
"csrc/quantization/cutlass_w8a8/scaled_mm_entry.cu"
"csrc/quantization/fp4/nvfp4_quant_entry.cu"
@ -461,6 +462,33 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
set(FP4_ARCHS)
endif()
#
# CUTLASS MoE kernels
# The MoE kernel cutlass_moe_mm requires CUDA 12.3 or later (and only works
# on Hopper). get_cutlass_moe_mm_data should only be compiled if it's possible
# to compile MoE kernels that use its output.
cuda_archs_loose_intersection(SCALED_MM_ARCHS "9.0a;" "${CUDA_ARCHS}")
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.3 AND SCALED_MM_ARCHS)
set(SRCS "csrc/quantization/cutlass_w8a8/moe/grouped_mm_c3x.cu"
"csrc/quantization/cutlass_w8a8/moe/moe_data.cu")
set_gencode_flags_for_srcs(
SRCS "${SRCS}"
CUDA_ARCHS "${SCALED_MM_ARCHS}")
list(APPEND VLLM_EXT_SRC "${SRCS}")
list(APPEND VLLM_GPU_FLAGS "-DENABLE_CUTLASS_MOE_SM90=1")
message(STATUS "Building grouped_mm_c3x for archs: ${SCALED_MM_ARCHS}")
else()
if (NOT ${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.3 AND SCALED_MM_ARCHS)
message(STATUS "Not building grouped_mm_c3x kernels as CUDA Compiler version is "
"not >= 12.3, we recommend upgrading to CUDA 12.3 or later "
"if you intend on running FP8 quantized MoE models on Hopper.")
else()
message(STATUS "Not building grouped_mm_c3x as no compatible archs found "
"in CUDA target architectures")
endif()
endif()
#
# Machete kernels

View File

@ -1,69 +0,0 @@
# This vLLM Dockerfile is used to construct image that can build and run vLLM on x86 CPU platform.
FROM ubuntu:22.04 AS cpu-test-1
ENV CCACHE_DIR=/root/.cache/ccache
ENV CMAKE_CXX_COMPILER_LAUNCHER=ccache
RUN --mount=type=cache,target=/var/cache/apt \
apt-get update -y \
&& apt-get install -y curl ccache git wget vim numactl gcc-12 g++-12 python3 python3-pip libtcmalloc-minimal4 libnuma-dev \
&& apt-get install -y ffmpeg libsm6 libxext6 libgl1 \
&& update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /usr/bin/g++ g++ /usr/bin/g++-12
# https://intel.github.io/intel-extension-for-pytorch/cpu/latest/tutorials/performance_tuning/tuning_guide.html
# intel-openmp provides additional performance improvement vs. openmp
# tcmalloc provides better memory allocation efficiency, e.g, holding memory in caches to speed up access of commonly-used objects.
RUN --mount=type=cache,target=/root/.cache/pip \
pip install intel-openmp==2025.0.1
ENV LD_PRELOAD="/usr/lib/x86_64-linux-gnu/libtcmalloc_minimal.so.4:/usr/local/lib/libiomp5.so"
RUN echo 'ulimit -c 0' >> ~/.bashrc
RUN pip install intel_extension_for_pytorch==2.6.0
WORKDIR /workspace
ARG PIP_EXTRA_INDEX_URL="https://download.pytorch.org/whl/cpu"
ENV PIP_EXTRA_INDEX_URL=${PIP_EXTRA_INDEX_URL}
RUN --mount=type=cache,target=/root/.cache/pip \
--mount=type=bind,src=requirements/build.txt,target=requirements/build.txt \
pip install --upgrade pip && \
pip install -r requirements/build.txt
FROM cpu-test-1 AS build
WORKDIR /workspace/vllm
RUN --mount=type=cache,target=/root/.cache/pip \
--mount=type=bind,src=requirements/common.txt,target=requirements/common.txt \
--mount=type=bind,src=requirements/cpu.txt,target=requirements/cpu.txt \
pip install -v -r requirements/cpu.txt
COPY . .
ARG GIT_REPO_CHECK=0
RUN --mount=type=bind,source=.git,target=.git \
if [ "$GIT_REPO_CHECK" != 0 ]; then bash tools/check_repo.sh ; fi
# Support for building with non-AVX512 vLLM: docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" ...
ARG VLLM_CPU_DISABLE_AVX512
ENV VLLM_CPU_DISABLE_AVX512=${VLLM_CPU_DISABLE_AVX512}
RUN --mount=type=cache,target=/root/.cache/pip \
--mount=type=cache,target=/root/.cache/ccache \
--mount=type=bind,source=.git,target=.git \
VLLM_TARGET_DEVICE=cpu python3 setup.py bdist_wheel && \
pip install dist/*.whl && \
rm -rf dist
WORKDIR /workspace/
RUN ln -s /workspace/vllm/tests && ln -s /workspace/vllm/examples && ln -s /workspace/vllm/benchmarks
# install development dependencies (for testing)
RUN --mount=type=cache,target=/root/.cache/pip \
pip install -e tests/vllm_test_utils
ENTRYPOINT ["python3", "-m", "vllm.entrypoints.openai.api_server"]

View File

@ -1,37 +0,0 @@
FROM mambaorg/micromamba
ARG MAMBA_DOCKERFILE_ACTIVATE=1
USER root
ENV PATH="/usr/local/cargo/bin:$PATH:/opt/conda/bin/"
RUN apt-get update -y && apt-get install -y git wget kmod curl vim libnuma-dev libsndfile-dev libprotobuf-dev build-essential ffmpeg libsm6 libxext6 libgl1 libssl-dev
# Some packages in requirements/cpu are installed here
# IBM provides optimized packages for ppc64le processors in the open-ce project for mamba
# Currently these may not be available for venv or pip directly
RUN micromamba install -y -n base -c https://ftp.osuosl.org/pub/open-ce/1.11.0-p10/ -c defaults python=3.10 rust && micromamba clean --all --yes
COPY ./ /workspace/vllm
WORKDIR /workspace/vllm
ARG GIT_REPO_CHECK=0
RUN --mount=type=bind,source=.git,target=.git \
if [ "$GIT_REPO_CHECK" != 0 ]; then bash tools/check_repo.sh; fi
RUN --mount=type=cache,target=/root/.cache/pip \
RUSTFLAGS='-L /opt/conda/lib' pip install -v --prefer-binary --extra-index-url https://repo.fury.io/mgiessing \
'cmake>=3.26' ninja packaging 'setuptools-scm>=8' wheel jinja2 \
-r requirements/cpu.txt \
xformers uvloop==0.20.0
RUN --mount=type=bind,source=.git,target=.git \
VLLM_TARGET_DEVICE=cpu python3 setup.py install
# install development dependencies (for testing)
RUN python3 -m pip install -e tests/vllm_test_utils
WORKDIR /workspace/
RUN ln -s /workspace/vllm/tests && ln -s /workspace/vllm/examples && ln -s /workspace/vllm/benchmarks
ENTRYPOINT ["/opt/conda/bin/python3", "-m", "vllm.entrypoints.openai.api_server"]

View File

@ -15,14 +15,12 @@ Easy, fast, and cheap LLM serving for everyone
---
[2025/03] We are collaborating with Ollama to host an [Inference Night](https://lu.ma/vllm-ollama) at Y Combinator in San Francisco on Thursday, March 27, at 6 PM. Discuss all things inference local or data center!
[2025/04] We're hosting our first-ever *vLLM Asia Developer Day* in Singapore on *April 3rd*! This is a full-day event (9 AM - 9 PM SGT) in partnership with SGInnovate, AMD, and Embedded LLM. Meet the vLLM team and learn about LLM inference for RL, MI300X, and more! [Register Now](https://www.sginnovate.com/event/limited-availability-morning-evening-slots-remaining-inaugural-vllm-asia-developer-day)
---
*Latest News* 🔥
- [2025/03] We hosted [vLLM x Ollama Inference Night](https://lu.ma/vllm-ollama)! Please find the meetup slides from the vLLM team [here](https://docs.google.com/presentation/d/16T2PDD1YwRnZ4Tu8Q5r6n53c5Lr5c73UV9Vd2_eBo4U/edit?usp=sharing).
- [2025/03] We hosted [the first vLLM China Meetup](https://mp.weixin.qq.com/s/n77GibL2corAtQHtVEAzfg)! Please find the meetup slides from vLLM team [here](https://docs.google.com/presentation/d/1REHvfQMKGnvz6p3Fd23HhSO4c8j5WPGZV0bKYLwnHyQ/edit?usp=sharing).
- [2025/03] We hosted [the East Coast vLLM Meetup](https://lu.ma/7mu4k4xx)! Please find the meetup slides [here](https://docs.google.com/presentation/d/1NHiv8EUFF1NLd3fEYODm56nDmL26lEeXCaDgyDlTsRs/edit#slide=id.g31441846c39_0_0).
- [2025/02] We hosted [the ninth vLLM meetup](https://lu.ma/h7g3kuj9) with Meta! Please find the meetup slides from vLLM team [here](https://docs.google.com/presentation/d/1jzC_PZVXrVNSFVCW-V4cFXb6pn7zZ2CyP_Flwo05aqg/edit?usp=sharing) and AMD [here](https://drive.google.com/file/d/1Zk5qEJIkTmlQ2eQcXQZlljAx3m9s7nwn/view?usp=sharing). The slides from Meta will not be posted.

View File

@ -41,29 +41,33 @@ become available.
<td><code>synthetic</code></td>
</tr>
<tr>
<td><strong>HuggingFace</strong></td>
<td style="text-align: center;">🟡</td>
<td style="text-align: center;">🟡</td>
<td>Specify your dataset path on HuggingFace</td>
<td><strong>HuggingFace-VisionArena</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>lmarena-ai/VisionArena-Chat</code></td>
</tr>
<tr>
<td><strong>VisionArena</strong></td>
<td><strong>HuggingFace-InstructCoder</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>lmarena-ai/vision-arena-bench-v0.1</code> (a HuggingFace dataset)</td>
<td><code>likaixin/InstructCoder</code></td>
</tr>
<tr>
<td><strong>HuggingFace-Other</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>lmms-lab/LLaVA-OneVision-Data</code>, <code>Aeala/ShareGPT_Vicuna_unfiltered</code></td>
</tr>
</tbody>
</table>
✅: supported
🟡: Partial support
🚧: to be supported
🟡: Partial support. Currently, HuggingFaceDataset only supports dataset formats
similar to `lmms-lab/LLaVA-OneVision-Data` and `Aeala/ShareGPT_Vicuna_unfiltered`.
If you need support for other dataset formats, please consider contributing.
**Note**: VisionArenas `dataset-name` should be set to `hf`
**Note**: HuggingFace dataset's `dataset-name` should be set to `hf`
---
## Example - Online Benchmark
@ -71,8 +75,7 @@ If you need support for other dataset formats, please consider contributing.
First start serving your model
```bash
MODEL_NAME="NousResearch/Hermes-3-Llama-3.1-8B"
vllm serve ${MODEL_NAME} --disable-log-requests
vllm serve NousResearch/Hermes-3-Llama-3.1-8B --disable-log-requests
```
Then run the benchmarking script
@ -80,12 +83,13 @@ Then run the benchmarking script
```bash
# download dataset
# wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/ShareGPT_V3_unfiltered_cleaned_split.json
MODEL_NAME="NousResearch/Hermes-3-Llama-3.1-8B"
NUM_PROMPTS=10
BACKEND="vllm"
DATASET_NAME="sharegpt"
DATASET_PATH="<your data path>/ShareGPT_V3_unfiltered_cleaned_split.json"
python3 vllm/benchmarks/benchmark_serving.py --backend ${BACKEND} --model ${MODEL_NAME} --endpoint /v1/completions --dataset-name ${DATASET_NAME} --dataset-path ${DATASET_PATH} --num-prompts ${NUM_PROMPTS}
python3 vllm/benchmarks/benchmark_serving.py \
--backend vllm \
--model NousResearch/Hermes-3-Llama-3.1-8B \
--endpoint /v1/completions \
--dataset-name sharegpt \
--dataset-path <your data path>/ShareGPT_V3_unfiltered_cleaned_split.json \
--num-prompts 10
```
If successful, you will see the following output
@ -122,88 +126,76 @@ vllm serve Qwen/Qwen2-VL-7B-Instruct --disable-log-requests
```
```bash
MODEL_NAME="Qwen/Qwen2-VL-7B-Instruct"
NUM_PROMPTS=10
BACKEND="openai-chat"
DATASET_NAME="hf"
DATASET_PATH="lmarena-ai/vision-arena-bench-v0.1"
DATASET_SPLIT='train'
python3 vllm/benchmarks/benchmark_serving.py \
--backend "${BACKEND}" \
--model "${MODEL_NAME}" \
--endpoint "/v1/chat/completions" \
--dataset-name "${DATASET_NAME}" \
--dataset-path "${DATASET_PATH}" \
--hf-split "${DATASET_SPLIT}" \
--num-prompts "${NUM_PROMPTS}"
--backend openai-chat \
--model Qwen/Qwen2-VL-7B-Instruct \
--endpoint /v1/chat/completions \
--dataset-name hf \
--dataset-path lmarena-ai/VisionArena-Chat \
--hf-split train \
--num-prompts 1000
```
### HuggingFaceDataset Examples
### InstructCoder Benchmark with Speculative Decoding
Currently, HuggingFaceDataset only supports dataset formats
similar to `lmms-lab/LLaVA-OneVision-Data` and `Aeala/ShareGPT_Vicuna_unfiltered`. If you need support for other dataset
formats, please consider contributing.
``` bash
VLLM_USE_V1=1 vllm serve meta-llama/Meta-Llama-3-8B-Instruct \
--speculative-model "[ngram]" \
--ngram_prompt_lookup_min 2 \
--ngram-prompt-lookup-max 5 \
--num_speculative_tokens 5
```
``` bash
python3 benchmarks/benchmark_serving.py \
--model meta-llama/Meta-Llama-3-8B-Instruct \
--dataset-name hf \
--dataset-path likaixin/InstructCoder \
--num-prompts 2048
```
### Other HuggingFaceDataset Examples
```bash
# need a model with vision capability here
vllm serve Qwen/Qwen2-VL-7B-Instruct --disable-log-requests
```
**`lmms-lab/LLaVA-OneVision-Data`**
```bash
MODEL_NAME="Qwen/Qwen2-VL-7B-Instruct"
NUM_PROMPTS=10
BACKEND="openai-chat"
DATASET_NAME="hf"
DATASET_PATH="lmms-lab/LLaVA-OneVision-Data"
DATASET_SPLIT='train'
DATASET_SUBSET='chart2text(cauldron)'
python3 vllm/benchmarks/benchmark_serving.py \
--backend "${BACKEND}" \
--model "${MODEL_NAME}" \
--endpoint "/v1/chat/completions" \
--dataset-name "${DATASET_NAME}" \
--dataset-path "${DATASET_PATH}" \
--hf-split "${DATASET_SPLIT}" \
--num-prompts "${NUM_PROMPTS}" \
--hf-subset "${DATASET_SUBSET}"
--backend openai-chat \
--model Qwen/Qwen2-VL-7B-Instruct \
--endpoint /v1/chat/completions \
--dataset-name hf \
--dataset-path lmms-lab/LLaVA-OneVision-Data \
--hf-split train \
--hf-subset "chart2text(cauldron)" \
--num-prompts 10
```
**`Aeala/ShareGPT_Vicuna_unfiltered`**
```bash
MODEL_NAME="Qwen/Qwen2-VL-7B-Instruct"
NUM_PROMPTS=10
BACKEND="openai-chat"
DATASET_NAME="hf"
DATASET_PATH="Aeala/ShareGPT_Vicuna_unfiltered"
DATASET_SPLIT='train'
python3 vllm/benchmarks/benchmark_serving.py \
--backend "${BACKEND}" \
--model "${MODEL_NAME}" \
--endpoint "/v1/chat/completions" \
--dataset-name "${DATASET_NAME}" \
--dataset-path "${DATASET_PATH}" \
--hf-split "${DATASET_SPLIT}" \
--num-prompts "${NUM_PROMPTS}" \
--backend openai-chat \
--model Qwen/Qwen2-VL-7B-Instruct \
--endpoint /v1/chat/completions \
--dataset-name hf \
--dataset-path Aeala/ShareGPT_Vicuna_unfiltered \
--hf-split train \
--num-prompts 10
```
---
## Example - Offline Throughput Benchmark
```bash
MODEL_NAME="NousResearch/Hermes-3-Llama-3.1-8B"
NUM_PROMPTS=10
DATASET_NAME="sonnet"
DATASET_PATH="vllm/benchmarks/sonnet.txt"
python3 vllm/benchmarks/benchmark_throughput.py \
--model "${MODEL_NAME}" \
--dataset-name "${DATASET_NAME}" \
--dataset-path "${DATASET_PATH}" \
--num-prompts "${NUM_PROMPTS}"
--model NousResearch/Hermes-3-Llama-3.1-8B \
--dataset-name sonnet \
--dataset-path vllm/benchmarks/sonnet.txt \
--num-prompts 10
```
If successful, you will see the following output
@ -217,19 +209,13 @@ Total num output tokens: 1500
### VisionArena Benchmark for Vision Language Models
``` bash
MODEL_NAME="Qwen/Qwen2-VL-7B-Instruct"
NUM_PROMPTS=10
DATASET_NAME="hf"
DATASET_PATH="lmarena-ai/vision-arena-bench-v0.1"
DATASET_SPLIT="train"
python3 vllm/benchmarks/benchmark_throughput.py \
--model "${MODEL_NAME}" \
--backend "vllm-chat" \
--dataset-name "${DATASET_NAME}" \
--dataset-path "${DATASET_PATH}" \
--num-prompts "${NUM_PROMPTS}" \
--hf-split "${DATASET_SPLIT}"
--model Qwen/Qwen2-VL-7B-Instruct \
--backend vllm-chat \
--dataset-name hf \
--dataset-path lmarena-ai/VisionArena-Chat \
--num-prompts 1000 \
--hf-split train
```
The `num prompt tokens` now includes image token counts
@ -240,29 +226,71 @@ Total num prompt tokens: 14527
Total num output tokens: 1280
```
### InstructCoder Benchmark with Speculative Decoding
``` bash
VLLM_WORKER_MULTIPROC_METHOD=spawn \
VLLM_USE_V1=1 \
python3 vllm/benchmarks/benchmark_throughput.py \
--dataset-name=hf \
--dataset-path=likaixin/InstructCoder \
--model=meta-llama/Meta-Llama-3-8B-Instruct \
--input-len=1000 \
--output-len=100 \
--num-prompts=2048 \
--async-engine \
--speculative-model="[ngram]" \
--ngram_prompt_lookup_min=2 \
--ngram-prompt-lookup-max=5 \
--num_speculative_tokens=5
```
```
Throughput: 104.77 requests/s, 23836.22 total tokens/s, 10477.10 output tokens/s
Total num prompt tokens: 261136
Total num output tokens: 204800
```
### Other HuggingFaceDataset Examples
**`lmms-lab/LLaVA-OneVision-Data`**
```bash
python3 vllm/benchmarks/benchmark_throughput.py \
--model Qwen/Qwen2-VL-7B-Instruct \
--backend vllm-chat \
--dataset-name hf \
--dataset-path lmms-lab/LLaVA-OneVision-Data \
--hf-split train \
--hf-subset "chart2text(cauldron)" \
--num-prompts 10
```
**`Aeala/ShareGPT_Vicuna_unfiltered`**
```bash
python3 vllm/benchmarks/benchmark_throughput.py \
--model Qwen/Qwen2-VL-7B-Instruct \
--backend vllm-chat \
--dataset-name hf \
--dataset-path Aeala/ShareGPT_Vicuna_unfiltered \
--hf-split train \
--num-prompts 10
```
### Benchmark with LoRA Adapters
``` bash
# download dataset
# wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/ShareGPT_V3_unfiltered_cleaned_split.json
MODEL_NAME="meta-llama/Llama-2-7b-hf"
BACKEND="vllm"
DATASET_NAME="sharegpt"
DATASET_PATH="<your data path>/ShareGPT_V3_unfiltered_cleaned_split.json"
NUM_PROMPTS=10
MAX_LORAS=2
MAX_LORA_RANK=8
ENABLE_LORA="--enable-lora"
LORA_PATH="yard1/llama-2-7b-sql-lora-test"
python3 vllm/benchmarks/benchmark_throughput.py \
--model "${MODEL_NAME}" \
--backend "${BACKEND}" \
--dataset_path "${DATASET_PATH}" \
--dataset_name "${DATASET_NAME}" \
--num-prompts "${NUM_PROMPTS}" \
--max-loras "${MAX_LORAS}" \
--max-lora-rank "${MAX_LORA_RANK}" \
${ENABLE_LORA} \
--lora-path "${LORA_PATH}"
--model meta-llama/Llama-2-7b-hf \
--backend vllm \
--dataset_path <your data path>/ShareGPT_V3_unfiltered_cleaned_split.json \
--dataset_name sharegpt \
--num-prompts 10 \
--max-loras 2 \
--max-lora-rank 8 \
--enable-lora \
--lora-path yard1/llama-2-7b-sql-lora-test
```

View File

@ -23,7 +23,8 @@ from abc import ABC, abstractmethod
from collections.abc import Mapping
from dataclasses import dataclass
from functools import cache
from typing import Any, Optional, Union
from io import BytesIO
from typing import Any, Callable, Optional, Union
import numpy as np
import pandas as pd
@ -239,21 +240,24 @@ def process_image(image: Any) -> Mapping[str, Any]:
"""
Process a single image input and return a multimedia content dictionary.
For a PIL.Image.Image input:
- Converts the image to RGB.
- Saves the image as a JPEG in-memory.
- Encodes the JPEG data as a base64 string.
- Returns a dictionary with the image as a base64 data URL.
Supports three input types:
For a string input:
- Treats the string as a URL or file path.
- Prepends "file://" if the string doesn't start with "http://" or
"file://".
- Returns a dictionary with the image URL.
1. Dictionary with raw image bytes: - Expects a dict with a 'bytes' key
containing raw image data. - Loads the bytes as a PIL.Image.Image.
2. PIL.Image.Image input: - Converts the image to RGB. - Saves the image as
a JPEG in memory. - Encodes the JPEG data as a base64 string. - Returns
a dictionary with the image as a base64 data URL.
3. String input: - Treats the string as a URL or local file path. -
Prepends "file://" if the string doesn't start with "http://" or
"file://". - Returns a dictionary with the image URL.
Raises:
ValueError: If the input is neither a PIL.Image.Image nor a string.
ValueError: If the input is not a supported type.
"""
if isinstance(image, dict) and 'bytes' in image:
image = Image.open(BytesIO(image['bytes']))
if isinstance(image, Image.Image):
image = image.convert("RGB")
with io.BytesIO() as image_data:
@ -272,8 +276,8 @@ def process_image(image: Any) -> Mapping[str, Any]:
("http://", "file://")) else f"file://{image}")
return {"type": "image_url", "image_url": {"url": image_url}}
raise ValueError(
f"Invalid image input {image}. Must be a PIL.Image.Image or str.")
raise ValueError(f"Invalid image input {image}. Must be a PIL.Image.Image"
" or str or dictionary with raw image bytes.")
# -----------------------------------------------------------------------------
@ -562,48 +566,56 @@ class BurstGPTDataset(BenchmarkDataset):
# -----------------------------------------------------------------------------
# HuggingFace Dataset Implementation
# HuggingFace Dataset Base Implementation
# -----------------------------------------------------------------------------
class HuggingFaceDataset(BenchmarkDataset):
"""
Dataset class for processing a HuggingFace dataset with conversation data
and optional images.
"""
"""Base class for datasets hosted on HuggingFace."""
SUPPORTED_DATASET_PATHS: Union[set[str], dict[str, Callable]] = set()
def __init__(
self,
dataset_path: str,
dataset_split: str,
dataset_subset: Optional[str] = None,
**kwargs,
) -> None:
super().__init__(**kwargs)
super().__init__(dataset_path=dataset_path, **kwargs)
# Validate dataset path
if self.SUPPORTED_DATASET_PATHS and \
self.dataset_path not in self.SUPPORTED_DATASET_PATHS:
raise ValueError(
f"{self.__class__.__name__} "
f"only supports: {', '.join(self.SUPPORTED_DATASET_PATHS)}. "
"Please consider contributing if you would "
"like to add support for additional dataset formats.")
self.dataset_split = dataset_split
self.dataset_subset = dataset_subset
self.load_data()
def load_data(self) -> None:
if not self.dataset_path:
raise ValueError("dataset_path must be provided for loading data.")
"""Load data from HuggingFace datasets."""
self.data = load_dataset(
self.dataset_path,
name=self.dataset_subset,
split=self.dataset_split,
streaming=True,
)
if self.data.features is None or "conversations" \
not in self.data.features:
raise ValueError(
"HuggingFaceDataset currently only supports datasets with "
"a 'conversations' column like lmms-lab/LLaVA-OneVision-Data. "
"Please consider contributing if you would like to add "
"support for additional dataset formats.")
# Shuffle and filter examples with at least 2 conversations.
self.data = self.data.shuffle(seed=self.random_seed).filter(
lambda x: len(x["conversations"]) >= 2)
self.data = self.data.shuffle(seed=self.random_seed)
# -----------------------------------------------------------------------------
# Conversation Dataset Implementation
# -----------------------------------------------------------------------------
class ConversationDataset(HuggingFaceDataset):
"""Dataset for conversation data with multimodal support."""
SUPPORTED_DATASET_PATHS = {
'lmms-lab/LLaVA-OneVision-Data', 'Aeala/ShareGPT_Vicuna_unfiltered'
}
def sample(self,
tokenizer: PreTrainedTokenizerBase,
@ -611,10 +623,13 @@ class HuggingFaceDataset(BenchmarkDataset):
output_len: Optional[int] = None,
enable_multimodal_chat: bool = False,
**kwargs) -> list:
# Filter examples with at least 2 conversations
filtered_data = self.data.filter(
lambda x: len(x["conversations"]) >= 2)
sampled_requests = []
dynamic_output = output_len is None
for item in self.data:
for item in filtered_data:
if len(sampled_requests) >= num_requests:
break
conv = item["conversations"]
@ -659,29 +674,12 @@ class VisionArenaDataset(HuggingFaceDataset):
"""
DEFAULT_OUTPUT_LEN = 128
VISION_ARENA_DATASET_PATH = "lmarena-ai/vision-arena-bench-v0.1"
def __init__(
self,
**kwargs,
) -> None:
super().__init__(**kwargs)
if self.dataset_path != self.VISION_ARENA_DATASET_PATH:
raise ValueError(f"Only support Vision Arena dataset.\
This data path {self.dataset_path} is not valid.")
if self.dataset_subset is None and self.dataset_split != "train":
raise ValueError("Dataset split must be 'train'.")
self.load_data()
def load_data(self) -> None:
dataset = load_dataset(
self.dataset_path,
name=self.dataset_subset,
split=self.dataset_split,
streaming=True,
)
self.data = dataset.shuffle(seed=self.random_seed)
SUPPORTED_DATASET_PATHS = {
"lmarena-ai/VisionArena-Chat":
lambda x: x["conversation"][0][0]["content"],
"lmarena-ai/vision-arena-bench-v0.1":
lambda x: x["turns"][0][0]["content"]
}
def sample(
self,
@ -697,7 +695,11 @@ class VisionArenaDataset(HuggingFaceDataset):
for item in self.data:
if len(sampled_requests) >= num_requests:
break
prompt = item["turns"][0][0]["content"]
parser_fn = self.SUPPORTED_DATASET_PATHS.get(self.dataset_path)
if parser_fn is None:
raise ValueError(
f"Unsupported dataset path: {self.dataset_path}")
prompt = parser_fn(item)
mm_content = process_image(item["images"][0])
prompt_len = len(tokenizer(prompt).input_ids)
if enable_multimodal_chat:
@ -715,3 +717,47 @@ class VisionArenaDataset(HuggingFaceDataset):
))
self.maybe_oversample_requests(sampled_requests, num_requests)
return sampled_requests
# -----------------------------------------------------------------------------
# Instruct Coder Dataset Implementation
# -----------------------------------------------------------------------------
class InstructCoderDataset(HuggingFaceDataset):
"""
InstructCoder Dataset.
https://huggingface.co/datasets/likaixin/InstructCoder
InstructCoder is the dataset designed for general code editing. It consists
of 114,239 instruction-input-output triplets, and covers multiple distinct
code editing scenario.
"""
DEFAULT_OUTPUT_LEN = 200 # this is the average default output length
SUPPORTED_DATASET_PATHS = {
"likaixin/InstructCoder",
}
def sample(self,
tokenizer: PreTrainedTokenizerBase,
num_requests: int,
output_len: Optional[int] = None,
enable_multimodal_chat: bool = False,
**kwargs) -> list:
output_len = (output_len
if output_len is not None else self.DEFAULT_OUTPUT_LEN)
sampled_requests = []
for item in self.data:
if len(sampled_requests) >= num_requests:
break
prompt = f"{item['instruction']}:\n{item['input']}"
prompt_len = len(tokenizer(prompt).input_ids)
sampled_requests.append(
SampleRequest(
prompt=prompt,
prompt_len=prompt_len,
expected_output_len=output_len,
))
self.maybe_oversample_requests(sampled_requests, num_requests)
return sampled_requests

View File

@ -7,9 +7,6 @@ On the server side, run one of the following commands:
--swap-space 16 \
--disable-log-requests
(TGI backend)
./launch_tgi_server.sh <your_model> <max_batch_total_tokens>
On the client side, run:
python benchmarks/benchmark_serving.py \
--backend <backend> \
@ -52,9 +49,10 @@ try:
except ImportError:
from argparse import ArgumentParser as FlexibleArgumentParser
from benchmark_dataset import (BurstGPTDataset, HuggingFaceDataset,
RandomDataset, SampleRequest, ShareGPTDataset,
SonnetDataset, VisionArenaDataset)
from benchmark_dataset import (BurstGPTDataset, ConversationDataset,
InstructCoderDataset, RandomDataset,
SampleRequest, ShareGPTDataset, SonnetDataset,
VisionArenaDataset)
from benchmark_utils import convert_to_pytorch_benchmark_format, write_to_json
MILLISECONDS_TO_SECONDS_CONVERSION = 1000
@ -586,11 +584,17 @@ def main(args: argparse.Namespace):
return_prompt_formatted=True)
elif args.dataset_name == "hf":
# Choose between VisionArenaDataset
# and HuggingFaceDataset based on provided parameters.
dataset_class = (VisionArenaDataset if args.dataset_path
== VisionArenaDataset.VISION_ARENA_DATASET_PATH
and args.hf_subset is None else HuggingFaceDataset)
# all following datasets are implemented from the
# HuggingFaceDataset base class
if args.dataset_path in VisionArenaDataset.SUPPORTED_DATASET_PATHS:
dataset_class = VisionArenaDataset
args.hf_split = "train"
args.hf_subset = None
elif args.dataset_path in InstructCoderDataset.SUPPORTED_DATASET_PATHS:
dataset_class = InstructCoderDataset
args.hf_split = "train"
elif args.dataset_path in ConversationDataset.SUPPORTED_DATASET_PATHS:
dataset_class = ConversationDataset
input_requests = dataset_class(
dataset_path=args.dataset_path,
dataset_subset=args.hf_subset,

View File

@ -5,9 +5,6 @@ On the server side, run one of the following commands:
(vLLM OpenAI API server)
vllm serve <your_model> --disable-log-requests
(TGI backend)
./launch_tgi_server.sh <your_model> <max_batch_total_tokens>
On the client side, run:
python benchmarks/benchmark_serving_structured_output.py \
--backend <backend> \

View File

@ -11,9 +11,10 @@ from typing import Any, Optional, Union
import torch
import uvloop
from benchmark_dataset import (BurstGPTDataset, HuggingFaceDataset,
RandomDataset, SampleRequest, ShareGPTDataset,
SonnetDataset, VisionArenaDataset)
from benchmark_dataset import (BurstGPTDataset, ConversationDataset,
InstructCoderDataset, RandomDataset,
SampleRequest, ShareGPTDataset, SonnetDataset,
VisionArenaDataset)
from benchmark_utils import convert_to_pytorch_benchmark_format, write_to_json
from tqdm import tqdm
from transformers import (AutoModelForCausalLM, AutoTokenizer,
@ -300,6 +301,7 @@ def get_requests(args, tokenizer):
"input_len": args.input_len,
"output_len": args.output_len,
}
if args.dataset_path is None or args.dataset_name == "random":
sample_kwargs["range_ratio"] = args.random_range_ratio
sample_kwargs["prefix_len"] = args.prefix_len
@ -317,17 +319,19 @@ def get_requests(args, tokenizer):
elif args.dataset_name == "burstgpt":
dataset_cls = BurstGPTDataset
elif args.dataset_name == "hf":
if args.backend != "vllm-chat":
raise ValueError(
"hf datasets only are supported by vllm-chat backend")
# Choose between VisionArenaDataset and HuggingFaceDataset based on
# provided parameters.
dataset_cls = (VisionArenaDataset if args.dataset_path
== VisionArenaDataset.VISION_ARENA_DATASET_PATH
and args.hf_subset is None else HuggingFaceDataset)
common_kwargs['dataset_subset'] = args.hf_subset
common_kwargs['dataset_split'] = args.hf_split
sample_kwargs["enable_multimodal_chat"] = True
if args.dataset_path in VisionArenaDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = VisionArenaDataset
common_kwargs['dataset_subset'] = None
common_kwargs['dataset_split'] = "train"
sample_kwargs["enable_multimodal_chat"] = True
elif args.dataset_path in InstructCoderDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = InstructCoderDataset
common_kwargs['dataset_split'] = "train"
elif args.dataset_path in ConversationDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = ConversationDataset
common_kwargs['dataset_subset'] = args.hf_subset
common_kwargs['dataset_split'] = args.hf_split
sample_kwargs["enable_multimodal_chat"] = True
else:
raise ValueError(f"Unknown dataset name: {args.dataset_name}")
@ -462,9 +466,16 @@ def validate_args(args):
warnings.warn("--hf-subset and --hf-split will be ignored \
since --dataset-name is not 'hf'.",
stacklevel=2)
elif args.dataset_name == "hf" and args.backend != "vllm-chat":
raise ValueError(
"When --dataset-name is 'hf', backend must be 'vllm-chat'")
elif args.dataset_name == "hf":
if args.dataset_path in VisionArenaDataset.SUPPORTED_DATASET_PATHS:
assert args.backend == "vllm-chat", "VisionArenaDataset needs to use vllm-chat as the backend." #noqa: E501
elif args.dataset_path in InstructCoderDataset.SUPPORTED_DATASET_PATHS:
assert args.backend == "vllm", "InstructCoder dataset needs to use vllm as the backend." #noqa: E501
elif args.dataset_path in ConversationDataset.SUPPORTED_DATASET_PATHS:
assert args.backend == "vllm-chat", "ConversationDataset needs to use vllm-chat as the backend." #noqa: E501
else:
raise ValueError(
f"{args.dataset_path} is not supported by hf dataset.")
# --random-range-ratio: only used when dataset_name is 'random'
if args.dataset_name != 'random' and args.random_range_ratio is not None:

View File

@ -0,0 +1,340 @@
# SPDX-License-Identifier: Apache-2.0
import torch
import torch.utils.benchmark as benchmark
from benchmark_shapes import WEIGHT_SHAPES_MOE
from vllm import _custom_ops as ops
from vllm.config import ParallelConfig, VllmConfig, set_current_vllm_config
from vllm.model_executor.layers.fused_moe.fused_moe import (cutlass_moe_fp8,
fused_experts,
fused_topk)
from vllm.utils import FlexibleArgumentParser
DEFAULT_MODELS = [
"nm-testing/Mixtral-8x7B-Instruct-v0.1", "nm-testing/deepseekv2-lite",
"ibm-granite/granite-3.0-1b-a400m", "ibm-granite/granite-3.0-3b-a800m"
]
DEFAULT_BATCH_SIZES = [1, 4, 8, 16, 32, 64, 128, 256, 512]
DEFAULT_TP_SIZES = [1]
PER_ACT_TOKEN_OPTS = [False]
PER_OUT_CH_OPTS = [False]
def to_fp8(tensor: torch.Tensor):
finfo = torch.finfo(torch.float8_e4m3fn)
return torch.round(tensor.clamp(
min=finfo.min, max=finfo.max)).to(dtype=torch.float8_e4m3fn)
def bench_run(results: list[benchmark.Measurement], model: str,
num_experts: int, topk: int, per_act_token: bool,
per_out_ch: bool, mkn: tuple[int, int, int]):
label = "Quant Matmul"
sub_label = (
"{}, num_experts={}, topk={}, per_act_token={} per_out_ch={}, "
"MKN=({})".format(model, num_experts, topk, per_act_token, per_out_ch,
mkn))
print(f"Testing: {sub_label}")
(m, k, n) = mkn
dtype = torch.half
a = torch.randn((m, k), device="cuda", dtype=dtype) / 10
w1 = torch.randn((num_experts, 2 * n, k), device="cuda", dtype=dtype) / 10
w2 = torch.randn((num_experts, k, n), device="cuda", dtype=dtype) / 10
_, a_scale = ops.scaled_fp8_quant(a)
w1_q = torch.empty((num_experts, 2 * n, k),
device="cuda",
dtype=torch.float8_e4m3fn)
w2_q = torch.empty((num_experts, k, n),
device="cuda",
dtype=torch.float8_e4m3fn)
w1_scale = torch.empty((num_experts, 1, 1),
device="cuda",
dtype=torch.float32)
w2_scale = torch.empty((num_experts, 1, 1),
device="cuda",
dtype=torch.float32)
ab_strides1 = torch.full((num_experts, ),
k,
device="cuda",
dtype=torch.int64)
c_strides1 = torch.full((num_experts, ),
2 * n,
device="cuda",
dtype=torch.int64)
ab_strides2 = torch.full((num_experts, ),
n,
device="cuda",
dtype=torch.int64)
c_strides2 = torch.full((num_experts, ),
k,
device="cuda",
dtype=torch.int64)
for expert in range(num_experts):
w1_q[expert], w1_scale[expert] = ops.scaled_fp8_quant(w1[expert])
w2_q[expert], w2_scale[expert] = ops.scaled_fp8_quant(w2[expert])
w1_q_notransp = w1_q.clone()
w2_q_notransp = w2_q.clone()
w1_q = w1_q.transpose(1, 2)
w2_q = w2_q.transpose(1, 2)
score = torch.randn((m, num_experts), device="cuda", dtype=dtype)
topk_weights, topk_ids = fused_topk(a, score, topk, renormalize=False)
def run_triton_moe(a: torch.Tensor, w1: torch.Tensor, w2: torch.Tensor,
topk_weights: torch.Tensor, topk_ids: torch.Tensor,
w1_scale: torch.Tensor, w2_scale: torch.Tensor,
a_scale: torch.Tensor, num_repeats: int):
for _ in range(num_repeats):
fused_experts(a,
w1,
w2,
topk_weights,
topk_ids,
use_fp8_w8a8=True,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a_scale)
def run_cutlass_moe(a: torch.Tensor, a_scale: torch.Tensor,
w1: torch.Tensor, w2: torch.Tensor,
w1_scale: torch.Tensor, w2_scale: torch.Tensor,
topk_weights: torch.Tensor, topk_ids: torch.Tensor,
ab_strides1: torch.Tensor, c_strides1: torch.Tensor,
ab_strides2: torch.Tensor, c_strides2: torch.Tensor,
num_repeats: int):
for _ in range(num_repeats):
cutlass_moe_fp8(a,
w1,
w2,
w1_scale,
w2_scale,
topk_weights,
topk_ids,
ab_strides1,
c_strides1,
ab_strides2,
c_strides2,
a1_scale=a_scale)
def run_cutlass_from_graph(
a: torch.Tensor, a_scale: torch.Tensor, w1_q: torch.Tensor,
w2_q: torch.Tensor, w1_scale: torch.Tensor, w2_scale: torch.Tensor,
topk_weights: torch.Tensor, topk_ids: torch.Tensor,
ab_strides1: torch.Tensor, c_strides1: torch.Tensor,
ab_strides2: torch.Tensor, c_strides2: torch.Tensor):
with set_current_vllm_config(
VllmConfig(parallel_config=ParallelConfig(
pipeline_parallel_size=1))):
return cutlass_moe_fp8(a,
w1_q,
w2_q,
w1_scale,
w2_scale,
topk_weights,
topk_ids,
ab_strides1,
c_strides1,
ab_strides2,
c_strides2,
a1_scale=a_scale)
def run_triton_from_graph(a: torch.Tensor, w1: torch.Tensor,
w2: torch.Tensor, topk_weights: torch.Tensor,
topk_ids: torch.Tensor, w1_scale: torch.Tensor,
w2_scale: torch.Tensor, a_scale: torch.Tensor):
with set_current_vllm_config(
VllmConfig(parallel_config=ParallelConfig(
pipeline_parallel_size=1))):
return fused_experts(a,
w1,
w2,
topk_weights,
topk_ids,
use_fp8_w8a8=True,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a_scale)
def replay_graph(graph, num_repeats):
for _ in range(num_repeats):
graph.replay()
torch.cuda.synchronize()
cutlass_stream = torch.cuda.Stream()
cutlass_graph = torch.cuda.CUDAGraph()
with torch.cuda.graph(cutlass_graph, stream=cutlass_stream):
run_cutlass_from_graph(a, a_scale, w1_q, w2_q, w1_scale, w2_scale,
topk_weights, topk_ids, ab_strides1, c_strides1,
ab_strides2, c_strides2)
torch.cuda.synchronize()
triton_stream = torch.cuda.Stream()
triton_graph = torch.cuda.CUDAGraph()
with torch.cuda.graph(triton_graph, stream=triton_stream):
run_triton_from_graph(a, w1_q_notransp, w2_q_notransp, topk_weights,
topk_ids, w1_scale, w2_scale, a_scale)
torch.cuda.synchronize()
min_run_time = 5
num_warmup = 5
num_runs = 25
globals = {
# Baseline params
"w1": w1,
"w2": w2,
"score": score,
"topk": topk,
"w1_q_notransp": w1_q_notransp,
"w2_q_notransp": w2_q_notransp,
# Cutlass params
"a_scale": a_scale,
"w1_q": w1_q,
"w2_q": w2_q,
"w1_scale": w1_scale,
"w2_scale": w2_scale,
"ab_strides1": ab_strides1,
"c_strides1": c_strides1,
"ab_strides2": ab_strides2,
"c_strides2": c_strides2,
# cuda graph params
"cutlass_graph": cutlass_graph,
"triton_graph": triton_graph,
# Gen params
"a": a,
"topk_weights": topk_weights,
"topk_ids": topk_ids,
"num_runs": num_runs,
# Kernels
"run_triton_moe": run_triton_moe,
"run_cutlass_moe": run_cutlass_moe,
"replay_graph": replay_graph,
}
# Warmup
run_triton_moe(a, w1_q_notransp, w2_q_notransp, topk_weights, topk_ids,
w1_scale, w2_scale, a_scale, num_warmup)
results.append(
benchmark.Timer(
stmt=
"run_triton_moe(a, w1_q_notransp, w2_q_notransp, topk_weights, topk_ids, w1_scale, w2_scale, a_scale, num_runs)", # noqa: E501
globals=globals,
label=label,
sub_label=sub_label,
description="triton_moe",
).blocked_autorange(min_run_time=min_run_time))
# Warmup
replay_graph(triton_graph, num_warmup)
results.append(
benchmark.Timer(
stmt="replay_graph(triton_graph, num_runs)",
globals=globals,
label=label,
sub_label=sub_label,
description="triton_moe_cuda_graphs",
).blocked_autorange(min_run_time=min_run_time))
# Warmup
run_cutlass_moe(a, a_scale, w1_q, w2_q, w1_scale, w2_scale, topk_weights,
topk_ids, ab_strides1, c_strides1, ab_strides2, c_strides2,
num_warmup)
results.append(
benchmark.Timer(
stmt=
"run_cutlass_moe(a, a_scale, w1_q, w2_q, w1_scale, w2_scale, topk_weights, topk_ids, ab_strides1, c_strides1, ab_strides2, c_strides2, num_runs)", # noqa: E501
globals=globals,
label=label,
sub_label=sub_label,
description="grouped_gemm_moe",
).blocked_autorange(min_run_time=min_run_time))
# Warmup
replay_graph(cutlass_graph, num_warmup)
results.append(
benchmark.Timer(
stmt="replay_graph(cutlass_graph, num_runs)",
globals=globals,
label=label,
sub_label=sub_label,
description="grouped_gemm_moe_cuda_graphs",
).blocked_autorange(min_run_time=min_run_time))
def main(args):
print("Benchmarking models:")
for i, model in enumerate(args.models):
print(f"[{i}] {model}")
results: list[benchmark.Measurement] = []
for model in args.models:
for tp in args.tp_sizes:
for layer in WEIGHT_SHAPES_MOE[model]:
num_experts = layer[0]
topk = layer[1]
size_k = layer[2]
size_n = layer[3] // tp
if len(args.limit_k) > 0 and size_k not in args.limit_k:
continue
if len(args.limit_n) > 0 and size_n not in args.limit_n:
continue
for per_act_token in PER_ACT_TOKEN_OPTS:
for per_out_ch in PER_OUT_CH_OPTS:
for size_m in DEFAULT_BATCH_SIZES:
mkn = (size_m, size_k, size_n)
bench_run(results, model, num_experts, topk,
per_act_token, per_out_ch, mkn)
compare = benchmark.Compare(results)
compare.print()
if __name__ == "__main__":
parser = FlexibleArgumentParser(
description="Benchmark Marlin across specified models/shapes/batches")
parser.add_argument(
"--models",
nargs="+",
type=str,
default=DEFAULT_MODELS,
choices=WEIGHT_SHAPES_MOE.keys(),
)
parser.add_argument("--tp-sizes",
nargs="+",
type=int,
default=DEFAULT_TP_SIZES)
parser.add_argument("--batch-sizes",
nargs="+",
type=int,
default=DEFAULT_BATCH_SIZES)
parser.add_argument("--limit-k", nargs="+", type=int, default=[])
parser.add_argument("--limit-n", nargs="+", type=int, default=[])
parser.add_argument("--limit-num-groups", nargs="+", type=int, default=[])
parser.add_argument("--limit-per-act-token",
nargs="+",
type=int,
default=[])
parser.add_argument("--limit-per-out-ch", nargs="+", type=int, default=[])
args = parser.parse_args()
main(args)

View File

@ -30,19 +30,18 @@ class BenchmarkConfig(TypedDict):
num_stages: int
def benchmark_config(
config: BenchmarkConfig,
num_tokens: int,
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8_w8a8: bool,
use_int8_w8a16: bool,
num_iters: int = 100,
block_quant_shape: List[int] = None,
) -> float:
def benchmark_config(config: BenchmarkConfig,
num_tokens: int,
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8_w8a8: bool,
use_int8_w8a16: bool,
num_iters: int = 100,
block_quant_shape: List[int] = None,
use_deep_gemm: bool = False) -> float:
init_dtype = torch.float16 if use_fp8_w8a8 else dtype
x = torch.randn(num_tokens, hidden_size, dtype=dtype)
if use_int8_w8a16:
@ -115,22 +114,41 @@ def benchmark_config(
def run():
from vllm.model_executor.layers.fused_moe import override_config
with override_config(config):
fused_moe(
x,
w1,
w2,
input_gating,
topk,
renormalize=True,
inplace=True,
use_fp8_w8a8=use_fp8_w8a8,
use_int8_w8a16=use_int8_w8a16,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a1_scale,
a2_scale=a2_scale,
block_shape=block_quant_shape,
)
if use_deep_gemm:
topk_weights, topk_ids = fused_topk(x, input_gating, topk,
False)
return fused_experts(
x,
w1,
w2,
topk_weights,
topk_ids,
inplace=True,
use_fp8_w8a8=use_fp8_w8a8,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a1_scale,
a2_scale=a2_scale,
block_shape=block_quant_shape,
allow_deep_gemm=True,
)
else:
fused_moe(
x,
w1,
w2,
input_gating,
topk,
renormalize=True,
inplace=True,
use_fp8_w8a8=use_fp8_w8a8,
use_int8_w8a16=use_int8_w8a16,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a1_scale,
a2_scale=a2_scale,
block_shape=block_quant_shape,
)
# JIT compilation & warmup
run()
@ -366,6 +384,7 @@ class BenchmarkWorker:
use_fp8_w8a8: bool,
use_int8_w8a16: bool,
block_quant_shape: List[int] = None,
use_deep_gemm: bool = False,
) -> tuple[dict[str, int], float]:
current_platform.seed_everything(self.seed)
dtype_str = get_config_dtype_str(dtype,
@ -396,7 +415,8 @@ class BenchmarkWorker:
use_fp8_w8a8,
use_int8_w8a16,
num_iters=100,
block_quant_shape=block_quant_shape)
block_quant_shape=block_quant_shape,
use_deep_gemm=use_deep_gemm)
return config, kernel_time
def tune(
@ -411,6 +431,7 @@ class BenchmarkWorker:
use_int8_w8a16: bool,
search_space: list[dict[str, int]],
block_quant_shape: list[int],
use_deep_gemm: bool,
) -> dict[str, int]:
best_config = None
best_time = float("inf")
@ -436,7 +457,8 @@ class BenchmarkWorker:
use_fp8_w8a8,
use_int8_w8a16,
num_iters=20,
block_quant_shape=block_quant_shape)
block_quant_shape=block_quant_shape,
use_deep_gemm=use_deep_gemm)
except triton.runtime.autotuner.OutOfResources:
# Some configurations may be invalid and fail to compile.
continue
@ -550,6 +572,8 @@ def main(args: argparse.Namespace):
else:
batch_sizes = [args.batch_size]
use_deep_gemm = bool(args.use_deep_gemm)
ray.init()
num_gpus = int(ray.available_resources()["GPU"])
workers = [BenchmarkWorker.remote(args.seed) for _ in range(num_gpus)]
@ -572,10 +596,10 @@ def main(args: argparse.Namespace):
start = time.time()
configs = _distribute(
"tune",
[(batch_size, E, shard_intermediate_size, hidden_size, topk, dtype,
use_fp8_w8a8, use_int8_w8a16, search_space, block_quant_shape)
for batch_size in batch_sizes])
"tune", [(batch_size, E, shard_intermediate_size, hidden_size,
topk, dtype, use_fp8_w8a8, use_int8_w8a16, search_space,
block_quant_shape, use_deep_gemm)
for batch_size in batch_sizes])
best_configs = {
M: sort_config(config)
for M, config in zip(batch_sizes, configs)
@ -589,7 +613,7 @@ def main(args: argparse.Namespace):
outputs = _distribute(
"benchmark",
[(batch_size, E, shard_intermediate_size, hidden_size, topk, dtype,
use_fp8_w8a8, use_int8_w8a16, block_quant_shape)
use_fp8_w8a8, use_int8_w8a16, block_quant_shape, use_deep_gemm)
for batch_size in batch_sizes])
for batch_size, (config, kernel_time) in zip(batch_sizes, outputs):
@ -611,6 +635,7 @@ if __name__ == "__main__":
type=str,
choices=["auto", "fp8_w8a8", "int8_w8a16"],
default="auto")
parser.add_argument("--use-deep-gemm", action="store_true")
parser.add_argument("--seed", type=int, default=0)
parser.add_argument("--batch-size", type=int, required=False)
parser.add_argument("--tune", action="store_true")

View File

@ -7,10 +7,13 @@ from typing import Optional
import torch
from vllm import _custom_ops as ops
from vllm.logger import init_logger
from vllm.platforms import current_platform
from vllm.utils import (STR_DTYPE_TO_TORCH_DTYPE, FlexibleArgumentParser,
create_kv_caches_with_random)
logger = init_logger(__name__)
NUM_BLOCKS = 128 * 1024
PARTITION_SIZE = 512
PARTITION_SIZE_ROCM = 256
@ -193,6 +196,9 @@ def main(
if __name__ == '__main__':
logger.warning("This script benchmarks the paged attention kernel. "
"By default this is no longer used in vLLM inference.")
parser = FlexibleArgumentParser(
description="Benchmark the paged attention kernel.")
parser.add_argument("--version",

View File

@ -75,3 +75,19 @@ WEIGHT_SHAPES = {
[7168, 8192],
],
}
WEIGHT_SHAPES_MOE = {
"nm-testing/Mixtral-8x7B-Instruct-v0.1": [
[8, 2, 4096, 28672],
[8, 2, 14336, 4096],
],
"nm-testing/deepseekv2-lite": [
[64, 6, 2048, 1408],
],
"ibm-granite/granite-3.0-1b-a400m": [
[32, 8, 1024, 1024],
],
"ibm-granite/granite-3.0-3b-a800m": [
[40, 8, 1024, 1536],
],
}

View File

@ -1,16 +0,0 @@
#!/bin/bash
PORT=8000
MODEL=$1
TOKENS=$2
docker run -e "HF_TOKEN=$HF_TOKEN" --gpus all --shm-size 1g -p $PORT:80 \
-v "$PWD/data:/data" \
ghcr.io/huggingface/text-generation-inference:2.2.0 \
--model-id "$MODEL" \
--sharded false \
--max-input-length 1024 \
--max-total-tokens 2048 \
--max-best-of 5 \
--max-concurrent-requests 5000 \
--max-batch-total-tokens "$TOKENS"

View File

@ -190,6 +190,7 @@ set(VLLM_EXT_SRC
"csrc/cpu/cache.cpp"
"csrc/cpu/utils.cpp"
"csrc/cpu/layernorm.cpp"
"csrc/cpu/mla_decode.cpp"
"csrc/cpu/pos_encoding.cpp"
"csrc/cpu/torch_bindings.cpp")

View File

@ -482,16 +482,28 @@ def get_pip_packages(run_lambda, patterns=None):
if patterns is None:
patterns = DEFAULT_PIP_PATTERNS
# People generally have `pip` as `pip` or `pip3`
# But here it is invoked as `python -mpip`
def run_with_pip(pip):
out = run_and_read_all(run_lambda, pip + ["list", "--format=freeze"])
def run_with_pip():
try:
import importlib.util
pip_spec = importlib.util.find_spec('pip')
pip_available = pip_spec is not None
except ImportError:
pip_available = False
if pip_available:
cmd = [sys.executable, '-mpip', 'list', '--format=freeze']
elif os.environ.get("UV") is not None:
print("uv is set")
cmd = ["uv", "pip", "list", "--format=freeze"]
else:
raise RuntimeError("Could not collect pip list output (pip or uv module not available)")
out = run_and_read_all(run_lambda, cmd)
return "\n".join(line for line in out.splitlines()
if any(name in line for name in patterns))
pip_version = 'pip3' if sys.version[0] == '3' else 'pip'
out = run_with_pip([sys.executable, '-mpip'])
out = run_with_pip()
return pip_version, out

View File

@ -88,6 +88,48 @@ void reshape_and_cache_cpu_impl(
}
}; // namespace
template <typename scalar_t>
void concat_and_cache_mla_cpu_impl(
const scalar_t* __restrict__ kv_c, // [num_tokens, kv_lora_rank]
const scalar_t* __restrict__ k_pe, // [num_tokens, pe_dim]
scalar_t* __restrict__ kv_cache, // [num_blocks, block_size, (kv_lora_rank
// + pe_dim)]
const int64_t* __restrict__ slot_mapping, // [num_tokens]
const int num_tokens, //
const int block_stride, //
const int entry_stride, //
const int kv_c_stride, //
const int k_pe_stride, //
const int kv_lora_rank, //
const int pe_dim, //
const int block_size //
) {
#pragma omp parallel for
for (int token_idx = 0; token_idx < num_tokens; ++token_idx) {
const int64_t slot_idx = slot_mapping[token_idx];
// NOTE: slot_idx can be -1 if the token is padded
if (slot_idx < 0) {
continue;
}
const int64_t block_idx = slot_idx / block_size;
const int64_t block_offset = slot_idx % block_size;
auto copy = [&](const scalar_t* __restrict__ src,
scalar_t* __restrict__ dst, int src_stride, int dst_stride,
int size, int offset) {
for (int i = 0; i < size; i++) {
const int64_t src_idx = token_idx * src_stride + i;
const int64_t dst_idx =
block_idx * block_stride + block_offset * entry_stride + i + offset;
dst[dst_idx] = src[src_idx];
}
};
copy(kv_c, kv_cache, kv_c_stride, block_stride, kv_lora_rank, 0);
copy(k_pe, kv_cache, k_pe_stride, block_stride, pe_dim, kv_lora_rank);
}
}
// Note: the key_caches and value_caches vectors are constant but
// not the Tensors they contain. The vectors need to be const refs
// in order to satisfy pytorch's C++ operator registration code.
@ -134,6 +176,38 @@ void reshape_and_cache(torch::Tensor& key, torch::Tensor& value,
});
}
void concat_and_cache_mla(
torch::Tensor& kv_c, // [num_tokens, kv_lora_rank]
torch::Tensor& k_pe, // [num_tokens, pe_dim]
torch::Tensor& kv_cache, // [num_blocks, block_size, (kv_lora_rank +
// pe_dim)]
torch::Tensor& slot_mapping, // [num_tokens] or [num_actual_tokens]
const std::string& kv_cache_dtype, torch::Tensor& scale) {
int num_tokens = slot_mapping.size(0);
int kv_lora_rank = kv_c.size(1);
int pe_dim = k_pe.size(1);
int block_size = kv_cache.size(1);
TORCH_CHECK(kv_cache.size(2) == kv_lora_rank + pe_dim);
TORCH_CHECK(kv_cache_dtype != "fp8");
int kv_c_stride = kv_c.stride(0);
int k_pe_stride = k_pe.stride(0);
int block_stride = kv_cache.stride(0);
int entry_stride = kv_cache.stride(1);
VLLM_DISPATCH_FLOATING_TYPES(
kv_c.scalar_type(), "concat_and_cache_mla_cpu_impl", [&] {
CPU_KERNEL_GUARD_IN(concat_and_cache_mla_cpu_impl)
concat_and_cache_mla_cpu_impl<scalar_t>(
kv_c.data_ptr<scalar_t>(), k_pe.data_ptr<scalar_t>(),
kv_cache.data_ptr<scalar_t>(), slot_mapping.data_ptr<int64_t>(),
num_tokens, block_stride, entry_stride, kv_c_stride, k_pe_stride,
kv_lora_rank, pe_dim, block_size);
CPU_KERNEL_GUARD_OUT(concat_and_cache_mla_cpu_impl)
});
}
void swap_blocks(torch::Tensor& src, torch::Tensor& dst,
const torch::Tensor& block_mapping) {
TORCH_CHECK(false, "swap_blocks is unsupported on CPU.")

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@ -130,6 +130,8 @@ struct BF16Vec32 : public Vec<BF16Vec32> {
__m512i reg;
explicit BF16Vec32() : reg(_mm512_setzero_si512()) {}
explicit BF16Vec32(const void* ptr) : reg((__m512i)_mm512_loadu_si512(ptr)) {}
explicit BF16Vec32(__m512i data) : reg(data) {}

393
csrc/cpu/mla_decode.cpp Normal file
View File

@ -0,0 +1,393 @@
#include "cpu_types.hpp"
#include <float.h>
namespace {
template <typename scalar_t>
struct KernelVecType {
using qk_load_vec_type = void;
using qk_vec_type = void;
using v_load_vec_type = void;
};
template <>
struct KernelVecType<float> {
using qk_load_vec_type = vec_op::FP32Vec16;
using qk_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::FP32Vec16;
};
template <>
struct KernelVecType<c10::Half> {
#if defined(__powerpc64__) || defined(__s390x__)
// Power and s390x architecture-specific vector types
using qk_load_vec_type = vec_op::FP32Vec16;
using qk_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::FP32Vec16;
#else
// Fallback for other architectures, including x86
using qk_load_vec_type = vec_op::FP16Vec16;
using qk_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::FP16Vec16;
#endif
};
#ifdef __AVX512BF16__
template <>
struct KernelVecType<c10::BFloat16> {
using qk_load_vec_type = vec_op::BF16Vec32;
using qk_vec_type = vec_op::BF16Vec32;
using v_load_vec_type = vec_op::BF16Vec16;
};
#elif defined(__aarch64__) && !defined(ARM_BF16_SUPPORT)
// pass
#else
template <>
struct KernelVecType<c10::BFloat16> {
using qk_load_vec_type = vec_op::BF16Vec16;
using qk_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::BF16Vec16;
};
#endif
template <int HEAD_DIM, int V_HEAD_DIM, int BLOCK_SIZE, int HEAD_UNROLL,
typename qk_vec_type>
void mla_decode_block_head(
const qk_vec_type* __restrict__ q_vecs, // [HEAD_UNROLL, head_dim]
const qk_vec_type* __restrict__ k_vecs, // [block_size, head_dim]
const vec_op::FP32Vec16* __restrict v_vecs_f32, // [block_size, v_head_dim]
float* __restrict__ acc_out, // [HEAD_UNROLL, v_head_dim]
float* __restrict__ acc_lse, // [HEAD_UNROLL]
const float scale, const int num_tokens) {
using f32_vec_type = vec_op::FP32Vec16;
constexpr int QK_NUM_ELEM = qk_vec_type::VEC_ELEM_NUM;
constexpr int V_NUM_ELEM = f32_vec_type::VEC_ELEM_NUM;
float logits[BLOCK_SIZE][HEAD_UNROLL] = {}; // initialize to zeros
float max_val[HEAD_UNROLL];
std::fill(max_val, max_val + HEAD_UNROLL, -FLT_MAX);
f32_vec_type acc_vec[BLOCK_SIZE][HEAD_UNROLL];
for (int i = 0; i < HEAD_DIM; i += QK_NUM_ELEM) {
// load to registers
qk_vec_type q_vec[HEAD_UNROLL];
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll)
q_vec[unroll] =
qk_vec_type{q_vecs[(i + unroll * HEAD_DIM) / QK_NUM_ELEM]};
for (int block_offset = 0; block_offset < num_tokens; ++block_offset) {
qk_vec_type k_vec(k_vecs[(block_offset * HEAD_DIM + i) / QK_NUM_ELEM]);
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll)
vec_op::fma(acc_vec[block_offset][unroll], q_vec[unroll], k_vec);
}
}
for (int block_offset = 0; block_offset < num_tokens; ++block_offset) {
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll) {
const float acc = acc_vec[block_offset][unroll].reduce_sum() * scale;
logits[block_offset][unroll] = acc;
max_val[unroll] = std::max(max_val[unroll], acc);
}
}
float sum_exp[HEAD_UNROLL] = {};
for (int block_offset = 0; block_offset < num_tokens; ++block_offset) {
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll) {
const float val =
std::exp(logits[block_offset][unroll] - max_val[unroll]);
logits[block_offset][unroll] = val;
sum_exp[unroll] += val;
}
}
f32_vec_type this_out[V_HEAD_DIM / V_NUM_ELEM][HEAD_UNROLL];
for (int block_offset = 0; block_offset < num_tokens; ++block_offset) {
// load to registers
f32_vec_type scale_[HEAD_UNROLL];
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll)
scale_[unroll] =
f32_vec_type{logits[block_offset][unroll] / sum_exp[unroll]};
for (int i = 0; i < V_HEAD_DIM; i += V_NUM_ELEM) {
f32_vec_type v_vec(
v_vecs_f32[(block_offset * HEAD_DIM + i) / V_NUM_ELEM]);
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll)
vec_op::fma(this_out[i / V_NUM_ELEM][unroll], v_vec, scale_[unroll]);
}
}
// merge attention state
// section 2.2 in https://arxiv.org/pdf/2501.01005
f32_vec_type prev_scale[HEAD_UNROLL];
f32_vec_type curr_scale[HEAD_UNROLL];
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll) {
const float prev_lse = acc_lse[unroll];
const float curr_lse = std::log(sum_exp[unroll]) +
max_val[unroll]; // add back max_val to get true lse
// softmax trick
const float max_lse = std::max(prev_lse, curr_lse);
const float prev_sum_exp = std::exp(prev_lse - max_lse);
const float curr_sum_exp = std::exp(curr_lse - max_lse);
const float new_sum_exp = prev_sum_exp + curr_sum_exp;
acc_lse[unroll] = std::log(new_sum_exp) + max_lse;
prev_scale[unroll] = f32_vec_type{prev_sum_exp / new_sum_exp};
curr_scale[unroll] = f32_vec_type{curr_sum_exp / new_sum_exp};
}
for (int i = 0; i < V_HEAD_DIM; i += V_NUM_ELEM) {
#pragma unroll
for (int unroll = 0; unroll < HEAD_UNROLL; ++unroll) {
f32_vec_type o_vec(acc_out + i + V_HEAD_DIM * unroll);
o_vec = o_vec * prev_scale[unroll] +
this_out[i / V_NUM_ELEM][unroll] * curr_scale[unroll];
o_vec.save(acc_out + i + V_HEAD_DIM * unroll);
}
}
q_vecs += HEAD_DIM / QK_NUM_ELEM * HEAD_UNROLL;
acc_out += V_HEAD_DIM * HEAD_UNROLL;
}
template <typename scalar_t, int HEAD_DIM, int V_HEAD_DIM, int BLOCK_SIZE,
typename qk_vec_type>
void mla_decode_block(
const qk_vec_type* __restrict__ q_vecs, // [num_heads, head_dim]
const scalar_t* __restrict__ kv_cache, // [block_size, head_dim]
float* __restrict__ acc_out, // [num_heads, v_head_dim]
float* __restrict__ acc_lse, // [num_heads]
const int num_heads, const float scale, const int num_tokens) {
using qk_load_vec_type = typename KernelVecType<scalar_t>::qk_load_vec_type;
static_assert(
std::is_same<qk_vec_type,
typename KernelVecType<scalar_t>::qk_vec_type>::value);
using v_load_vec_type = typename KernelVecType<scalar_t>::v_load_vec_type;
using f32_vec_type = vec_op::FP32Vec16;
static_assert(qk_load_vec_type::VEC_ELEM_NUM == qk_vec_type::VEC_ELEM_NUM);
static_assert(v_load_vec_type::VEC_ELEM_NUM == f32_vec_type::VEC_ELEM_NUM);
constexpr int QK_NUM_ELEM = qk_vec_type::VEC_ELEM_NUM;
constexpr int V_NUM_ELEM = v_load_vec_type::VEC_ELEM_NUM;
const qk_vec_type* k_vecs;
const f32_vec_type* v_vecs_f32;
float* kv_cache_f32 = nullptr;
if constexpr (!std::is_same<scalar_t, float>::value) {
// convert KV cache block to FP32 to reuse it across query heads and
// attn @ V computation, since FP16/BF16->FP32 is expensive.
// TODO: move malloc outside of this fn to reuse across iterations.
const int nbytes = BLOCK_SIZE * HEAD_DIM * sizeof(float);
kv_cache_f32 = static_cast<float*>(std::aligned_alloc(64, nbytes));
for (int block_offset = 0; block_offset < num_tokens; ++block_offset)
for (int i = 0; i < HEAD_DIM; i += V_NUM_ELEM) {
v_load_vec_type kv_load_vec(kv_cache + block_offset * HEAD_DIM + i);
f32_vec_type kv_vec_f32(kv_load_vec);
kv_vec_f32.save(kv_cache_f32 + block_offset * HEAD_DIM + i);
}
if constexpr (std::is_same<qk_load_vec_type, qk_vec_type>::value) {
// for AVX512_BF16, Q @ K.T uses BF16 for K (no conversion)
// NOTE: in this case, we only need to convert the V section to FP32.
// But for simplicity, we will convert the whole KV block to FP32.
k_vecs = reinterpret_cast<const qk_vec_type*>(kv_cache);
} else {
k_vecs = reinterpret_cast<const qk_vec_type*>(kv_cache_f32);
}
// attn @ V always use FP32 for V, since attn is FP32.
v_vecs_f32 = reinterpret_cast<const f32_vec_type*>(kv_cache_f32);
} else {
// KV cache is FP32. don't need to do anything.
k_vecs = reinterpret_cast<const qk_vec_type*>(kv_cache);
v_vecs_f32 = reinterpret_cast<const f32_vec_type*>(kv_cache);
}
// compute 2 heads at the same time to improve ILP and
// take advantage of register cache for K and V.
constexpr int HEAD_UNROLL = 2;
for (int iter = 0; iter < num_heads / HEAD_UNROLL; ++iter) {
mla_decode_block_head<HEAD_DIM, V_HEAD_DIM, BLOCK_SIZE, HEAD_UNROLL>(
q_vecs, k_vecs, v_vecs_f32, acc_out, acc_lse, scale, num_tokens);
q_vecs += HEAD_UNROLL * HEAD_DIM / QK_NUM_ELEM;
acc_out += HEAD_UNROLL * V_HEAD_DIM;
acc_lse += HEAD_UNROLL;
}
// take care of the remaining heads
for (int iter = 0; iter < num_heads % HEAD_UNROLL; ++iter) {
mla_decode_block_head<HEAD_DIM, V_HEAD_DIM, BLOCK_SIZE, 1>(
q_vecs, k_vecs, v_vecs_f32, acc_out, acc_lse, scale, num_tokens);
q_vecs += HEAD_DIM / QK_NUM_ELEM;
acc_out += V_HEAD_DIM;
acc_lse += 1;
}
if (kv_cache_f32 != nullptr) {
std::free(kv_cache_f32);
}
}
} // namespace
template <typename scalar_t, int HEAD_DIM, int V_HEAD_DIM, int BLOCK_SIZE>
void mla_decode_kvcache_cpu_impl(
scalar_t* __restrict__ out, // [num_seqs, num_heads, v_head_dim]
const scalar_t* __restrict__ q, // [num_seqs, num_heads, head_dim]
const scalar_t* __restrict__ kv_cache, // [num_blocks, block_size,
// head_dim]
const int num_heads, const float scale,
const int* __restrict__ block_tables, // [num_seqs, max_num_blocks_per_seq]
const int* __restrict__ seq_lens, // [num_seqs]
const int max_num_blocks_per_seq, const int o_stride, const int q_stride,
const int kv_stride, const int num_seqs) {
using qk_load_vec_type = typename KernelVecType<scalar_t>::qk_load_vec_type;
using qk_vec_type = typename KernelVecType<scalar_t>::qk_vec_type;
constexpr int QK_NUM_ELEM = qk_vec_type::VEC_ELEM_NUM;
// shared across threads
const int max_threads = omp_get_max_threads();
const int acc_out_nbytes =
max_threads * num_heads * V_HEAD_DIM * sizeof(float);
float* acc_out = static_cast<float*>(std::aligned_alloc(64, acc_out_nbytes));
std::vector<float> acc_lse(max_threads * num_heads);
// allocate memory to pre-convert query to FP32 later
float* q_f32;
constexpr bool PRE_CONVERT_QUERY =
!std::is_same<scalar_t, float>::value &&
std::is_same<qk_vec_type, vec_op::FP32Vec16>::value;
if constexpr (PRE_CONVERT_QUERY) {
const int q_f32_nbytes = num_heads * HEAD_DIM * sizeof(float);
q_f32 = static_cast<float*>(std::aligned_alloc(64, q_f32_nbytes));
}
#pragma omp parallel
{
const int num_threads = omp_get_num_threads();
const int thread_id = omp_get_thread_num();
float* __restrict__ acc_out_thread =
acc_out + thread_id * num_heads * V_HEAD_DIM;
float* __restrict__ acc_lse_thread = acc_lse.data() + thread_id * num_heads;
for (int seq_idx = 0; seq_idx < num_seqs; ++seq_idx) {
// reset accumulator
std::fill(acc_out_thread, acc_out_thread + num_heads * V_HEAD_DIM, 0.0f);
std::fill(acc_lse_thread, acc_lse_thread + num_heads, -FLT_MAX);
const int seq_len = seq_lens[seq_idx];
const int block_num = (seq_len + BLOCK_SIZE - 1) / BLOCK_SIZE;
const int last_block_size = seq_len - (block_num - 1) * BLOCK_SIZE;
const qk_vec_type* q_vecs;
if constexpr (PRE_CONVERT_QUERY) {
// pre-convert query to FP32 since FP16/BF16->FP32 is slow.
#pragma omp for
for (int i = 0; i < num_heads * HEAD_DIM; i += QK_NUM_ELEM) {
qk_load_vec_type q_load_vec(q + seq_idx * q_stride + i);
qk_vec_type q_vec(q_load_vec);
q_vec.save(q_f32 + i);
}
q_vecs = reinterpret_cast<const qk_vec_type*>(q_f32);
} else {
q_vecs = reinterpret_cast<const qk_vec_type*>(q + seq_idx * q_stride);
}
#pragma omp for
for (int block_idx = 0; block_idx < block_num; ++block_idx) {
const int physical_block_idx =
block_tables[seq_idx * max_num_blocks_per_seq + block_idx];
const int num_tokens =
block_idx < block_num - 1 ? BLOCK_SIZE : last_block_size;
mla_decode_block<scalar_t, HEAD_DIM, V_HEAD_DIM, BLOCK_SIZE>(
q_vecs, kv_cache + physical_block_idx * kv_stride, acc_out_thread,
acc_lse_thread, num_heads, scale, num_tokens);
}
// merge attention states across threads
// section 2.2 in https://arxiv.org/pdf/2501.01005
// each thread is responsible for 1 head
#pragma omp for
for (int head_idx = 0; head_idx < num_heads; ++head_idx) {
float* acc_lse_head = acc_lse.data() + head_idx;
float* acc_out_head = acc_out + head_idx * V_HEAD_DIM;
float max_val = -FLT_MAX;
for (int thread_id_ = 0; thread_id_ < num_threads; ++thread_id_) {
max_val = std::max(max_val, acc_lse_head[thread_id_ * num_heads]);
}
float sum_exp = 0.0f;
for (int thread_id_ = 0; thread_id_ < num_threads; ++thread_id_) {
float val = std::exp(acc_lse_head[thread_id_ * num_heads] - max_val);
acc_lse_head[thread_id_ * num_heads] = val;
sum_exp += val;
}
float inv_sum = 1.0f / sum_exp;
float out_head[V_HEAD_DIM] = {};
for (int thread_id_ = 0; thread_id_ < num_threads; ++thread_id_) {
float scale_ = acc_lse_head[thread_id_ * num_heads] * inv_sum;
for (int i = 0; i < V_HEAD_DIM; ++i) {
out_head[i] +=
acc_out_head[thread_id_ * num_heads * V_HEAD_DIM + i] * scale_;
}
}
for (int i = 0; i < V_HEAD_DIM; ++i) {
vec_op::storeFP32(out_head[i], out + seq_idx * o_stride +
head_idx * V_HEAD_DIM + i);
}
}
}
}
if (PRE_CONVERT_QUERY) {
std::free(q_f32);
}
std::free(acc_out);
}
void mla_decode_kvcache(torch::Tensor& out, torch::Tensor& query,
torch::Tensor& kv_cache, double scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens) {
const int num_seqs = query.size(0);
const int num_heads = query.size(1);
const int head_dim = query.size(2);
const int block_size = kv_cache.size(1);
const int v_head_dim = out.size(2);
const int max_num_blocks_per_seq = block_tables.size(1);
const int o_stride = out.stride(0);
const int q_stride = query.stride(0);
const int kv_stride = kv_cache.stride(0);
VLLM_DISPATCH_FLOATING_TYPES(
query.scalar_type(), "mla_decode_kvcache_cpu_impl", [&] {
CPU_KERNEL_GUARD_IN(mla_decode_kvcache_cpu_impl)
if (head_dim == 576 && v_head_dim == 512 && block_size == 16)
mla_decode_kvcache_cpu_impl<scalar_t, 576, 512, 16>(
out.data_ptr<scalar_t>(), query.data_ptr<scalar_t>(),
kv_cache.data_ptr<scalar_t>(), num_heads, scale,
block_tables.data_ptr<int>(), seq_lens.data_ptr<int>(),
max_num_blocks_per_seq, o_stride, q_stride, kv_stride, num_seqs);
else
TORCH_CHECK(false, "Unsupported block size: ", block_size);
CPU_KERNEL_GUARD_OUT(mla_decode_kvcache_cpu_impl)
});
}

View File

@ -18,6 +18,10 @@ void int8_scaled_mm_azp(torch::Tensor& c, const torch::Tensor& a,
const std::optional<torch::Tensor>& azp,
const std::optional<torch::Tensor>& bias);
void mla_decode_kvcache(torch::Tensor& out, torch::Tensor& query,
torch::Tensor& kv_cache, double scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens);
TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, ops) {
// vLLM custom ops
@ -150,6 +154,14 @@ TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _cache_ops), cache_ops) {
" str kv_cache_dtype,"
" Tensor k_scale, Tensor v_scale) -> ()");
cache_ops.impl("reshape_and_cache", torch::kCPU, &reshape_and_cache);
cache_ops.def(
"concat_and_cache_mla(Tensor kv_c, Tensor k_pe,"
" Tensor! kv_cache,"
" Tensor slot_mapping,"
" str kv_cache_dtype,"
" Tensor scale) -> ()");
cache_ops.impl("concat_and_cache_mla", torch::kCPU, &concat_and_cache_mla);
}
TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _utils), utils) {
@ -157,4 +169,12 @@ TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _utils), utils) {
utils.def("init_cpu_threads_env(str cpu_ids) -> str", &init_cpu_threads_env);
}
TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _cpu), cpu_ops) {
cpu_ops.def(
"mla_decode_kvcache("
" Tensor! out, Tensor query, Tensor kv_cache,"
" float scale, Tensor block_tables, Tensor seq_lens) -> ()");
cpu_ops.impl("mla_decode_kvcache", torch::kCPU, &mla_decode_kvcache);
}
REGISTER_EXTENSION(TORCH_EXTENSION_NAME)

39
csrc/cuda_view.cu Normal file
View File

@ -0,0 +1,39 @@
#include <torch/all.h>
#include <torch/cuda.h>
#include <cuda_runtime.h>
// This function assumes that `cpu_tensor` is a CPU tensor allocated with pinned
// memory, and that UVA (Unified Virtual Addressing) is enabled.
torch::Tensor get_cuda_view_from_cpu_tensor(torch::Tensor& cpu_tensor) {
TORCH_CHECK(cpu_tensor.device().is_cpu(), "Input tensor must be on CPU");
// Get raw host pointer from CPU tensor
void* host_ptr = cpu_tensor.data_ptr();
// Get a device pointer corresponding to the pinned host memory
void* device_ptr = nullptr;
cudaError_t err = cudaHostGetDevicePointer(&device_ptr, host_ptr, 0);
TORCH_CHECK(err == cudaSuccess,
"cudaHostGetDevicePointer failed: ", cudaGetErrorString(err));
// We'll use the same sizes, strides, and dtype as the CPU tensor.
// TODO: check if layout is respected.
auto sizes = cpu_tensor.sizes();
auto strides = cpu_tensor.strides();
auto options = cpu_tensor.options().device(torch::kCUDA);
// from_blob signature: from_blob(void *data, IntArrayRef sizes, ..., Deleter,
// const TensorOptions &) Provide a no-op deleter. The CPU tensor holds the
// memory, so we don't free it here.
auto deleter = [](void*) {
// no-op, since the memory is owned by the original CPU tensor
};
torch::Tensor cuda_tensor =
torch::from_blob(device_ptr, sizes, strides, deleter, options);
TORCH_CHECK(cuda_tensor.device().is_cuda(),
"Resulting tensor is not on CUDA device");
return cuda_tensor;
}

View File

@ -12,7 +12,7 @@ static_assert(sizeof(void*) == sizeof(fptr_t));
fptr_t init_custom_ar(const std::vector<fptr_t>& fake_ipc_ptrs,
torch::Tensor& rank_data, int64_t rank,
bool full_nvlink) {
bool fully_connected) {
int world_size = fake_ipc_ptrs.size();
if (world_size > 8)
throw std::invalid_argument("world size > 8 is not supported");
@ -27,7 +27,7 @@ fptr_t init_custom_ar(const std::vector<fptr_t>& fake_ipc_ptrs,
}
return (fptr_t) new vllm::CustomAllreduce(ipc_ptrs, rank_data.data_ptr(),
rank_data.numel(), rank, world_size,
full_nvlink);
fully_connected);
}
/**
@ -142,3 +142,48 @@ void register_graph_buffers(fptr_t _fa,
bytes.reserve(handles.size());
fa->register_graph_buffers(bytes, offsets);
}
std::tuple<fptr_t, torch::Tensor> allocate_shared_buffer_and_handle(
int64_t size) {
auto device_index = c10::cuda::current_device();
at::DeviceGuard device_guard(at::Device(at::DeviceType::CUDA, device_index));
void* buffer;
cudaStreamCaptureMode mode = cudaStreamCaptureModeRelaxed;
auto stream = c10::cuda::getCurrentCUDAStream().stream();
AT_CUDA_CHECK(cudaThreadExchangeStreamCaptureMode(&mode));
// Allocate buffer
#if defined(USE_ROCM)
// data buffers need to be "uncached" for signal on MI200
AT_CUDA_CHECK(
hipExtMallocWithFlags((void**)&buffer, size, hipDeviceMallocUncached));
#else
AT_CUDA_CHECK(cudaMalloc((void**)&buffer, size));
#endif
AT_CUDA_CHECK(cudaMemsetAsync(buffer, 0, size, stream));
AT_CUDA_CHECK(cudaStreamSynchronize(stream));
AT_CUDA_CHECK(cudaThreadExchangeStreamCaptureMode(&mode));
// Create IPC memhandle for the allocated buffer.
// Will use it in open_mem_handle.
auto options =
torch::TensorOptions().dtype(torch::kUInt8).device(torch::kCPU);
auto handle =
torch::empty({static_cast<int64_t>(sizeof(cudaIpcMemHandle_t))}, options);
AT_CUDA_CHECK(
cudaIpcGetMemHandle((cudaIpcMemHandle_t*)handle.data_ptr(), buffer));
return std::make_tuple(reinterpret_cast<fptr_t>(buffer), handle);
}
fptr_t open_mem_handle(torch::Tensor& mem_handle) {
void* ipc_ptr;
AT_CUDA_CHECK(cudaIpcOpenMemHandle(
(void**)&ipc_ptr, *((const cudaIpcMemHandle_t*)mem_handle.data_ptr()),
cudaIpcMemLazyEnablePeerAccess));
return reinterpret_cast<fptr_t>(ipc_ptr);
}
void free_shared_buffer(fptr_t buffer) {
AT_CUDA_CHECK(cudaFree(reinterpret_cast<void*>(buffer)));
}

View File

@ -5,6 +5,10 @@
#include <cuda_fp16.h>
#include <cuda_runtime.h>
#if defined(USE_ROCM)
typedef __hip_bfloat16 nv_bfloat16;
#endif
#include <iostream>
#include <array>
#include <limits>
@ -12,6 +16,7 @@
#include <unordered_map>
#include <vector>
namespace vllm {
#define CUDACHECK(cmd) \
do { \
cudaError_t e = cmd; \
@ -22,24 +27,37 @@
} \
} while (0)
namespace vllm {
// Maximal number of blocks in allreduce kernel.
constexpr int kMaxBlocks = 36;
// Default number of blocks in allreduce kernel.
#ifndef USE_ROCM
const int defaultBlockLimit = 36;
CUpointer_attribute rangeStartAddrAttr = CU_POINTER_ATTRIBUTE_RANGE_START_ADDR;
#else
const int defaultBlockLimit = 16;
hipPointer_attribute rangeStartAddrAttr =
HIP_POINTER_ATTRIBUTE_RANGE_START_ADDR;
#endif
// Counter may overflow, but it's fine since unsigned int overflow is
// well-defined behavior.
using FlagType = uint32_t;
// Two sets of peer counters are needed for two syncs: starting and ending an
// operation. The reason is that it's possible for peer GPU block to arrive at
// the second sync point while the current GPU block haven't passed the first
// sync point. Thus, peer GPU may write counter+1 while current GPU is busy
// waiting for counter. We use alternating counter array to avoid this
// possibility.
struct Signal {
alignas(128) FlagType self_counter[kMaxBlocks][8];
// Two sets of peer counters are needed for two syncs. The reason is that
// it's possible for peer GPU block to arrive at the second sync point while
// the current GPU block haven't passed the first sync point. Thus, peer GPU
// may write counter+1 while current GPU is busy waiting for counter. We use
// alternating counter array to avoid this possibility.
alignas(128) FlagType peer_counter[2][kMaxBlocks][8];
alignas(128) FlagType start[kMaxBlocks][8];
alignas(128) FlagType end[kMaxBlocks][8];
alignas(128) FlagType _flag[kMaxBlocks]; // incremental flags for each rank
};
struct __align__(16) RankData {
const void* __restrict__ ptrs[8];
const void* ptrs[8];
};
struct __align__(16) RankSignals {
@ -134,27 +152,29 @@ DINLINE O downcast(array_t<float, O::size> val) {
}
}
#if !defined(USE_ROCM)
static DINLINE void st_flag_release(FlagType* flag_addr, FlagType flag) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
asm volatile("st.release.sys.global.u32 [%1], %0;" ::"r"(flag),
"l"(flag_addr));
#else
#else
asm volatile("membar.sys; st.volatile.global.u32 [%1], %0;" ::"r"(flag),
"l"(flag_addr));
#endif
#endif
}
static DINLINE FlagType ld_flag_acquire(FlagType* flag_addr) {
FlagType flag;
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
asm volatile("ld.acquire.sys.global.u32 %0, [%1];"
: "=r"(flag)
: "l"(flag_addr));
#else
#else
asm volatile("ld.volatile.global.u32 %0, [%1]; membar.gl;"
: "=r"(flag)
: "l"(flag_addr));
#endif
#endif
return flag;
}
@ -170,37 +190,99 @@ static DINLINE FlagType ld_flag_volatile(FlagType* flag_addr) {
return flag;
}
// is_start: whether this is the very first synchronization barrier.
// need_fence: whether a memory fence is needed. If true, a release-acquire
// semantic is used to enforce memory access order before and after this
// barrier.
template <int ngpus, bool is_start, bool need_fence = false>
DINLINE void multi_gpu_barrier(const RankSignals& sg, Signal* self_sg,
int rank) {
if constexpr (!is_start) __syncthreads();
static_assert(
!(is_start && need_fence)); // Start barrier shouldn't need fence.
// This function is meant to be used as the first synchronization in the all
// reduce kernel. Thus, it doesn't need to make any visibility guarantees for
// prior memory accesses. Note: volatile writes will not be reordered against
// other volatile writes.
template <int ngpus>
DINLINE void barrier_at_start(const RankSignals& sg, Signal* self_sg,
int rank) {
uint32_t flag = self_sg->_flag[blockIdx.x] + 1;
if (threadIdx.x < ngpus) {
// Increment the counter. Technically we only need one counter, but we use
// multiple per block to eliminate the need to share the counter via smem.
auto val = self_sg->self_counter[blockIdx.x][threadIdx.x] += 1;
auto peer_counter_ptr = &sg.signals[threadIdx.x]->start[blockIdx.x][rank];
auto self_counter_ptr = &self_sg->start[blockIdx.x][threadIdx.x];
// Write the expected counter value to peer and wait for correct value
// from peer.
st_flag_volatile(peer_counter_ptr, flag);
while (ld_flag_volatile(self_counter_ptr) != flag);
}
__syncthreads();
// use one thread to update flag
if (threadIdx.x == 0) self_sg->_flag[blockIdx.x] = flag;
}
// This function is meant to be used as the second or the final
// synchronization barrier in the all reduce kernel. If it's the final
// synchronization barrier, we don't need to make any visibility guarantees
// for prior memory accesses.
template <int ngpus, bool final_sync = false>
DINLINE void barrier_at_end(const RankSignals& sg, Signal* self_sg, int rank) {
__syncthreads();
uint32_t flag = self_sg->_flag[blockIdx.x] + 1;
if (threadIdx.x < ngpus) {
auto peer_counter_ptr = &sg.signals[threadIdx.x]->end[blockIdx.x][rank];
auto self_counter_ptr = &self_sg->end[blockIdx.x][threadIdx.x];
// Write the expected counter value to peer and wait for correct value from
// peer.
auto peer_counter_ptr =
&sg.signals[threadIdx.x]->peer_counter[val % 2][blockIdx.x][rank];
auto self_counter_ptr =
&self_sg->peer_counter[val % 2][blockIdx.x][threadIdx.x];
if constexpr (need_fence) {
st_flag_release(peer_counter_ptr, val);
while (ld_flag_acquire(self_counter_ptr) != val);
if constexpr (!final_sync) {
st_flag_release(peer_counter_ptr, flag);
while (ld_flag_acquire(self_counter_ptr) != flag);
} else {
st_flag_volatile(peer_counter_ptr, val);
while (ld_flag_volatile(self_counter_ptr) != val);
st_flag_volatile(peer_counter_ptr, flag);
while (ld_flag_volatile(self_counter_ptr) != flag);
}
}
if constexpr (is_start || need_fence) __syncthreads();
if constexpr (!final_sync) __syncthreads();
// use one thread to update flag
if (threadIdx.x == 0) self_sg->_flag[blockIdx.x] = flag;
}
#else
template <int ngpus>
DINLINE void barrier_at_start(const RankSignals& sg, Signal* self_sg,
int rank) {
uint32_t flag = self_sg->_flag[blockIdx.x] + 1;
if (threadIdx.x < ngpus) {
// simultaneously write to the corresponding flag of all ranks.
// Latency = 1 p2p write
__scoped_atomic_store_n(&sg.signals[threadIdx.x]->start[blockIdx.x][rank],
flag, __ATOMIC_RELAXED, __MEMORY_SCOPE_SYSTEM);
// wait until we got true from all ranks
while (__scoped_atomic_load_n(&self_sg->start[blockIdx.x][threadIdx.x],
__ATOMIC_RELAXED,
__MEMORY_SCOPE_DEVICE) < flag);
}
__syncthreads();
// use one thread to update flag
if (threadIdx.x == 0) self_sg->_flag[blockIdx.x] = flag;
}
template <int ngpus, bool final_sync = false>
DINLINE void barrier_at_end(const RankSignals& sg, Signal* self_sg, int rank) {
__syncthreads();
uint32_t flag = self_sg->_flag[blockIdx.x] + 1;
if (threadIdx.x < ngpus) {
// simultaneously write to the corresponding flag of all ranks.
// Latency = 1 p2p write
__scoped_atomic_store_n(&sg.signals[threadIdx.x]->end[blockIdx.x][rank],
flag,
final_sync ? __ATOMIC_RELAXED : __ATOMIC_RELEASE,
__MEMORY_SCOPE_SYSTEM);
// wait until we got true from all ranks
while (
__scoped_atomic_load_n(&self_sg->end[blockIdx.x][threadIdx.x],
final_sync ? __ATOMIC_RELAXED : __ATOMIC_ACQUIRE,
__MEMORY_SCOPE_DEVICE) < flag);
}
if constexpr (!final_sync) __syncthreads();
// use one thread to update flag
if (threadIdx.x == 0) self_sg->_flag[blockIdx.x] = flag;
}
#endif
template <typename P, int ngpus, typename A>
DINLINE P packed_reduce(const P* ptrs[], int idx) {
A tmp = upcast(ptrs[0][idx]);
@ -220,13 +302,13 @@ __global__ void __launch_bounds__(512, 1)
// note: we don't reorder the address so the accumulation order is the same
// for all ranks, ensuring bitwise identical results
auto dp = *_dp;
multi_gpu_barrier<ngpus, true>(sg, self_sg, rank);
barrier_at_start<ngpus>(sg, self_sg, rank);
// do the actual reduction
for (int idx = blockIdx.x * blockDim.x + threadIdx.x; idx < size;
idx += gridDim.x * blockDim.x) {
((P*)result)[idx] = packed_reduce<P, ngpus, A>((const P**)&dp.ptrs[0], idx);
}
multi_gpu_barrier<ngpus, false>(sg, self_sg, rank);
barrier_at_end<ngpus, true>(sg, self_sg, rank);
}
template <typename P>
@ -255,18 +337,20 @@ __global__ void __launch_bounds__(512, 1)
tmps[i] = get_tmp_buf<P>(sg.signals[target]);
}
auto tmp_out = tmps[0];
multi_gpu_barrier<ngpus, true>(sg, self_sg, rank);
barrier_at_start<ngpus>(sg, self_sg, rank);
// stage 1: reduce scatter
for (int idx = start + tid; idx < end; idx += stride) {
tmp_out[idx - start] = packed_reduce<P, ngpus, A>(ptrs, idx);
}
multi_gpu_barrier<ngpus, false, true>(sg, self_sg, rank);
barrier_at_end<ngpus>(sg, self_sg, rank);
// stage 2: allgather. Note: it's important to match the tid between
// the two stages, because visibility across devices is only guaranteed
// between threads that have the same tid. If thread i computes the sum of
// start + i in the first stage, then thread i also gathers start + i from all
// ranks.
// start + i in the first stage, then thread i also gathers start + i from
// all ranks.
for (int idx = tid; idx < largest_part; idx += stride) {
#pragma unroll
for (int i = 0; i < ngpus; i++) {
@ -287,21 +371,22 @@ class CustomAllreduce {
public:
int rank_;
int world_size_;
bool full_nvlink_;
// Full NVLink or xGMI connection between GPUs.
bool fully_connected_;
RankSignals sg_;
// Stores an map from a pointer to its peer pointters from all ranks.
// Stores an map from a pointer to its peer pointers from all ranks.
std::unordered_map<void*, RankData*> buffers_;
Signal* self_sg_;
// Stores rank data from all ranks. This is mainly for cuda graph purposes.
// For cuda graph to work, all kernel arguments must be fixed during graph
// capture time. However, the peer pointers are not known during graph capture
// time. Therefore, during capture, we increment the rank data pointer and use
// that as the argument to the kernel. The kernel arguments are stored in
// graph_unreg_buffers_. The actual peer pointers will be filled in at the
// memory pointed to by the pointers in graph_unreg_buffers_ when
// the IPC handles are exchanged between ranks.
// capture time. However, the peer pointers are not known during graph
// capture time. Therefore, during capture, we increment the rank data
// pointer and use that as the argument to the kernel. The kernel arguments
// are stored in graph_unreg_buffers_. The actual peer pointers will be
// filled in at the memory pointed to by the pointers in
// graph_unreg_buffers_ when the IPC handles are exchanged between ranks.
//
// The overall process looks like this:
// 1. Graph capture.
@ -319,17 +404,18 @@ class CustomAllreduce {
* Signals are an array of ipc-enabled buffers from all ranks.
* For each of the buffer, the layout is as follows:
* | -- sizeof(Signal) -- | ------ a few MB ----- |
* The first section is for allreduce synchronization, and the second section
* is for storing the intermediate results required by some allreduce algos.
* The first section is for allreduce synchronization, and the second
* section is for storing the intermediate results required by some
* allreduce algos.
*
* Note: this class does not own any device memory. Any required buffers
* are passed in from the constructor.
*/
CustomAllreduce(Signal** signals, void* rank_data, size_t rank_data_sz,
int rank, int world_size, bool full_nvlink = true)
int rank, int world_size, bool fully_connected = true)
: rank_(rank),
world_size_(world_size),
full_nvlink_(full_nvlink),
fully_connected_(fully_connected),
self_sg_(signals[rank]),
d_rank_data_base_(reinterpret_cast<RankData*>(rank_data)),
d_rank_data_end_(d_rank_data_base_ + rank_data_sz / sizeof(RankData)) {
@ -361,8 +447,7 @@ class CustomAllreduce {
void* base_ptr;
// note: must share the base address of each allocation, or we get wrong
// address
if (cuPointerGetAttribute(&base_ptr,
CU_POINTER_ATTRIBUTE_RANGE_START_ADDR,
if (cuPointerGetAttribute(&base_ptr, rangeStartAddrAttr,
(CUdeviceptr)ptr) != CUDA_SUCCESS)
throw std::runtime_error("failed to get pointer attr");
CUDACHECK(cudaIpcGetMemHandle(
@ -396,11 +481,11 @@ class CustomAllreduce {
// Note: when registering graph buffers, we intentionally choose to not
// deduplicate the addresses. That means if the allocator reuses some
// addresses, they will be registered again. This is to account for the remote
// possibility of different allocation patterns between ranks. For example,
// rank 1 may get the same input address for the second allreduce, but rank 2
// got a different address. IPC handles have internal reference counting
// mechanism so overhead should be small.
// addresses, they will be registered again. This is to account for the
// remote possibility of different allocation patterns between ranks. For
// example, rank 1 may get the same input address for the second allreduce,
// but rank 2 got a different address. IPC handles have internal reference
// counting mechanism so overhead should be small.
void register_graph_buffers(
const std::vector<std::string>& handles,
const std::vector<std::vector<int64_t>>& offsets) {
@ -431,15 +516,15 @@ class CustomAllreduce {
/**
* Performs allreduce, assuming input has already been registered.
*
* Block and grid default configs are results after careful grid search. Using
* 36 blocks give the best or close to the best runtime on the devices I
* tried: A100, A10, A30, T4, V100. You'll notice that NCCL kernels also only
* take a small amount of SMs. Not quite sure the underlying reason, but my
* guess is that too many SMs will cause contention on NVLink bus.
* Block and grid default configs are results after careful grid search.
* Using 36 blocks give the best or close to the best runtime on the devices
* I tried: A100, A10, A30, T4, V100. You'll notice that NCCL kernels also
* only take a small amount of SMs. Not quite sure the underlying reason,
* but my guess is that too many SMs will cause contention on NVLink bus.
*/
template <typename T>
void allreduce(cudaStream_t stream, T* input, T* output, int size,
int threads = 512, int block_limit = 36) {
int threads = 512, int block_limit = defaultBlockLimit) {
auto d = packed_t<T>::P::size;
if (size % d != 0)
throw std::runtime_error(
@ -473,13 +558,11 @@ class CustomAllreduce {
#define KL(ngpus, name) \
name<T, ngpus><<<blocks, threads, 0, stream>>>(ptrs, sg_, self_sg_, output, \
rank_, size);
// TODO(hanzhi713): Threshold is different for A100 and H100.
// Add per device threshold.
#define REDUCE_CASE(ngpus) \
case ngpus: { \
if (world_size_ == 2) { \
KL(ngpus, cross_device_reduce_1stage); \
} else if (full_nvlink_) { \
} else if (fully_connected_) { \
if ((world_size_ <= 4 && bytes < 512 * 1024) || \
(world_size_ <= 8 && bytes < 256 * 1024)) { \
KL(ngpus, cross_device_reduce_1stage); \
@ -497,7 +580,8 @@ class CustomAllreduce {
REDUCE_CASE(8)
default:
throw std::runtime_error(
"custom allreduce only supports num gpus in (2,4,6,8). Actual num "
"custom allreduce only supports num gpus in (2,4,6,8). Actual "
"num "
"gpus = " +
std::to_string(world_size_));
}
@ -511,10 +595,11 @@ class CustomAllreduce {
}
}
};
/**
* To inspect PTX/SASS, copy paste this header file to compiler explorer and add
a template instantiation:
* To inspect PTX/SASS, copy paste this header file to compiler explorer and
add a template instantiation:
* template void vllm::CustomAllreduce::allreduce<half>(cudaStream_t, half *,
half *, int, int, int);
*/
} // namespace vllm
} // namespace vllm

View File

@ -1,9 +1,9 @@
/**
* This is a standalone test for custom allreduce.
* To compile, make sure you have MPI and NCCL installed in your system.
* export MPI_HOME=xxx
* export MPI_HOME=XXX
* nvcc -O2 -arch=native -std=c++17 custom_all_reduce_test.cu -o
* custom_all_reduce_test -lnccl -I${MPI_HOME} -lmpi
* custom_all_reduce_test -lnccl -I${MPI_HOME}/include -lmpi
*
* Warning: this C++ test is not designed to be very readable and was used
* during the rapid prototyping process.
@ -22,7 +22,15 @@
#include "cuda_profiler_api.h"
#include "custom_all_reduce.cuh"
#include "mpi.h"
#include "nccl.h"
#ifdef USE_ROCM
#include <hip/hip_bf16.h>
typedef __hip_bfloat16 nv_bfloat16;
#include "rccl/rccl.h"
#include "custom_all_reduce_hip.cuh"
#else
#include "nccl.h"
#include "custom_all_reduce.cuh"
#endif
#define MPICHECK(cmd) \
do { \
@ -43,16 +51,29 @@
} \
} while (0)
#ifdef USE_ROCM
__global__ void dummy_kernel() {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
for (int i = 0; i < 100; i++) {
uint64_t start = wall_clock64();
uint64_t cycles_elapsed;
do {
cycles_elapsed = wall_clock64() - start;
} while (cycles_elapsed < 100);
}
for (int i = 0; i < 100; i++) __nanosleep(1000000); // 100ms
}
#else
__global__ void dummy_kernel() {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
for (int i = 0; i < 100; i++) __nanosleep(1000000); // 100ms
#else
for (int i = 0; i < 100; i++) {
long long int start = clock64();
while (clock64() - start < 150000000); // approximately 98.4ms on P40
}
#endif
#endif
}
#endif
template <typename T>
__global__ void set_data(T* data, int size, int myRank) {
@ -121,8 +142,14 @@ void run(int myRank, int nRanks, ncclComm_t& comm, int threads, int block_limit,
* registration, they are allocated and registered together in the test for
* convenience.
*/
#ifdef USE_ROCM
CUDACHECK(hipExtMallocWithFlags(
(void**)&buffer, 2 * data_size * sizeof(T) + sizeof(vllm::Signal),
hipDeviceMallocUncached));
#else
CUDACHECK(
cudaMalloc(&buffer, 2 * data_size * sizeof(T) + sizeof(vllm::Signal)));
#endif
CUDACHECK(
cudaMemset(buffer, 0, 2 * data_size * sizeof(T) + sizeof(vllm::Signal)));
CUDACHECK(cudaMalloc(&self_data_copy, data_size * sizeof(T)));
@ -311,13 +338,18 @@ int main(int argc, char** argv) {
bool performance_test = true;
cudaProfilerStart();
// Uncomment to scan through different block size configs.
// for (int threads : {256, 512, 1024}) {
// for (int block_limit = 16; block_limit < 112; block_limit += 4) {
// run<half>(myRank, nRanks, comm, threads, block_limit, 1024 * 1024,
// performance_test);
// }
// }
// Uncomment to scan through different block size configs.
// for (int threads : {256, 512, 1024}) {
// for (int block_limit = 16; block_limit < 112; block_limit += 4) {
// run<half>(myRank, nRanks, comm, threads, block_limit, 1024 * 1024,
// performance_test);
// }
// }
#ifdef USE_ROCM
const int block_limit = 16;
#else
const int block_limit = 36;
#endif
// Scan through different sizes to test performance.
for (int sz = 512; sz <= (8 << 20); sz *= 2) {
run<half>(myRank, nRanks, comm, 512, 36, sz + 8 * 47, performance_test);
@ -326,4 +358,4 @@ int main(int argc, char** argv) {
cudaProfilerStop();
MPICHECK(MPI_Finalize());
return EXIT_SUCCESS;
}
}

View File

@ -48,4 +48,14 @@ struct enable_sm90_or_later : Kernel {
Kernel::operator()(std::forward<Args>(args)...);
#endif
}
};
};
template <typename Kernel>
struct enable_sm90_only : Kernel {
template <typename... Args>
CUTLASS_DEVICE void operator()(Args&&... args) {
#if defined __CUDA_ARCH__ && __CUDA_ARCH__ == 900
Kernel::operator()(std::forward<Args>(args)...);
#endif
}
};

View File

@ -0,0 +1,457 @@
/***************************************************************************************************
* Copyright (c) 2023 - 2024 NVIDIA CORPORATION & AFFILIATES. All rights
*reserved. SPDX-License-Identifier: BSD-3-Clause
*
* Redistribution and use in source and binary forms, with or without
* modification, are permitted provided that the following conditions are met:
*
* 1. Redistributions of source code must retain the above copyright notice,
*this list of conditions and the following disclaimer.
*
* 2. Redistributions in binary form must reproduce the above copyright notice,
* this list of conditions and the following disclaimer in the documentation
* and/or other materials provided with the distribution.
*
* 3. Neither the name of the copyright holder nor the names of its
* contributors may be used to endorse or promote products derived from
* this software without specific prior written permission.
*
* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
* AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
* IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
*ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE
*LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
*CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
*SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
*INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
*CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
*ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
*POSSIBILITY OF SUCH DAMAGE.
*
**************************************************************************************************/
//
// This file is a modified excerpt of
// include/cutlass/epilogue/fusion/sm90_visitor_load_tma_warpspecialized.hpp
// from https://github.com/NVIDIA/cutlass v3.5.0
// It has been modified to support either row/column or scalar broadcasting
// where the tensor being loaded from is always passed in via a device pointer.
// This lets one compiled kernel handle all cases of per-tensor or
// per-channel/per-token quantization.
//
// This interface also allows the scales to be passed in as tensors that
// consistently reside on the device, which avoids an issue with a previous
// implementation where scalars needed to be on the CPU since they
// were passed in via float values. This created a potential performance hazard
// if scales were initially on the device, and caused torch.compile graphs
// breaks when moving scales to the CPU.
//
#pragma once
// Turn off clang-format for the entire file to keep it close to upstream
// clang-format off
#include "cutlass/cutlass.h"
#include "cutlass/arch/barrier.h"
#include "cute/tensor.hpp"
#include "cutlass/epilogue/fusion/sm90_visitor_tma_warpspecialized.hpp"
namespace cutlass::epilogue::fusion {
using namespace cute;
using namespace detail;
// Row vector broadcast
template<
int Stages,
class CtaTileShapeMNK,
class Element,
class StrideMNL = Stride<_0,_1,_0>,
int Alignment = 128 / sizeof_bits_v<Element>
>
struct Sm90RowOrScalarBroadcastArray {
static_assert(Stages == 0, "Row broadcast doesn't support smem usage");
static_assert(is_static_v<decltype(take<0,2>(StrideMNL{}))>); // batch stride can be dynamic or static
static_assert(take<0,2>(StrideMNL{}) == Stride<_0,_1>{});
struct SharedStorage {
array_aligned<Element, size<1>(CtaTileShapeMNK{})> smem;
};
// This struct has been modified to have a bool indicating that ptr_row is a
// scalar that must be broadcast, instead of containing a scalar that is
// valid if ptr_row is null.
struct Arguments {
const Element* const* ptr_row_array = nullptr;
bool row_broadcast = true;
StrideMNL dRow = {};
};
using Params = Arguments;
template <class ProblemShape>
static constexpr Params
to_underlying_arguments(ProblemShape const& problem_shape, Arguments const& args, void* workspace) {
return args;
}
template <class ProblemShape>
static bool
can_implement(ProblemShape const& problem_shape, Arguments const& args) {
return true;
}
template <class ProblemShape>
static size_t
get_workspace_size(ProblemShape const& problem_shape, Arguments const& args) {
return 0;
}
template <class ProblemShape>
static cutlass::Status
initialize_workspace(ProblemShape const& problem_shape, Arguments const& args, void* workspace, cudaStream_t stream,
CudaHostAdapter* cuda_adapter = nullptr) {
return cutlass::Status::kSuccess;
}
CUTLASS_HOST_DEVICE
Sm90RowOrScalarBroadcastArray() { }
CUTLASS_HOST_DEVICE
Sm90RowOrScalarBroadcastArray(Params const& params, SharedStorage const& shared_storage)
: params(params)
, smem(const_cast<Element*>(shared_storage.smem.data())) { }
Params params;
Element *smem = nullptr;
CUTLASS_DEVICE bool
is_producer_load_needed() const {
return false;
}
CUTLASS_DEVICE bool
is_C_load_needed() const {
return false;
}
CUTLASS_DEVICE bool
is_zero() const {
return (!params.row_broadcast && *(params.ptr_row_array[group]) == Element(0));
}
template <class... Args>
CUTLASS_DEVICE auto
get_producer_load_callbacks(ProducerLoadArgs<Args...> const& args) {
return EmptyProducerLoadCallbacks{};
}
template <class GS_GTensor, class GS_STensor, class GS_CTensor, class Tiled_G2S, class SR_STensor, class SR_RTensor, class CTensor, class ThrResidue, class ThrNum>
struct ConsumerStoreCallbacks : EmptyConsumerStoreCallbacks {
CUTLASS_DEVICE
ConsumerStoreCallbacks(
GS_GTensor tGS_gRow_, GS_STensor tGS_sRow_,
GS_CTensor tGS_cRow_, Tiled_G2S tiled_g2s_,
SR_STensor tSR_sRow_, SR_RTensor tSR_rRow_,
CTensor tCcRow_, ThrResidue residue_tCcRow_, ThrNum thr_num_,
int group, Params const& params_)
: tGS_gRow(tGS_gRow_)
, tGS_sRow(tGS_sRow_)
, tGS_cRow(tGS_cRow_)
, tiled_G2S(tiled_g2s_)
, tSR_sRow(tSR_sRow_)
, tSR_rRow(tSR_rRow_)
, tCcRow(tCcRow_)
, residue_tCcRow(residue_tCcRow_)
, group(group)
, params(params_) {}
GS_GTensor tGS_gRow; // (CPY,CPY_M,CPY_N)
GS_STensor tGS_sRow; // (CPY,CPY_M,CPY_N)
GS_CTensor tGS_cRow; // (CPY,CPY_M,CPY_N)
Tiled_G2S tiled_G2S;
SR_STensor tSR_sRow; // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
SR_RTensor tSR_rRow; // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
CTensor tCcRow; // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
ThrResidue residue_tCcRow; // (m, n)
ThrNum thr_num;
int group;
Params const& params;
CUTLASS_DEVICE void
begin() {
if (!params.row_broadcast) {
fill(tSR_rRow, *(params.ptr_row_array[group]));
return;
}
auto synchronize = [&] () { cutlass::arch::NamedBarrier::sync(thr_num, cutlass::arch::ReservedNamedBarriers::EpilogueBarrier); };
Tensor tGS_gRow_flt = filter_zeros(tGS_gRow);
Tensor tGS_sRow_flt = filter_zeros(tGS_sRow);
Tensor tGS_cRow_flt = make_tensor(tGS_cRow.data(), make_layout(tGS_gRow_flt.shape(), tGS_cRow.stride()));
for (int i = 0; i < size(tGS_gRow_flt); ++i) {
if (get<1>(tGS_cRow_flt(i)) >= size<1>(CtaTileShapeMNK{})) {
continue; // OOB of SMEM,
}
if (elem_less(tGS_cRow_flt(i), make_coord(get<0>(residue_tCcRow), get<1>(residue_tCcRow)))) {
tGS_sRow_flt(i) = tGS_gRow_flt(i);
}
else {
tGS_sRow_flt(i) = Element(0); // Set to Zero when OOB so LDS could be issue without any preds.
}
}
synchronize();
}
CUTLASS_DEVICE void
begin_loop(int epi_m, int epi_n) {
if (epi_m == 0) { // Assumes M-major subtile loop
if (!params.row_broadcast) return; // Do not issue LDS when row is scalar
Tensor tSR_sRow_flt = filter_zeros(tSR_sRow(_,_,_,epi_m,epi_n));
Tensor tSR_rRow_flt = filter_zeros(tSR_rRow);
copy(tSR_sRow_flt, tSR_rRow_flt);
}
}
template <typename ElementAccumulator, int FragmentSize>
CUTLASS_DEVICE Array<Element, FragmentSize>
visit(Array<ElementAccumulator, FragmentSize> const& frg_acc, int epi_v, int epi_m, int epi_n) {
Array<Element, FragmentSize> frg_row;
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < FragmentSize; ++i) {
frg_row[i] = tSR_rRow(epi_v * FragmentSize + i);
}
return frg_row;
}
};
template <
bool ReferenceSrc, // do register tensors reference the src or dst layout of the tiled copy
class... Args
>
CUTLASS_DEVICE auto
get_consumer_store_callbacks(ConsumerStoreArgs<Args...> const& args) {
auto [M, N, K, L] = args.problem_shape_mnkl;
auto [m, n, k, l] = args.tile_coord_mnkl;
using ThreadCount = decltype(size(args.tiled_copy));
Tensor mRow = make_tensor(make_gmem_ptr(params.ptr_row_array[l]), make_shape(M,N,1), params.dRow);
Tensor gRow = local_tile(mRow(_,_,l), take<0,2>(args.tile_shape_mnk), make_coord(m, n)); // (CTA_M, CTA_N)
Tensor sRow = make_tensor(make_smem_ptr(smem),
make_shape(size<0>(CtaTileShapeMNK{}), size<1>(CtaTileShapeMNK{})), make_shape(_0{}, _1{})); // (CTA_M, CTA_N)
//// G2S: Gmem to Smem
auto tiled_g2s = make_tiled_copy(Copy_Atom<DefaultCopy, Element>{},
Layout< Shape<_1, ThreadCount>,
Stride<_0, _1>>{},
Layout<_1>{});
auto thr_g2s = tiled_g2s.get_slice(args.thread_idx);
Tensor tGS_gRow = thr_g2s.partition_S(gRow);
Tensor tGS_sRow = thr_g2s.partition_D(sRow);
//// G2S: Coord
auto cRow = make_identity_tensor(make_shape(size<0>(CtaTileShapeMNK{}), size<1>(CtaTileShapeMNK{})));
Tensor tGS_cRow = thr_g2s.partition_S(cRow);
//// S2R: Smem to Reg
Tensor tSR_sRow = sm90_partition_for_epilogue<ReferenceSrc>(sRow, args.epi_tile, args.tiled_copy, args.thread_idx);
Tensor tSR_rRow = make_tensor_like(take<0,3>(tSR_sRow)); // (CPY,CPY_M,CPY_N)
return ConsumerStoreCallbacks<decltype(tGS_gRow), decltype(tGS_sRow), decltype(tGS_cRow), decltype(tiled_g2s), decltype(tSR_sRow), decltype(tSR_rRow), decltype(args.tCcD), decltype(args.residue_cD), ThreadCount>(
tGS_gRow,
tGS_sRow,
tGS_cRow, tiled_g2s,
tSR_sRow,
tSR_rRow,
args.tCcD,
args.residue_cD,
ThreadCount{},
l,
params);
}
};
/////////////////////////////////////////////////////////////////////////////////////////////////
// Column vector broadcast
template<
int Stages,
class CtaTileShapeMNK,
class Element,
class StrideMNL = Stride<_1,_0,_0>,
int Alignment = 128 / sizeof_bits_v<Element>
>
struct Sm90ColOrScalarBroadcastArray {
static_assert(Stages == 0, "Column broadcast doesn't support smem usage yet");
static_assert(Alignment * sizeof_bits_v<Element> % 128 == 0, "sub-16B alignment not supported yet");
static_assert(
(cute::is_same_v<StrideMNL, Stride<_1,_0, _0>>) || // col vector broadcast, e.g. per-row alpha/bias
(cute::is_same_v<StrideMNL, Stride<_1,_0,int>>)); // batched col vector broadcast, e.g. batched per-row bias
// Accumulator distributes col elements evenly amongst threads so we can just directly load from gmem
struct SharedStorage { };
// This struct has been modified to have a bool indicating that ptr_col is a
// scalar that must be broadcast, instead of containing a scalar that is
// valid if ptr_col is null.
struct Arguments {
const Element* const* ptr_col_array = nullptr;
bool col_broadcast = true;
StrideMNL dCol = {};
};
using Params = Arguments;
template <class ProblemShape>
static constexpr Params
to_underlying_arguments(ProblemShape const& problem_shape, Arguments const& args, void* workspace) {
return args;
}
template <class ProblemShape>
static bool
can_implement(ProblemShape const& problem_shape, Arguments const& args) {
return true;
}
template <class ProblemShape>
static size_t
get_workspace_size(ProblemShape const& problem_shape, Arguments const& args) {
return 0;
}
template <class ProblemShape>
static cutlass::Status
initialize_workspace(ProblemShape const& problem_shape, Arguments const& args, void* workspace, cudaStream_t stream,
CudaHostAdapter* cuda_adapter = nullptr) {
return cutlass::Status::kSuccess;
}
CUTLASS_DEVICE bool
is_producer_load_needed() const {
return false;
}
CUTLASS_DEVICE bool
is_C_load_needed() const {
return false;
}
CUTLASS_DEVICE bool
is_zero() const {
return (!params.col_broadcast && *(params.ptr_col_array[group]) == Element(0));
}
CUTLASS_HOST_DEVICE
Sm90ColOrScalarBroadcastArray() { }
CUTLASS_HOST_DEVICE
Sm90ColOrScalarBroadcastArray(Params const& params, SharedStorage const& shared_storage)
: params(params) { }
Params params;
template <class... Args>
CUTLASS_DEVICE auto
get_producer_load_callbacks(ProducerLoadArgs<Args...> const& args) {
return EmptyProducerLoadCallbacks{};
}
template<class GTensor, class RTensor, class CTensor, class ProblemShape>
struct ConsumerStoreCallbacks : EmptyConsumerStoreCallbacks {
CUTLASS_DEVICE
ConsumerStoreCallbacks(
GTensor&& tCgCol,
RTensor&& tCrCol,
CTensor&& tCcCol,
ProblemShape problem_shape,
int group,
Params const& params
):
tCgCol(cute::forward<GTensor>(tCgCol)),
tCrCol(cute::forward<RTensor>(tCrCol)),
tCcCol(cute::forward<CTensor>(tCcCol)),
m(get<0>(problem_shape)),
group(group),
params(params) {}
GTensor tCgCol; // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
RTensor tCrCol;
CTensor tCcCol; // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
Params const& params;
int m;
int group;
CUTLASS_DEVICE void
begin() {
Tensor pred = make_tensor<bool>(shape(tCgCol));
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(pred); ++i) {
pred(i) = get<0>(tCcCol(i)) < m;
}
if (!params.col_broadcast) {
fill(tCrCol, *(params.ptr_col_array[group]));
return;
}
// Filter so we don't issue redundant copies over stride-0 modes
// (only works if 0-strides are in same location, which is by construction)
copy_if(pred, filter(tCgCol), filter(tCrCol));
}
template <typename ElementAccumulator, int FragmentSize>
CUTLASS_DEVICE Array<Element, FragmentSize>
visit(Array<ElementAccumulator, FragmentSize> const& frg_acc, int epi_v, int epi_m, int epi_n) {
Array<Element, FragmentSize> frg_col;
Tensor tCrCol_mn = tCrCol(_,_,_,epi_m,epi_n);
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < FragmentSize; ++i) {
frg_col[i] = tCrCol_mn(epi_v * FragmentSize + i);
}
return frg_col;
}
};
template <
bool ReferenceSrc, // do register tensors reference the src or dst layout of the tiled copy
class... Args
>
CUTLASS_DEVICE auto
get_consumer_store_callbacks(ConsumerStoreArgs<Args...> const& args) {
auto [M, N, K, L] = args.problem_shape_mnkl;
auto [m, n, k, l] = args.tile_coord_mnkl;
Tensor mCol = make_tensor(make_gmem_ptr(params.ptr_col_array[l]), make_shape(M,N,1), params.dCol);
Tensor tCgCol = sm90_partition_for_epilogue<ReferenceSrc>( // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
mCol, args.tile_shape_mnk, args.tile_coord_mnkl, args.epi_tile, args.tiled_copy, args.thread_idx);
Tensor tCrCol = make_tensor_like(tCgCol); // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
// Generate an identity tensor matching the shape of the global tensor and
// partition the same way, this will be used to generate the predicate
// tensor for loading
Tensor cCol = make_identity_tensor(mCol.shape());
Tensor tCcCol = sm90_partition_for_epilogue<ReferenceSrc>( // (CPY,CPY_M,CPY_N,EPI_M,EPI_N)
cCol, args.tile_shape_mnk, args.tile_coord_mnkl, args.epi_tile, args.tiled_copy, args.thread_idx);
return ConsumerStoreCallbacks(
cute::move(tCgCol),
cute::move(tCrCol),
cute::move(tCcCol),
args.problem_shape_mnkl,
l,
params
);
}
};
}

View File

@ -1,6 +1,7 @@
#pragma once
#include "cutlass_extensions/epilogue/broadcast_load_epilogue_c3x.hpp"
#include "cutlass_extensions/epilogue/broadcast_load_epilogue_array_c3x.hpp"
/*
This file defines custom epilogues for fusing channel scales, token scales,
@ -69,6 +70,16 @@ struct ScaledEpilogueBase {
0 /*Stages*/, TileShape, T, T, Stride<Int<0>, Int<1>, Int<0>>,
128 / sizeof_bits_v<T>, EnableNullPtr>;
template <typename T>
using ColOrScalarLoadArray =
cutlass::epilogue::fusion::Sm90ColOrScalarBroadcastArray<
0 /*Stages*/, TileShape, T, Stride<Int<1>, Int<0>, Int<0>>>;
template <typename T>
using RowOrScalarLoadArray =
cutlass::epilogue::fusion::Sm90RowOrScalarBroadcastArray<
0 /*Stages*/, TileShape, T, Stride<Int<0>, Int<1>, Int<0>>>;
// This utility function constructs the arguments for the load descriptors
// from a tensor. It can handle both row and column, as well as row/column or
// scalar cases.
@ -96,6 +107,14 @@ struct ScaledEpilogueBase {
std::is_same_v<Descriptor, RowLoad<T, true>>);
return Arguments{data_ptr};
}
template <typename Descriptor, typename T>
static auto args_from_tensor(const T* const* data_ptr, bool do_broadcast) {
using Arguments = typename Descriptor::Arguments;
static_assert(std::is_same_v<Descriptor, ColOrScalarLoadArray<T>> ||
std::is_same_v<Descriptor, RowOrScalarLoadArray<T>>);
return Arguments{data_ptr, do_broadcast};
}
};
/*
@ -381,4 +400,51 @@ struct ScaledEpilogueBiasAzpToken
}
};
/*
This epilogue works like ScaledEpilogue, but ScaleA and ScaleB are pointers
to arrays containing different scales used in group gemm. The number of
pointers in ScaleA and the number of pointers in ScaleB are equal to the
group size.
*/
template <typename ElementAcc, typename ElementD, typename EpilogueDescriptor>
struct ScaledEpilogueArray
: private ScaledEpilogueBase<ElementAcc, ElementD, EpilogueDescriptor> {
private:
using SUPER = ScaledEpilogueBase<ElementAcc, ElementD, EpilogueDescriptor>;
using Accum = typename SUPER::Accum;
using ScaleA = typename SUPER::template ColOrScalarLoadArray<float>;
using ScaleB = typename SUPER::template RowOrScalarLoadArray<float>;
using Compute0 = cutlass::epilogue::fusion::Sm90Compute<
cutlass::multiplies, float, float,
cutlass::FloatRoundStyle::round_to_nearest>;
using EVTCompute0 =
cutlass::epilogue::fusion::Sm90EVT<Compute0, ScaleB, Accum>;
using Compute1 = cutlass::epilogue::fusion::Sm90Compute<
cutlass::multiplies, ElementD, float,
cutlass::FloatRoundStyle::round_to_nearest>;
public:
using EVTCompute =
cutlass::epilogue::fusion::Sm90EVT<Compute1, ScaleA, EVTCompute0>;
using ArgumentType = typename EVTCompute::Arguments;
using ScaleAArray = typename SUPER::template ColOrScalarLoadArray<float>;
using ScaleBArray = typename SUPER::template RowOrScalarLoadArray<float>;
static ArgumentType prepare_args(float const* const* a_scales_ptr,
float const* const* b_scales_ptr,
bool a_col_broadcast, bool b_row_broadcast) {
auto a_args = SUPER::template args_from_tensor<ScaleAArray, float>(
a_scales_ptr, a_col_broadcast);
auto b_args = SUPER::template args_from_tensor<ScaleBArray, float>(
b_scales_ptr, b_row_broadcast);
typename EVTCompute0::Arguments evt0_args{b_args, {}, {}};
return ArgumentType{a_args, evt0_args, {}};
}
};
}; // namespace vllm::c3x

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@ -119,6 +119,8 @@ void advance_step_flashinfer(
torch::Tensor& paged_kv_indices, torch::Tensor& paged_kv_indptr,
torch::Tensor& paged_kv_last_page_len, torch::Tensor& block_table_bounds);
torch::Tensor get_cuda_view_from_cpu_tensor(torch::Tensor& cpu_tensor);
#ifndef USE_ROCM
torch::Tensor aqlm_gemm(const torch::Tensor& input, const torch::Tensor& codes,
const torch::Tensor& codebooks,
@ -164,6 +166,7 @@ int64_t ggml_moe_get_block_size(int64_t type);
bool cutlass_scaled_mm_supports_fp4(int64_t cuda_device_capability);
bool cutlass_scaled_mm_supports_fp8(int64_t cuda_device_capability);
bool cutlass_scaled_mm_supports_block_fp8(int64_t cuda_device_capability);
bool cutlass_group_gemm_supported(int64_t cuda_device_capability);
void cutlass_scaled_fp4_mm(torch::Tensor& D, torch::Tensor const& A,
torch::Tensor const& B, torch::Tensor const& A_sf,
@ -175,6 +178,19 @@ void cutlass_scaled_mm(torch::Tensor& out, torch::Tensor const& a,
torch::Tensor const& b_scales,
std::optional<torch::Tensor> const& bias);
void cutlass_moe_mm(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides);
void get_cutlass_moe_mm_data(
const torch::Tensor& topk_ids, torch::Tensor& expert_offsets,
torch::Tensor& problem_sizes1, torch::Tensor& problem_sizes2,
torch::Tensor& input_permutation, torch::Tensor& output_permutation,
const int64_t num_experts, const int64_t n, const int64_t k);
void cutlass_scaled_mm_azp(torch::Tensor& out, torch::Tensor const& a,
torch::Tensor const& b,
torch::Tensor const& a_scales,
@ -251,10 +267,10 @@ void causal_conv1d_fwd(const at::Tensor& x, const at::Tensor& weight,
const std::optional<at::Tensor>& has_initial_state,
bool silu_activation, int64_t pad_slot_id);
#ifndef USE_ROCM
using fptr_t = int64_t;
fptr_t init_custom_ar(const std::vector<int64_t>& fake_ipc_ptrs,
torch::Tensor& rank_data, int64_t rank, bool full_nvlink);
torch::Tensor& rank_data, int64_t rank,
bool fully_connected);
void all_reduce(fptr_t _fa, torch::Tensor& inp, torch::Tensor& out,
fptr_t reg_buffer, int64_t reg_buffer_sz_bytes);
void dispose(fptr_t _fa);
@ -265,4 +281,7 @@ get_graph_buffer_ipc_meta(fptr_t _fa);
void register_graph_buffers(fptr_t _fa,
const std::vector<std::vector<int64_t>>& handles,
const std::vector<std::vector<int64_t>>& offsets);
#endif
std::tuple<int64_t, torch::Tensor> allocate_shared_buffer_and_handle(
int64_t size);
int64_t open_mem_handle(torch::Tensor& mem_handle);
void free_shared_buffer(int64_t buffer);

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@ -0,0 +1,80 @@
#pragma once
#include <cuda.h>
#include <torch/all.h>
#include <c10/cuda/CUDAStream.h>
#include "core/scalar_type.hpp"
#include "cutlass/bfloat16.h"
#include "cutlass/float8.h"
template <typename ElementAB, typename ElementC, typename ElementAccumulator>
__global__ void get_group_gemm_starts(
int32_t* expert_offsets, ElementAB** a_offsets, ElementAB** b_offsets,
ElementC** out_offsets, ElementAccumulator** a_scales_offsets,
ElementAccumulator** b_scales_offsets, ElementAB* a_base_as_int,
ElementAB* b_base_as_int, ElementC* out_base_as_int,
ElementAccumulator* a_scales_base_as_int,
ElementAccumulator* b_scales_base_as_int, int64_t n, int64_t k,
bool per_act_token, bool per_out_ch) {
int expert_id = threadIdx.x;
int64_t expert_offset = expert_offsets[expert_id];
a_offsets[expert_id] = a_base_as_int + expert_offset * k;
b_offsets[expert_id] = b_base_as_int + expert_id * k * n;
out_offsets[expert_id] = out_base_as_int + expert_offset * n;
a_scales_offsets[expert_id] =
a_scales_base_as_int + (per_act_token ? expert_offset : 0);
b_scales_offsets[expert_id] =
b_scales_base_as_int + (per_out_ch ? n * expert_id : expert_id);
}
#define __CALL_GET_STARTS_KERNEL(TENSOR_C_TYPE, C_TYPE) \
else if (out_tensors.dtype() == TENSOR_C_TYPE) { \
get_group_gemm_starts<cutlass::float_e4m3_t, C_TYPE, float> \
<<<1, num_experts, 0, stream>>>( \
static_cast<int32_t*>(expert_offsets.data_ptr()), \
static_cast<cutlass::float_e4m3_t**>(a_ptrs.data_ptr()), \
static_cast<cutlass::float_e4m3_t**>(b_ptrs.data_ptr()), \
static_cast<C_TYPE**>(out_ptrs.data_ptr()), \
static_cast<float**>(a_scales_ptrs.data_ptr()), \
static_cast<float**>(b_scales_ptrs.data_ptr()), \
static_cast<cutlass::float_e4m3_t*>(a_tensors.data_ptr()), \
static_cast<cutlass::float_e4m3_t*>(b_tensors.data_ptr()), \
static_cast<C_TYPE*>(out_tensors.data_ptr()), \
static_cast<float*>(a_scales.data_ptr()), \
static_cast<float*>(b_scales.data_ptr()), out_tensors.size(1), \
a_tensors.size(1), per_act_token, per_out_ch); \
}
namespace {
void run_get_group_gemm_starts(
torch::Tensor const& expert_offsets, torch::Tensor& a_ptrs,
torch::Tensor& b_ptrs, torch::Tensor& out_ptrs,
torch::Tensor& a_scales_ptrs, torch::Tensor& b_scales_ptrs,
torch::Tensor const& a_tensors, torch::Tensor const& b_tensors,
torch::Tensor& out_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales) {
TORCH_CHECK(a_tensors.dtype() == torch::kFloat8_e4m3fn);
TORCH_CHECK(b_tensors.dtype() == torch::kFloat8_e4m3fn);
TORCH_CHECK(a_scales.dtype() == torch::kFloat32);
TORCH_CHECK(b_scales.dtype() == torch::kFloat32);
int num_experts = static_cast<int>(expert_offsets.size(0));
bool per_act_token = a_scales.numel() != 1;
bool per_out_ch = b_scales.numel() != num_experts;
auto stream = at::cuda::getCurrentCUDAStream(a_tensors.device().index());
if (false) {
}
__CALL_GET_STARTS_KERNEL(torch::kBFloat16, cutlass::bfloat16_t)
__CALL_GET_STARTS_KERNEL(torch::kFloat16, half)
else {
TORCH_CHECK(false, "Invalid output type (must be float16 or bfloat16)");
}
}
} // namespace

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@ -0,0 +1,160 @@
#include <cudaTypedefs.h>
#include <c10/cuda/CUDAGuard.h>
#include <torch/all.h>
#include "cutlass/cutlass.h"
#include "grouped_mm_c3x.cuh"
using namespace cute;
namespace {
template <typename InType, typename OutType,
template <typename, typename, typename> typename Epilogue>
struct sm90_fp8_config_default {
// M in (16, inf)
static_assert(std::is_same<InType, cutlass::float_e4m3_t>());
using KernelSchedule =
cutlass::gemm::KernelPtrArrayTmaWarpSpecializedPingpongFP8FastAccum;
using EpilogueSchedule =
cutlass::epilogue::PtrArrayTmaWarpSpecializedPingpong;
using TileShape = cute::Shape<cute::_64, cute::_256, cute::_128>;
using ClusterShape = cute::Shape<cute::_1, cute::_2, cute::_1>;
using Cutlass3xGemm =
cutlass_3x_group_gemm<InType, OutType, Epilogue, TileShape, ClusterShape,
KernelSchedule, EpilogueSchedule>;
};
template <typename InType, typename OutType,
template <typename, typename, typename> typename Epilogue>
struct sm90_fp8_config_M16 {
// M in [1, 16]
static_assert(std::is_same<InType, cutlass::float_e4m3_t>());
using KernelSchedule =
cutlass::gemm::KernelPtrArrayTmaWarpSpecializedPingpongFP8FastAccum;
using EpilogueSchedule =
cutlass::epilogue::PtrArrayTmaWarpSpecializedPingpong;
using TileShape = cute::Shape<cute::_64, cute::_64, cute::_128>;
using ClusterShape = cute::Shape<cute::_1, cute::_4, cute::_1>;
using Cutlass3xGemm =
cutlass_3x_group_gemm<InType, OutType, Epilogue, TileShape, ClusterShape,
KernelSchedule, EpilogueSchedule>;
};
template <typename InType, typename OutType,
template <typename, typename, typename> typename Epilogue>
struct sm90_fp8_config_K8192 {
// K in [8192, inf)
static_assert(std::is_same<InType, cutlass::float_e4m3_t>());
using KernelSchedule =
cutlass::gemm::KernelPtrArrayTmaWarpSpecializedPingpongFP8FastAccum;
using EpilogueSchedule =
cutlass::epilogue::PtrArrayTmaWarpSpecializedPingpong;
using TileShape = cute::Shape<cute::_128, cute::_128, cute::_128>;
using ClusterShape = cute::Shape<cute::_1, cute::_8, cute::_1>;
using Cutlass3xGemm =
cutlass_3x_group_gemm<InType, OutType, Epilogue, TileShape, ClusterShape,
KernelSchedule, EpilogueSchedule>;
};
template <typename InType, typename OutType,
template <typename, typename, typename> typename Epilogue>
struct sm90_fp8_config_N8192 {
// N in [8192, inf)
static_assert(std::is_same<InType, cutlass::float_e4m3_t>());
using KernelSchedule =
cutlass::gemm::KernelPtrArrayTmaWarpSpecializedPingpongFP8FastAccum;
using EpilogueSchedule =
cutlass::epilogue::PtrArrayTmaWarpSpecializedPingpong;
using TileShape = cute::Shape<cute::_64, cute::_128, cute::_256>;
using ClusterShape = cute::Shape<cute::_1, cute::_8, cute::_1>;
using Cutlass3xGemm =
cutlass_3x_group_gemm<InType, OutType, Epilogue, TileShape, ClusterShape,
KernelSchedule, EpilogueSchedule>;
};
template <typename InType, typename OutType>
void run_cutlass_moe_mm_sm90(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides) {
TORCH_CHECK(a_tensors.size(0) > 0, "No input A tensors provided.");
TORCH_CHECK(b_tensors.size(0) > 0, "No input B tensors provided.");
TORCH_CHECK(out_tensors.size(0) > 0, "No output tensors provided.");
TORCH_CHECK(a_tensors.dtype() == torch::kFloat8_e4m3fn,
"A tensors must be of type float8_e4m3fn.");
TORCH_CHECK(b_tensors.dtype() == torch::kFloat8_e4m3fn,
"B tensors must be of type float8_e4m3fn.");
TORCH_CHECK(a_tensors.dtype() == torch::kFloat8_e4m3fn);
TORCH_CHECK(b_tensors.dtype() == torch::kFloat8_e4m3fn);
using Cutlass3xGemmN8192 = typename sm90_fp8_config_N8192<
InType, OutType, vllm::c3x::ScaledEpilogueArray>::Cutlass3xGemm;
using Cutlass3xGemmK8192 = typename sm90_fp8_config_K8192<
InType, OutType, vllm::c3x::ScaledEpilogueArray>::Cutlass3xGemm;
using Cutlass3xGemmM16 = typename sm90_fp8_config_M16<
InType, OutType, vllm::c3x::ScaledEpilogueArray>::Cutlass3xGemm;
using Cutlass3xGemmDefault = typename sm90_fp8_config_default<
InType, OutType, vllm::c3x::ScaledEpilogueArray>::Cutlass3xGemm;
uint32_t const m = a_tensors.size(0);
uint32_t const n = out_tensors.size(1);
uint32_t const k = a_tensors.size(1);
if (n >= 8192) {
cutlass_group_gemm_caller<Cutlass3xGemmN8192>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
} else if (k >= 8192) {
cutlass_group_gemm_caller<Cutlass3xGemmK8192>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
} else if (m <= 16) {
cutlass_group_gemm_caller<Cutlass3xGemmM16>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
} else {
cutlass_group_gemm_caller<Cutlass3xGemmDefault>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
}
}
void dispatch_moe_mm_sm90(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides) {
if (out_tensors.dtype() == torch::kBFloat16) {
run_cutlass_moe_mm_sm90<cutlass::float_e4m3_t, cutlass::bfloat16_t>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
} else {
run_cutlass_moe_mm_sm90<cutlass::float_e4m3_t, cutlass::half_t>(
out_tensors, a_tensors, b_tensors, a_scales, b_scales, expert_offsets,
problem_sizes, a_strides, b_strides, c_strides);
}
}
} // namespace
void cutlass_moe_mm_sm90(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides) {
dispatch_moe_mm_sm90(out_tensors, a_tensors, b_tensors, a_scales, b_scales,
expert_offsets, problem_sizes, a_strides, b_strides,
c_strides);
}

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@ -0,0 +1,149 @@
#pragma once
#include "cutlass/cutlass.h"
#include "cutlass/gemm/collective/collective_builder.hpp"
#include "cutlass/epilogue/collective/collective_builder.hpp"
#include "cutlass/gemm/device/gemm_universal_adapter.h"
#include "cutlass_extensions/epilogue/scaled_mm_epilogues_c3x.hpp"
#include "cutlass_extensions/common.hpp"
#include "get_group_starts.cuh"
using namespace cute;
namespace {
using ProblemShape =
cutlass::gemm::GroupProblemShape<cute::Shape<int, int, int>>;
using ElementAccumulator = float;
using ArchTag = cutlass::arch::Sm90;
using OperatorClass = cutlass::arch::OpClassTensorOp;
using LayoutA = cutlass::layout::RowMajor;
using LayoutB = cutlass::layout::ColumnMajor;
using LayoutC = cutlass::layout::RowMajor;
template <typename ElementAB_, typename ElementC_,
template <typename, typename, typename> typename Epilogue_,
typename TileShape, typename ClusterShape, typename KernelSchedule,
typename EpilogueSchedule>
struct cutlass_3x_group_gemm {
using ElementAB = ElementAB_;
using ElementC = void;
using ElementD = ElementC_;
using ElementAccumulator = float;
using Epilogue = Epilogue_<ElementAccumulator, ElementD, TileShape>;
using StrideC =
cute::remove_pointer_t<cute::Stride<int64_t, cute::Int<1>, cute::Int<0>>>;
static constexpr int AlignmentAB =
128 / cutlass::sizeof_bits<ElementAB>::value;
static constexpr int AlignmentC = 128 / cutlass::sizeof_bits<ElementD>::value;
using EVTCompute = typename Epilogue::EVTCompute;
using CollectiveEpilogue =
typename cutlass::epilogue::collective::CollectiveBuilder<
ArchTag, OperatorClass, TileShape, ClusterShape,
cutlass::epilogue::collective::EpilogueTileAuto, ElementAccumulator,
ElementAccumulator, ElementC, LayoutC*, AlignmentC, ElementD,
LayoutC*, AlignmentC, EpilogueSchedule, EVTCompute>::CollectiveOp;
static constexpr size_t CEStorageSize =
sizeof(typename CollectiveEpilogue::SharedStorage);
using Stages = typename cutlass::gemm::collective::StageCountAutoCarveout<
static_cast<int>(CEStorageSize)>;
using CollectiveMainloop =
typename cutlass::gemm::collective::CollectiveBuilder<
ArchTag, OperatorClass, ElementAB, LayoutA*, AlignmentAB, ElementAB,
LayoutB*, AlignmentAB, ElementAccumulator, TileShape, ClusterShape,
Stages, KernelSchedule>::CollectiveOp;
using KernelType = enable_sm90_only<cutlass::gemm::kernel::GemmUniversal<
ProblemShape, CollectiveMainloop, CollectiveEpilogue>>;
struct GemmKernel : public KernelType {};
};
template <typename Gemm>
void cutlass_group_gemm_caller(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides) {
using ElementAB = typename Gemm::ElementAB;
using ElementD = typename Gemm::ElementD;
int num_experts = static_cast<int>(expert_offsets.size(0));
int k_size = a_tensors.size(1);
int n_size = out_tensors.size(1);
bool per_act_token = a_scales.numel() != 1;
bool per_out_ch = b_scales.numel() != num_experts;
auto stream = at::cuda::getCurrentCUDAStream(a_tensors.device().index());
auto options_int =
torch::TensorOptions().dtype(torch::kInt64).device(a_tensors.device());
torch::Tensor a_ptrs = torch::empty(num_experts, options_int);
torch::Tensor b_ptrs = torch::empty(num_experts, options_int);
torch::Tensor out_ptrs = torch::empty(num_experts, options_int);
torch::Tensor a_scales_ptrs = torch::empty(num_experts, options_int);
torch::Tensor b_scales_ptrs = torch::empty(num_experts, options_int);
run_get_group_gemm_starts(expert_offsets, a_ptrs, b_ptrs, out_ptrs,
a_scales_ptrs, b_scales_ptrs, a_tensors, b_tensors,
out_tensors, a_scales, b_scales);
using GemmKernel = typename Gemm::GemmKernel;
using StrideA = Stride<int64_t, Int<1>, Int<0>>;
using StrideB = Stride<int64_t, Int<1>, Int<0>>;
using StrideC = typename GemmKernel::InternalStrideC;
ProblemShape::UnderlyingProblemShape* problem_sizes_as_shapes =
static_cast<ProblemShape::UnderlyingProblemShape*>(
problem_sizes.data_ptr());
ProblemShape prob_shape{num_experts, problem_sizes_as_shapes, nullptr};
typename GemmKernel::MainloopArguments mainloop_args{
static_cast<const ElementAB**>(a_ptrs.data_ptr()),
static_cast<StrideA*>(a_strides.data_ptr()),
static_cast<const ElementAB**>(b_ptrs.data_ptr()),
static_cast<StrideB*>(b_strides.data_ptr())};
// Currently, we are only able to do broadcast on either all or none a_scales
// and on either all or none b_scales
typename GemmKernel::EpilogueArguments epilogue_args{
Gemm::Epilogue::prepare_args(
static_cast<const ElementAccumulator**>(a_scales_ptrs.data_ptr()),
static_cast<const ElementAccumulator**>(b_scales_ptrs.data_ptr()),
per_act_token, per_out_ch),
nullptr, static_cast<StrideC*>(c_strides.data_ptr()),
static_cast<ElementD**>(out_ptrs.data_ptr()),
static_cast<StrideC*>(c_strides.data_ptr())};
typename GemmKernel::Arguments args{
cutlass::gemm::GemmUniversalMode::kGrouped, prob_shape, mainloop_args,
epilogue_args};
using GemmOp = cutlass::gemm::device::GemmUniversalAdapter<GemmKernel>;
GemmOp gemm_op;
CUTLASS_CHECK(gemm_op.can_implement(args));
size_t workspace_size = gemm_op.get_workspace_size(args);
auto const workspace_options =
torch::TensorOptions().dtype(torch::kUInt8).device(a_tensors.device());
auto workspace = torch::empty(workspace_size, workspace_options);
cutlass::Status status = gemm_op.run(args, workspace.data_ptr(), stream);
CUTLASS_CHECK(status);
}
} // namespace

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@ -0,0 +1,90 @@
#include <cudaTypedefs.h>
#include <c10/cuda/CUDAGuard.h>
#include <torch/all.h>
#include <iostream>
constexpr uint64_t THREADS_PER_EXPERT = 512;
__global__ void compute_problem_sizes(const int* __restrict__ topk_ids,
int32_t* problem_sizes1,
int32_t* problem_sizes2,
int32_t* atomic_buffer,
const int topk_length, const int n,
const int k) {
int expert_id = blockIdx.x;
int occurrences = 0;
for (int i = threadIdx.x; i < topk_length; i += THREADS_PER_EXPERT) {
occurrences += (topk_ids[i] == expert_id);
}
atomicAdd(&atomic_buffer[expert_id], occurrences);
__syncthreads();
if (threadIdx.x == 0) {
int final_occurrences = atomic_buffer[expert_id];
problem_sizes1[expert_id * 3] = final_occurrences;
problem_sizes1[expert_id * 3 + 1] = 2 * n;
problem_sizes1[expert_id * 3 + 2] = k;
problem_sizes2[expert_id * 3] = final_occurrences;
problem_sizes2[expert_id * 3 + 1] = k;
problem_sizes2[expert_id * 3 + 2] = n;
}
}
__global__ void compute_expert_offsets(
const int32_t* __restrict__ problem_sizes1, int32_t* expert_offsets,
int32_t* atomic_buffer, const int num_experts) {
int32_t tot_offset = 0;
expert_offsets[0] = 0;
for (int i = 0; i < num_experts; ++i) {
atomic_buffer[i] = tot_offset;
tot_offset += problem_sizes1[i * 3];
expert_offsets[i + 1] = tot_offset;
}
}
__global__ void compute_arg_sorts(const int* __restrict__ topk_ids,
int32_t* input_permutation,
int32_t* output_permutation,
int32_t* atomic_buffer, const int topk_length,
const int topk) {
int expert_id = blockIdx.x;
for (int i = threadIdx.x; i < topk_length; i += THREADS_PER_EXPERT) {
if (topk_ids[i] == expert_id) {
int start = atomicAdd(&atomic_buffer[expert_id], 1);
input_permutation[start] = i / topk;
output_permutation[i] = start;
}
}
}
void get_cutlass_moe_mm_data_caller(
const torch::Tensor& topk_ids, torch::Tensor& expert_offsets,
torch::Tensor& problem_sizes1, torch::Tensor& problem_sizes2,
torch::Tensor& input_permutation, torch::Tensor& output_permutation,
const int64_t num_experts, const int64_t n, const int64_t k) {
auto stream = at::cuda::getCurrentCUDAStream(topk_ids.device().index());
auto options_int32 =
torch::TensorOptions().dtype(torch::kInt32).device(topk_ids.device());
torch::Tensor atomic_buffer = torch::zeros(num_experts, options_int32);
int num_threads = min(THREADS_PER_EXPERT, topk_ids.numel());
compute_problem_sizes<<<num_experts, num_threads, 0, stream>>>(
static_cast<const int32_t*>(topk_ids.data_ptr()),
static_cast<int32_t*>(problem_sizes1.data_ptr()),
static_cast<int32_t*>(problem_sizes2.data_ptr()),
static_cast<int32_t*>(atomic_buffer.data_ptr()), topk_ids.numel(), n, k);
compute_expert_offsets<<<1, 1, 0, stream>>>(
static_cast<const int32_t*>(problem_sizes1.data_ptr()),
static_cast<int32_t*>(expert_offsets.data_ptr()),
static_cast<int32_t*>(atomic_buffer.data_ptr()), num_experts);
compute_arg_sorts<<<num_experts, num_threads, 0, stream>>>(
static_cast<const int32_t*>(topk_ids.data_ptr()),
static_cast<int32_t*>(input_permutation.data_ptr()),
static_cast<int32_t*>(output_permutation.data_ptr()),
static_cast<int32_t*>(atomic_buffer.data_ptr()), topk_ids.numel(),
topk_ids.size(1));
}

View File

@ -29,6 +29,20 @@ void cutlass_scaled_mm_sm90(torch::Tensor& c, torch::Tensor const& a,
torch::Tensor const& a_scales,
torch::Tensor const& b_scales,
std::optional<torch::Tensor> const& bias);
void cutlass_moe_mm_sm90(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides);
void get_cutlass_moe_mm_data_caller(
const torch::Tensor& topk_ids, torch::Tensor& expert_offsets,
torch::Tensor& problem_sizes1, torch::Tensor& problem_sizes2,
torch::Tensor& input_permutation, torch::Tensor& output_permutation,
const int64_t num_experts, const int64_t n, const int64_t k);
#endif
#if defined ENABLE_SCALED_MM_SM100 && ENABLE_SCALED_MM_SM100
@ -102,6 +116,19 @@ bool cutlass_scaled_mm_supports_block_fp8(int64_t cuda_device_capability) {
return false;
}
bool cutlass_group_gemm_supported(int64_t cuda_device_capability) {
// CUTLASS groped FP8 kernels need at least CUDA 12.3
// and SM90 (Hopper)
#if defined CUDA_VERSION
if (cuda_device_capability == 90) {
return CUDA_VERSION >= 12030;
}
#endif
return false;
}
void cutlass_scaled_mm(torch::Tensor& c, torch::Tensor const& a,
torch::Tensor const& b, torch::Tensor const& a_scales,
torch::Tensor const& b_scales,
@ -168,6 +195,46 @@ void cutlass_scaled_mm(torch::Tensor& c, torch::Tensor const& a,
version_num);
}
void cutlass_moe_mm(
torch::Tensor& out_tensors, torch::Tensor const& a_tensors,
torch::Tensor const& b_tensors, torch::Tensor const& a_scales,
torch::Tensor const& b_scales, torch::Tensor const& expert_offsets,
torch::Tensor const& problem_sizes, torch::Tensor const& a_strides,
torch::Tensor const& b_strides, torch::Tensor const& c_strides) {
int32_t version_num = get_sm_version_num();
#if defined ENABLE_CUTLASS_MOE_SM90 && ENABLE_CUTLASS_MOE_SM90
cutlass_moe_mm_sm90(out_tensors, a_tensors, b_tensors, a_scales, b_scales,
expert_offsets, problem_sizes, a_strides, b_strides,
c_strides);
return;
#endif
TORCH_CHECK_NOT_IMPLEMENTED(
false,
"No compiled cutlass_scaled_mm for CUDA device capability: ", version_num,
". Required capability: 90");
}
void get_cutlass_moe_mm_data(
const torch::Tensor& topk_ids, torch::Tensor& expert_offsets,
torch::Tensor& problem_sizes1, torch::Tensor& problem_sizes2,
torch::Tensor& input_permutation, torch::Tensor& output_permutation,
const int64_t num_experts, const int64_t n, const int64_t k) {
// This function currently gets compiled only if we have a valid cutlass moe
// mm to run it for.
int32_t version_num = get_sm_version_num();
#if defined ENABLE_CUTLASS_MOE_SM90 && ENABLE_CUTLASS_MOE_SM90
get_cutlass_moe_mm_data_caller(topk_ids, expert_offsets, problem_sizes1,
problem_sizes2, input_permutation,
output_permutation, num_experts, n, k);
return;
#endif
TORCH_CHECK_NOT_IMPLEMENTED(
false,
"No compiled get_cutlass_moe_mm_data: no cutlass_scaled_mm kernel for "
"CUDA device capability: ",
version_num, ". Required capability: 90");
}
void cutlass_scaled_mm_azp(torch::Tensor& c, torch::Tensor const& a,
torch::Tensor const& b,
torch::Tensor const& a_scales,

View File

@ -30,9 +30,6 @@ __global__ void dynamic_per_token_scaled_fp8_quant_kernel(
fp8_type* __restrict__ out, float* __restrict__ scale,
scalar_t const* __restrict__ input, float const* __restrict__ scale_ub,
const int hidden_size) {
float const min_scaling_factor =
1.0f / (fp8_e4m3_adjusted_max_v<fp8_type> * 512.f);
int const tid = threadIdx.x;
int const token_idx = blockIdx.x;
@ -67,8 +64,8 @@ __global__ void dynamic_per_token_scaled_fp8_quant_kernel(
token_scale = block_absmax_val_maybe;
}
// token scale computation
token_scale = max(token_scale / fp8_e4m3_adjusted_max_v<fp8_type>,
min_scaling_factor);
token_scale = max(token_scale / quant_type_max_v<fp8_type>,
min_scaling_factor<fp8_type>::val());
scale[token_idx] = token_scale;
}
__syncthreads();

View File

@ -1,20 +1,12 @@
#pragma once
#include "quantization/vectorization.cuh"
#include "quantization/utils.cuh"
#include <cmath>
#include <c10/core/ScalarType.h>
#ifndef USE_ROCM
#include <c10/util/Float8_e4m3fn.h>
#define MAYBE_HOST_DEVICE C10_HOST_DEVICE
#else
#include <ATen/hip/HIPContext.h>
#include <c10/util/Float8_e4m3fn.h>
#include <c10/util/Float8_e4m3fnuz.h>
#ifdef USE_ROCM
#include "amd/quant_utils.cuh"
// ROCm doesn't seem to need C10_HOST_DEVICE for static constexpr
#define MAYBE_HOST_DEVICE
#endif
// Determines the preferred FP8 type for the current platform.
@ -31,29 +23,6 @@ static bool is_fp8_ocp() {
#endif
}
template <typename T>
struct fp8_e4m3_adjusted_max;
template <>
struct fp8_e4m3_adjusted_max<c10::Float8_e4m3fn> {
static constexpr c10::Float8_e4m3fn val() {
return std::numeric_limits<c10::Float8_e4m3fn>::max();
}
};
// Using the default max value from pytorch (240.0 0x7F) will cause accuracy
// issues when running dynamic quantization. Here use 224.0 0x7E for rocm.
template <>
struct fp8_e4m3_adjusted_max<c10::Float8_e4m3fnuz> {
static constexpr c10::Float8_e4m3fnuz val() {
return c10::Float8_e4m3fnuz(0x7E, c10::Float8_e4m3fnuz::from_bits());
}
};
template <typename T>
MAYBE_HOST_DEVICE static constexpr T fp8_e4m3_adjusted_max_v =
fp8_e4m3_adjusted_max<T>::val();
namespace vllm {
__device__ __forceinline__ float atomicMaxFloat(float* addr, float value) {
@ -76,8 +45,8 @@ __device__ __forceinline__ fp8_type scaled_fp8_conversion(float const val,
x = val / scale;
}
float r = fmax(-fp8_e4m3_adjusted_max_v<fp8_type>,
fmin(x, fp8_e4m3_adjusted_max_v<fp8_type>));
float r =
fmax(-quant_type_max_v<fp8_type>, fmin(x, quant_type_max_v<fp8_type>));
#ifndef USE_ROCM
return static_cast<fp8_type>(r);
#else
@ -123,7 +92,7 @@ __global__ void segmented_max_reduction(float* __restrict__ scale,
// Finally, since cache[0] contains the maximum for this thread block,
// atomically write the max to the target location
if (threadIdx.x == 0) {
atomicMaxFloat(scale, cache[0] / fp8_e4m3_adjusted_max_v<fp8_type>);
atomicMaxFloat(scale, cache[0] / quant_type_max_v<fp8_type>);
}
}

View File

@ -14,8 +14,7 @@ __device__ void rms_norm_dynamic_per_token_quant_vec(
float* __restrict__ scales, // [num_tokens]
scalar_t const* __restrict__ input, // [..., hidden_size]
scalar_t const* __restrict__ weight, // [hidden_size]
float const* scale_ub, float const var_epsilon,
float const min_scaling_factor, int32_t const hidden_size,
float const* scale_ub, float const var_epsilon, int32_t const hidden_size,
scalar_t* __restrict__ residual = nullptr) {
float rms = 0.0f;
float token_scale = 0.0f;
@ -27,8 +26,8 @@ __device__ void rms_norm_dynamic_per_token_quant_vec(
// Compute scale
vllm::vectorized::compute_dynamic_per_token_scales<scalar_t, scalar_out_t,
has_residual>(
&token_scale, scales, input, weight, rms, scale_ub, min_scaling_factor,
hidden_size, residual);
&token_scale, scales, input, weight, rms, scale_ub, hidden_size,
residual);
// RMS Norm + Quant
if constexpr (std::is_same_v<scalar_out_t, int8_t>) {
@ -50,8 +49,7 @@ __global__ void rms_norm_dynamic_per_token_quant_kernel(
float* __restrict__ scales, // [num_tokens]
scalar_t const* __restrict__ input, // [..., hidden_size]
scalar_t const* __restrict__ weight, // [hidden_size]
float const* scale_ub, float const var_epsilon,
float const min_scaling_factor, int32_t const hidden_size,
float const* scale_ub, float const var_epsilon, int32_t const hidden_size,
scalar_t* __restrict__ residual = nullptr) {
// For vectorization, token_input and token_output pointers need to be
// aligned at 8-byte and 4-byte addresses respectively.
@ -60,8 +58,8 @@ __global__ void rms_norm_dynamic_per_token_quant_kernel(
if (can_vectorize) {
return rms_norm_dynamic_per_token_quant_vec<scalar_t, scalar_out_t,
has_residual>(
out, scales, input, weight, scale_ub, var_epsilon, min_scaling_factor,
hidden_size, residual);
out, scales, input, weight, scale_ub, var_epsilon, hidden_size,
residual);
}
float rms = 0.0f;
@ -72,8 +70,8 @@ __global__ void rms_norm_dynamic_per_token_quant_kernel(
var_epsilon, residual);
// Compute Scale
vllm::compute_dynamic_per_token_scales<scalar_t, scalar_out_t, has_residual>(
&token_scale, scales, input, weight, rms, scale_ub, min_scaling_factor,
hidden_size, residual);
&token_scale, scales, input, weight, rms, scale_ub, hidden_size,
residual);
// RMS Norm + Quant
if constexpr (std::is_same_v<scalar_out_t, int8_t>) {
@ -105,11 +103,6 @@ void rms_norm_dynamic_per_token_quant_dispatch(
const at::cuda::OptionalCUDAGuard device_guard(device_of(input));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
const float min_scaling_factor =
out.dtype() == torch::kInt8
? std::numeric_limits<float>::epsilon()
: 1.0f / (std::numeric_limits<c10::Float8_e4m3fn>::max() * 512.f);
if (residual.has_value()) {
VLLM_DISPATCH_QUANT_TYPES(
out.scalar_type(), "rms_norm_dynamic_per_token_quant_kernel", [&] {
@ -119,8 +112,7 @@ void rms_norm_dynamic_per_token_quant_dispatch(
out.data_ptr<scalar_t>(), scales.data_ptr<float>(),
input.data_ptr<scalar_in_t>(), weight.data_ptr<scalar_in_t>(),
scale_ub.has_value() ? scale_ub->data_ptr<float>() : nullptr,
var_epsilon, min_scaling_factor, hidden_size,
residual->data_ptr<scalar_in_t>());
var_epsilon, hidden_size, residual->data_ptr<scalar_in_t>());
});
} else {
@ -132,7 +124,7 @@ void rms_norm_dynamic_per_token_quant_dispatch(
out.data_ptr<scalar_t>(), scales.data_ptr<float>(),
input.data_ptr<scalar_in_t>(), weight.data_ptr<scalar_in_t>(),
scale_ub.has_value() ? scale_ub->data_ptr<float>() : nullptr,
var_epsilon, min_scaling_factor, hidden_size, nullptr);
var_epsilon, hidden_size, nullptr);
});
}
}

View File

@ -5,6 +5,7 @@
*/
#include "quantization/vectorization.cuh"
#include "quantization/utils.cuh"
#include "quant_conversions.cuh"
#ifndef USE_ROCM
@ -51,11 +52,11 @@ __device__ void compute_dynamic_per_token_scales(
float* __restrict__ token_scale, float* __restrict__ all_token_scales,
scalar_t const* __restrict__ input, scalar_t const* __restrict__ weight,
float const rms, float const* __restrict__ scale_ub,
float const min_scaling_factor, int32_t const hidden_size,
int32_t const hidden_size,
scalar_t const* __restrict__ residual = nullptr) {
int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
;
constexpr scalar_out_t qmax{std::numeric_limits<scalar_out_t>::max()};
constexpr scalar_out_t qmax{quant_type_max_v<scalar_out_t>};
float block_absmax_val_maybe = 0.0f;
for (auto i = threadIdx.x; i < hidden_size; i += blockDim.x) {
@ -83,7 +84,7 @@ __device__ void compute_dynamic_per_token_scales(
scale = block_absmax_val_maybe;
}
// token scale computation
scale = max(scale / qmax, min_scaling_factor);
scale = max(scale / qmax, min_scaling_factor<scalar_out_t>::val());
s_token_scale = scale; // Shared memory store
all_token_scales[blockIdx.x] = scale; // Global output store
}
@ -184,7 +185,7 @@ __device__ void compute_dynamic_per_token_scales(
float* __restrict__ token_scale, float* __restrict__ all_token_scales,
scalar_t const* __restrict__ input, scalar_t const* __restrict__ weight,
float const rms, float const* __restrict__ scale_ub,
float const min_scaling_factor, int32_t const hidden_size,
int32_t const hidden_size,
scalar_t const* __restrict__ residual = nullptr) {
int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
;
@ -200,7 +201,7 @@ __device__ void compute_dynamic_per_token_scales(
reinterpret_cast<vec4_t<scalar_t> const*>(&residual[token_offset]);
}
constexpr scalar_out_t qmax{std::numeric_limits<scalar_out_t>::max()};
constexpr scalar_out_t qmax{quant_type_max_v<scalar_out_t>};
int32_t const num_vec_elems = hidden_size >> 2;
float block_absmax_val_maybe = 0.0f;
@ -248,7 +249,7 @@ __device__ void compute_dynamic_per_token_scales(
scale = block_absmax_val_maybe;
}
// token scale computation
scale = max(scale / qmax, min_scaling_factor);
scale = max(scale / qmax, min_scaling_factor<scalar_out_t>::val());
s_token_scale = scale; // shared memory store
all_token_scales[blockIdx.x] = scale; // global output store
}

View File

@ -33,8 +33,8 @@ static __device__ __forceinline__ int8_t float_to_int8_rn(float const x) {
template <typename fp8_type>
static __device__ __forceinline__ fp8_type float_to_fp8(float const x) {
float const r = fmax(-fp8_e4m3_adjusted_max_v<fp8_type>,
fmin(x, fp8_e4m3_adjusted_max_v<fp8_type>));
float const r =
fmax(-quant_type_max_v<fp8_type>, fmin(x, quant_type_max_v<fp8_type>));
return static_cast<fp8_type>(r);
}

View File

@ -375,25 +375,25 @@ torch::Tensor ggml_moe_a8(torch::Tensor X, // input
int64_t ggml_moe_get_block_size(int64_t type) {
switch (type) {
case 2:
return MMQ_X_Q4_0;
return MOE_X_Q4_0;
case 3:
return MMQ_X_Q4_1;
return MOE_X_Q4_1;
case 6:
return MMQ_X_Q5_0;
return MOE_X_Q5_0;
case 7:
return MMQ_X_Q5_1;
return MOE_X_Q5_1;
case 8:
return MMQ_X_Q8_0;
return MOE_X_Q8_0;
case 10:
return MMQ_X_Q2_K;
return MOE_X_Q2_K;
case 11:
return MMQ_X_Q3_K;
return MOE_X_Q3_K;
case 12:
return MMQ_X_Q4_K;
return MOE_X_Q4_K;
case 13:
return MMQ_X_Q5_K;
return MOE_X_Q5_K;
case 14:
return MMQ_X_Q6_K;
return MOE_X_Q6_K;
}
return 0;
}

View File

@ -129,12 +129,12 @@ static __device__ __forceinline__ void moe_q(
}
#if defined(USE_ROCM)
#define MMQ_X_Q4_0 64
#define MMQ_Y_Q4_0 128
#define MOE_X_Q4_0 64
#define MOE_Y_Q4_0 128
#define NWARPS_Q4_0 8
#else
#define MMQ_X_Q4_0 4
#define MMQ_Y_Q4_0 32
#define MOE_X_Q4_0 4
#define MOE_Y_Q4_0 32
#define NWARPS_Q4_0 4
#endif
@ -149,8 +149,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q4_0, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q4_0;
const int mmq_y = MMQ_Y_Q4_0;
const int mmq_x = MOE_X_Q4_0;
const int mmq_y = MOE_Y_Q4_0;
const int nwarps = NWARPS_Q4_0;
moe_q<scalar_t, QK4_0, QR4_0, QI4_0, true, block_q4_0, mmq_x, mmq_y, nwarps,
@ -167,8 +167,8 @@ static void ggml_moe_q4_0_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
int mmq_x = MMQ_X_Q4_0;
int mmq_y = MMQ_Y_Q4_0;
int mmq_x = MOE_X_Q4_0;
int mmq_y = MOE_Y_Q4_0;
int nwarps = NWARPS_Q4_0;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -190,12 +190,12 @@ static void ggml_moe_q4_0_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q4_1 64
#define MMQ_Y_Q4_1 128
#define MOE_X_Q4_1 64
#define MOE_Y_Q4_1 128
#define NWARPS_Q4_1 8
#else
#define MMQ_X_Q4_1 4
#define MMQ_Y_Q4_1 32
#define MOE_X_Q4_1 4
#define MOE_Y_Q4_1 32
#define NWARPS_Q4_1 4
#endif
@ -210,8 +210,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q4_1, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q4_1;
const int mmq_y = MMQ_Y_Q4_1;
const int mmq_x = MOE_X_Q4_1;
const int mmq_y = MOE_Y_Q4_1;
const int nwarps = NWARPS_Q4_1;
moe_q<scalar_t, QK4_1, QR4_1, QI4_1, true, block_q4_1, mmq_x, mmq_y, nwarps,
@ -228,8 +228,8 @@ static void ggml_moe_q4_1_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
int mmq_x = MMQ_X_Q4_1;
int mmq_y = MMQ_Y_Q4_1;
int mmq_x = MOE_X_Q4_1;
int mmq_y = MOE_Y_Q4_1;
int nwarps = NWARPS_Q4_1;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -251,12 +251,12 @@ static void ggml_moe_q4_1_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q5_0 64
#define MMQ_Y_Q5_0 128
#define MOE_X_Q5_0 64
#define MOE_Y_Q5_0 128
#define NWARPS_Q5_0 8
#else
#define MMQ_X_Q5_0 4
#define MMQ_Y_Q5_0 32
#define MOE_X_Q5_0 4
#define MOE_Y_Q5_0 32
#define NWARPS_Q5_0 4
#endif
@ -271,8 +271,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q5_0, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q5_0;
const int mmq_y = MMQ_Y_Q5_0;
const int mmq_x = MOE_X_Q5_0;
const int mmq_y = MOE_Y_Q5_0;
const int nwarps = NWARPS_Q5_0;
moe_q<scalar_t, QK5_0, QR5_0, QI5_0, false, block_q5_0, mmq_x, mmq_y, nwarps,
@ -289,8 +289,8 @@ static void ggml_moe_q5_0_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q5_0;
const int mmq_y = MMQ_Y_Q5_0;
const int mmq_x = MOE_X_Q5_0;
const int mmq_y = MOE_Y_Q5_0;
const int nwarps = NWARPS_Q5_0;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -312,12 +312,12 @@ static void ggml_moe_q5_0_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q5_1 64
#define MMQ_Y_Q5_1 128
#define MOE_X_Q5_1 64
#define MOE_Y_Q5_1 128
#define NWARPS_Q5_1 8
#else
#define MMQ_X_Q5_1 4
#define MMQ_Y_Q5_1 32
#define MOE_X_Q5_1 4
#define MOE_Y_Q5_1 32
#define NWARPS_Q5_1 4
#endif
@ -332,8 +332,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q5_1, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q5_1;
const int mmq_y = MMQ_Y_Q5_1;
const int mmq_x = MOE_X_Q5_1;
const int mmq_y = MOE_Y_Q5_1;
const int nwarps = NWARPS_Q5_1;
moe_q<scalar_t, QK5_1, QR5_1, QI5_1, true, block_q5_1, mmq_x, mmq_y, nwarps,
@ -350,8 +350,8 @@ static void ggml_moe_q5_1_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q5_1;
const int mmq_y = MMQ_Y_Q5_1;
const int mmq_x = MOE_X_Q5_1;
const int mmq_y = MOE_Y_Q5_1;
const int nwarps = NWARPS_Q5_1;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -373,12 +373,12 @@ static void ggml_moe_q5_1_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q8_0 64
#define MMQ_Y_Q8_0 128
#define MOE_X_Q8_0 64
#define MOE_Y_Q8_0 128
#define NWARPS_Q8_0 8
#else
#define MMQ_X_Q8_0 4
#define MMQ_Y_Q8_0 32
#define MOE_X_Q8_0 4
#define MOE_Y_Q8_0 32
#define NWARPS_Q8_0 4
#endif
@ -393,8 +393,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q8_0, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q8_0;
const int mmq_y = MMQ_Y_Q8_0;
const int mmq_x = MOE_X_Q8_0;
const int mmq_y = MOE_Y_Q8_0;
const int nwarps = NWARPS_Q8_0;
moe_q<scalar_t, QK8_0, QR8_0, QI8_0, false, block_q8_0, mmq_x, mmq_y, nwarps,
@ -411,8 +411,8 @@ static void ggml_moe_q8_0_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q8_0;
const int mmq_y = MMQ_Y_Q8_0;
const int mmq_x = MOE_X_Q8_0;
const int mmq_y = MOE_Y_Q8_0;
const int nwarps = NWARPS_Q8_0;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -434,12 +434,12 @@ static void ggml_moe_q8_0_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q2_K 64
#define MMQ_Y_Q2_K 128
#define MOE_X_Q2_K 64
#define MOE_Y_Q2_K 128
#define NWARPS_Q2_K 8
#else
#define MMQ_X_Q2_K 4
#define MMQ_Y_Q2_K 32
#define MOE_X_Q2_K 4
#define MOE_Y_Q2_K 32
#define NWARPS_Q2_K 4
#endif
@ -454,8 +454,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q2_K, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q2_K;
const int mmq_y = MMQ_Y_Q2_K;
const int mmq_x = MOE_X_Q2_K;
const int mmq_y = MOE_Y_Q2_K;
const int nwarps = NWARPS_Q2_K;
moe_q<scalar_t, QK_K, QR2_K, QI2_K, false, block_q2_K, mmq_x, mmq_y, nwarps,
@ -472,8 +472,8 @@ static void ggml_moe_q2_K_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q2_K;
const int mmq_y = MMQ_Y_Q2_K;
const int mmq_x = MOE_X_Q2_K;
const int mmq_y = MOE_Y_Q2_K;
const int nwarps = NWARPS_Q2_K;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -495,12 +495,12 @@ static void ggml_moe_q2_K_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q3_K 64
#define MMQ_Y_Q3_K 128
#define MOE_X_Q3_K 64
#define MOE_Y_Q3_K 128
#define NWARPS_Q3_K 8
#else
#define MMQ_X_Q3_K 4
#define MMQ_Y_Q3_K 32
#define MOE_X_Q3_K 4
#define MOE_Y_Q3_K 32
#define NWARPS_Q3_K 4
#endif
@ -516,8 +516,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q3_K, 2)
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q3_K;
const int mmq_y = MMQ_Y_Q3_K;
const int mmq_x = MOE_X_Q3_K;
const int mmq_y = MOE_Y_Q3_K;
const int nwarps = NWARPS_Q3_K;
moe_q<scalar_t, QK_K, QR3_K, QI3_K, false, block_q3_K, mmq_x, mmq_y, nwarps,
@ -533,8 +533,8 @@ static void ggml_moe_q3_K_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q3_K;
const int mmq_y = MMQ_Y_Q3_K;
const int mmq_x = MOE_X_Q3_K;
const int mmq_y = MOE_Y_Q3_K;
const int nwarps = NWARPS_Q3_K;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -556,12 +556,12 @@ static void ggml_moe_q3_K_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q4_K 64
#define MMQ_Y_Q4_K 128
#define MOE_X_Q4_K 64
#define MOE_Y_Q4_K 128
#define NWARPS_Q4_K 8
#else
#define MMQ_X_Q4_K 4
#define MMQ_Y_Q4_K 32
#define MOE_X_Q4_K 4
#define MOE_Y_Q4_K 32
#define NWARPS_Q4_K 4
#endif
@ -576,8 +576,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q4_K, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q4_K;
const int mmq_y = MMQ_Y_Q4_K;
const int mmq_x = MOE_X_Q4_K;
const int mmq_y = MOE_Y_Q4_K;
const int nwarps = NWARPS_Q4_K;
moe_q<scalar_t, QK_K, QR4_K, QI4_K, true, block_q4_K, mmq_x, mmq_y, nwarps,
@ -594,8 +594,8 @@ static void ggml_moe_q4_K_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q4_K;
const int mmq_y = MMQ_Y_Q4_K;
const int mmq_x = MOE_X_Q4_K;
const int mmq_y = MOE_Y_Q4_K;
const int nwarps = NWARPS_Q4_K;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -617,12 +617,12 @@ static void ggml_moe_q4_K_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q5_K 64
#define MMQ_Y_Q5_K 128
#define MOE_X_Q5_K 64
#define MOE_Y_Q5_K 128
#define NWARPS_Q5_K 8
#else
#define MMQ_X_Q5_K 4
#define MMQ_Y_Q5_K 32
#define MOE_X_Q5_K 4
#define MOE_Y_Q5_K 32
#define NWARPS_Q5_K 4
#endif
@ -637,8 +637,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q5_K, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q5_K;
const int mmq_y = MMQ_Y_Q5_K;
const int mmq_x = MOE_X_Q5_K;
const int mmq_y = MOE_Y_Q5_K;
const int nwarps = NWARPS_Q5_K;
moe_q<scalar_t, QK_K, QR5_K, QI5_K, true, block_q5_K, mmq_x, mmq_y, nwarps,
@ -655,8 +655,8 @@ static void ggml_moe_q5_K_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q5_K;
const int mmq_y = MMQ_Y_Q5_K;
const int mmq_x = MOE_X_Q5_K;
const int mmq_y = MOE_Y_Q5_K;
const int nwarps = NWARPS_Q5_K;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;
@ -678,12 +678,12 @@ static void ggml_moe_q5_K_q8_1_cuda(
}
#if defined(USE_ROCM)
#define MMQ_X_Q6_K 64
#define MMQ_Y_Q6_K 128
#define MOE_X_Q6_K 64
#define MOE_Y_Q6_K 128
#define NWARPS_Q6_K 8
#else
#define MMQ_X_Q6_K 4
#define MMQ_Y_Q6_K 32
#define MOE_X_Q6_K 4
#define MOE_Y_Q6_K 32
#define NWARPS_Q6_K 4
#endif
@ -698,8 +698,8 @@ __launch_bounds__(WARP_SIZE_GGUF* NWARPS_Q6_K, 2)
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst,
const int top_k) {
const int mmq_x = MMQ_X_Q6_K;
const int mmq_y = MMQ_Y_Q6_K;
const int mmq_x = MOE_X_Q6_K;
const int mmq_y = MOE_Y_Q6_K;
const int nwarps = NWARPS_Q6_K;
moe_q<scalar_t, QK_K, QR6_K, QI6_K, false, block_q6_K, mmq_x, mmq_y, nwarps,
@ -716,8 +716,8 @@ static void ggml_moe_q6_K_q8_1_cuda(
const int exp_stride, const int ncols_x, const int nrows_x,
const int ncols_y, const int nrows_y, const int nrows_dst, const int top_k,
const int tokens_post_padded, cudaStream_t stream) {
const int mmq_x = MMQ_X_Q6_K;
const int mmq_y = MMQ_Y_Q6_K;
const int mmq_x = MOE_X_Q6_K;
const int mmq_y = MOE_Y_Q6_K;
const int nwarps = NWARPS_Q6_K;
const int block_num_x = (nrows_x + mmq_y - 1) / mmq_y;

View File

@ -14,7 +14,7 @@ __global__ void awq_marlin_repack_kernel(
int n_tiles = size_n / tile_n_size;
int block_k_tiles = div_ceil(k_tiles, gridDim.x);
int start_k_tile = blockIdx.x * block_k_tiles;
auto start_k_tile = blockIdx.x * block_k_tiles;
if (start_k_tile >= k_tiles) {
return;
}
@ -51,8 +51,8 @@ __global__ void awq_marlin_repack_kernel(
int4* sh_ptr = sh + stage_size * pipe;
if (threadIdx.x < stage_size) {
int k_id = threadIdx.x / stage_n_threads;
int n_id = threadIdx.x % stage_n_threads;
auto k_id = threadIdx.x / stage_n_threads;
auto n_id = threadIdx.x % stage_n_threads;
int first_k = k_tile_id * tile_k_size;
@ -70,8 +70,8 @@ __global__ void awq_marlin_repack_kernel(
return;
}
int warp_id = threadIdx.x / 32;
int th_id = threadIdx.x % 32;
auto warp_id = threadIdx.x / 32;
auto th_id = threadIdx.x % 32;
if (warp_id >= 4) {
return;
@ -265,4 +265,4 @@ TORCH_LIBRARY_IMPL_EXPAND(TORCH_EXTENSION_NAME, CUDA, m) {
TORCH_LIBRARY_IMPL_EXPAND(TORCH_EXTENSION_NAME, Meta, m) {
m.impl("awq_marlin_repack", &awq_marlin_repack_meta);
}
}

View File

@ -460,7 +460,7 @@ __global__ void permute_cols_kernel(int4 const* __restrict__ a_int4_ptr,
int const* __restrict__ perm_int_ptr,
int4* __restrict__ out_int4_ptr, int size_m,
int size_k, int lda, int block_rows) {
int start_row = block_rows * blockIdx.x;
auto start_row = block_rows * blockIdx.x;
int finish_row = start_row + block_rows;
if (finish_row > size_m) {
finish_row = size_m;
@ -484,7 +484,7 @@ __global__ void permute_cols_kernel(int4 const* __restrict__ a_int4_ptr,
int base_k = 0;
for (int i = 0; i < iters; i++) {
int cur_k = base_k + threadIdx.x;
auto cur_k = base_k + threadIdx.x;
int src_pos = perm_int_ptr[cur_k];
out_half[cur_k] = a_row_half[src_pos];
@ -494,7 +494,7 @@ __global__ void permute_cols_kernel(int4 const* __restrict__ a_int4_ptr,
if (rest) {
if (threadIdx.x < rest) {
int cur_k = base_k + threadIdx.x;
auto cur_k = base_k + threadIdx.x;
int src_pos = perm_int_ptr[cur_k];
out_half[cur_k] = a_row_half[src_pos];
@ -723,8 +723,8 @@ __global__ void Marlin(
(threadIdx.x % b_sh_stride_threads) * b_thread_vecs;
b_gl_rd += b_sh_stride * slice_col;
b_gl_rd += b_gl_rd_delta_o * slice_row;
int b_sh_wr = threadIdx.x * b_thread_vecs;
int b_sh_rd = threadIdx.x * b_thread_vecs;
auto b_sh_wr = threadIdx.x * b_thread_vecs;
auto b_sh_rd = threadIdx.x * b_thread_vecs;
// For act_order
constexpr int k_iter_size = tb_k / b_sh_wr_iters;
@ -743,7 +743,7 @@ __global__ void Marlin(
s_sh_stride * slice_col + threadIdx.x;
}
}
int s_sh_wr = threadIdx.x;
auto s_sh_wr = threadIdx.x;
bool s_sh_wr_pred = threadIdx.x < s_sh_stride;
// Zero-points
@ -756,7 +756,7 @@ __global__ void Marlin(
zp_sh_stride * slice_col + threadIdx.x;
}
}
int zp_sh_wr = threadIdx.x;
auto zp_sh_wr = threadIdx.x;
bool zp_sh_wr_pred = threadIdx.x < zp_sh_stride;
// We use a different scale layout for grouped and column-wise quantization as
@ -1047,7 +1047,7 @@ __global__ void Marlin(
int4* sh_s_stage = sh_s + s_sh_stage * pipe;
reinterpret_cast<int4*>(&frag_s[k % 2])[0] = sh_s_stage[s_sh_rd];
} else {
int warp_id = threadIdx.x / 32;
auto warp_id = threadIdx.x / 32;
int n_warps = thread_n_blocks / 4;
int warp_row = warp_id / n_warps;
@ -1085,7 +1085,7 @@ __global__ void Marlin(
// Determine "position" inside the thread-block (based on warp and
// thread-id)
int warp_id = threadIdx.x / 32;
auto warp_id = threadIdx.x / 32;
int n_warps =
thread_n_blocks / 4; // Each warp processes 4 16-size tiles over N
@ -1094,7 +1094,7 @@ __global__ void Marlin(
cur_k += warp_row * 16;
int th_id = threadIdx.x % 32;
auto th_id = threadIdx.x % 32;
cur_k += (th_id % 4) * 2; // Due to tensor-core layout for fp16 B matrix
int s_col_shift =
@ -1159,7 +1159,7 @@ __global__ void Marlin(
(reinterpret_cast<int*>(sh_zp_stage))[zp_sh_rd + i];
}
} else {
int warp_id = threadIdx.x / 32;
auto warp_id = threadIdx.x / 32;
int n_warps = thread_n_blocks / 4;
int warp_row = warp_id / n_warps;
@ -1197,7 +1197,7 @@ __global__ void Marlin(
(pipe / (group_blocks / thread_k_blocks)));
reinterpret_cast<int4*>(&frag_zpf[k % 2])[0] = sh_zp_stage[zp_sh_rd];
} else {
int warp_id = threadIdx.x / 32;
auto warp_id = threadIdx.x / 32;
int n_warps = thread_n_blocks / 4;
int warp_row = warp_id / n_warps;
@ -1323,7 +1323,7 @@ __global__ void Marlin(
auto thread_block_reduce = [&]() {
constexpr int red_off = threads / b_sh_stride_threads / 2;
if (red_off >= 1) {
int red_idx = threadIdx.x / b_sh_stride_threads;
auto red_idx = threadIdx.x / b_sh_stride_threads;
constexpr int red_sh_stride = b_sh_stride_threads * 4 * 2;
constexpr int red_sh_delta = b_sh_stride_threads;
int red_sh_rd = red_sh_stride * (threadIdx.x / b_sh_stride_threads) +
@ -1390,7 +1390,7 @@ __global__ void Marlin(
4 * (threadIdx.x / 32) + threadIdx.x % 4;
c_gl_wr += (2 * thread_n_blocks) * slice_col;
constexpr int c_sh_wr_delta = active_threads;
int c_sh_wr = threadIdx.x;
auto c_sh_wr = threadIdx.x;
int row = (threadIdx.x % 32) / 4;

View File

@ -15,7 +15,7 @@ __global__ void gptq_marlin_repack_kernel(
int n_tiles = size_n / tile_n_size;
int block_k_tiles = div_ceil(k_tiles, gridDim.x);
int start_k_tile = blockIdx.x * block_k_tiles;
auto start_k_tile = blockIdx.x * block_k_tiles;
if (start_k_tile >= k_tiles) {
return;
}
@ -71,8 +71,8 @@ __global__ void gptq_marlin_repack_kernel(
if constexpr (has_perm) {
if (threadIdx.x < stage_size) {
int k_id = threadIdx.x / stage_n_threads;
int n_id = threadIdx.x % stage_n_threads;
auto k_id = threadIdx.x / stage_n_threads;
auto n_id = threadIdx.x % stage_n_threads;
uint32_t const* sh_perm_int_ptr =
reinterpret_cast<uint32_t const*>(sh_perm_ptr);
@ -88,8 +88,8 @@ __global__ void gptq_marlin_repack_kernel(
} else {
if (threadIdx.x < stage_size) {
int k_id = threadIdx.x / stage_n_threads;
int n_id = threadIdx.x % stage_n_threads;
auto k_id = threadIdx.x / stage_n_threads;
auto n_id = threadIdx.x % stage_n_threads;
int first_k = k_tile_id * tile_k_size;
int first_k_packed = first_k / pack_factor;
@ -109,8 +109,8 @@ __global__ void gptq_marlin_repack_kernel(
return;
}
int warp_id = threadIdx.x / 32;
int th_id = threadIdx.x % 32;
auto warp_id = threadIdx.x / 32;
auto th_id = threadIdx.x % 32;
if (warp_id >= 4) {
return;
@ -339,4 +339,4 @@ TORCH_LIBRARY_IMPL_EXPAND(TORCH_EXTENSION_NAME, CUDA, m) {
TORCH_LIBRARY_IMPL_EXPAND(TORCH_EXTENSION_NAME, Meta, m) {
m.impl("gptq_marlin_repack", &gptq_marlin_repack_meta);
}
}

View File

@ -277,12 +277,12 @@ __global__ void Marlin(
b_gl_stride * (threadIdx.x / b_sh_stride) + (threadIdx.x % b_sh_stride);
b_gl_rd += b_sh_stride * slice_col;
b_gl_rd += b_gl_rd_delta_o * slice_row;
int b_sh_wr = threadIdx.x;
int b_sh_rd = threadIdx.x;
auto b_sh_wr = threadIdx.x;
auto b_sh_rd = threadIdx.x;
int s_gl_rd = s_gl_stride * ((thread_k_blocks * slice_row) / group_blocks) +
s_sh_stride * slice_col + threadIdx.x;
int s_sh_wr = threadIdx.x;
auto s_sh_wr = threadIdx.x;
int s_sh_rd;
// We use a different scale layout for grouped and column-wise quantization as
// we scale a `half2` tile in column-major layout in the former and in
@ -455,7 +455,7 @@ __global__ void Marlin(
auto thread_block_reduce = [&]() {
constexpr int red_off = threads / b_sh_stride / 2;
if (red_off >= 1) {
int red_idx = threadIdx.x / b_sh_stride;
auto red_idx = threadIdx.x / b_sh_stride;
constexpr int red_sh_stride = b_sh_stride * 4 * 2;
constexpr int red_sh_delta = b_sh_stride;
int red_sh_rd = red_sh_stride * (threadIdx.x / b_sh_stride) +
@ -522,7 +522,7 @@ __global__ void Marlin(
4 * (threadIdx.x / 32) + threadIdx.x % 4;
c_gl_wr += (2 * thread_n_blocks) * slice_col;
constexpr int c_sh_wr_delta = active_threads;
int c_sh_wr = threadIdx.x;
auto c_sh_wr = threadIdx.x;
int row = (threadIdx.x % 32) / 4;

View File

@ -353,10 +353,10 @@ __global__ void Marlin(
b_gl_stride * (threadIdx.x / b_sh_stride) + (threadIdx.x % b_sh_stride);
b_gl_rd += b_sh_stride * slice_col;
b_gl_rd += b_gl_rd_delta_o * slice_row;
int b_sh_wr = threadIdx.x;
int b_sh_rd = threadIdx.x;
auto b_sh_wr = threadIdx.x;
auto b_sh_rd = threadIdx.x;
int s_tok_gl_rd = threadIdx.x;
auto s_tok_gl_rd = threadIdx.x;
// NOTE(HandH1998): activation scale s_tok need shuffle to [0, 8, 1, 9, 2, 10,
// 3, 11, 4, 12, 5, 13, 6, 14, 7, 15] for example, 0, 8 row scales serve for
// thread 0, 1, 2, 3. For more details, refer to mma operand A layout as
@ -368,8 +368,8 @@ __global__ void Marlin(
int s_tok_sh_rd = (threadIdx.x % 32) / 4;
bool s_tok_sh_wr_pred = threadIdx.x < prob_m;
int s_ch_gl_rd = s_ch_sh_stride * slice_col + threadIdx.x;
int s_ch_sh_wr = threadIdx.x;
auto s_ch_gl_rd = s_ch_sh_stride * slice_col + threadIdx.x;
auto s_ch_sh_wr = threadIdx.x;
int s_ch_sh_rd = 16 * ((threadIdx.x / 32) % (thread_n_blocks / 4)) +
2 * ((threadIdx.x % 32) % 4);
bool s_ch_sh_wr_pred = threadIdx.x < s_ch_sh_stride;
@ -558,7 +558,7 @@ __global__ void Marlin(
auto thread_block_reduce = [&]() {
constexpr int red_off = threads / b_sh_stride / 2;
if (red_off >= 1) {
int red_idx = threadIdx.x / b_sh_stride;
auto red_idx = threadIdx.x / b_sh_stride;
constexpr int red_sh_stride = b_sh_stride * 4 * 2;
constexpr int red_sh_delta = b_sh_stride;
int red_sh_rd = red_sh_stride * (threadIdx.x / b_sh_stride) +
@ -628,7 +628,7 @@ __global__ void Marlin(
8 * (threadIdx.x / 32) + (threadIdx.x % 4) * 2;
c_gl_wr += (4 * thread_n_blocks) * slice_col;
constexpr int c_sh_wr_delta = active_threads * 2;
int c_sh_wr = 2 * threadIdx.x;
auto c_sh_wr = 2 * threadIdx.x;
int row = (threadIdx.x % 32) / 4;

View File

@ -273,15 +273,15 @@ __global__ void Marlin_24(
(threadIdx.x % b_sh_stride_threads) * b_thread_vecs;
b_gl_rd += b_sh_stride * slice_col;
b_gl_rd += b_gl_rd_delta_o * slice_row;
int b_sh_wr = threadIdx.x * b_thread_vecs;
int b_sh_rd = threadIdx.x * b_thread_vecs;
auto b_sh_wr = threadIdx.x * b_thread_vecs;
auto b_sh_rd = threadIdx.x * b_thread_vecs;
int m_gl_rd = m_gl_stride * (threadIdx.x / (m_sh_stride)) +
(threadIdx.x % (m_sh_stride));
m_gl_rd += (m_sh_stride)*slice_col;
m_gl_rd += m_gl_rd_delta_o * slice_row;
int m_sh_wr = threadIdx.x;
int m_sh_rd = threadIdx.x % 16 + (threadIdx.x / 32) * 16;
auto m_sh_wr = threadIdx.x;
auto m_sh_rd = threadIdx.x % 16 + (threadIdx.x / 32) * 16;
int s_gl_rd;
if constexpr (group_blocks == -1) {
@ -291,7 +291,7 @@ __global__ void Marlin_24(
s_sh_stride * slice_col + threadIdx.x;
}
int s_sh_wr = threadIdx.x;
auto s_sh_wr = threadIdx.x;
int s_sh_rd;
// We use a different scale layout for grouped and column-wise quantization as
// we scale a `half2` tile in column-major layout in the former and in
@ -516,7 +516,7 @@ __global__ void Marlin_24(
auto thread_block_reduce = [&]() {
constexpr int red_off = threads / b_sh_stride_threads / 2;
if (red_off >= 1) {
int red_idx = threadIdx.x / b_sh_stride_threads;
auto red_idx = threadIdx.x / b_sh_stride_threads;
constexpr int red_sh_stride = b_sh_stride_threads * 4 * 2;
constexpr int red_sh_delta = b_sh_stride_threads;
int red_sh_rd = red_sh_stride * (threadIdx.x / b_sh_stride_threads) +
@ -583,7 +583,7 @@ __global__ void Marlin_24(
8 * (threadIdx.x / 32) + (threadIdx.x % 32) / 4;
c_gl_wr += (2 * thread_n_blocks) * slice_col;
constexpr int c_sh_wr_delta = active_threads;
int c_sh_wr = threadIdx.x;
auto c_sh_wr = threadIdx.x;
int col = 2 * ((threadIdx.x % 32) % 4);

View File

@ -0,0 +1,59 @@
#pragma once
/**
* Quantization utilities including:
* Adjusted maximum values for qtypes.
* Minimum scaling factors for qtypes.
*/
#include <cmath>
#include <torch/types.h>
#ifndef USE_ROCM
#include <c10/util/Float8_e4m3fn.h>
#define MAYBE_HOST_DEVICE C10_HOST_DEVICE
#else
#include <ATen/hip/HIPContext.h>
#include <c10/util/Float8_e4m3fn.h>
#include <c10/util/Float8_e4m3fnuz.h>
// ROCm doesn't seem to need C10_HOST_DEVICE for static constexpr
#define MAYBE_HOST_DEVICE
#endif
template <typename T,
typename = std::enable_if_t<std::is_same_v<T, c10::Float8_e4m3fn> ||
std::is_same_v<T, c10::Float8_e4m3fnuz> ||
std::is_same_v<T, int8_t>>>
struct quant_type_max {
static constexpr T val() { return std::numeric_limits<T>::max(); }
};
// Using the default max value from pytorch (240.0 0x7F) will cause accuracy
// issues when running dynamic quantization. Here use 224.0 0x7E for rocm.
template <>
struct quant_type_max<c10::Float8_e4m3fnuz> {
static constexpr c10::Float8_e4m3fnuz val() {
return c10::Float8_e4m3fnuz(0x7E, c10::Float8_e4m3fnuz::from_bits());
}
};
template <typename T>
MAYBE_HOST_DEVICE static constexpr T quant_type_max_v =
quant_type_max<T>::val();
template <typename T,
typename = std::enable_if_t<std::is_same_v<T, c10::Float8_e4m3fn> ||
std::is_same_v<T, c10::Float8_e4m3fnuz> ||
std::is_same_v<T, int8_t>>>
struct min_scaling_factor {
C10_DEVICE C10_ALWAYS_INLINE static float val() {
return 1.0f / (quant_type_max_v<T> * 512.0f);
}
};
template <>
struct min_scaling_factor<int8_t> {
C10_DEVICE C10_ALWAYS_INLINE static float val() {
return std::numeric_limits<float>::epsilon();
}
};

View File

@ -284,18 +284,18 @@ __launch_bounds__(NUM_THREADS, 5) void paged_attention_ll4mi_QKV_mfma16_kernel(
int max_ctx_blocks, const float* k_scale, const float* v_scale) {
// clang-format on
constexpr int NWARPS = NUM_THREADS / WARP_SIZE;
const int warpid = threadIdx.x / WARP_SIZE;
const int laneid = threadIdx.x % WARP_SIZE;
const auto warpid = threadIdx.x / WARP_SIZE;
const auto laneid = threadIdx.x % WARP_SIZE;
const int lane4id = laneid % 4;
const int lane16id = laneid % 16;
const int rowid = laneid / 16;
const int seq_idx = blockIdx.x;
const int partition_idx = blockIdx.y;
const auto seq_idx = blockIdx.x;
const auto partition_idx = blockIdx.y;
constexpr int T_PAR_SIZE = 256; // token partition size set to 256
const int max_num_partitions = gridDim.y;
const auto max_num_partitions = gridDim.y;
const int context_len = context_lens[seq_idx];
@ -346,9 +346,9 @@ __launch_bounds__(NUM_THREADS, 5) void paged_attention_ll4mi_QKV_mfma16_kernel(
// can be interpreted as B8x16 for 8 bit types
_B16x8 Klocal[TLOOP][QKHELOOP];
const int wg_start_head_idx = blockIdx.z * GQA_RATIO;
const int wg_start_kv_head_idx = blockIdx.z;
const int total_num_heads = gridDim.z * GQA_RATIO;
const auto wg_start_head_idx = blockIdx.z * GQA_RATIO;
const auto wg_start_kv_head_idx = blockIdx.z;
const auto total_num_heads = gridDim.z * GQA_RATIO;
// for QK mfma, tokens in multiples of TOKENS_PER_WARP are spread across warps
// each mfma takes QH16xT16x16HE across warp
@ -789,14 +789,14 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_QKV_mfma4_kernel(
int max_ctx_blocks, const float* k_scale, const float* v_scale) {
// clang-format on
constexpr int NWARPS = NUM_THREADS / WARP_SIZE;
const int warpid = threadIdx.x / WARP_SIZE;
const int laneid = threadIdx.x % WARP_SIZE;
const auto warpid = threadIdx.x / WARP_SIZE;
const auto laneid = threadIdx.x % WARP_SIZE;
const int lane4id = laneid % 4;
const int seq_idx = blockIdx.x;
const int partition_idx = blockIdx.y;
const int partition_size = blockDim.x;
const int max_num_partitions = gridDim.y;
const auto seq_idx = blockIdx.x;
const auto partition_idx = blockIdx.y;
const auto partition_size = blockDim.x;
const auto max_num_partitions = gridDim.y;
const int context_len = context_lens[seq_idx];
const int partition_start_token_idx = partition_idx * partition_size;
@ -838,8 +838,8 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_QKV_mfma4_kernel(
qk_max[h] = -FLT_MAX;
}
const int wg_start_head_idx = blockIdx.z * GQA_RATIO;
const int wg_start_kv_head_idx = blockIdx.z;
const auto wg_start_head_idx = blockIdx.z * GQA_RATIO;
const auto wg_start_kv_head_idx = blockIdx.z;
const int warp_start_token_idx =
partition_start_token_idx + warpid * WARP_SIZE;
@ -857,7 +857,7 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_QKV_mfma4_kernel(
const int* block_table = block_tables + seq_idx * max_num_blocks_per_seq;
// token id within partition
const int local_token_idx = threadIdx.x;
const auto local_token_idx = threadIdx.x;
// token id within sequence
const int global_token_idx = partition_start_token_idx + local_token_idx;
@ -1126,7 +1126,7 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_QKV_mfma4_kernel(
__syncthreads();
const int num_heads = gridDim.z * GQA_RATIO;
const auto num_heads = gridDim.z * GQA_RATIO;
float* max_logits_ptr =
max_logits + seq_idx * num_heads * max_num_partitions + partition_idx;
float* exp_sums_ptr =
@ -1268,14 +1268,14 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_reduce_kernel(
// max_num_partitions, head_size]
const int* __restrict__ context_lens, // [num_seqs]
const int max_num_partitions) {
const int num_heads = gridDim.x;
const int head_idx = blockIdx.x;
const int seq_idx = blockIdx.y;
const auto num_heads = gridDim.x;
const auto head_idx = blockIdx.x;
const auto seq_idx = blockIdx.y;
const int context_len = context_lens[seq_idx];
const int num_partitions = DIVIDE_ROUND_UP(context_len, PARTITION_SIZE);
[[maybe_unused]] constexpr int NUM_WARPS = NUM_THREADS / WARP_SIZE;
const int warpid = threadIdx.x / WARP_SIZE;
[[maybe_unused]] const int laneid = threadIdx.x % WARP_SIZE;
const auto warpid = threadIdx.x / WARP_SIZE;
[[maybe_unused]] const auto laneid = threadIdx.x % WARP_SIZE;
__shared__ float shared_global_exp_sum;
// max num partitions supported is warp_size * NPAR_LOOPS
@ -1294,7 +1294,7 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_reduce_kernel(
#pragma unroll
for (int i = 0; i < NPAR_LOOPS; i++) {
const int partition_no = i * WARP_SIZE + threadIdx.x;
const auto partition_no = i * WARP_SIZE + threadIdx.x;
valid_partition[i] =
(partition_no < num_partitions) ? partition_no : last_valid_partition;
}
@ -1324,7 +1324,7 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_reduce_kernel(
}
#pragma unroll
for (int i = 0; i < NPAR_LOOPS; i++) {
const int partition_no = i * WARP_SIZE + threadIdx.x;
const auto partition_no = i * WARP_SIZE + threadIdx.x;
rescaled_exp_sum[i] *= (partition_no < num_partitions)
? expf(reg_max_logit[i] - max_logit)
: 0.0f;
@ -1336,7 +1336,7 @@ __launch_bounds__(NUM_THREADS) void paged_attention_ll4mi_reduce_kernel(
}
#pragma unroll
for (int i = 0; i < NPAR_LOOPS; i++) {
const int partition_no = i * WARP_SIZE + threadIdx.x;
const auto partition_no = i * WARP_SIZE + threadIdx.x;
shared_exp_sums[partition_no] = rescaled_exp_sum[i];
}

View File

@ -31,6 +31,10 @@ TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, ops) {
ops.def("weak_ref_tensor(Tensor input) -> Tensor");
ops.impl("weak_ref_tensor", torch::kCUDA, &weak_ref_tensor);
ops.def("get_cuda_view_from_cpu_tensor(Tensor cpu_tensor) -> Tensor");
ops.impl("get_cuda_view_from_cpu_tensor", torch::kCPU,
&get_cuda_view_from_cpu_tensor);
// Attention ops
// Compute the attention between an input query and the cached
// keys/values using PagedAttention.
@ -365,6 +369,35 @@ TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, ops) {
ops.def("cutlass_scaled_mm_supports_fp8(int cuda_device_capability) -> bool");
ops.impl("cutlass_scaled_mm_supports_fp8", &cutlass_scaled_mm_supports_fp8);
// Check if cutlass grouped gemm is supported for CUDA devices of the given
// capability
ops.def("cutlass_group_gemm_supported(int cuda_device_capability) -> bool");
ops.impl("cutlass_group_gemm_supported", &cutlass_group_gemm_supported);
// CUTLASS w8a8 grouped GEMM
ops.def(
"cutlass_moe_mm(Tensor! out_tensors, Tensor a_tensors, Tensor b_tensors, "
" Tensor a_scales, Tensor b_scales, Tensor expert_offsets, "
" Tensor problem_sizes, Tensor a_strides, "
" Tensor b_strides, Tensor c_strides) -> ()",
{stride_tag});
ops.impl("cutlass_moe_mm", torch::kCUDA, &cutlass_moe_mm);
// A function that computes data required to run fused MoE with w8a8 grouped
// GEMM. It takes topk_ids as an input, and computes expert_offsets
// (token start indices of each expert). In addition to this, it computes
// problem sizes for each expert's multiplication used by the two mms called
// from fused MoE operation, and arrays with permutations required to shuffle
// and de-shuffle the input/output of the fused operation.
ops.def(
"get_cutlass_moe_mm_data(Tensor topk_ids, Tensor! expert_offsets, "
" Tensor! problem_sizes1, Tensor! problem_sizes2, "
" Tensor! input_permutation, "
" Tensor! output_permutation, int num_experts, "
" int n, int k) -> ()",
{stride_tag});
ops.impl("get_cutlass_moe_mm_data", torch::kCUDA, &get_cutlass_moe_mm_data);
// Check if cutlass scaled_mm supports block quantization (used by DeepSeekV3)
ops.def(
"cutlass_scaled_mm_supports_block_fp8(int cuda_device_capability) -> "
@ -581,12 +614,11 @@ TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _cuda_utils), cuda_utils) {
&get_max_shared_memory_per_block_device_attribute);
}
#ifndef USE_ROCM
TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _custom_ar), custom_ar) {
// Custom all-reduce kernels
custom_ar.def(
"init_custom_ar(int[] ipc_tensors, Tensor rank_data, "
"int rank, bool full_nvlink) -> int");
"int rank, bool fully_connected) -> int");
custom_ar.impl("init_custom_ar", torch::kCUDA, &init_custom_ar);
custom_ar.def(
"all_reduce(int fa, Tensor inp, Tensor! out, int reg_buffer, "
@ -599,7 +631,13 @@ TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _custom_ar), custom_ar) {
custom_ar.def("register_buffer", &register_buffer);
custom_ar.def("get_graph_buffer_ipc_meta", &get_graph_buffer_ipc_meta);
custom_ar.def("register_graph_buffers", &register_graph_buffers);
custom_ar.def("allocate_shared_buffer_and_handle",
&allocate_shared_buffer_and_handle);
custom_ar.def("open_mem_handle(Tensor mem_handle) -> int", &open_mem_handle);
custom_ar.impl("open_mem_handle", torch::kCPU, &open_mem_handle);
custom_ar.def("free_shared_buffer", &free_shared_buffer);
}
#endif
REGISTER_EXTENSION(TORCH_EXTENSION_NAME)

138
docker/Dockerfile.cpu Normal file
View File

@ -0,0 +1,138 @@
# This vLLM Dockerfile is used to construct image that can build and run vLLM on x86 CPU platform.
#
# Build targets:
# vllm-openai (default): used for serving deployment
# vllm-test: used for CI tests
# vllm-dev: used for development
#
# Build arguments:
# PYTHON_VERSION=3.12 (default)|3.11|3.10|3.9
# VLLM_CPU_DISABLE_AVX512=false (default)|true
#
######################### BASE IMAGE #########################
FROM ubuntu:22.04 AS base
WORKDIR /workspace/
ARG PYTHON_VERSION=3.12
ARG PIP_EXTRA_INDEX_URL="https://download.pytorch.org/whl/cpu"
# Install minimal dependencies and uv
RUN --mount=type=cache,target=/var/cache/apt,sharing=locked \
--mount=type=cache,target=/var/lib/apt,sharing=locked \
apt-get update -y \
&& apt-get install -y --no-install-recommends ccache git curl wget ca-certificates \
gcc-12 g++-12 libtcmalloc-minimal4 libnuma-dev ffmpeg libsm6 libxext6 libgl1 \
&& update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /usr/bin/g++ g++ /usr/bin/g++-12 \
&& curl -LsSf https://astral.sh/uv/install.sh | sh
ENV CCACHE_DIR=/root/.cache/ccache
ENV CMAKE_CXX_COMPILER_LAUNCHER=ccache
ENV PATH="/root/.local/bin:$PATH"
ENV VIRTUAL_ENV="/opt/venv"
RUN uv venv --python ${PYTHON_VERSION} --seed ${VIRTUAL_ENV}
ENV PATH="$VIRTUAL_ENV/bin:$PATH"
ENV UV_HTTP_TIMEOUT=500
# Install Python dependencies
ENV PIP_EXTRA_INDEX_URL=${PIP_EXTRA_INDEX_URL}
ENV UV_EXTRA_INDEX_URL=${PIP_EXTRA_INDEX_URL}
ENV UV_INDEX_STRATEGY="unsafe-best-match"
ENV UV_LINK_MODE="copy"
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,src=requirements/common.txt,target=requirements/common.txt \
--mount=type=bind,src=requirements/cpu.txt,target=requirements/cpu.txt \
uv pip install --upgrade pip && \
uv pip install -r requirements/cpu.txt
RUN --mount=type=cache,target=/root/.cache/uv \
uv pip install intel-openmp==2024.2.1 intel_extension_for_pytorch==2.6.0
ENV LD_PRELOAD="/usr/lib/x86_64-linux-gnu/libtcmalloc_minimal.so.4:/opt/venv/lib/libiomp5.so:$LD_PRELOAD"
RUN echo 'ulimit -c 0' >> ~/.bashrc
######################### BUILD IMAGE #########################
FROM base AS vllm-build
ARG GIT_REPO_CHECK=0
# Support for building with non-AVX512 vLLM: docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" ...
ARG VLLM_CPU_DISABLE_AVX512
ENV VLLM_CPU_DISABLE_AVX512=${VLLM_CPU_DISABLE_AVX512}
WORKDIR /workspace/vllm
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,src=requirements/build.txt,target=requirements/build.txt \
uv pip install -r requirements/build.txt
COPY . .
RUN --mount=type=bind,source=.git,target=.git \
if [ "$GIT_REPO_CHECK" != 0 ]; then bash tools/check_repo.sh ; fi
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=cache,target=/root/.cache/ccache \
--mount=type=bind,source=.git,target=.git \
VLLM_TARGET_DEVICE=cpu python3 setup.py bdist_wheel
######################### DEV IMAGE #########################
FROM vllm-build AS vllm-dev
WORKDIR /workspace/vllm
RUN --mount=type=cache,target=/var/cache/apt,sharing=locked \
--mount=type=cache,target=/var/lib/apt,sharing=locked \
apt-get install -y --no-install-recommends vim numactl
# install development dependencies (for testing)
RUN --mount=type=cache,target=/root/.cache/uv \
uv pip install -e tests/vllm_test_utils
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=cache,target=/root/.cache/ccache \
--mount=type=bind,source=.git,target=.git \
VLLM_TARGET_DEVICE=cpu python3 setup.py develop
RUN --mount=type=cache,target=/root/.cache/uv \
uv pip install -r requirements/dev.txt && \
pre-commit install --hook-type pre-commit --hook-type commit-msg
ENTRYPOINT ["bash"]
######################### TEST IMAGE #########################
FROM base AS vllm-test
WORKDIR /workspace/
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,src=requirements/test.txt,target=requirements/test.txt \
uv pip install -r requirements/test.txt
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,from=vllm-build,src=/workspace/vllm/dist,target=dist \
uv pip install dist/*.whl
ADD ./tests/ ./tests/
ADD ./examples/ ./examples/
ADD ./benchmarks/ ./benchmarks/
# install development dependencies (for testing)
RUN --mount=type=cache,target=/root/.cache/uv \
uv pip install -e tests/vllm_test_utils
ENTRYPOINT ["bash"]
######################### RELEASE IMAGE #########################
FROM base AS vllm-openai
WORKDIR /workspace/
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=cache,target=/root/.cache/ccache \
--mount=type=bind,from=vllm-build,src=/workspace/vllm/dist,target=dist \
uv pip install dist/*.whl
ENTRYPOINT ["python3", "-m", "vllm.entrypoints.openai.api_server"]

267
docker/Dockerfile.ppc64le Normal file
View File

@ -0,0 +1,267 @@
ARG BASE_UBI_IMAGE_TAG=9.5-1741850109
###############################################################
# base stage with basic dependencies
###############################################################
FROM registry.access.redhat.com/ubi9/ubi-minimal:${BASE_UBI_IMAGE_TAG} AS base-builder
ARG PYTHON_VERSION=3.12
ARG OPENBLAS_VERSION=0.3.29
# Set Environment Variables for venv, cargo & openblas
ENV VIRTUAL_ENV=/opt/vllm
ENV PATH=${VIRTUAL_ENV}/bin:/root/.cargo/bin:$PATH
ENV PKG_CONFIG_PATH=/usr/local/lib/pkgconfig/
ENV LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/usr/local/lib64:/usr/local/lib:/usr/lib64:/usr/lib
ENV UV_LINK_MODE=copy
# install gcc-13, python, rust, openblas
# Note: A symlink for libatomic.so is created for gcc-13 (linker fails to find libatomic otherwise - reqd. for sentencepiece)
# Note: A dummy file 'control' is created in /tmp/ to artificially create dependencies between stages when building stages in parallel
# when `--jobs=<N>` is passed with podman build command
RUN microdnf install -y openssl-devel dnf \
&& dnf install -y https://mirror.stream.centos.org/9-stream/BaseOS/`arch`/os/Packages/centos-gpg-keys-9.0-24.el9.noarch.rpm \
https://mirror.stream.centos.org/9-stream/BaseOS/`arch`/os/Packages/centos-stream-repos-9.0-24.el9.noarch.rpm \
https://dl.fedoraproject.org/pub/epel/epel-release-latest-9.noarch.rpm \
&& dnf config-manager --add-repo https://mirror.stream.centos.org/9-stream/BaseOS/`arch`/os \
&& dnf config-manager --add-repo https://mirror.stream.centos.org/9-stream/AppStream/`arch`/os \
&& dnf config-manager --set-enabled crb \
&& dnf install -y \
git tar gcc-toolset-13 automake libtool numactl-devel lapack-devel \
pkgconfig xsimd zeromq-devel kmod findutils protobuf* \
libtiff-devel libjpeg-devel openjpeg2-devel zlib-devel \
freetype-devel lcms2-devel libwebp-devel tcl-devel tk-devel \
harfbuzz-devel fribidi-devel libraqm-devel libimagequant-devel libxcb-devel \
python${PYTHON_VERSION}-devel python${PYTHON_VERSION}-pip \
&& dnf clean all \
&& ln -sf /usr/lib64/libatomic.so.1 /usr/lib64/libatomic.so \
&& python${PYTHON_VERSION} -m venv ${VIRTUAL_ENV} \
&& python -m pip install -U pip uv \
&& uv pip install wheel build "setuptools<70" setuptools_scm setuptools_rust meson-python cmake ninja cython scikit_build_core scikit_build \
&& curl -sL https://ftp2.osuosl.org/pub/ppc64el/openblas/latest/Openblas_${OPENBLAS_VERSION}_ppc64le.tar.gz | tar xvf - -C /usr/local \
&& curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh -s -- -y \
&& cd /tmp && touch control
###############################################################
# Stage to build torch family
###############################################################
FROM base-builder AS torch-builder
ARG MAX_JOBS
ARG TORCH_VERSION=2.6.0
ARG _GLIBCXX_USE_CXX11_ABI=1
RUN --mount=type=cache,target=/root/.cache/uv \
source /opt/rh/gcc-toolset-13/enable && \
git clone --recursive https://github.com/pytorch/pytorch.git -b v${TORCH_VERSION} && \
cd pytorch && \
uv pip install -r requirements.txt && \
python setup.py develop && \
rm -f dist/torch*+git*whl && \
MAX_JOBS=${MAX_JOBS:-$(nproc)} \
PYTORCH_BUILD_VERSION=${TORCH_VERSION} PYTORCH_BUILD_NUMBER=1 uv build --wheel --out-dir /torchwheels/
ARG TORCHVISION_VERSION=0.21.0
ARG TORCHVISION_USE_NVJPEG=0
ARG TORCHVISION_USE_FFMPEG=0
RUN --mount=type=cache,target=/root/.cache/uv \
source /opt/rh/gcc-toolset-13/enable && \
git clone --recursive https://github.com/pytorch/vision.git -b v${TORCHVISION_VERSION} && \
cd vision && \
MAX_JOBS=${MAX_JOBS:-$(nproc)} \
BUILD_VERSION=${TORCHVISION_VERSION} \
uv build --wheel --out-dir /torchwheels/ --no-build-isolation
ARG TORCHAUDIO_VERSION=2.6.0
ARG BUILD_SOX=1
ARG BUILD_KALDI=1
ARG BUILD_RNNT=1
ARG USE_FFMPEG=0
ARG USE_ROCM=0
ARG USE_CUDA=0
ARG TORCHAUDIO_TEST_ALLOW_SKIP_IF_NO_FFMPEG=1
RUN --mount=type=cache,target=/root/.cache/uv \
source /opt/rh/gcc-toolset-13/enable && \
git clone --recursive https://github.com/pytorch/audio.git -b v${TORCHAUDIO_VERSION} && \
cd audio && \
MAX_JOBS=${MAX_JOBS:-$(nproc)} \
BUILD_VERSION=${TORCHAUDIO_VERSION} \
uv build --wheel --out-dir /torchwheels/ --no-build-isolation
###############################################################
# Stage to build pyarrow
###############################################################
FROM base-builder AS arrow-builder
ARG MAX_JOBS
ARG PYARROW_PARALLEL
ARG PYARROW_VERSION=19.0.1
RUN --mount=type=cache,target=/root/.cache/uv \
source /opt/rh/gcc-toolset-13/enable && \
git clone --recursive https://github.com/apache/arrow.git -b apache-arrow-${PYARROW_VERSION} && \
cd arrow/cpp && \
mkdir build && cd build && \
cmake -DCMAKE_BUILD_TYPE=release \
-DCMAKE_INSTALL_PREFIX=/usr/local \
-DARROW_PYTHON=ON \
-DARROW_BUILD_TESTS=OFF \
-DARROW_JEMALLOC=ON \
-DARROW_BUILD_STATIC="OFF" \
-DARROW_PARQUET=ON \
.. && \
make install -j ${MAX_JOBS:-$(nproc)} && \
cd ../../python/ && \
uv pip install -v -r requirements-wheel-build.txt && \
PYARROW_PARALLEL=${PYARROW_PARALLEL:-$(nproc)} \
python setup.py build_ext \
--build-type=release --bundle-arrow-cpp \
bdist_wheel --dist-dir /arrowwheels/
###############################################################
# Stage to build opencv
###############################################################
FROM base-builder AS cv-builder
ARG MAX_JOBS
ARG OPENCV_VERSION=84
ARG ENABLE_HEADLESS=1
RUN --mount=type=cache,target=/root/.cache/uv \
source /opt/rh/gcc-toolset-13/enable && \
git clone --recursive https://github.com/opencv/opencv-python.git -b ${OPENCV_VERSION} && \
cd opencv-python && \
sed -i 's/"setuptools==59.2.0",/"setuptools<70.0",/g' pyproject.toml && \
python -m build --wheel --installer=uv --outdir /opencvwheels/
###############################################################
# Stage to build vllm - this stage builds and installs
# vllm, tensorizer and vllm-tgis-adapter and builds uv cache
# for transitive dependencies - eg. grpcio
###############################################################
FROM base-builder AS vllmcache-builder
COPY --from=torch-builder /tmp/control /dev/null
COPY --from=arrow-builder /tmp/control /dev/null
COPY --from=cv-builder /tmp/control /dev/null
ARG VLLM_TARGET_DEVICE=cpu
# this step installs vllm and populates uv cache
# with all the transitive dependencies
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,from=torch-builder,source=/torchwheels/,target=/torchwheels/,ro \
--mount=type=bind,from=arrow-builder,source=/arrowwheels/,target=/arrowwheels/,ro \
--mount=type=bind,from=cv-builder,source=/opencvwheels/,target=/opencvwheels/,ro \
--mount=type=bind,src=.,dst=/src/,rw \
source /opt/rh/gcc-toolset-13/enable && \
uv pip install /opencvwheels/*.whl /arrowwheels/*.whl /torchwheels/*.whl && \
sed -i -e 's/.*torch.*//g' /src/pyproject.toml /src/requirements/*.txt && \
uv pip install pandas pythran pybind11 && \
# sentencepiece.pc is in some pkgconfig inside uv cache
export PKG_CONFIG_PATH=$(find / -type d -name "pkgconfig" 2>/dev/null | tr '\n' ':') && \
uv pip install -r /src/requirements/common.txt -r /src/requirements/cpu.txt -r /src/requirements/build.txt --no-build-isolation && \
cd /src/ && \
uv build --wheel --out-dir /vllmwheel/ --no-build-isolation && \
uv pip install /vllmwheel/*.whl
###############################################################
# Stage to build numactl
###############################################################
FROM base-builder AS numa-builder
# Note: Building numactl with gcc-11. Compiling with gcc-13 in this builder stage will
# trigger recompilation with gcc-11 (and require libtool) in the final stage where we do not have gcc-13
ARG MAX_JOBS
ARG NUMACTL_VERSION=2.0.19
RUN git clone --recursive https://github.com/numactl/numactl.git -b v${NUMACTL_VERSION} \
&& cd numactl \
&& autoreconf -i && ./configure \
&& make -j ${MAX_JOBS:-$(nproc)}
###############################################################
# Stage to build lapack
###############################################################
FROM base-builder AS lapack-builder
ARG MAX_JOBS
ARG LAPACK_VERSION=3.12.1
RUN git clone --recursive https://github.com/Reference-LAPACK/lapack.git -b v${LAPACK_VERSION} \
&& cd lapack && source /opt/rh/gcc-toolset-13/enable \
&& cmake -B build -S . \
&& cmake --build build -j ${MAX_JOBS:-$(nproc)}
###############################################################
# FINAL VLLM IMAGE STAGE #
###############################################################
FROM registry.access.redhat.com/ubi9/ubi-minimal:${BASE_UBI_IMAGE_TAG} AS vllm-openai
ARG PYTHON_VERSION=3.12
ARG OPENBLAS_VERSION=0.3.29
# Set Environment Variables for venv & openblas
ENV VIRTUAL_ENV=/opt/vllm
ENV PATH=${VIRTUAL_ENV}/bin:$PATH
ENV PKG_CONFIG_PATH=/usr/local/lib/pkgconfig/
ENV LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/usr/local/lib64:/usr/local/lib:/usr/lib64:/usr/lib
ENV UV_LINK_MODE=copy
# create artificial dependencies between stages for independent stages to build in parallel
COPY --from=torch-builder /tmp/control /dev/null
COPY --from=arrow-builder /tmp/control /dev/null
COPY --from=cv-builder /tmp/control /dev/null
COPY --from=vllmcache-builder /tmp/control /dev/null
COPY --from=numa-builder /tmp/control /dev/null
COPY --from=lapack-builder /tmp/control /dev/null
# install gcc-11, python, openblas, numactl, lapack
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,from=numa-builder,source=/numactl/,target=/numactl/,rw \
--mount=type=bind,from=lapack-builder,source=/lapack/,target=/lapack/,rw \
rpm -ivh https://dl.fedoraproject.org/pub/epel/epel-release-latest-9.noarch.rpm && \
microdnf install --nodocs -y \
tar findutils openssl \
pkgconfig xsimd g++ gcc-fortran libsndfile \
libtiff libjpeg openjpeg2 zlib zeromq \
freetype lcms2 libwebp tcl tk utf8proc \
harfbuzz fribidi libraqm libimagequant libxcb \
python${PYTHON_VERSION}-devel python${PYTHON_VERSION}-pip \
&& microdnf clean all \
&& python${PYTHON_VERSION} -m venv ${VIRTUAL_ENV} \
&& python -m pip install -U pip uv --no-cache \
&& curl -sL https://ftp2.osuosl.org/pub/ppc64el/openblas/latest/Openblas_${OPENBLAS_VERSION}_ppc64le.tar.gz | tar xvf - -C /usr/local \
&& make -C /numactl install \
&& uv pip install cmake \
&& cmake --install /lapack/build \
&& uv pip uninstall cmake
# consume previously built wheels (including vllm)
RUN --mount=type=cache,target=/root/.cache/uv \
--mount=type=bind,from=torch-builder,source=/torchwheels/,target=/torchwheels/,ro \
--mount=type=bind,from=arrow-builder,source=/arrowwheels/,target=/arrowwheels/,ro \
--mount=type=bind,from=cv-builder,source=/opencvwheels/,target=/opencvwheels/,ro \
--mount=type=bind,from=vllmcache-builder,source=/vllmwheel/,target=/vllmwheel/,ro \
HOME=/root uv pip install /opencvwheels/*.whl /arrowwheels/*.whl /torchwheels/*.whl /vllmwheel/*.whl
COPY ./ /workspace/vllm
WORKDIR /workspace/vllm
ARG GIT_REPO_CHECK=0
RUN --mount=type=bind,source=.git,target=.git \
if [ "$GIT_REPO_CHECK" != 0 ]; then bash tools/check_repo.sh; fi
# install development dependencies (for testing)
RUN --mount=type=cache,target=/root/.cache/uv \
uv pip install -e tests/vllm_test_utils
WORKDIR /workspace/
RUN ln -s /workspace/vllm/tests && ln -s /workspace/vllm/examples && ln -s /workspace/vllm/benchmarks
ENTRYPOINT ["python", "-m", "vllm.entrypoints.openai.api_server"]

View File

@ -12,7 +12,8 @@ ENV PYTORCH_ROCM_ARCH=${ARG_PYTORCH_ROCM_ARCH:-${PYTORCH_ROCM_ARCH}}
# Install some basic utilities
RUN apt-get update -q -y && apt-get install -q -y \
sqlite3 libsqlite3-dev libfmt-dev libmsgpack-dev libsuitesparse-dev
sqlite3 libsqlite3-dev libfmt-dev libmsgpack-dev libsuitesparse-dev \
apt-transport-https ca-certificates wget curl
# Remove sccache
RUN python3 -m pip install --upgrade pip && pip install setuptools_scm
RUN apt-get purge -y sccache; python3 -m pip uninstall -y sccache; rm -f "$(which sccache)"

View File

@ -1,18 +1,18 @@
ARG BASE_IMAGE=rocm/dev-ubuntu-22.04:6.3.1-complete
ARG HIPBLASLT_BRANCH="4d40e36"
ARG HIPBLASLT_BRANCH="db8e93b4"
ARG HIPBLAS_COMMON_BRANCH="7c1566b"
ARG LEGACY_HIPBLASLT_OPTION=
ARG RCCL_BRANCH="648a58d"
ARG RCCL_REPO="https://github.com/ROCm/rccl"
ARG TRITON_BRANCH="e5be006"
ARG TRITON_REPO="https://github.com/triton-lang/triton.git"
ARG PYTORCH_BRANCH="3a585126"
ARG PYTORCH_VISION_BRANCH="v0.19.1"
ARG PYTORCH_BRANCH="295f2ed4"
ARG PYTORCH_VISION_BRANCH="v0.21.0"
ARG PYTORCH_REPO="https://github.com/pytorch/pytorch.git"
ARG PYTORCH_VISION_REPO="https://github.com/pytorch/vision.git"
ARG FA_BRANCH="b7d29fb"
ARG FA_REPO="https://github.com/ROCm/flash-attention.git"
ARG AITER_BRANCH="21d47a9"
ARG FA_BRANCH="1a7f4dfa"
ARG FA_REPO="https://github.com/Dao-AILab/flash-attention.git"
ARG AITER_BRANCH="8970b25b"
ARG AITER_REPO="https://github.com/ROCm/aiter.git"
FROM ${BASE_IMAGE} AS base
@ -20,7 +20,7 @@ FROM ${BASE_IMAGE} AS base
ENV PATH=/opt/rocm/llvm/bin:$PATH
ENV ROCM_PATH=/opt/rocm
ENV LD_LIBRARY_PATH=/opt/rocm/lib:/usr/local/lib:
ARG PYTORCH_ROCM_ARCH=gfx90a;gfx942
ARG PYTORCH_ROCM_ARCH=gfx90a;gfx942;gfx1100;gfx1101;gfx1200;gfx1201
ENV PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH}
ARG PYTHON_VERSION=3.12
@ -31,7 +31,7 @@ ENV DEBIAN_FRONTEND=noninteractive
# Install Python and other dependencies
RUN apt-get update -y \
&& apt-get install -y software-properties-common git curl sudo vim less \
&& apt-get install -y software-properties-common git curl sudo vim less libgfortran5 \
&& add-apt-repository ppa:deadsnakes/ppa \
&& apt-get update -y \
&& apt-get install -y python${PYTHON_VERSION} python${PYTHON_VERSION}-dev python${PYTHON_VERSION}-venv \
@ -42,7 +42,7 @@ RUN apt-get update -y \
&& curl -sS https://bootstrap.pypa.io/get-pip.py | python${PYTHON_VERSION} \
&& python3 --version && python3 -m pip --version
RUN pip install -U packaging cmake ninja wheel setuptools pybind11 Cython
RUN pip install -U packaging 'cmake<4' ninja wheel setuptools pybind11 Cython
FROM base AS build_hipblaslt
ARG HIPBLASLT_BRANCH
@ -60,7 +60,8 @@ RUN cd hipBLAS-common \
RUN git clone https://github.com/ROCm/hipBLASLt
RUN cd hipBLASLt \
&& git checkout ${HIPBLASLT_BRANCH} \
&& ./install.sh -d --architecture ${PYTORCH_ROCM_ARCH} ${LEGACY_HIPBLASLT_OPTION} \
&& apt-get install -y llvm-dev \
&& ./install.sh -dc --architecture ${PYTORCH_ROCM_ARCH} ${LEGACY_HIPBLASLT_OPTION} \
&& cd build/release \
&& make package
RUN mkdir -p /app/install && cp /app/hipBLASLt/build/release/*.deb /app/hipBLAS-common/build/*.deb /app/install
@ -110,11 +111,24 @@ RUN git clone ${FA_REPO}
RUN cd flash-attention \
&& git checkout ${FA_BRANCH} \
&& git submodule update --init \
&& MAX_JOBS=64 GPU_ARCHS=${PYTORCH_ROCM_ARCH} python3 setup.py bdist_wheel --dist-dir=dist
&& GPU_ARCHS=$(echo ${PYTORCH_ROCM_ARCH} | sed -e 's/;gfx1[0-9]\{3\}//g') python3 setup.py bdist_wheel --dist-dir=dist
RUN mkdir -p /app/install && cp /app/pytorch/dist/*.whl /app/install \
&& cp /app/vision/dist/*.whl /app/install \
&& cp /app/flash-attention/dist/*.whl /app/install
FROM base AS build_aiter
ARG AITER_BRANCH
ARG AITER_REPO
RUN --mount=type=bind,from=build_pytorch,src=/app/install/,target=/install \
pip install /install/*.whl
RUN git clone --recursive ${AITER_REPO}
RUN cd aiter \
&& git checkout ${AITER_BRANCH} \
&& git submodule update --init --recursive \
&& pip install -r requirements.txt
RUN pip install pyyaml && cd aiter && PREBUILD_KERNELS=1 GPU_ARCHS=gfx942 python3 setup.py bdist_wheel --dist-dir=dist && ls /app/aiter/dist/*.whl
RUN mkdir -p /app/install && cp /app/aiter/dist/*.whl /app/install
FROM base AS final
RUN --mount=type=bind,from=build_hipblaslt,src=/app/install/,target=/install \
dpkg -i /install/*deb \
@ -130,19 +144,12 @@ RUN --mount=type=bind,from=build_amdsmi,src=/app/install/,target=/install \
pip install /install/*.whl
RUN --mount=type=bind,from=build_pytorch,src=/app/install/,target=/install \
pip install /install/*.whl
ARG AITER_REPO
ARG AITER_BRANCH
RUN git clone --recursive ${AITER_REPO}
RUN cd aiter \
&& git checkout ${AITER_BRANCH} \
&& git submodule update --init --recursive \
&& pip install -r requirements.txt \
&& PREBUILD_KERNELS=1 GPU_ARCHS=gfx942 python3 setup.py develop && pip show aiter
RUN --mount=type=bind,from=build_aiter,src=/app/install/,target=/install \
pip install /install/*.whl
ARG BASE_IMAGE
ARG HIPBLASLT_BRANCH
ARG HIPBLAS_COMMON_BRANCH
ARG HIPBLASLT_BRANCH
ARG LEGACY_HIPBLASLT_OPTION
ARG RCCL_BRANCH
ARG RCCL_REPO
@ -154,6 +161,8 @@ ARG PYTORCH_REPO
ARG PYTORCH_VISION_REPO
ARG FA_BRANCH
ARG FA_REPO
ARG AITER_BRANCH
ARG AITER_REPO
RUN echo "BASE_IMAGE: ${BASE_IMAGE}" > /app/versions.txt \
&& echo "HIPBLAS_COMMON_BRANCH: ${HIPBLAS_COMMON_BRANCH}" >> /app/versions.txt \
&& echo "HIPBLASLT_BRANCH: ${HIPBLASLT_BRANCH}" >> /app/versions.txt \
@ -167,6 +176,5 @@ RUN echo "BASE_IMAGE: ${BASE_IMAGE}" > /app/versions.txt \
&& echo "PYTORCH_REPO: ${PYTORCH_REPO}" >> /app/versions.txt \
&& echo "PYTORCH_VISION_REPO: ${PYTORCH_VISION_REPO}" >> /app/versions.txt \
&& echo "FA_BRANCH: ${FA_BRANCH}" >> /app/versions.txt \
&& echo "FA_REPO: ${FA_REPO}" >> /app/versions.txt \
&& echo "AITER_BRANCH: ${AITER_BRANCH}" >> /app/versions.txt \
&& echo "AITER_REPO: ${AITER_REPO}" >> /app/versions.txt

View File

@ -2,19 +2,42 @@
## Build the docs
```bash
# Install dependencies.
pip install -r ../requirements/docs.txt
- Make sure in `docs` directory
# Build the docs.
```bash
cd docs
```
- Install the dependencies:
```bash
pip install -r ../requirements/docs.txt
```
- Clean the previous build (optional but recommended):
```bash
make clean
```
- Generate the HTML documentation:
```bash
make html
```
## Open the docs with your browser
- Serve the documentation locally:
```bash
python -m http.server -d build/html/
```
Launch your browser and open localhost:8000.
This will start a local server at http://localhost:8000. You can now open your browser and view the documentation.
If port 8000 is already in use, you can specify a different port, for example:
```bash
python -m http.server 3000 -d build/html/
```

View File

@ -10,8 +10,8 @@ document.addEventListener("DOMContentLoaded", function () {
script.setAttribute("runllm-keyboard-shortcut", "Mod+j"); // cmd-j or ctrl-j to open the widget.
script.setAttribute("runllm-name", "vLLM");
script.setAttribute("runllm-position", "BOTTOM_RIGHT");
script.setAttribute("runllm-position-y", "20%");
script.setAttribute("runllm-position-x", "3%");
script.setAttribute("runllm-position-y", "120px");
script.setAttribute("runllm-position-x", "20px");
script.setAttribute("runllm-assistant-id", "207");
script.async = true;

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@ -4,6 +4,8 @@
We host regular meetups in San Francisco Bay Area every 2 months. We will share the project updates from the vLLM team and have guest speakers from the industry to share their experience and insights. Please find the materials of our previous meetups below:
- [vLLM x Ollama Inference Night](https://lu.ma/vllm-ollama), March 27th 2025. [[Slides]](https://docs.google.com/presentation/d/16T2PDD1YwRnZ4Tu8Q5r6n53c5Lr5c73UV9Vd2_eBo4U/edit?usp=sharing).
- [The first vLLM China Meetup](https://mp.weixin.qq.com/s/n77GibL2corAtQHtVEAzfg), March 16th 2025. [[Slides]](https://docs.google.com/presentation/d/1REHvfQMKGnvz6p3Fd23HhSO4c8j5WPGZV0bKYLwnHyQ/edit?usp=sharing).
- [The East Coast vLLM Meetup](https://lu.ma/7mu4k4xx), March 11th 2025. [[Slides]](https://docs.google.com/presentation/d/1NHiv8EUFF1NLd3fEYODm56nDmL26lEeXCaDgyDlTsRs/edit#slide=id.g31441846c39_0_0)
- [The ninth vLLM meetup](https://lu.ma/h7g3kuj9), with Meta, February 27th 2025. [[Slides]](https://docs.google.com/presentation/d/1jzC_PZVXrVNSFVCW-V4cFXb6pn7zZ2CyP_Flwo05aqg/edit?usp=sharing)
- [The eighth vLLM meetup](https://lu.ma/zep56hui), with Google Cloud, January 22nd 2025. [[Slides]](https://docs.google.com/presentation/d/1epVkt4Zu8Jz_S5OhEHPc798emsYh2BwYfRuDDVEF7u4/edit?usp=sharing)

View File

@ -103,6 +103,11 @@ myst_url_schemes = {
"title": "Pull Request #{{path}}",
"classes": ["github"],
},
"gh-project": {
"url": "https://github.com/orgs/vllm-project/projects/{{path}}",
"title": "Project #{{path}}",
"classes": ["github"],
},
"gh-dir": {
"url": "https://github.com/vllm-project/vllm/tree/main/{{path}}",
"title": "{{path}}",

View File

@ -1,6 +1,6 @@
# Dockerfile
We provide a <gh-file:Dockerfile> to construct the image for running an OpenAI compatible server with vLLM.
We provide a <gh-file:docker/Dockerfile> to construct the image for running an OpenAI compatible server with vLLM.
More information about deploying with Docker can be found [here](#deployment-docker).
Below is a visual representation of the multi-stage Dockerfile. The build graph contains the following nodes:
@ -28,7 +28,7 @@ The edges of the build graph represent:
> Commands to regenerate the build graph (make sure to run it **from the \`root\` directory of the vLLM repository** where the dockerfile is present):
>
> ```bash
> dockerfilegraph -o png --legend --dpi 200 --max-label-length 50 --filename Dockerfile
> dockerfilegraph -o png --legend --dpi 200 --max-label-length 50 --filename docker/Dockerfile
> ```
>
> or in case you want to run it directly with the docker image:
@ -43,7 +43,7 @@ The edges of the build graph represent:
> --output png \
> --dpi 200 \
> --max-label-length 50 \
> --filename Dockerfile \
> --filename docker/Dockerfile \
> --legend
> ```
>

View File

@ -11,6 +11,15 @@ We also believe in the power of community support; thus, answering queries, offe
Finally, one of the most impactful ways to support us is by raising awareness about vLLM. Talk about it in your blog posts and highlight how it's driving your incredible projects. Express your support on social media if you're using vLLM, or simply offer your appreciation by starring our repository!
## Job Board
Unsure on where to start? Check out the following links for tasks to work on:
- [Good first issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue%20state%3Aopen%20label%3A%22good%20first%20issue%22)
- [Selected onboarding tasks](gh-project:6)
- [New model requests](https://github.com/vllm-project/vllm/issues?q=is%3Aissue%20state%3Aopen%20label%3A%22new%20model%22)
- [Models with multi-modal capabilities](gh-project:10)
## License
See <gh-file:LICENSE>.
@ -35,6 +44,12 @@ pre-commit run --all-files
pytest tests/
```
:::{tip}
Since the <gh-file:docker/Dockerfile> ships with Python 3.12, all tests in CI (except `mypy`) are run with Python 3.12.
Therefore, we recommend developing with Python 3.12 to minimise the chance of your local environment clashing with our CI environment.
:::
:::{note}
Currently, the repository is not fully checked by `mypy`.
:::

View File

@ -34,11 +34,11 @@ If you need to use those dependencies (having accepted the license terms),
create a custom Dockerfile on top of the base image with an extra layer that installs them:
```Dockerfile
FROM vllm/vllm-openai:v0.8.0
FROM vllm/vllm-openai:v0.8.2
# e.g. install the `audio` and `video` optional dependencies
# NOTE: Make sure the version of vLLM matches the base image!
RUN uv pip install vllm[audio,video]==0.8.0
RUN uv pip install --system vllm[audio,video]==0.8.2
```
:::
@ -52,7 +52,7 @@ with an extra layer that installs their code from source:
```Dockerfile
FROM vllm/vllm-openai:latest
RUN uv pip install git+https://github.com/huggingface/transformers.git
RUN uv pip install --system git+https://github.com/huggingface/transformers.git
```
:::
@ -61,11 +61,11 @@ RUN uv pip install git+https://github.com/huggingface/transformers.git
## Building vLLM's Docker Image from Source
You can build and run vLLM from source via the provided <gh-file:Dockerfile>. To build vLLM:
You can build and run vLLM from source via the provided <gh-file:docker/Dockerfile>. To build vLLM:
```console
# optionally specifies: --build-arg max_jobs=8 --build-arg nvcc_threads=2
DOCKER_BUILDKIT=1 docker build . --target vllm-openai --tag vllm/vllm-openai
DOCKER_BUILDKIT=1 docker build . --target vllm-openai --tag vllm/vllm-openai --file docker/Dockerfile
```
:::{note}
@ -92,6 +92,7 @@ Keep an eye on memory usage with parallel jobs as it can be substantial (see exa
# Example of building on Nvidia GH200 server. (Memory usage: ~15GB, Build time: ~1475s / ~25 min, Image size: 6.93GB)
$ python3 use_existing_torch.py
$ DOCKER_BUILDKIT=1 docker build . \
--file docker/Dockerfile \
--target vllm-openai \
--platform "linux/arm64" \
-t vllm/vllm-gh200-openai:latest \

View File

@ -69,14 +69,14 @@ server {
```console
cd $vllm_root
docker build -f Dockerfile . --tag vllm
docker build -f docker/Dockerfile . --tag vllm
```
If you are behind proxy, you can pass the proxy settings to the docker build command as shown below:
```console
cd $vllm_root
docker build -f Dockerfile . --tag vllm --build-arg http_proxy=$http_proxy --build-arg https_proxy=$https_proxy
docker build -f docker/Dockerfile . --tag vllm --build-arg http_proxy=$http_proxy --build-arg https_proxy=$https_proxy
```
(nginxloadbalancer-nginx-docker-network)=

View File

@ -24,7 +24,7 @@ This document describes how vLLM deals with these challenges.
[Python multiprocessing methods](https://docs.python.org/3/library/multiprocessing.html#contexts-and-start-methods) include:
- `spawn` - spawn a new Python process. This will be the default as of Python
3.14.
3.14. In macOS, this is already the default.
- `fork` - Use `os.fork()` to fork the Python interpreter. This is the default
in Python versions prior to 3.14.
@ -34,7 +34,7 @@ This document describes how vLLM deals with these challenges.
### Tradeoffs
`fork` is the fastest method, but is incompatible with dependencies that use
threads.
threads. If you are under macOS, using `fork` may cause the process to crash.
`spawn` is more compatible with dependencies, but can be problematic when vLLM
is used as a library. If the consuming code does not use a `__main__` guard (`if

View File

@ -15,12 +15,13 @@ Block 3: |<------------------ prefix -------------------->| |<--- block tokens -
In the example above, the KV cache in the first block can be uniquely identified with the token “A gentle breeze stirred”. The third block can be uniquely identified with the tokens in the block “laughed in the distance”, along with the prefix tokens “A gentle breeze stirred the leaves as children”. Therefore, we can build the block hash of `hash(tuple[components])`, where components are:
* Parent hash value: The hash value of the parent hash block.
* Block tokens: A tuple of tokens in this block. The reason to include the exact tokens is to reduce potential hash value collision.
* Block tokens: A tuple of tokens in this block. The reason to include the exact tokens is to reduce potential hash value collision.
* Extra hashes: Other values required to make this block unique, such as LoRA IDs and multi-modality input hashes (see the example below).
Note 1: We only cache full blocks.
> **Note 1:** We only cache full blocks.
Note 2: The above hash key structure is not 100% collision free. Theoretically its still possible for the different prefix tokens to have the same hash value, but this should be nearly impossible to happen. Of course, contributions are welcome if you have an awesome idea to eliminate collusion entirely.
> **Note 2:** The above hash key structure is not 100% collision free. Theoretically its still possible for the different prefix tokens to have the same hash value. To avoid any hash collisions **in a multi-tenant setup, we advise to use SHA256** as hash function instead of the default builtin hash.
SHA256 is supported since vLLM v0.8.3 and must be enabled with a command line argument. It comes with a performance impact of about 100-200ns per token (~6ms for 50k tokens of context).
**A hashing example with multi-modality inputs**
In this example, we illustrate how prefix caching works with multi-modality inputs (e.g., images). Assuming we have a request with the following messages:

View File

@ -16,5 +16,6 @@ gptqmodel
int4
int8
fp8
quark
quantized_kvcache
:::

View File

@ -0,0 +1,217 @@
(quark)=
# AMD QUARK
Quantization can effectively reduce memory and bandwidth usage, accelerate computation and improve
throughput while with minimal accuracy loss. vLLM can leverage [Quark](https://quark.docs.amd.com/latest/),
the flexible and powerful quantization toolkit, to produce performant quantized models to run on AMD GPUs. Quark has specialized support for quantizing large language models with weight,
activation and kv-cache quantization and cutting-edge quantization algorithms like
AWQ, GPTQ, Rotation and SmoothQuant.
## Quark Installation
Before quantizing models, you need to install Quark. The latest release of Quark can be installed with pip:
```console
pip install amd-quark
```
You can refer to [Quark installation guide](https://quark.docs.amd.com/latest/install.html)
for more installation details.
## Quantization Process
After installing Quark, we will use an example to illustrate how to use Quark.
The Quark quantization process can be listed for 5 steps as below:
1. Load the model
2. Prepare the calibration dataloader
3. Set the quantization configuration
4. Quantize the model and export
5. Evaluation in vLLM
### 1. Load the Model
Quark uses [Transformers](https://huggingface.co/docs/transformers/en/index)
to fetch model and tokenizer.
```python
from transformers import AutoTokenizer, AutoModelForCausalLM
MODEL_ID = "meta-llama/Llama-2-70b-chat-hf"
MAX_SEQ_LEN = 512
model = AutoModelForCausalLM.from_pretrained(
MODEL_ID, device_map="auto", torch_dtype="auto",
)
model.eval()
tokenizer = AutoTokenizer.from_pretrained(MODEL_ID, model_max_length=MAX_SEQ_LEN)
tokenizer.pad_token = tokenizer.eos_token
```
### 2. Prepare the Calibration Dataloader
Quark uses the [PyTorch Dataloader](https://pytorch.org/tutorials/beginner/basics/data_tutorial.html)
to load calibration data. For more details about how to use calibration datasets efficiently, please refer
to [Adding Calibration Datasets](https://quark.docs.amd.com/latest/pytorch/calibration_datasets.html).
```python
from datasets import load_dataset
from torch.utils.data import DataLoader
BATCH_SIZE = 1
NUM_CALIBRATION_DATA = 512
# Load the dataset and get calibration data.
dataset = load_dataset("mit-han-lab/pile-val-backup", split="validation")
text_data = dataset["text"][:NUM_CALIBRATION_DATA]
tokenized_outputs = tokenizer(text_data, return_tensors="pt",
padding=True, truncation=True, max_length=MAX_SEQ_LEN)
calib_dataloader = DataLoader(tokenized_outputs['input_ids'],
batch_size=BATCH_SIZE, drop_last=True)
```
### 3. Set the Quantization Configuration
We need to set the quantization configuration, you can check
[quark config guide](https://quark.docs.amd.com/latest/pytorch/user_guide_config_description.html)
for further details. Here we use FP8 per-tensor quantization on weight, activation,
kv-cache and the quantization algorithm is AutoSmoothQuant.
:::{note}
Note the quantization algorithm needs a JSON config file and the config file is located in
[Quark Pytorch examples](https://quark.docs.amd.com/latest/pytorch/pytorch_examples.html),
under the directory `examples/torch/language_modeling/llm_ptq/models`. For example,
AutoSmoothQuant config file for Llama is
`examples/torch/language_modeling/llm_ptq/models/llama/autosmoothquant_config.json`.
:::
```python
from quark.torch.quantization import (Config, QuantizationConfig,
FP8E4M3PerTensorSpec,
load_quant_algo_config_from_file)
# Define fp8/per-tensor/static spec.
FP8_PER_TENSOR_SPEC = FP8E4M3PerTensorSpec(observer_method="min_max",
is_dynamic=False).to_quantization_spec()
# Define global quantization config, input tensors and weight apply FP8_PER_TENSOR_SPEC.
global_quant_config = QuantizationConfig(input_tensors=FP8_PER_TENSOR_SPEC,
weight=FP8_PER_TENSOR_SPEC)
# Define quantization config for kv-cache layers, output tensors apply FP8_PER_TENSOR_SPEC.
KV_CACHE_SPEC = FP8_PER_TENSOR_SPEC
kv_cache_layer_names_for_llama = ["*k_proj", "*v_proj"]
kv_cache_quant_config = {name :
QuantizationConfig(input_tensors=global_quant_config.input_tensors,
weight=global_quant_config.weight,
output_tensors=KV_CACHE_SPEC)
for name in kv_cache_layer_names_for_llama}
layer_quant_config = kv_cache_quant_config.copy()
# Define algorithm config by config file.
LLAMA_AUTOSMOOTHQUANT_CONFIG_FILE =
'examples/torch/language_modeling/llm_ptq/models/llama/autosmoothquant_config.json'
algo_config = load_quant_algo_config_from_file(LLAMA_AUTOSMOOTHQUANT_CONFIG_FILE)
EXCLUDE_LAYERS = ["lm_head"]
quant_config = Config(
global_quant_config=global_quant_config,
layer_quant_config=layer_quant_config,
kv_cache_quant_config=kv_cache_quant_config,
exclude=EXCLUDE_LAYERS,
algo_config=algo_config)
```
### 4. Quantize the Model and Export
Then we can apply the quantization. After quantizing, we need to freeze the
quantized model first before exporting. Note that we need to export model with format of
HuggingFace `safetensors`, you can refer to
[HuggingFace format exporting](https://quark.docs.amd.com/latest/pytorch/export/quark_export_hf.html)
for more exporting format details.
```python
import torch
from quark.torch import ModelQuantizer, ModelExporter
from quark.torch.export import ExporterConfig, JsonExporterConfig
# Apply quantization.
quantizer = ModelQuantizer(quant_config)
quant_model = quantizer.quantize_model(model, calib_dataloader)
# Freeze quantized model to export.
freezed_model = quantizer.freeze(model)
# Define export config.
LLAMA_KV_CACHE_GROUP = ["*k_proj", "*v_proj"]
export_config = ExporterConfig(json_export_config=JsonExporterConfig())
export_config.json_export_config.kv_cache_group = LLAMA_KV_CACHE_GROUP
EXPORT_DIR = MODEL_ID.split("/")[1] + "-w-fp8-a-fp8-kvcache-fp8-pertensor-autosmoothquant"
exporter = ModelExporter(config=export_config, export_dir=EXPORT_DIR)
with torch.no_grad():
exporter.export_safetensors_model(freezed_model,
quant_config=quant_config, tokenizer=tokenizer)
```
### 5. Evaluation in vLLM
Now, you can load and run the Quark quantized model directly through the LLM entrypoint:
```python
from vllm import LLM, SamplingParams
# Sample prompts.
prompts = [
"Hello, my name is",
"The president of the United States is",
"The capital of France is",
"The future of AI is",
]
# Create a sampling params object.
sampling_params = SamplingParams(temperature=0.8, top_p=0.95)
# Create an LLM.
llm = LLM(model="Llama-2-70b-chat-hf-w-fp8-a-fp8-kvcache-fp8-pertensor-autosmoothquant",
kv_cache_dtype='fp8',quantization='quark')
# Generate texts from the prompts. The output is a list of RequestOutput objects
# that contain the prompt, generated text, and other information.
outputs = llm.generate(prompts, sampling_params)
# Print the outputs.
print("\nGenerated Outputs:\n" + "-" * 60)
for output in outputs:
prompt = output.prompt
generated_text = output.outputs[0].text
print(f"Prompt: {prompt!r}")
print(f"Output: {generated_text!r}")
print("-" * 60)
```
Or, you can use `lm_eval` to evaluate accuracy:
```console
$ lm_eval --model vllm \
--model_args pretrained=Llama-2-70b-chat-hf-w-fp8-a-fp8-kvcache-fp8-pertensor-autosmoothquant,kv_cache_dtype='fp8',quantization='quark' \
--tasks gsm8k
```
## Quark Quantization Script
In addition to the example of Python API above, Quark also offers a
[quantization script](https://quark.docs.amd.com/latest/pytorch/example_quark_torch_llm_ptq.html)
to quantize large language models more conveniently. It supports quantizing models with variety
of different quantization schemes and optimization algorithms. It can export the quantized model
and run evaluation tasks on the fly. With the script, the example above can be:
```console
python3 quantize_quark.py --model_dir meta-llama/Llama-2-70b-chat-hf \
--output_dir /path/to/output \
--quant_scheme w_fp8_a_fp8 \
--kv_cache_dtype fp8 \
--quant_algo autosmoothquant \
--num_calib_data 512 \
--model_export hf_format \
--tasks gsm8k
```

View File

@ -4,7 +4,7 @@
vLLM offers support for reasoning models like [DeepSeek R1](https://huggingface.co/deepseek-ai/DeepSeek-R1), which are designed to generate outputs containing both reasoning steps and final conclusions.
Reasoning models return a additional `reasoning_content` field in their outputs, which contains the reasoning steps that led to the final conclusion. This field is not present in the outputs of other models.
Reasoning models return an additional `reasoning_content` field in their outputs, which contains the reasoning steps that led to the final conclusion. This field is not present in the outputs of other models.
## Supported Models
@ -14,6 +14,9 @@ vLLM currently supports the following reasoning models:
|--------------|-------------|------------------|-------------|
| [DeepSeek R1 series](https://huggingface.co/collections/deepseek-ai/deepseek-r1-678e1e131c0169c0bc89728d) | `deepseek_r1` | `guided_json`, `guided_regex` | ❌ |
| [QwQ-32B](https://huggingface.co/Qwen/QwQ-32B) | `deepseek_r1` | `guided_json`, `guided_regex` | ✅ |
| [IBM Granite 3.2 language models](https://huggingface.co/collections/ibm-granite/granite-32-language-models-67b3bc8c13508f6d064cff9a) | `granite` | ❌ | ❌ |
- IBM Granite 3.2 reasoning is disabled by default; to enable it, you must also pass `thinking=True` in your `chat_template_kwargs`.
## Quickstart
@ -43,6 +46,7 @@ model = models.data[0].id
# Round 1
messages = [{"role": "user", "content": "9.11 and 9.8, which is greater?"}]
# For granite, add: `extra_body={"chat_template_kwargs": {"thinking": True}}`
response = client.chat.completions.create(model=model, messages=messages)
reasoning_content = response.choices[0].message.reasoning_content
@ -97,6 +101,7 @@ models = client.models.list()
model = models.data[0].id
messages = [{"role": "user", "content": "9.11 and 9.8, which is greater?"}]
# For granite, add: `extra_body={"chat_template_kwargs": {"thinking": True}}`
stream = client.chat.completions.create(model=model,
messages=messages,
stream=True)
@ -131,7 +136,14 @@ Remember to check whether the `reasoning_content` exists in the response before
## Structured output
The reasoning content is also available in the structured output. The structured output engine like `xgrammar` will use the reasoning content to generate structured output.
The reasoning content is also available in the structured output. The structured output engine like `xgrammar` will use the reasoning content to generate structured output. It is only supported in v0 engine now.
```bash
VLLM_USE_V1=0 vllm serve deepseek-ai/DeepSeek-R1-Distill-Qwen-1.5B \
--enable-reasoning --reasoning-parser deepseek_r1
```
Please note that the `VLLM_USE_V1` environment variable must be set to `0` to use the v0 engine.
```python
from openai import OpenAI

View File

@ -52,7 +52,7 @@ python -m vllm.entrypoints.openai.api_server --host 0.0.0.0 --port 8000 --model
```
:::{warning}
Note: Please use `--speculative_config` to set all configurations related to speculative decoding. The previous method of specifying the model through `--speculative_model` and adding related parameters (e.g., `--num_speculative_tokens`) separately will be deprecated in the next release.
Note: Please use `--speculative_config` to set all configurations related to speculative decoding. The previous method of specifying the model through `--speculative_model` and adding related parameters (e.g., `--num_speculative_tokens`) separately has been deprecated now.
:::
Then use a client:

View File

@ -86,7 +86,7 @@ Currently, there are no pre-built Intel Gaudi images.
### Build image from source
```console
docker build -f Dockerfile.hpu -t vllm-hpu-env .
docker build -f docker/Dockerfile.hpu -t vllm-hpu-env .
docker run -it --runtime=habana -e HABANA_VISIBLE_DEVICES=all -e OMPI_MCA_btl_vader_single_copy_mechanism=none --cap-add=sys_nice --net=host --rm vllm-hpu-env
```

View File

@ -132,7 +132,7 @@ Currently, there are no pre-built Neuron images.
See <project:#deployment-docker-build-image-from-source> for instructions on building the Docker image.
Make sure to use <gh-file:Dockerfile.neuron> in place of the default Dockerfile.
Make sure to use <gh-file:docker/Dockerfile.neuron> in place of the default Dockerfile.
## Extra information

View File

@ -169,10 +169,10 @@ See <project:#deployment-docker-pre-built-image> for instructions on using the o
### Build image from source
You can use <gh-file:Dockerfile.tpu> to build a Docker image with TPU support.
You can use <gh-file:docker/Dockerfile.tpu> to build a Docker image with TPU support.
```console
docker build -f Dockerfile.tpu -t vllm-tpu .
docker build -f docker/Dockerfile.tpu -t vllm-tpu .
```
Run the Docker image with the following command:

View File

@ -159,26 +159,45 @@ Currently, there are no pre-built CPU wheels.
### Pre-built images
Currently, there are no pre-build CPU images.
:::::{tab-set}
:sync-group: device
::::{tab-item} Intel/AMD x86
:sync: x86
:::{include} cpu/x86.inc.md
:start-after: "### Pre-built images"
:end-before: "### Build image from source"
:::
::::
:::::
### Build image from source
```console
$ docker build -f Dockerfile.cpu -t vllm-cpu-env --shm-size=4g .
$ docker run -it \
--rm \
--network=host \
--cpuset-cpus=<cpu-id-list, optional> \
--cpuset-mems=<memory-node, optional> \
vllm-cpu-env
$ docker build -f docker/Dockerfile.cpu --tag vllm-cpu-env --target vllm-openai .
# Launching OpenAI server
$ docker run --rm \
--privileged=true \
--shm-size=4g \
-p 8000:8000 \
-e VLLM_CPU_KVCACHE_SPACE=<KV cache space> \
-e VLLM_CPU_OMP_THREADS_BIND=<CPU cores for inference> \
vllm-cpu-env \
--model=meta-llama/Llama-3.2-1B-Instruct \
--dtype=bfloat16 \
other vLLM OpenAI server arguments
```
::::{tip}
For ARM or Apple silicon, use `Dockerfile.arm`
For ARM or Apple silicon, use `docker/Dockerfile.arm`
::::
::::{tip}
For IBM Z (s390x), use `Dockerfile.s390x` and in `docker run` use flag `--dtype float`
For IBM Z (s390x), use `docker/Dockerfile.s390x` and in `docker run` use flag `--dtype float`
::::
## Supported features

View File

@ -34,6 +34,8 @@ There are no pre-built wheels or images for this device, so you must build vLLM
### Pre-built images
See [https://gallery.ecr.aws/q9t5s3a7/vllm-cpu-release-repo](https://gallery.ecr.aws/q9t5s3a7/vllm-cpu-release-repo)
### Build image from source
## Extra information

View File

@ -8,7 +8,7 @@ There are no pre-built wheels for this device, so you must either use the pre-bu
## Requirements
- GPU: MI200s (gfx90a), MI300 (gfx942), Radeon RX 7900 series (gfx1100)
- GPU: MI200s (gfx90a), MI300 (gfx942), Radeon RX 7900 series (gfx1100/1101), Radeon RX 9000 series (gfx1200/1201)
- ROCm 6.3
## Set up using Python
@ -123,7 +123,7 @@ Building the Docker image from source is the recommended way to use vLLM with RO
#### (Optional) Build an image with ROCm software stack
Build a docker image from <gh-file:Dockerfile.rocm_base> which setup ROCm software stack needed by the vLLM.
Build a docker image from <gh-file:docker/Dockerfile.rocm_base> which setup ROCm software stack needed by the vLLM.
**This step is optional as this rocm_base image is usually prebuilt and store at [Docker Hub](https://hub.docker.com/r/rocm/vllm-dev) under tag `rocm/vllm-dev:base` to speed up user experience.**
If you choose to build this rocm_base image yourself, the steps are as follows.
@ -140,12 +140,12 @@ It is important that the user kicks off the docker build using buildkit. Either
To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:
```console
DOCKER_BUILDKIT=1 docker build -f Dockerfile.rocm_base -t rocm/vllm-dev:base .
DOCKER_BUILDKIT=1 docker build -f docker/Dockerfile.rocm_base -t rocm/vllm-dev:base .
```
#### Build an image with vLLM
First, build a docker image from <gh-file:Dockerfile.rocm> and launch a docker container from the image.
First, build a docker image from <gh-file:docker/Dockerfile.rocm> and launch a docker container from the image.
It is important that the user kicks off the docker build using buildkit. Either the user put `DOCKER_BUILDKIT=1` as environment variable when calling docker build command, or the user needs to setup buildkit in the docker daemon configuration /etc/docker/daemon.json as follows and restart the daemon:
```console
@ -156,10 +156,10 @@ It is important that the user kicks off the docker build using buildkit. Either
}
```
<gh-file:Dockerfile.rocm> uses ROCm 6.3 by default, but also supports ROCm 5.7, 6.0, 6.1, and 6.2, in older vLLM branches.
<gh-file:docker/Dockerfile.rocm> uses ROCm 6.3 by default, but also supports ROCm 5.7, 6.0, 6.1, and 6.2, in older vLLM branches.
It provides flexibility to customize the build of docker image using the following arguments:
- `BASE_IMAGE`: specifies the base image used when running `docker build`. The default value `rocm/vllm-dev:base` is an image published and maintained by AMD. It is being built using <gh-file:Dockerfile.rocm_base>
- `BASE_IMAGE`: specifies the base image used when running `docker build`. The default value `rocm/vllm-dev:base` is an image published and maintained by AMD. It is being built using <gh-file:docker/Dockerfile.rocm_base>
- `USE_CYTHON`: An option to run cython compilation on a subset of python files upon docker build
- `BUILD_RPD`: Include RocmProfileData profiling tool in the image
- `ARG_PYTORCH_ROCM_ARCH`: Allows to override the gfx architecture values from the base docker image
@ -169,13 +169,13 @@ Their values can be passed in when running `docker build` with `--build-arg` opt
To build vllm on ROCm 6.3 for MI200 and MI300 series, you can use the default:
```console
DOCKER_BUILDKIT=1 docker build -f Dockerfile.rocm -t vllm-rocm .
DOCKER_BUILDKIT=1 docker build -f docker/Dockerfile.rocm -t vllm-rocm .
```
To build vllm on ROCm 6.3 for Radeon RX7900 series (gfx1100), you should pick the alternative base image:
```console
DOCKER_BUILDKIT=1 docker build --build-arg BASE_IMAGE="rocm/vllm-dev:navi_base" -f Dockerfile.rocm -t vllm-rocm .
DOCKER_BUILDKIT=1 docker build --build-arg BASE_IMAGE="rocm/vllm-dev:navi_base" -f docker/Dockerfile.rocm -t vllm-rocm .
```
To run the above docker image `vllm-rocm`, use the below command:

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