Compare commits

...

73 Commits

Author SHA1 Message Date
srayasam-amd
8cf99913c2 Update default.xml 2025-11-26 15:59:04 +05:30
srayasam-amd
14952deb48 Update rocm-7.1.1.xml 2025-11-26 15:58:00 +05:30
srayasam-amd
5579174d3b 7.1.1 GA update 2025-11-26 12:25:39 +05:30
srayasam-amd
a9d93da44c 7.1.1 GA update 2025-11-26 12:23:21 +05:30
Pratik Basyal
702d8e4c8e New link updated for MIgraphx (#5691) 2025-11-24 11:52:38 -05:00
amd-hsivasun
807ec6afcf [Ex CI] Update AMDMIGraphX CMake version (#5683) 2025-11-20 18:05:24 -05:00
amd-hsivasun
4c04da05c3 [Ex CI] Update pipeline ID for amdmis to monorepo (#5685) 2025-11-20 18:05:17 -05:00
dependabot[bot]
411334716c Bump rocm-docs-core from 1.28.0 to 1.29.0 in /docs/sphinx (#5659)
Bumps [rocm-docs-core](https://github.com/ROCm/rocm-docs-core) from 1.28.0 to 1.29.0.
- [Release notes](https://github.com/ROCm/rocm-docs-core/releases)
- [Changelog](https://github.com/ROCm/rocm-docs-core/blob/develop/CHANGELOG.md)
- [Commits](https://github.com/ROCm/rocm-docs-core/compare/v1.28.0...v1.29.0)

---
updated-dependencies:
- dependency-name: rocm-docs-core
  dependency-version: 1.29.0
  dependency-type: direct:production
  update-type: version-update:semver-minor
...

Signed-off-by: dependabot[bot] <support@github.com>
Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com>
2025-11-20 13:54:33 -05:00
amd-hsivasun
99f0875e70 [Ex CI] amdsmi monorepo enablement (#5677)
* [Ex CI] amdsmi monorepo enablement

* Fix amdsmi yaml
2025-11-20 13:52:01 -05:00
Adel Johar
8d51d0e803 [Ex CI] Add CXX override for MIGraphX 2025-11-19 10:45:10 +01:00
Adel Johar
66b8b96c72 [Ex CI] Add missing dependencies for rccl and mivisionx 2025-11-19 10:45:10 +01:00
cfallows-amd
72107dd6d5 [Ex CI] Adding dependencies to rocprofiler-compute azure workflow (#5667) 2025-11-14 12:24:56 -05:00
amd-hsivasun
99c1590057 [Ex CI] Added ROCM_PATH env var to rocprofiler-compute (#5666) 2025-11-14 12:19:06 -05:00
Carrie Fallows
636d4cc736 Adding dependencies to rocmDependencies in rocprof-compute yaml. Now needed for building because of rocprofiler-sdk dependency.
Signed-off-by: Carrie Fallows <Carrie.Fallows@amd.com>
2025-11-13 20:56:45 -05:00
amd-hsivasun
d1ce815d8d [Ex CI] Add rocprofiler-sdk dep to build for rocprofiler-compute (#5664) 2025-11-13 16:08:02 -05:00
Pratik Basyal
80ced95526 Changelog updated (#5660) 2025-11-13 10:18:15 -05:00
Pratik Basyal
09c6a9fdef 710 RCCL Known Issues and CRIU note update (#5647)
* RCCL ALltoALL known issue added

* CRIU note added

* Minor change

* Review feedback and AMDSMI detailed changelog link added

* Github issue link added
2025-11-11 16:54:36 -05:00
peterjunpark
eb956cfc5c Fixed wording related to VLLM_V1_USE_PREFILL_DECODE_ATTENTION (#5605)
Co-authored-by: Hongxia Yang <hongxia.yang@amd.com>
2025-11-11 09:22:11 -05:00
peterjunpark
e05cdca54f Fix references to vLLM docs (#5651) 2025-11-11 09:00:07 -05:00
anisha-amd
04c7374f41 Docs: frameworks 25.10 - compatibility - DGL and llama.cpp (#5648) 2025-11-10 15:26:54 -05:00
Alex Xu
39de859bd1 update rocm-docs-core to 1.29.0 2025-11-10 14:10:06 -05:00
amd-hsivasun
c8531ac7ea [Ex CI] Update pipeline Id for hipTensor to monorepo (#5638) 2025-11-10 13:32:10 -05:00
Pratik Basyal
420bbfa126 7.1.0 MI325X PLDM note updated (#5644)
* PLDM note updated

* Footnote update

* Note added to compatibility

* Lint error fixed
2025-11-08 09:08:21 -05:00
Pratik Basyal
4881887e2c rocBLAS precision known issue added [Develop] (#5641)
* rocBLAS precision known issue added

* IPC note removed

* Review feedback added
2025-11-07 19:45:33 -05:00
Pratik Basyal
148d6670ad rocBLAS and HipBLASLt known issue added 7.1.0 (#5634)
* rocBLAS and HipBLASLt known issue added

* Title warning fixed

* Jeff's feedback added

* Leo's feedback incorporated

* Minor feedback

* MI325X PLDM udpate

* Leo's feedback added

* PyTorch profiling issue added

* Changelog synced

* JAX section removed

* Ram's feedback added
2025-11-07 17:48:36 -05:00
amd-hsivasun
9770e9b6ef [Ex CI] hiptensor Enablement (#5636) 2025-11-07 16:08:46 -05:00
Joseph Macaranas
ee4cf66d67 [External CI] Add simde-devel in dnf mapping (#5635) 2025-11-07 00:59:35 -05:00
amd-hsivasun
6ba30f191c [Ex CI] rocWMMA increase timeout for test job (#5620) 2025-11-06 11:38:07 -05:00
yugang-amd
674dc355e4 vLLM 10/24 release (#5626)
* vLLM 10/24 release

* updates per SME inputs

* Update docs/how-to/rocm-for-ai/inference/benchmark-docker/vllm.rst

Co-authored-by: Jeffrey Novotny <jnovotny@amd.com>

---------

Co-authored-by: Jeffrey Novotny <jnovotny@amd.com>
2025-11-05 11:13:50 -05:00
Adel Johar
c7f3a56811 [Ex CI] Add half, rccl, and dependencies for rpp, mivisionx and rocjpeg 2025-11-05 15:59:15 +01:00
Pratik Basyal
0107fa731e ROCm Bandwidth test issue added (#5612) 2025-10-31 18:19:40 -04:00
Pratik Basyal
a87ec360e1 710 known issues update[Batch1] (#5604)
* Version update

* ROCm Bandwidth failure added

* Editorial feedback added

* Minor change

* rocprofv3 issue added

* Minor change

* ROCgdb issue added

* SME feedback incorpprated

* Leo's feedback added

* ROCm Compute Profiler known issue added

* Changelog synced
2025-10-31 14:57:13 -04:00
amd-hsivasun
7215e1e8c7 [Ex CI] Update rocwmma pipeline ID to monorepo (#5602) 2025-10-31 13:56:17 -04:00
amd-hsivasun
e4a59d8c66 [Ex CI] Enable rocWMMA Monorepo (#5597)
* [Ex CI] Enable rocWMMA Monorepo

* Updated to use component name parameter
2025-10-30 13:43:05 -04:00
Pratik Basyal
8108fe7275 7.1.0 Post GA updates (#5600)
* Post GA updates

* Mono repo link added

* AMD SMI changelog link removed
2025-10-30 13:27:25 -04:00
alexxu-amd
d3ff9d7c8e Merge pull request #5599 from ROCm/sync-develop-from-internal
Sync develop from internal for 7.1.0
2025-10-30 11:37:20 -04:00
Alex Xu
939ee7de0c Merge remote-tracking branch 'internal/develop' into sync-develop-from-internal 2025-10-30 11:15:00 -04:00
Pratik Basyal
f1e6c285dd 7.1.0 PRE GA Link reset (#616)
* Link reset

* Changelog synced and feedback incorporated

* Jeff's feedback added
2025-10-30 11:01:13 -04:00
alexxu-amd
ff1d9b4d69 Update versions.md for ROCm 7.1.0 GA (#615)
* Update versions.md

* fix linting
2025-10-30 10:00:32 -04:00
srayasam-amd
ef3fa601d5 7.1.0 GA update (#5598)
* PR for GA 7.1.0

* Create rocm-7.1.0.xml

* Update default.xml

* Update rocm-7.1.0.xml
2025-10-30 19:10:03 +05:30
Pratik Basyal
576191a104 710 release highlights update pre GA (#614)
* hipBLASLt highlights updated

* Flash attention highlight added

* PLDM highlight updated

* Spell fixes
2025-10-30 09:03:32 -04:00
Pratik Basyal
2db07b5cda Changelog updated for HIP (#613) 2025-10-29 18:27:05 -04:00
alexxu-amd
fe3dc988b8 Merge pull request #612 from ROCm/sync-develop-from-external
Sync develop from external for 7.1.0 GA
2025-10-29 17:13:01 -04:00
Alex Xu
36c879b7e0 resolve merge conflict 2025-10-29 17:08:07 -04:00
alexxu-amd
91450dca10 Merge branch 'develop' into sync-develop-from-external 2025-10-29 16:49:33 -04:00
Alex Xu
2de92767e6 Merge remote-tracking branch 'external/develop' into sync-develop-from-external 2025-10-29 16:48:29 -04:00
Pratik Basyal
54d226acd9 710 highlight updates [batch 2] (#611)
* Changelog updated for ROCdbg api"

* Systems profiler update

* Minor change
2025-10-29 16:42:57 -04:00
Pratik Basyal
f46d7ec00f 7.1.0 Release notes updated (#610)
* Release notes updated

* Changelog updated"

Changelog udpated
"

* Github link updated for Mono repo
2025-10-29 14:59:33 -04:00
Pratik Basyal
09c946b6fb 710 fixed issue update (#608)
* Resolved issues added

* Changelog synced

* Changelog synced
2025-10-29 12:28:09 -04:00
Pratik Basyal
5285669d98 7.1.0 release notes, changelog, and known issues update (#606)
* RCCL and hipblaslt changelog updated

* ROCProfiler-SDK highlight addede

* Review feedback from Leo and Swati added

Co-authored-by: Leo Paoletti <164940351+lpaoletti@users.noreply.github.com>
Co-authored-by: Swati Rawat <120587655+SwRaw@users.noreply.github.com>

* ROCprofiler-SDK added

* Minor edits

---------

Co-authored-by: Leo Paoletti <164940351+lpaoletti@users.noreply.github.com>
Co-authored-by: Swati Rawat <120587655+SwRaw@users.noreply.github.com>
2025-10-29 10:22:52 -04:00
Jan Stephan
9b3138cffa [Ex CI] Add aomp, aomp-extras, composable_kernel and rocALUTION
Remove libomp-dev

Signed-off-by: Jan Stephan <jan.stephan@amd.com>
2025-10-29 11:22:27 +01:00
Pratik Basyal
61fffe3250 7.0.2 Broken link, version and known issue update (#5591)
* Version and known issue update

* Historical compatibility updated
2025-10-28 15:16:15 -04:00
dependabot[bot]
43ccfbbe80 Bump rocm-docs-core from 1.26.0 to 1.27.0 in /docs/sphinx (#5570)
Bumps [rocm-docs-core](https://github.com/ROCm/rocm-docs-core) from 1.26.0 to 1.27.0.
- [Release notes](https://github.com/ROCm/rocm-docs-core/releases)
- [Changelog](https://github.com/ROCm/rocm-docs-core/blob/develop/CHANGELOG.md)
- [Commits](https://github.com/ROCm/rocm-docs-core/compare/v1.26.0...v1.27.0)

---
updated-dependencies:
- dependency-name: rocm-docs-core
  dependency-version: 1.27.0
  dependency-type: direct:production
  update-type: version-update:semver-minor
...

Signed-off-by: dependabot[bot] <support@github.com>
Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com>
2025-10-28 11:06:22 -04:00
peterjunpark
1515fb3779 Revert "Add xdit diffusion docs (#5576)" (#5580)
This reverts commit 4132a2609c.
2025-10-27 16:22:28 -04:00
randyh62
410a69efe4 Update RELEASE.md (#598)
Edit doorbell ring improvements
2025-10-27 13:14:45 -07:00
Joseph Macaranas
248cbf8bc1 [External CI] rccl triggers rocprofiler-sdk downstream (#5420)
- Update rccl component pipeline to include new additions made to projects already in super repos.
- Also update rccl to trigger rocproifler-sdk job upon completion.
- rocprofiler-sdk pipeline updated to include os parameter to enable future almalinux 8 job.
2025-10-27 12:14:30 -04:00
Istvan Kiss
0171dced89 Link fix and remove CentOS Stream mention from PyTorch release notes. (#593)
CentOS Stream not officially supported OS
2025-10-27 16:47:52 +01:00
Istvan Kiss
f2d6675839 Add back extra line to fix spellchecker (#604) 2025-10-27 16:39:29 +01:00
Pratik Basyal
7d0fad9aa8 Changelog duplication fixed (#601) 2025-10-27 10:38:44 -04:00
Kristoffer
4132a2609c Add xdit diffusion docs (#5576)
* Add xdit video diffusion base page.

* Update supported accelerators.

* Remove dependency on mad-tags.

* Update docker pull section.

* Update container launch instructions.

* Improve launch instruction options and layout.

* Add benchmark result outputs.

* Fix wrong HunyuanVideo path

* Finalize instructions.

* Consistent title.

* Make page and side-bar titles the same.

* Updated wordlist. Removed note container reg HF.

* Remove fp8_gemms in command and add release notes.

* Update accelerators naming.

* Add note regarding OOB performance.

* Fix admonition box.

* Overall fixes.
2025-10-27 14:56:55 +01:00
Pratik Basyal
c56d5b7495 7.1.0 release notes and compatibility footnote update (#599)
* RDC changelog and highlight addition

* Compatibility updated

* Minor change

* Consolidated changelog synced
2025-10-25 08:47:17 -05:00
Pratik Basyal
a2e2bd3277 710 Compatibility table fixed (#597)
* Compatibility table fixed

* Ryzen link updated

* rocJPEG added

* Driver updated

* Minor change

* PLDM udpate
2025-10-24 15:54:11 -04:00
randyh62
32d1cdcd90 Update RELEASE.md (#596)
Fix HIP 7.1 issues
2025-10-24 12:11:59 -07:00
Pratik Basyal
ac16524ebd 7.1.0 Compatibility updated (#595)
* Compatibility updated

* rocAL and MIgraphx changelog added

* Minor update

* Heading changes
2025-10-24 13:43:36 -04:00
Pratik Basyal
157d86b780 7.1.0 Release Notes Update (#591)
* Initial changelog added

* Changelog updated

* 7.1.0 draft changes

* Highlight changes

* Add release highlights

* formatting

* Order updated

* Highlights added

* Highlight update

* Changelog updated

* RCCL change

* RCCL changelog entry added

* Changelog updates added

* heading level fixed

* Updates added

* Leo's and Jeff's review feedback incorporated

Co-authored-by: Leo Paoletti <164940351+lpaoletti@users.noreply.github.com>
Co-authored-by: Jeffrey Novotny <jnovotny@amd.com>

* Release notes feedback

* Updated highlights

* Minor changes

* TOC for internal updated

---------

Co-authored-by: Peter Park <peter.park@amd.com>
Co-authored-by: Leo Paoletti <164940351+lpaoletti@users.noreply.github.com>
Co-authored-by: Jeffrey Novotny <jnovotny@amd.com>
2025-10-24 12:41:23 -04:00
peterjunpark
35ca027aa4 Fix broken links under rocm-for-ai/ (#5564) 2025-10-23 14:39:58 -04:00
peterjunpark
90c1d9068f add xref to vllm v1 optimization guide in workload.rst (#5560) 2025-10-22 13:47:46 -04:00
peterjunpark
cb8d21a0df Updates to the vLLM optimization guide for MI300X/MI355X (#5554)
* Expand vLLM optimization guide for MI300X/MI355X with comprehensive AITER coverage. attention backend selection, environment variables (HIP/RCCL/Quick Reduce), parallelism strategies, quantization (FP8/FP4), engine tuning, CUDA graph modes, and multi-node scaling.

Co-authored-by: PinSiang <pinsiang.tan@embeddedllm.com>
Co-authored-by: Hongxia Yang <62075498+hongxiayang@users.noreply.github.com>
Co-authored-by: pinsiangamd <pinsiang.tan@amd.com>
Co-authored-by: Jeffrey Novotny <jnovotny@amd.com>
2025-10-22 12:54:25 -04:00
Kiriti Gowda
6f8cf36279 Merge pull request #5530 from kiritigowda/kg/ctest-verbose
CTest - Output verbose
2025-10-21 13:16:12 -07:00
anisha-amd
8eb5fef37c Docs: frameworks compatibility standardization (#5488) 2025-10-21 16:12:18 -04:00
Pratik Basyal
a5f0b30a47 PLDM version update for MI350 series [Develop] (#5547)
* PLDM version update for MI350 series

* Minor update
2025-10-20 14:39:17 -04:00
Istvan Kiss
14ada81c41 Pytorch release notes with rocm 7.1 (#588)
* Add PyTorch release notes udpate

* Remove torchtext

Torchtext development stoped and only supported with PyTorch 2.2

* Update
2025-10-17 22:03:14 +02:00
kiritigowda
eba211d7f1 CTest - Output verbose 2025-10-16 15:22:27 -07:00
51 changed files with 5273 additions and 1521 deletions

View File

@@ -128,6 +128,9 @@ jobs:
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-cmake-custom.yml
parameters:
cmakeVersion: '3.28.6'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
@@ -152,6 +155,7 @@ jobs:
-DCMAKE_BUILD_TYPE=Release
-DGPU_TARGETS=${{ job.target }}
-DAMDGPU_TARGETS=${{ job.target }}
-DCMAKE_CXX_COMPILER=$(Agent.BuildDirectory)/rocm/llvm/bin/amdclang++
-DCMAKE_MODULE_PATH=$(Agent.BuildDirectory)/rocm/lib/cmake/hip
-DCMAKE_PREFIX_PATH=$(Agent.BuildDirectory)/rocm/llvm;$(Agent.BuildDirectory)/rocm
-DHALF_INCLUDE_DIR=$(Agent.BuildDirectory)/rocm/include
@@ -192,6 +196,9 @@ jobs:
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-cmake-custom.yml
parameters:
cmakeVersion: '3.28.6'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
@@ -217,6 +224,7 @@ jobs:
-DCMAKE_BUILD_TYPE=Release
-DGPU_TARGETS=${{ job.target }}
-DAMDGPU_TARGETS=${{ job.target }}
-DCMAKE_CXX_COMPILER=$(Agent.BuildDirectory)/rocm/llvm/bin/amdclang++
-DCMAKE_MODULE_PATH=$(Agent.BuildDirectory)/rocm/lib/cmake/hip
-DCMAKE_PREFIX_PATH=$(Agent.BuildDirectory)/rocm/llvm;$(Agent.BuildDirectory)/rocm
-DHALF_INCLUDE_DIR=$(Agent.BuildDirectory)/rocm/include

View File

@@ -1,10 +1,29 @@
parameters:
- name: componentName
type: string
default: amdsmi
- name: checkoutRepo
type: string
default: 'self'
- name: checkoutRef
type: string
default: ''
# monorepo related parameters
- name: sparseCheckoutDir
type: string
default: ''
- name: triggerDownstreamJobs
type: boolean
default: false
- name: downstreamAggregateNames
type: string
default: ''
- name: buildDependsOn
type: object
default: null
- name: unifiedBuild
type: boolean
default: false
# set to true if doing full build of ROCm stack
# and dependencies are pulled from same pipeline
- name: aggregatePipeline
@@ -31,7 +50,7 @@ parameters:
jobs:
- ${{ each job in parameters.jobMatrix.buildJobs }}:
- job: amdsmi_build_${{ job.os }}
- job: ${{ parameters.componentName }}_build_${{ job.os }}
pool:
${{ if eq(job.os, 'ubuntu2404') }}:
vmImage: 'ubuntu-24.04'
@@ -55,6 +74,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
checkoutRepo: ${{ parameters.checkoutRepo }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
os: ${{ job.os }}
@@ -65,50 +85,54 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/manifest.yml
parameters:
os: ${{ job.os }}
componentName: ${{ parameters.componentName }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-upload.yml
parameters:
os: ${{ job.os }}
componentName: ${{ parameters.componentName }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-links.yml
# - template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
# parameters:
# aptPackages: ${{ parameters.aptPackages }}
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: amdsmi_test_${{ job.os }}_${{ job.target }}
dependsOn: amdsmi_build_${{ job.os }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), variables['Build.DefinitionName'])),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
packageManager: ${{ job.packageManager }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
os: ${{ job.os }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
parameters:
runRocminfo: false
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: amdsmi
testDir: '$(Agent.BuildDirectory)'
testExecutable: 'sudo ./rocm/share/amd_smi/tests/amdsmitst'
testParameters: '--gtest_output=xml:./test_output.xml --gtest_color=yes'
os: ${{ job.os }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}
- ${{ if eq(parameters.unifiedBuild, False) }}:
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: ${{ parameters.componentName }}_test_${{ job.os }}_${{ job.target }}
dependsOn: ${{ parameters.componentName }}_build_${{ job.os }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), '${{ parameters.componentName }}')),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
packageManager: ${{ job.packageManager }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
os: ${{ job.os }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
parameters:
runRocminfo: false
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: ${{ parameters.componentName }}
testDir: '$(Agent.BuildDirectory)'
testExecutable: 'sudo ./rocm/share/amd_smi/tests/amdsmitst'
testParameters: '--gtest_output=xml:./test_output.xml --gtest_color=yes'
os: ${{ job.os }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}

View File

@@ -1,10 +1,29 @@
parameters:
- name: componentName
type: string
default: hipTensor
- name: checkoutRepo
type: string
default: 'self'
- name: checkoutRef
type: string
default: ''
# monorepo related parameters
- name: sparseCheckoutDir
type: string
default: ''
- name: triggerDownstreamJobs
type: boolean
default: false
- name: downstreamAggregateNames
type: string
default: ''
- name: buildDependsOn
type: object
default: null
- name: unifiedBuild
type: boolean
default: false
# set to true if doing full build of ROCm stack
# and dependencies are pulled from same pipeline
- name: aggregatePipeline
@@ -51,7 +70,7 @@ parameters:
jobs:
- ${{ each job in parameters.jobMatrix.buildJobs }}:
- job: hipTensor_build_${{ job.target }}
- job: ${{ parameters.componentName }}_build_${{ job.target }}
variables:
- group: common
- template: /.azuredevops/variables-global.yml
@@ -66,12 +85,15 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
checkoutRepo: ${{ parameters.checkoutRepo }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmDependencies }}
gpuTarget: ${{ job.target }}
aggregatePipeline: ${{ parameters.aggregatePipeline }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
extraBuildFlags: >-
@@ -85,9 +107,12 @@ jobs:
-GNinja
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/manifest.yml
parameters:
componentName: ${{ parameters.componentName }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-upload.yml
parameters:
componentName: ${{ parameters.componentName }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-links.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
@@ -95,44 +120,47 @@ jobs:
aptPackages: ${{ parameters.aptPackages }}
gpuTarget: ${{ job.target }}
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: hipTensor_test_${{ job.target }}
timeoutInMinutes: 90
dependsOn: hipTensor_build_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), variables['Build.DefinitionName'])),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: hipTensor
testDir: '$(Agent.BuildDirectory)/rocm/bin/hiptensor'
testParameters: '-E ".*-extended" --output-on-failure --force-new-ctest-process --output-junit test_output.xml'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}
- ${{ if eq(parameters.unifiedBuild, False) }}:
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: ${{ parameters.componentName }}_test_${{ job.target }}
timeoutInMinutes: 90
dependsOn: ${{ parameters.componentName }}_build_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), '${{ parameters.componentName }}')),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
gpuTarget: ${{ job.target }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: ${{ parameters.componentName }}
testDir: '$(Agent.BuildDirectory)/rocm/bin/hiptensor'
testParameters: '-E ".*-extended" --extra-verbose --output-on-failure --force-new-ctest-process --output-junit test_output.xml'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}

View File

@@ -1,10 +1,35 @@
parameters:
- name: componentName
type: string
default: rccl
- name: checkoutRepo
type: string
default: 'self'
- name: checkoutRef
type: string
default: ''
- name: systemsRepo
type: string
default: systems_repo
- name: systemsSparseCheckoutDir
type: string
default: 'projects/rocprofiler-sdk'
# monorepo related parameters
- name: sparseCheckoutDir
type: string
default: ''
- name: triggerDownstreamJobs
type: boolean
default: false
- name: downstreamAggregateNames
type: string
default: ''
- name: buildDependsOn
type: object
default: null
- name: unifiedBuild
type: boolean
default: false
# set to true if doing full build of ROCm stack
# and dependencies are pulled from same pipeline
- name: aggregatePipeline
@@ -57,19 +82,28 @@ parameters:
type: object
default:
buildJobs:
- gfx942:
target: gfx942
- gfx90a:
target: gfx90a
- { os: ubuntu2204, packageManager: apt, target: gfx942 }
- { os: ubuntu2204, packageManager: apt, target: gfx90a }
testJobs:
- gfx942:
target: gfx942
- gfx90a:
target: gfx90a
- { os: ubuntu2204, packageManager: apt, target: gfx942 }
- { os: ubuntu2204, packageManager: apt, target: gfx90a }
- name: downstreamComponentMatrix
type: object
default:
- rocprofiler-sdk:
name: rocprofiler-sdk
sparseCheckoutDir: ''
skipUnifiedBuild: 'false'
buildDependsOn:
- rccl_build
jobs:
- ${{ each job in parameters.jobMatrix.buildJobs }}:
- job: rccl_build_${{ job.target }}
- job: ${{ parameters.componentName }}_build_${{ job.os }}_${{ job.target }}
${{ if parameters.buildDependsOn }}:
dependsOn:
- ${{ each build in parameters.buildDependsOn }}:
- ${{ build }}_${{ job.os }}_${{ job.target }}
timeoutInMinutes: 120
variables:
- group: common
@@ -77,17 +111,23 @@ jobs:
- name: HIP_ROCCLR_HOME
value: $(Build.BinariesDirectory)/rocm
pool: ${{ variables.MEDIUM_BUILD_POOL }}
${{ if eq(job.os, 'almalinux8') }}:
container:
image: rocmexternalcicd.azurecr.io/manylinux228:latest
endpoint: ContainerService3
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
packageManager: ${{ job.packageManager }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-cmake-custom.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
checkoutRepo: ${{ parameters.checkoutRepo }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
submoduleBehaviour: recursive
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-vendor.yml
parameters:
@@ -97,10 +137,14 @@ jobs:
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmDependencies }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
aggregatePipeline: ${{ parameters.aggregatePipeline }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
os: ${{ job.os }}
extraBuildFlags: >-
-DCMAKE_CXX_COMPILER=$(Agent.BuildDirectory)/rocm/bin/hipcc
-DCMAKE_C_COMPILER=$(Agent.BuildDirectory)/rocm/bin/hipcc
@@ -112,58 +156,87 @@ jobs:
-GNinja
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/manifest.yml
parameters:
componentName: ${{ parameters.componentName }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-upload.yml
parameters:
componentName: ${{ parameters.componentName }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-links.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
gpuTarget: ${{ job.target }}
extraEnvVars:
- HIP_ROCCLR_HOME:::/home/user/workspace/rocm
installLatestCMake: true
- ${{ if eq(job.os, 'ubuntu2204') }}:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
gpuTarget: ${{ job.target }}
extraEnvVars:
- HIP_ROCCLR_HOME:::/home/user/workspace/rocm
installLatestCMake: true
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: rccl_test_${{ job.target }}
timeoutInMinutes: 120
dependsOn: rccl_build_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), variables['Build.DefinitionName'])),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: rccl
testDir: '$(Agent.BuildDirectory)/rocm/bin'
testExecutable: './rccl-UnitTests'
testParameters: '--gtest_output=xml:./test_output.xml --gtest_color=yes'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}
- ${{ if eq(parameters.unifiedBuild, False) }}:
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: ${{ parameters.componentName }}_test_${{ job.os }}_${{ job.target }}
timeoutInMinutes: 120
dependsOn: ${{ parameters.componentName }}_build_${{ job.os }}_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), '${{ parameters.componentName }}')),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
preTargetFilter: ${{ parameters.componentName }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: ${{ parameters.componentName }}
os: ${{ job.os }}
testDir: '$(Agent.BuildDirectory)/rocm/bin'
testExecutable: './rccl-UnitTests'
testParameters: '--gtest_output=xml:./test_output.xml --gtest_color=yes'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}
- ${{ if parameters.triggerDownstreamJobs }}:
- ${{ each component in parameters.downstreamComponentMatrix }}:
- ${{ if not(and(parameters.unifiedBuild, eq(component.skipUnifiedBuild, 'true'))) }}:
- template: /.azuredevops/components/${{ component.name }}.yml@pipelines_repo
parameters:
checkoutRepo: ${{ parameters.systemsRepo }}
sparseCheckoutDir: ${{ parameters.systemsSparseCheckoutDir }}
triggerDownstreamJobs: true
unifiedBuild: ${{ parameters.unifiedBuild }}
${{ if parameters.unifiedBuild }}:
buildDependsOn: ${{ component.unifiedBuild.buildDependsOn }}
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}+${{ component.unifiedBuild.downstreamAggregateNames }}
${{ else }}:
buildDependsOn: ${{ component.buildDependsOn }}
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}+${{ parameters.componentName }}

View File

@@ -1,10 +1,29 @@
parameters:
- name: componentName
type: string
default: rocWMMA
- name: checkoutRepo
type: string
default: 'self'
- name: checkoutRef
type: string
default: ''
# monorepo related parameters
- name: sparseCheckoutDir
type: string
default: ''
- name: triggerDownstreamJobs
type: boolean
default: false
- name: downstreamAggregateNames
type: string
default: ''
- name: buildDependsOn
type: object
default: null
- name: unifiedBuild
type: boolean
default: false
# set to true if doing full build of ROCm stack
# and dependencies are pulled from same pipeline
- name: aggregatePipeline
@@ -66,7 +85,11 @@ parameters:
jobs:
- ${{ each job in parameters.jobMatrix.buildJobs }}:
- job: rocWMMA_build_${{ job.target }}
- job: ${{ parameters.componentName }}_build_${{ job.target }}
${{ if parameters.buildDependsOn }}:
dependsOn:
- ${{ each build in parameters.buildDependsOn }}:
- ${{ build }}_${{ job.target }}
variables:
- group: common
- template: /.azuredevops/variables-global.yml
@@ -81,6 +104,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
parameters:
checkoutRepo: ${{ parameters.checkoutRepo }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
@@ -102,9 +126,12 @@ jobs:
# gfx1030 not supported in documentation
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/manifest.yml
parameters:
componentName: ${{ parameters.componentName }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-upload.yml
parameters:
componentName: ${{ parameters.componentName }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-links.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
@@ -112,43 +139,45 @@ jobs:
aptPackages: ${{ parameters.aptPackages }}
gpuTarget: ${{ job.target }}
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: rocWMMA_test_${{ job.target }}
timeoutInMinutes: 270
dependsOn: rocWMMA_build_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), variables['Build.DefinitionName'])),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: rocWMMA
testDir: '$(Agent.BuildDirectory)/rocm/bin/rocwmma'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}
- ${{ if eq(parameters.unifiedBuild, False) }}:
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: ${{ parameters.componentName }}_test_${{ job.target }}
timeoutInMinutes: 350
dependsOn: ${{ parameters.componentName }}_build_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
not(containsValue(split(variables['DISABLED_${{ upper(job.target) }}_TESTS'], ','), '${{ parameters.componentName }}')),
eq(${{ parameters.aggregatePipeline }}, False)
)
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ job.target }}_test_pool
workspace:
clean: all
steps:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/local-artifact-download.yml
parameters:
preTargetFilter: ${{ parameters.componentName }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-aqlprofile.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmTestDependencies }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/gpu-diagnostics.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: ${{ parameters.componentName }}
testDir: '$(Agent.BuildDirectory)/rocm/bin/rocwmma'
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
environment: test
gpuTarget: ${{ job.target }}

View File

@@ -81,7 +81,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: rocm-cmake
testParameters: '-E "pass-version-parent" --output-on-failure --force-new-ctest-process --output-junit test_output.xml'
testParameters: '-E "pass-version-parent" --extra-verbose --output-on-failure --force-new-ctest-process --output-junit test_output.xml'
os: ${{ job.os }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/manifest.yml
parameters:

View File

@@ -17,21 +17,38 @@ parameters:
- libdw-dev
- libglfw3-dev
- libmsgpack-dev
- libomp-dev
- libopencv-dev
- libtbb-dev
- libtiff-dev
- libva-amdgpu-dev
- libva2-amdgpu
- mesa-amdgpu-va-drivers
- libavcodec-dev
- libavformat-dev
- libavutil-dev
- ninja-build
- python3-pip
- protobuf-compiler
- libprotoc-dev
- name: pipModules
type: object
default:
- future==1.0.0
- pytz==2022.1
- numpy==1.23
- google==3.0.0
- protobuf==3.12.4
- onnx==1.12.0
- nnef==1.0.7
- name: rocmDependencies
type: object
default:
- AMDMIGraphX
- aomp
- aomp-extras
- clr
- half
- composable_kernel
- hipBLAS
- hipBLAS-common
- hipBLASLt
@@ -45,6 +62,9 @@ parameters:
- llvm-project
- MIOpen
- MIVisionX
- rocm_smi_lib
- rccl
- rocALUTION
- rocBLAS
- rocDecode
- rocFFT
@@ -63,7 +83,11 @@ parameters:
type: object
default:
- AMDMIGraphX
- aomp
- aomp-extras
- clr
- half
- composable_kernel
- hipBLAS
- hipBLAS-common
- hipBLASLt
@@ -77,6 +101,9 @@ parameters:
- llvm-project
- MIOpen
- MIVisionX
- rocm_smi_lib
- rccl
- rocALUTION
- rocBLAS
- rocDecode
- rocFFT
@@ -121,6 +148,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-other.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
registerROCmPackages: true
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-cmake-custom.yml
parameters:
@@ -220,5 +248,6 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
environment: test
gpuTarget: ${{ job.target }}

View File

@@ -65,6 +65,13 @@ parameters:
- pytest
- pytest-cov
- pytest-xdist
- name: rocmDependencies
type: object
default:
- clr
- llvm-project
- ROCR-Runtime
- rocprofiler-sdk
- name: rocmTestDependencies
type: object
default:
@@ -101,10 +108,12 @@ jobs:
${{ if parameters.buildDependsOn }}:
dependsOn:
- ${{ each build in parameters.buildDependsOn }}:
- ${{ build }}_${{ job.os }}_${{ job.target }}
- ${{ build }}_${{ job.target }}
variables:
- group: common
- template: /.azuredevops/variables-global.yml
- name: ROCM_PATH
value: $(Agent.BuildDirectory)/rocm
pool:
vmImage: ${{ variables.BASE_BUILD_POOL }}
workspace:
@@ -119,6 +128,14 @@ jobs:
parameters:
checkoutRepo: ${{ parameters.checkoutRepo }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/dependencies-rocm.yml
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmDependencies }}
gpuTarget: ${{ job.target }}
aggregatePipeline: ${{ parameters.aggregatePipeline }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
extraBuildFlags: >-

View File

@@ -79,27 +79,27 @@ parameters:
type: object
default:
buildJobs:
- gfx942:
target: gfx942
- gfx90a:
target: gfx90a
- { os: ubuntu2204, packageManager: apt, target: gfx942 }
- { os: ubuntu2204, packageManager: apt, target: gfx90a }
testJobs:
- gfx942:
target: gfx942
- gfx90a:
target: gfx90a
- { os: ubuntu2204, packageManager: apt, target: gfx942 }
- { os: ubuntu2204, packageManager: apt, target: gfx90a }
jobs:
- ${{ each job in parameters.jobMatrix.buildJobs }}:
- job: rocprofiler_sdk_build_${{ job.target }}
- job: rocprofiler_sdk_build_${{ job.os }}_${{ job.target }}
${{ if parameters.buildDependsOn }}:
dependsOn:
- ${{ each build in parameters.buildDependsOn }}:
- ${{ build }}_${{ job.target }}
- ${{ build }}_${{ job.os}}_${{ job.target }}
variables:
- group: common
- template: /.azuredevops/variables-global.yml
pool: ${{ variables.MEDIUM_BUILD_POOL }}
${{ if eq(job.os, 'almalinux8') }}:
container:
image: rocmexternalcicd.azurecr.io/manylinux228:latest
endpoint: ContainerService3
workspace:
clean: all
steps:
@@ -107,6 +107,7 @@ jobs:
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
packageManager: ${{ job.packageManager }}
registerROCmPackages: true
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
@@ -118,6 +119,7 @@ jobs:
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmDependencies }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
aggregatePipeline: ${{ parameters.aggregatePipeline }}
${{ if parameters.triggerDownstreamJobs }}:
@@ -132,6 +134,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
componentName: ${{ parameters.componentName }}
os: ${{ job.os }}
extraBuildFlags: >-
-DCMAKE_PREFIX_PATH=$(Agent.BuildDirectory)/rocm
-DROCPROFILER_BUILD_TESTS=ON
@@ -143,6 +146,7 @@ jobs:
parameters:
componentName: ${{ parameters.componentName }}
sparseCheckoutDir: ${{ parameters.sparseCheckoutDir }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/artifact-upload.yml
parameters:
@@ -158,8 +162,8 @@ jobs:
- ${{ if eq(parameters.unifiedBuild, False) }}:
- ${{ each job in parameters.jobMatrix.testJobs }}:
- job: rocprofiler_sdk_test_${{ job.target }}
dependsOn: rocprofiler_sdk_build_${{ job.target }}
- job: rocprofiler_sdk_test_${{ job.os }}_${{ job.target }}
dependsOn: rocprofiler_sdk_build_${{ job.os }}_${{ job.target }}
condition:
and(succeeded(),
eq(variables['ENABLE_${{ upper(job.target) }}_TESTS'], 'true'),
@@ -177,6 +181,7 @@ jobs:
parameters:
aptPackages: ${{ parameters.aptPackages }}
pipModules: ${{ parameters.pipModules }}
packageManager: ${{ job.packageManager }}
registerROCmPackages: true
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/preamble.yml
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/checkout.yml
@@ -188,6 +193,7 @@ jobs:
parameters:
checkoutRef: ${{ parameters.checkoutRef }}
dependencyList: ${{ parameters.rocmDependencies }}
os: ${{ job.os }}
gpuTarget: ${{ job.target }}
${{ if parameters.triggerDownstreamJobs }}:
downstreamAggregateNames: ${{ parameters.downstreamAggregateNames }}
@@ -202,6 +208,7 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/build-cmake.yml
parameters:
componentName: ${{ parameters.componentName }}
os: ${{ job.os }}
extraBuildFlags: >-
-DCMAKE_PREFIX_PATH=$(Agent.BuildDirectory)/rocm
-DROCPROFILER_BUILD_TESTS=ON
@@ -213,7 +220,8 @@ jobs:
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/test.yml
parameters:
componentName: ${{ parameters.componentName }}
testDir: $(Agent.BuildDirectory)/s/build
os: ${{ job.os }}
testDir: $(Agent.BuildDirectory)/build
- template: ${{ variables.CI_TEMPLATE_PATH }}/steps/docker-container.yml
parameters:
aptPackages: ${{ parameters.aptPackages }}

View File

@@ -63,6 +63,7 @@ parameters:
libopenblas-dev: openblas-devel
libopenmpi-dev: openmpi-devel
libpci-dev: libpciaccess-devel
libsimde-dev: simde-devel
libssl-dev: openssl-devel
# note: libstdc++-devel is in the base packages list
libsystemd-dev: systemd-devel

View File

@@ -35,8 +35,8 @@ parameters:
developBranch: develop
hasGpuTarget: true
amdsmi:
pipelineId: 99
developBranch: amd-staging
pipelineId: 376
developBranch: develop
hasGpuTarget: false
aomp-extras:
pipelineId: 111
@@ -115,7 +115,7 @@ parameters:
developBranch: develop
hasGpuTarget: true
hipTensor:
pipelineId: 105
pipelineId: 374
developBranch: develop
hasGpuTarget: true
llvm-project:
@@ -263,7 +263,7 @@ parameters:
developBranch: develop
hasGpuTarget: true
rocWMMA:
pipelineId: 109
pipelineId: 370
developBranch: develop
hasGpuTarget: true
rpp:

View File

@@ -13,7 +13,7 @@ parameters:
default: ctest
- name: testParameters
type: string
default: --output-on-failure --force-new-ctest-process --output-junit test_output.xml
default: --extra-verbose --output-on-failure --force-new-ctest-process --output-junit test_output.xml
- name: extraTestParameters
type: string
default: ''

View File

@@ -27,6 +27,7 @@ ASICs
ASan
ASAN
ASm
Async
ATI
atomicRMW
AddressSanitizer
@@ -34,6 +35,7 @@ AlexNet
Andrej
Arb
Autocast
autograd
BARs
BatchNorm
BLAS
@@ -86,9 +88,11 @@ Conda
ConnectX
CountOnes
CuPy
customizable
da
Dashboarding
Dataloading
dataflows
DBRX
DDR
DF
@@ -130,10 +134,12 @@ ELMo
ENDPGM
EPYC
ESXi
EP
EoS
etcd
fas
FBGEMM
FiLM
FIFOs
FFT
FFTs
@@ -154,10 +160,12 @@ Fortran
Fuyu
GALB
GAT
GATNE
GCC
GCD
GCDs
GCN
GCNN
GDB
GDDR
GDR
@@ -176,13 +184,16 @@ Glibc
GLXT
Gloo
GMI
GNN
GNNs
GPG
GPR
GPT
GPU
GPU's
GPUDirect
GPUs
Graphbolt
GraphBolt
GraphSage
GRBM
GRE
@@ -212,6 +223,7 @@ Haswell
Higgs
href
Hyperparameters
HybridEngine
Huggingface
IB
ICD
@@ -298,6 +310,7 @@ Makefiles
Matplotlib
Matrox
MaxText
MBT
Megablocks
Megatrends
Megatron
@@ -307,6 +320,7 @@ Meta's
Miniconda
MirroredStrategy
Mixtral
MLA
MosaicML
MoEs
Mooncake
@@ -349,6 +363,7 @@ OFED
OMM
OMP
OMPI
OOM
OMPT
OMPX
ONNX
@@ -394,6 +409,7 @@ Profiler's
PyPi
Pytest
PyTorch
QPS
Qcycles
Qwen
RAII
@@ -669,6 +685,7 @@ denoised
denoises
denormalize
dequantization
dequantized
dequantizes
deserializers
detections
@@ -784,6 +801,7 @@ linalg
linearized
linter
linux
llm
llvm
lm
localscratch
@@ -834,6 +852,7 @@ passthrough
pe
perfcounter
performant
piecewise
perl
pragma
pre
@@ -980,6 +999,7 @@ tokenizer
tokenizes
toolchain
toolchains
topk
toolset
toolsets
torchtitan
@@ -1007,6 +1027,7 @@ USM
UTCL
UTIL
utils
UX
vL
variational
vdi

View File

@@ -4,6 +4,789 @@ This page is a historical overview of changes made to ROCm components. This
consolidated changelog documents key modifications and improvements across
different versions of the ROCm software stack and its components.
## ROCm 7.1.0
See the [ROCm 7.1.0 release notes](https://rocm.docs.amd.com/en/docs-7.1.0/about/release-notes.html#rocm-7-1-0-release-notes)
for a complete overview of this release.
### **AMD SMI** (26.1.0)
#### Added
* `GPU LINK PORT STATUS` table to `amd-smi xgmi` command. The `amd-smi xgmi -s` or `amd-smi xgmi --source-status` will now show the `GPU LINK PORT STATUS` table.
* `amdsmi_get_gpu_revision()` to Python API. This function retrieves the GPU revision ID. Available in `amdsmi_interface.py` as `amdsmi_get_gpu_revision()`.
* Gpuboard and baseboard temperatures to `amd-smi metric` command.
#### Changed
* Struct `amdsmi_topology_nearest_t` member `processor_list`. Member size changed, processor_list[AMDSMI_MAX_DEVICES * AMDSMI_MAX_NUM_XCP].
* `amd-smi reset --profile` behavior so that it won't also reset the performance level.
* The performance level can still be reset using `amd-smi reset --perf-determinism`.
* Setting power cap is now available in Linux Guest. You can now use `amd-smi set --power-cap` as usual in Linux Guest systems too.
* Changed `amd-smi static --vbios` to `amd-smi static --ifwi`.
* VBIOS naming is replaced with IFWI (Integrated Firmware Image) for improved clarity and consistency.
* AMD Instinct MI300 Series GPUs (and later) now use a new version format with enhanced build information.
* Legacy command `amd-smi static --vbios` remains functional for backward compatibility, but displays updated IFWI heading.
* The Python, C, and Rust API for `amdsmi_get_gpu_vbios_version()` will now have a new field called `boot_firmware`, which will return the legacy vbios version number that is also known as the Unified BootLoader (UBL) version.
#### Optimized
* Optimized the way `amd-smi process` validates, which processes are running on a GPU.
#### Resolved issues
* Fixed a CPER record count mismatch issue when using the `amd-smi ras --cper --file-limit`. Updated the deletion calculation to use `files_to_delete = len(folder_files) - file_limit` for exact file count management.
* Fixed the event monitoring segfaults causing RDC to crash. Added the mutex locking around access to device event notification file pointer.
* Fixed an issue where using `amd-smi ras --folder <folder_name>` was forcing the created folder's name to be lowercase. This fix also makes all string input options case-insensitive.
* Fixed certain output in `amd-smi monitor` when GPUs are partitioned. It fixes the issue with amd-smi monitor such as: `amd-smi monitor -Vqt`, `amd-smi monitor -g 0 -Vqt -w 1`, and `amd-smi monitor -Vqt --file /tmp/test1`. These commands will now be able to display as normal in partitioned GPU scenarios.
```{note}
See the full [AMD SMI changelog](https://github.com/ROCm/amdsmi/blob/release/rocm-rel-7.1/CHANGELOG.md#amd_smi_lib-for-rocm-710) for details, examples, and in-depth descriptions.
```
### **Composable Kernel** (1.1.0)
#### Added
* Support for hdim as a multiple of 32 for FMHA (fwd/fwd_splitkv/bwd).
* Support for elementwise kernel.
#### Upcoming changes
* Non-grouped convolutions are deprecated. Their functionality is supported by grouped convolution.
### **HIP** (7.1.0)
#### Added
* New HIP APIs
- `hipModuleGetFunctionCount` returns the number of functions within a module
- `hipMemsetD2D8` sets 2D memory range with specified 8-bit values
- `hipMemsetD2D8Async` asynchronously sets 2D memory range with specified 8-bit values
- `hipMemsetD2D16` sets 2D memory range with specified 16-bit values
- `hipMemsetD2D16Async` asynchronously sets 2D memory range with specified 16-bit values
- `hipMemsetD2D32` sets 2D memory range with specified 32-bit values
- `hipMemsetD2D32Async` asynchronously sets 2D memory range with specified 32-bit values
- `hipStreamSetAttribute` sets attributes such as synchronization policy for a given stream
- `hipStreamGetAttribute` returns attributes such as priority for a given stream
- `hipModuleLoadFatBinary` loads fatbin binary to a module
- `hipMemcpyBatchAsync` asynchronously performs a batch copy of 1D or 2D memory
- `hipMemcpy3DBatchAsync` asynchronously performs a batch copy of 3D memory
- `hipMemcpy3DPeer` copies memory between devices
- `hipMemcpy3DPeerAsync` asynchronously copies memory between devices
- `hipMemsetD2D32Async` asynchronously sets 2D memory range with specified 32-bit values
- `hipMemPrefetchAsync_v2` prefetches memory to the specified location
- `hipMemAdvise_v2` advises about the usage of a given memory range
- `hipGetDriverEntryPoint ` gets function pointer of a HIP API.
- `hipSetValidDevices` sets a default list of devices that can be used by HIP
- `hipStreamGetId` queries the id of a stream
* Support for nested tile partitioning within cooperative groups, matching CUDA functionality.
#### Optimized
* Improved HIP module loading latency.
* Optimized kernel metadata retrieval during module post-load.
* Optimized doorbell ring in HIP runtime for the following performance improvements:
- Makes efficient packet batching for HIP graph launch
- Dynamic packet copying based on a defined maximum threshold or power-of-2 staggered copy pattern
- If timestamps are not collected for a signal for reuse, it creates a new signal. This can potentially increase the signal footprint if the handler doesn't run fast enough
#### Resolved issues
* A segmentation fault occurred in the application when capturing the same HIP graph from multiple streams with cross-stream dependencies. The HIP runtime has fixed an issue where a forked stream joined to a parent stream that was not originally created with the API `hipStreamBeginCapture`.
* Different behavior of en-queuing command on a legacy stream during stream capture on AMD ROCM platform, compared with CUDA. HIP runtime now returns an error in this specific situation to match CUDA behavior.
* Failure of memory access fault occurred in rocm-examples test suite. When Heterogeneous Memory Management (HMM) is not supported in the driver, `hipMallocManaged` will only allocate system memory in HIP runtime.
#### Known issues
* SPIR-V-enabled applications might encounter a segmentation fault. The problem doesn't exist when SPIR-V is disabled. The issue will be fixed in the next ROCm release.
### **hipBLAS** (3.1.0)
#### Added
* `--clients-only` build option to only build clients against a prebuilt library.
* gfx1150, gfx1151, gfx1200, and gfx1201 support enabled.
* FORTRAN enabled for the Microsoft Windows build and tests.
* Additional reference library fallback options added.
#### Changed
* Improved the build time for clients by removing `clients_common.cpp` from the hipblas-test build.
### **hipBLASLt** (1.1.0)
#### Added
* Fused Clamp GEMM for ``HIPBLASLT_EPILOGUE_CLAMP_EXT`` and ``HIPBLASLT_EPILOGUE_CLAMP_BIAS_EXT``. This feature requires the minimum (``HIPBLASLT_MATMUL_DESC_EPILOGUE_ACT_ARG0_EXT``) and maximum (``HIPBLASLT_MATMUL_DESC_EPILOGUE_ACT_ARG1_EXT``) to be set.
* Support for ReLU/Clamp activation functions with auxiliary output for the `FP16` and `BF16` data types for gfx942 to capture intermediate results. This feature is enabled for ``HIPBLASLT_EPILOGUE_RELU_AUX``, ``HIPBLASLT_EPILOGUE_RELU_AUX_BIAS``, ``HIPBLASLT_EPILOGUE_CLAMP_AUX_EXT``, and ``HIPBLASLT_EPILOGUE_CLAMP_AUX_BIAS_EXT``.
* Support for `HIPBLAS_COMPUTE_32F_FAST_16BF` for FP32 data type for gfx950 only.
* CPP extension APIs ``setMaxWorkspaceBytes`` and ``getMaxWorkspaceBytes``.
* Feature to print logs (using ``HIPBLASLT_LOG_MASK=32``) for Grouped GEMM.
* Support for swizzleA by using the hipblaslt-ext cpp API.
* Support for hipBLASLt extop for gfx11XX and gfx12XX.
#### Changed
* ``hipblasLtMatmul()`` now returns an error when the workspace size is insufficient, rather than causing a segmentation fault.
#### Optimized
* `TF32` kernel optimization for the AMD Instinct MI355X GPU to enhance training and inference efficiency.
#### Resolved issues
* Fixed incorrect results when using ldd and ldc dimension parameters with some solutions.
### **hipCUB** (4.1.0)
#### Added
* Exposed Thread-level reduction API `hipcub::ThreadReduce`.
* `::hipcub::extents`, with limited parity to C++23's `std::extents`. Only `static extents` is supported; `dynamic extents` is not. Helper structs have been created to perform computations on `::hipcub::extents` only when the backend is rocPRIM. For the CUDA backend, similar functionality exists.
* `projects/hipcub/hipcub/include/hipcub/backend/rocprim/util_mdspan.hpp` to support `::hipcub::extents`.
* `::hipcub::ForEachInExtents` API.
* `hipcub::DeviceTransform::Transform` and `hipcub::DeviceTransform::TransformStableArgumentAddresses`.
* hipCUB and its dependency rocPRIM have been moved into the new `rocm-libraries` [monorepo repository](https://github.com/ROCm/rocm-libraries). This repository contains a number of ROCm libraries that are frequently used together.
* The repository migration requires a few changes to the way that hipCUB fetches library dependencies.
* CMake build option `ROCPRIM_FETCH_METHOD` may be set to one of the following:
* `PACKAGE` - (default) searches for a preinstalled packaged version of the dependency. If it is not found, the build will fall back using option `DOWNLOAD`, below.
* `DOWNLOAD` - downloads the dependency from the rocm-libraries repository. If git >= 2.25 is present, this option uses a sparse checkout that avoids downloading more than it needs to. If not, the whole monorepo is downloaded (this may take some time).
* `MONOREPO` - this option is intended to be used if you are building hipCUB from within a copy of the rocm-libraries repository that you have cloned (and therefore already contains rocPRIM). When selected, the build will try find the dependency in the local repository tree. If it cannot be found, the build will attempt to use git to perform a sparse-checkout of rocPRIM. If that also fails, it will fall back to using the `DOWNLOAD` option described above.
* A new CMake option `-DUSE_SYSTEM_LIB` to allow tests to be built from installed `hipCUB` provided by the system.
#### Changed
* Changed include headers to avoid relative includes that have slipped in.
* Changed `CUDA_STANDARD` for tests in `test/hipcub`, due to C++17 APIs such as `std::exclusive_scan` is used in some tests. Still use `CUDA_STANDARD 14` for `test/extra`.
* Changed `CCCL_MINIMUM_VERSION` to `2.8.2` to align with CUB.
* Changed `cmake_minimum_required` from `3.16` to `3.18`, in order to support `CUDA_STANDARD 17` as a valid value.
* Add support for large num_items `DeviceScan`, `DevicePartition` and `Reduce::{ArgMin, ArgMax}`.
* Added tests for large num_items.
* The previous dependency-related build option `DEPENDENCIES_FORCE_DOWNLOAD` has been renamed `EXTERNAL_DEPS_FORCE_DOWNLOAD` to differentiate it from the new rocPRIM dependency option described above. Its behavior remains the same - it forces non-ROCm dependencies (Google Benchmark and Google Test) to be downloaded rather than searching for installed packages. This option defaults to `OFF`.
#### Removed
* Removed `TexRefInputIterator`, which was removed from CUB after CCCL's 2.6.0 release. This API should have already been removed, but somehow it remained and was not tested.
* Deprecated `hipcub::ConstantInputIterator`, use `rocprim::constant_iterator` or `rocthrust::constant_iterator` instead.
* Deprecated `hipcub::CountingInputIterator`, use `rocprim::counting_iterator` or `rocthrust::counting_iterator` instead.
* Deprecated `hipcub::DiscardOutputIterator`, use `rocprim::discard_iterator` or `rocthrust::discard_iterator` instead.
* Deprecated `hipcub::TransformInputIterator`, use `rocprim::transform_iterator` or `rocthrust::transform_iterator` instead.
* Deprecated `hipcub::AliasTemporaries`, which is considered to be an internal API. Moved to the detail namespace.
* Deprecated almost all functions in `projects/hipcub/hipcub/include/hipcub/backend/rocprim/util_ptx.hpp`.
* Deprecated hipCUB macros: `HIPCUB_MAX`, `HIPCUB_MIN`, `HIPCUB_QUOTIENT_FLOOR`, `HIPCUB_QUOTIENT_CEILING`, `HIPCUB_ROUND_UP_NEAREST` and `HIPCUB_ROUND_DOWN_NEAREST`.
#### Known issues
* The `__half` template specializations of Simd operators are currently disabled due to possible build issues with PyTorch.
### **hipFFT** (1.0.21)
#### Added
* Improved test coverage of multi-stream plans, user-specified work areas, and default stride calculation.
* Experimental introduction of hipFFTW library, interfacing rocFFT on AMD platforms using the same symbols as FFTW3 (with partial support).
### **hipfort** (0.7.1)
#### Added
* Support for building with CMake 4.0.
#### Resolved issues
* Fixed a potential integer overflow issue in `hipMalloc` interfaces.
### **hipRAND** (3.1.0)
#### Resolved issues
* Updated error handling for several hipRAND unit tests to accommodate the new `hipGetLastError` behavior that was introduced in ROCm 7.0.0. As of ROCm 7.0.0, the internal error state is cleared on each call to `hipGetLastError` rather than on every HIP API call.
### **hipSOLVER** (3.1.0)
#### Added
* Extended test suites for `hipsolverDn` compatibility functions.
#### Changed
* Changed code coverage to use `llvm-cov` instead of `gcov`.
### **hipSPARSE** (4.1.0)
#### Added
* Brain half float mixed precision for the following routines:
* `hipsparseAxpby` where X and Y use bfloat16 and result and the compute type use float.
* `hipsparseSpVV` where X and Y use bfloat16 and result and the compute type use float.
* `hipsparseSpMV` where A and X use bfloat16 and Y and the compute type use float.
* `hipsparseSpMM` where A and B use bfloat16 and C and the compute type use float.
* `hipsparseSDDMM` where A and B use bfloat16 and C and the compute type use float.
* `hipsparseSDDMM` where A and B and C use bfloat16 and the compute type use float.
* Half float mixed precision to `hipsparseSDDMM` where A and B and C use float16 and the compute type use float.
* Brain half float uniform precision to `hipsparseScatter` and `hipsparseGather` routines.
* Documentation for installing and building hipSPARSE on Microsoft Windows.
### **hipSPARSELt** (0.2.5)
#### Changed
* Changed the behavior of the Relu activation.
#### Optimized
* Provided more kernels for the `FP16` and `BF16` data types.
### **MIGraphX** (2.14.0)
#### Added
* Python 3.13 support.
* PyTorch wheels to the Dockerfile.
* Python API for returning serialized bytes.
* `fixed_pad` operator for padding dynamic shapes to the maximum static shape.
* Matcher to upcast base `Softmax` operations.
* Support for the `convolution_backwards` operator through rocMLIR.
* `LSE` output to attention fusion.
* Flags to `EnableControlFlowGuard` due to BinSkim errors.
* New environment variable documentation and reorganized structure.
* `stash_type` attribute for `LayerNorm` and expanded test coverage.
* Operator builders (phase 2).
* `MIGRAPHX_GPU_HIP_FLAGS` to allow extra HIP compile flags.
#### Changed
* Updated C API to include `current()` caller information in error reporting.
* Updated documentation dependencies:
* **rocm-docs-core** bumped from 1.21.1 → 1.25.0 across releases.
* **Doxygen** updated to 1.14.0.
* **urllib3** updated from 2.2.2 → 2.5.0.
* Updated `src/CMakeLists.txt` to support `msgpack` 6.x (`msgpack-cxx`).
* Updated model zoo test generator to fix test issues and add summary logging.
* Updated `rocMLIR` and `ONNXRuntime` mainline references across commits.
* Updated module sorting algorithm for improved reliability.
* Restricted FP8 quantization to `dot` and `convolution` operators.
* Moved ONNX Runtime launcher script into MIGraphX and updated build scripts.
* Simplified ONNX `Resize` operator parser for correctness and maintainability.
* Updated `any_ptr` assertion to avoid failure on default HIP stream.
* Print kernel and module information on compile failure.
#### Removed
* Removed Perl dependency from SLES builds.
* Removed redundant includes and unused internal dependencies.
#### Optimized
* Reduced nested visits in reference operators to improve compile time.
* Avoided dynamic memory allocation during kernel launches.
* Removed redundant NOP instructions for GFX11/12 platforms.
* Improved `Graphviz` output (node color and layout updates).
* Optimized interdependency checking during compilation.
* Skip hipBLASLt solutions that require a workspace size larger than 128 MB for efficient memory utilization.
#### Resolved issues
* Error in `MIGRAPHX_GPU_COMPILE_PARALLEL` documentation (#4337).
* rocMLIR `rewrite_reduce` issue (#4218).
* Bug with `invert_permutation` on GPU (#4194).
* Compile error when `MIOPEN` is disabled (missing `std` includes) (#4281).
* ONNX `Resize` parsing when input and output shapes are identical (#4133, #4161).
* Issue with MHA in attention refactor (#4152).
* Synchronization issue from upstream ONNX Runtime (#4189).
* Spelling error in “Contiguous” (#4287).
* Tidy complaint about duplicate header (#4245).
* `reshape`, `transpose`, and `broadcast` rewrites between pointwise and reduce operators (#3978).
* Extraneous include file in HIPRTC-based compilation (#4130).
* CI Perl dependency issue for SLES builds (#4254).
* Compiler warnings for ROCm 7.0 of ``error: unknown warning option '-Wnrvo'``(#4192).
### **MIOpen** (3.5.1)
#### Added
* Added a new trust verify find mode.
* Ported Op4dTensorLite kernel from OpenCL to HIP.
* Implemented a generic HIP kernel for backward layer normalization.
#### Changed
* Kernel DBs moved from Git LFS to DVC (Data Version Control).
#### Optimized
* [Conv] Enabled Composable Kernel (CK) implicit gemms on gfx950.
#### Resolved issues
* [BatchNorm] Fixed a bug for the NHWC layout when a variant was not applicable.
* Fixed a bug that caused a zero-size LDS array to be defined on Navi.
### **MIVisionX** (3.4.0)
#### Added
* VX_RPP - Update blur
* HIP - HIP_CHECK for hipLaunchKernelGGL for gated launch
#### Changed
* AMD Custom V1.1.0 - OpenMP updates
* HALF - Fix half.hpp path updates
#### Resolved issues
* AMD Custom - dependency linking errors resolved
* VX_RPP - Fix memory leak
* Packaging - Remove Meta Package dependency for HIP
#### Known issues
* Installation on RedHat/SLES requires the manual installation of the `FFMPEG` &amp; `OpenCV` dev packages.
#### Upcoming changes
* VX_AMD_MEDIA - rocDecode support for hardware decode
### **RCCL** (2.27.7)
#### Added
* `RCCL_P2P_BATCH_THRESHOLD` to set the message size limit for batching P2P operations. This mainly affects small message performance for alltoall at a large scale but also applies to alltoallv.
* `RCCL_P2P_BATCH_ENABLE` to enable batching P2P operations to receive performance gains for smaller messages up to 4MB for alltoall when the workload requires it. This is to avoid performance dips for larger messages.
#### Changed
* The MSCCL++ feature is now disabled by default. The `--disable-mscclpp` build flag is replaced with `--enable-mscclpp` in the `rccl/install.sh` script.
* Compatibility with NCCL 2.27.7.
#### Optimized
* Enabled and optimized batched P2P operations to improve small message performance for `AllToAll` and `AllGather`.
* Optimized channel count selection to improve efficiency for small-to-medium message sizes in `ReduceScatter`.
* Changed code inlining to improve latency for small message sizes for `AllReduce`, `AllGather`, and `ReduceScatter`.
#### Known issues
* Symmetric memory kernels are currently disabled due to ongoing CUMEM enablement work.
* When running this version of RCCL using ROCm versions earlier than 6.4.0, the user must set the environment flag `HSA_NO_SCRATCH_RECLAIM=1`.
### **rocAL** (2.4.0)
#### Added
* JAX iterator support in rocAL
* rocJPEG - Fused Crop decoding support
#### Changed
* CropResize - updates and fixes
* Packaging - Remove Meta Package dependency for HIP
#### Resolved issues
* OpenMP - dependency linking errors resolved.
* Bugfix - memory leaks in rocAL.
#### Known issues
* Package installation on SLES requires manually installing `TurboJPEG`.
* Package installation on RedHat and SLES requires manually installing the `FFMPEG Dev` package.
### **rocALUTION** (4.0.1)
#### Added
* Support for gfx950.
#### Changed
* Updated the default build standard to C++17 when compiling rocALUTION from source (previously C++14).
#### Optimized
* Improved and expanded user documentation.
#### Resolved issues
* Fixed a bug in the GPU hashing algorithm that occurred when not compiling with -O2/-O3.
* Fixed an issue with the SPAI preconditioner when using complex numbers.
### **rocBLAS** (5.1.0)
#### Added
* Sample for clients using OpenMP threads calling rocBLAS functions.
* gfx1150 and gfx1151 enabled.
#### Changed
* By default, the Tensile build is no longer based on `tensile_tag.txt` but uses the same commit from shared/tensile in the rocm-libraries repository. The rmake or install `-t` option can build from another local path with a different commit.
#### Optimized
* Improved the performance of Level 2 gemv transposed (`TransA != N`) for the problem sizes where `m` is small and `n` is large on gfx90a and gfx942.
### **ROCdbgapi** (0.77.4)
#### Added
* gfx1150 and gfx1151 enabled.
### **rocDecode** (1.4.0)
#### Added
* AV1 12-bit decode support on VA-API version 1.23.0 and later.
* rocdecode-host V1.0.0 library for software decode
* FFmpeg version support for 5.1 and 6.1
* Find package - rocdecode-host
#### Resolved issues
* rocdecode-host - failure to build debuginfo packages without FFmpeg resolved.
* Fix a memory leak for rocDecodeNegativeTests
#### Changed
* HIP meta package changed - Use hip-dev/devel to bring required hip dev deps
* rocdecode host - linking updates to rocdecode-host library
### **rocFFT** (1.0.35)
#### Optimized
* Implemented single-kernel plans for some 2D problem sizes, on devices with at least 160KiB of LDS.
* Improved performance of unit-strided, complex-interleaved, forward/inverse FFTs for lengths: (64,64,128), (64,64,52), (60,60,60)
, (32,32,128), (32,32,64), (64,32,128)
* Improved performance of 3D MPI pencil decompositions by using sub-communicators for global transpose operations.
### **rocJPEG** (1.2.0)
#### Changed
* HIP meta package has been changed. Use `hip-dev/devel` to bring required hip dev deps.
#### Resolved issues
* Fixed an issue where extra padding was incorrectly included when saving decoded JPEG images to files.
* Resolved a memory leak in the jpegDecode application.
### **ROCm Compute Profiler** (3.3.0)
#### Added
* Dynamic process attachment feature that allows coupling with a workload process, without controlling its start or end.
* Use '--attach-pid' to specify the target process ID.
* Use '--attach-duration-msec' to specify time duration.
* `rocpd` choice for `--format-rocprof-output` option in profile mode.
* `--retain-rocpd-output` option in profile mode to save large raw rocpd databases in workload directory.
* Feature to show description of metrics during analysis.
* Use `--include-cols Description` to show the Description column, which is excluded by default from the
ROCm Compute Profiler CLI output.
* `--set` filtering option in profile mode to enable single-pass counter collection for predefined subsets of metrics.
* `--list-sets` filtering option in profile mode to list the sets available for single pass counter collection.
* Missing counters based on register specification which enables missing metrics.
* Enabled `SQC_DCACHE_INFLIGHT_LEVEL` counter and associated metrics.
* Enabled `TCP_TCP_LATENCY` counter and associated counter for all GPUs except MI300.
* Interactive metric descriptions in TUI analyze mode.
* You can now left click on any metric cell to view detailed descriptions in the dedicated `METRIC DESCRIPTION` tab.
* Support for analysis report output as a SQLite database using ``--output-format db`` analysis mode option.
* `Compute Throughput` panel to TUI's `High Level Analysis` category with the following metrics: VALU FLOPs, VALU IOPs, MFMA FLOPs (F8), MFMA FLOPs (BF16), MFMA FLOPs (F16), MFMA FLOPs (F32), MFMA FLOPs (F64), MFMA FLOPs (F6F4) (in gfx950), MFMA IOPs (Int8), SALU Utilization, VALU Utilization, MFMA Utilization, VMEM Utilization, Branch Utilization, IPC
* `Memory Throughput` panel to TUI's `High Level Analysis` category with the following metrics: vL1D Cache BW, vL1D Cache Utilization, Theoretical LDS Bandwidth, LDS Utilization, L2 Cache BW, L2 Cache Utilization, L2-Fabric Read BW, L2-Fabric Write BW, sL1D Cache BW, L1I BW, Address Processing Unit Busy, Data-Return Busy, L1I-L2 Bandwidth, sL1D-L2 BW
* Roofline support for Debian 12 and Azure Linux 3.0.
* Notice for change in default output format to `rocpd` in a future release
* This is displayed when `--format-rocprof-output rocpd` is not used in profile mode
#### Changed
* In the memory chart, long string of numbers are now displayed as scientific notation. It also solves the issue of overflow of displaying long number
* When `--format-rocprof-output rocpd` is used, only `pmc_perf.csv` will be written to workload directory instead of multiple CSV files.
* CLI analysis mode baseline comparison will now only compare common metrics across workloads and will not show the Metric ID.
* Removed metrics from analysis configuration files which are explicitly marked as empty or None.
* Changed the basic (default) view of TUI from aggregated analysis data to individual kernel analysis data.
* Updated `Unit` of the following `Bandwidth` related metrics to `Gbps` instead of `Bytes per Normalization Unit`:
* Theoretical Bandwidth (section 1202)
* L1I-L2 Bandwidth (section 1303)
* sL1D-L2 BW (section 1403)
* Cache BW (section 1603)
* L1-L2 BW (section 1603)
* Read BW (section 1702)
* Write and Atomic BW (section 1702)
* Bandwidth (section 1703)
* Atomic/Read/Write Bandwidth (section 1703)
* Atomic/Read/Write Bandwidth - (HBM/PCIe/Infinity Fabric) (section 1706)
* Updated the metric name for the following `Bandwidth` related metrics whose `Unit` is `Percent` by adding `Utilization`:
* Theoretical Bandwidth Utilization (section 1201)
* L1I-L2 Bandwidth Utilization (section 1301)
* Bandwidth Utilization (section 1301)
* Bandwidth Utilization (section 1401)
* sL1D-L2 BW Utilization (section 1401)
* Bandwidth Utilization (section 1601)
* Updated `System Speed-of-Light` panel to `GPU Speed-of-Light` in TUI for the following metrics:
* Theoretical LDS Bandwidth
* vL1D Cache BW
* L2 Cache BW
* L2-Fabric Read BW
* L2-Fabric Write BW
* Kernel Time
* Kernel Time (Cycles)
* SIMD Utilization
* Clock Rate
* Analysis output:
* Replaced `-o / --output` analyze mode option with `--output-format` and `--output-name`.
* Use ``--output-format`` analysis mode option to select the output format of the analysis report.
* Use ``--output-name`` analysis mode option to override the default file/folder name.
* Replaced `--save-dfs` analyze mode option with `--output-format csv`.
* Command-line options:
* `--list-metrics` and `--config-dir` options moved to general command-line options.
* `--list-metrics` option cannot be used without GPU architecture argument.
* `--list-metrics` option do not show number of L2 channels.
* `--list-available-metrics` profile mode option to display the metrics available for profiling in current GPU.
* `--list-available-metrics` analyze mode option to display the metrics available for analysis.
* `--block` option cannot be used with `--list-metrics` and `--list-available-metrics`options.
* Default `rocprof` interface changed from `rocprofv3` to `rocprofiler-sdk`
* Use ROCPROF=rocprofv3 to use rocprofv3 interface
* Updated metric names for better alignment between analysis configuration and documentation.
#### Removed
* Usage of `rocm-smi` in favor of `amd-smi`.
* Hardware IP block-based filtering has been removed in favor of analysis report block-based filtering.
* Aggregated analysis view from TUI analyze mode.
#### Optimized
* Improved `--time-unit` option in analyze mode to apply time unit conversion across all analysis sections, not just kernel top stats.
* Improved logic to obtain rocprof-supported counters, which prevents unnecessary warnings.
* Improved post-analysis runtime performance by caching and multi-processing.
* Improve analysis block based filtering to accept metric ID level filtering.
* This can be used to collect individual metrics from various sections of the analysis config.
#### Resolved issues
* Fixed an issue of not detecting the memory clock when using `amd-smi`.
* Fixed standalone GUI crashing.
* Fixed L2 read/write/atomic bandwidths on AMD Instinct MI350 Series GPUs.
* Fixed an issue where accumulation counters could not be collected on AMD Instinct MI100.
* Fixed an issue of kernel filtering not working in the roofline chart.
#### Known issues
* MI300A/X L2-Fabric 64B read counter may display negative values - The rocprof-compute metric 17.6.1 (Read 64B) can report negative values due to incorrect calculation when TCC_BUBBLE_sum + TCC_EA0_RDREQ_32B_sum exceeds TCC_EA0_RDREQ_sum.
* A workaround has been implemented using max(0, calculated_value) to prevent negative display values while the root cause is under investigation.
* The profile mode crashes when `--format-rocprof-output json` is selected.
* As a workaround, this option should either not be provided or should be set to `csv` instead of `json`. This issue does not affect the profiling results since both `csv` and `json` output formats lead to the same profiling data.
### **ROCm Data Center Tool** (1.2.0)
#### Added
- CPU monitoring support with 30+ CPU field definitions through AMD SMI integration.
- CPU partition format support (c0.0, c1.0) for monitoring AMD EPYC processors.
- Mixed GPU/CPU monitoring in single `rdci dmon` command.
#### Optimized
- Improved profiler metrics path detection for counter definitions.
#### Resolved issues
- Group management issues with listing created/non-created groups.
- ECC_UNCORRECT field behavior.
### **ROCm Debugger (ROCgdb)** (16.3)
#### Added
* gfx1150 and gfx1151 support enabled.
### **ROCm Systems Profiler** (1.2.0)
#### Added
- ``ROCPROFSYS_ROCM_GROUP_BY_QUEUE`` configuration setting to allow grouping of events by hardware queue, instead of the default grouping.
- Support for `rocpd` database output with the `ROCPROFSYS_USE_ROCPD` configuration setting.
- Support for profiling PyTorch workloads using the `rocpd` output database.
- Support for tracing OpenMP API in Fortran applications.
- An error warning is triggered if the profiler application fails because SELinux enforcement is enabled. The warning includes steps to disable SELinux enforcement.
#### Changed
- Updated the grouping of "kernel dispatch" and "memory copy" events in Perfetto traces. They are now grouped together by HIP Stream rather than separately and by hardware queue.
- Updated PAPI module to v7.2.0b2.
- ROCprofiler-SDK is now used for tracing OMPT API calls.
#### Known issues
* Profiling PyTorch and other AI workloads might fail because it is unable to find the libraries in the default linker path. As a workaround, you need to explicitly add the library path to ``LD_LIBRARY_PATH``. For example, when using PyTorch with Python 3.10, add the following to the environment:
```
export LD_LIBRARY_PATH=:/opt/venv/lib/python3.10/site-packages/torch/lib:$LD_LIBRARY_PATH
```
### **rocPRIM** (4.1.0)
#### Added
* `get_sreg_lanemask_lt`, `get_sreg_lanemask_le`, `get_sreg_lanemask_gt` and `get_sreg_lanemask_ge`.
* `rocprim::transform_output_iterator` and `rocprim::make_transform_output_iterator`.
* Experimental support for SPIR-V, to use the correct tuned config for part of the appliable algorithms.
* A new cmake option, `BUILD_OFFLOAD_COMPRESS`. When rocPRIM is build with this option enabled, the `--offload-compress` switch is passed to the compiler. This causes the compiler to compress the binary that it generates. Compression can be useful in cases where you are compiling for a large number of targets, since this often results in a large binary. Without compression, in some cases, the generated binary may become so large symbols are placed out of range, resulting in linking errors. The new `BUILD_OFFLOAD_COMPRESS` option is set to `ON` by default.
* A new CMake option `-DUSE_SYSTEM_LIB` to allow tests to be built from `ROCm` libraries provided by the system.
* `rocprim::apply` which applies a function to a `rocprim::tuple`.
#### Changed
* Changed tests to support `ptr-to-const` output in `/test/rocprim/test_device_batch_memcpy.cpp`.
#### Optimized
* Improved performance of many algorithms by updating their tuned configs.
* 891 specializations have been improved.
* 399 specializations have been added.
#### Resolved issues
* Fixed `device_select`, `device_merge`, and `device_merge_sort` not allocating the correct amount of virtual shared memory on the host.
* Fixed the `-&gt;` operator for the `transform_iterator`, the `texture_cache_iterator`, and the `arg_index_iterator`, by now returning a proxy pointer.
* The `arg_index_iterator` also now only returns the internal iterator for the `-&gt;`.
#### Upcoming changes
* Deprecated the `-&gt;` operator for the `zip_iterator`.
### **ROCProfiler** (2.0.0)
#### Removed
* `rocprofv2` doesn't support gfx12XX Series GPUs. For gfx12XX Series GPUs, use `rocprofv3` tool.
### **ROCprofiler-SDK** (1.0.0)
#### Added
* Dynamic process attachment- ROCprofiler-SDK and `rocprofv3` now facilitate dynamic profiling of a running GPU application by attaching to its process ID (PID), rather than launching the application through the profiler itself.
* Scratch-memory trace information to the Perfetto output in `rocprofv3`.
* New capabilities to the thread trace support in `rocprofv3`:
* Real-time clock support for thread trace alignment on gfx9XX architecture. This enables high-resolution clock computation and better synchronization across shader engines.
* `MultiKernelDispatch` thread trace support is now available across all ASICs.
* Documentation for dynamic process attachment.
* Documentation for `rocpd` summaries.
#### Optimized
* Improved the stability and robustness of the `rocpd` output.
### **rocPyDecode** (0.7.0)
#### Added
* rocPyJpegPerfSample - samples for JPEG decode
#### Changed
* Package - rocjpeg set as required dependency.
* rocDecode host - rocdecode host linking updates
#### Resolved issues
* rocJPEG Bindings - bug fixes
* Test package - find dependencies updated
### **rocRAND** (4.1.0)
#### Changed
* Changed the `USE_DEVICE_DISPATCH` flag so it can turn device dispatch off by setting it to zero. Device dispatch should be turned off when building for SPIRV.
#### Resolved issues
* Updated error handling for several rocRAND unit tests to accommodate the new `hipGetLastError` behavior that was introduced in ROCm 7.0.
As of ROCm 7.0, the internal error state is cleared on each call to `hipGetLastError` rather than on every HIP API call.
### **rocSOLVER** (3.31.0)
#### Optimized
Improved the performance of:
* LARF, LARFT, GEQR2, and downstream functions such as GEQRF.
* STEDC and divide and conquer Eigensolvers.
### **rocSPARSE** (4.1.0)
#### Added
* Brain half float mixed precision for the following routines:
* `rocsparse_axpby` where X and Y use bfloat16 and result and the compute type use float.
* `rocsparse_spvv` where X and Y use bfloat16 and result and the compute type use float.
* `rocsparse_spmv` where A and X use bfloat16 and Y and the compute type use float.
* `rocsparse_spmm` where A and B use bfloat16 and C and the compute type use float.
* `rocsparse_sddmm` where A and B use bfloat16 and C and the compute type use float.
* `rocsparse_sddmm` where A and B and C use bfloat16 and the compute type use float.
* Half float mixed precision to `rocsparse_sddmm` where A and B and C use float16 and the compute type use float.
* Brain half float uniform precision to `rocsparse_scatter` and `rocsparse_gather` routines.
#### Optimized
* Improved the user documentation.
#### Upcoming changes
* Deprecate trace, debug, and bench logging using the environment variable `ROCSPARSE_LAYER`.
### **rocThrust** (4.1.0)
#### Added
* A new CMake option `-DSQLITE_USE_SYSTEM_PACKAGE` to allow SQLite to be provided by the system.
* Introduced `libhipcxx` as a soft dependency. When `libhipcxx` can be included, rocThrust can use structs and methods defined in `libhipcxx`. This allows for a more complete behavior parity with CCCL and mirrors CCCL's thrust own dependency on `libcudacxx`.
* Added a new CMake option `-DUSE_SYSTEM_LIB` to allow tests to be built from `ROCm` libraries provided by the system.
#### Changed
* The previously hidden cmake build option `FORCE_DEPENDENCIES_DOWNLOAD` has been unhidden and renamed `EXTERNAL_DEPS_FORCE_DOWNLOAD` to differentiate it from the new rocPRIM and rocRAND dependency options described above. Its behavior remains the same - it forces non-ROCm dependencies (Google Benchmark, Google Test, and SQLite) to be downloaded instead of searching for existing installed packages. This option defaults to `OFF`.
#### Removed
* The previous dependency-related build options `DOWNLOAD_ROCPRIM` and `DOWNLOAD_ROCRAND` have been removed. Use `ROCPRIM_FETCH_METHOD=DOWNLOAD` and `ROCRAND_FETCH_METHOD=DOWNLOAD` instead.
#### Known issues
* `event` test is failing on CI and local runs on MI300, MI250 and MI210.
* rocThrust, as well as its dependencies rocPRIM and rocRAND have been moved into the new `rocm-libraries` monorepo repository (https://github.com/ROCm/rocm-libraries). This repository contains several ROCm libraries that are frequently used together.
* The repository migration requires a few changes to the way that rocThrust's ROCm library dependencies are fetched.
* There are new cmake options for obtaining rocPRIM and (optionally, if BUILD_BENCHMARKS is enabled) rocRAND.
* cmake build options `ROCPRIM_FETCH_METHOD` and `ROCRAND_FETCH_METHOD` may be set to one of the following:
* `PACKAGE` - (default) searches for a preinstalled packaged version of the dependency. If it's not found, the build will fall back using option `DOWNLOAD`, described below.
* `DOWNLOAD` - downloads the dependency from the rocm-libraries repository. If git >= 2.25 is present, this option uses a sparse checkout that avoids downloading more than it needs to. If not, the whole monorepo is downloaded (this may take some time).
* `MONOREPO` - this option is intended to be used if you are building rocThrust from within a copy of the rocm-libraries repository that you have cloned (and therefore already contains the dependencies rocPRIM and rocRAND). When selected, the build will try to find the dependency in the local repository tree. If it can't be found, the build will attempt to add it to the local tree using a sparse-checkout. If that also fails, it will fall back to using the `DOWNLOAD` option.
### **RPP** (2.1.0)
#### Added
* Solarize augmentation for HOST and HIP.
* Hue and Saturation adjustment augmentations for HOST and HIP.
* Find RPP - cmake module.
* Posterize augmentation for HOST and HIP.
#### Changed
* HALF - Fix `half.hpp` path updates.
* Box filter - padding updates.
#### Removed
* Packaging - Removed Meta Package dependency for HIP.
* SLES 15 SP6 support.
#### Resolved issues
* Test Suite - Fixes for accuracy.
* HIP Backend - Check return status warning fixes.
* Bug fix - HIP vector types init.
## ROCm 7.0.2
See the [ROCm 7.0.2 release notes](https://rocm.docs.amd.com/en/docs-7.0.2/about/release-notes.html#rocm-7-0-2-release-notes)
@@ -265,10 +1048,6 @@ for a complete overview of this release.
- `amd-smi monitor` on Linux Guest systems triggers an attribute error.
```{note}
See the full [AMD SMI changelog](https://github.com/ROCm/amdsmi/blob/release/rocm-rel-7.0/CHANGELOG.md) for details, examples, and in-depth descriptions.
```
### **Composable Kernel** (1.1.0)
#### Added
@@ -1585,7 +2364,7 @@ The previous default accumulator types could lead to situations in which unexpec
#### Added
* Hybrid computation support for existing routines: STEQR
* Hybrid computation support for existing STEQR routines.
#### Optimized

1309
RELEASE.md

File diff suppressed because it is too large Load Diff

View File

@@ -1,33 +1,17 @@
<?xml version="1.0" encoding="UTF-8"?>
<manifest>
<remote name="rocm-org" fetch="https://github.com/ROCm/" />
<default revision="refs/tags/rocm-7.0.2"
<default revision="refs/tags/rocm-7.1.1"
remote="rocm-org"
sync-c="true"
sync-j="4" />
<!--list of projects for ROCm-->
<project name="ROCK-Kernel-Driver" />
<project name="ROCR-Runtime" />
<project name="amdsmi" />
<project name="aqlprofile" />
<project name="rdc" />
<project name="rocm_bandwidth_test" />
<project name="rocm_smi_lib" />
<project name="rocm-core" />
<project name="rocm-examples" />
<project name="rocminfo" />
<project name="rocprofiler" />
<project name="rocprofiler-register" />
<project name="rocprofiler-sdk" />
<project name="rocprofiler-compute" />
<project name="rocprofiler-systems" />
<project name="roctracer" />
<!--HIP Projects-->
<project name="hip" />
<project name="hip-tests" />
<project name="HIPIFY" />
<project name="clr" />
<project name="hipother" />
<!-- The following projects are all associated with the AMDGPU LLVM compiler -->
<project name="half" />
<project name="llvm-project" />
@@ -41,6 +25,7 @@
<project groups="mathlibs" name="MIVisionX" />
<project groups="mathlibs" name="ROCmValidationSuite" />
<project groups="mathlibs" name="composable_kernel" />
<project groups="mathlibs" name="hipSOLVER" />
<project groups="mathlibs" name="hipTensor" />
<project groups="mathlibs" name="hipfort" />
<project groups="mathlibs" name="rccl" />
@@ -54,7 +39,14 @@
MIOpen rocBLAS rocFFT rocPRIM rocRAND
rocSPARSE rocThrust Tensile -->
<project groups="mathlibs" name="rocm-libraries" />
<!-- The following components have been migrated to rocm-systems:
aqlprofile clr hip hip-tests hipother
rdc rocm-core rocm_smi_lib rocminfo rocprofiler-compute
rocprofiler-register rocprofiler-sdk rocprofiler-systems
rocprofiler rocr-runtime roctracer -->
<project groups="mathlibs" name="rocm-systems" />
<project groups="mathlibs" name="rocPyDecode" />
<project groups="mathlibs" name="rocSOLVER" />
<project groups="mathlibs" name="rocSHMEM" />
<project groups="mathlibs" name="rocWMMA" />
<project groups="mathlibs" name="rocm-cmake" />

View File

@@ -1,137 +1,137 @@
ROCm Version,7.0.2,7.0.1/7.0.0,6.4.3,6.4.2,6.4.1,6.4.0,6.3.3,6.3.2,6.3.1,6.3.0,6.2.4,6.2.2,6.2.1,6.2.0, 6.1.5, 6.1.2, 6.1.1, 6.1.0, 6.0.2, 6.0.0
:ref:`Operating systems & kernels <OS-kernel-versions>`,Ubuntu 24.04.3,Ubuntu 24.04.3,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,"Ubuntu 24.04.1, 24.04","Ubuntu 24.04.1, 24.04","Ubuntu 24.04.1, 24.04",Ubuntu 24.04,,,,,,
,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,"Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3, 22.04.2","Ubuntu 22.04.4, 22.04.3, 22.04.2"
,,,,,,,,,,,,,,,"Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5"
,"RHEL 10.0 [#rhel-10-702-past-60]_, 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_","RHEL 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_","RHEL 9.6, 9.4","RHEL 9.6, 9.4","RHEL 9.6, 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.3, 9.2","RHEL 9.3, 9.2"
,RHEL 8.10 [#rhel-700-past-60]_,RHEL 8.10 [#rhel-700-past-60]_,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,"RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8"
,SLES 15 SP7 [#sles-db-700-past-60]_,SLES 15 SP7 [#sles-db-700-past-60]_,"SLES 15 SP7, SP6","SLES 15 SP7, SP6",SLES 15 SP6,SLES 15 SP6,"SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4"
,,,,,,,,,,,,,,,,CentOS 7.9,CentOS 7.9,CentOS 7.9,CentOS 7.9,CentOS 7.9
,"Oracle Linux 10, 9, 8 [#ol-700-mi300x-past-60]_","Oracle Linux 9, 8 [#ol-700-mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_",Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,,,
,"Debian 13 [#db-mi300x-past-60]_, 12 [#sles-db-700-past-60]_",Debian 12 [#sles-db-700-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,,,,,,,,,,,
,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-630-past-60]_,Azure Linux 3.0 [#az-mi300x-630-past-60]_,,,,,,,,,,,,
,Rocky Linux 9 [#rl-700-past-60]_,Rocky Linux 9 [#rl-700-past-60]_,,,,,,,,,,,,,,,,,,
,.. _architecture-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`Architecture <rocm-install-on-linux:reference/system-requirements>`,CDNA4,CDNA4,,,,,,,,,,,,,,,,,,
,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3
,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2
,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA
,RDNA4,RDNA4,RDNA4,RDNA4,RDNA4,,,,,,,,,,,,,,,
,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3
,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2
,.. _gpu-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`GPU / LLVM target <rocm-install-on-linux:reference/system-requirements>`,gfx950 [#mi350x-os-past-60]_,gfx950 [#mi350x-os-past-60]_,,,,,,,,,,,,,,,,,,
,gfx1201 [#RDNA-OS-700-past-60]_,gfx1201 [#RDNA-OS-700-past-60]_,gfx1201 [#RDNA-OS-past-60]_,gfx1201 [#RDNA-OS-past-60]_,gfx1201 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1200 [#RDNA-OS-700-past-60]_,gfx1200 [#RDNA-OS-700-past-60]_,gfx1200 [#RDNA-OS-past-60]_,gfx1200 [#RDNA-OS-past-60]_,gfx1200 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_,gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_,gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_,gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_,gfx1101 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1100 [#RDNA-OS-700-past-60]_,gfx1100 [#RDNA-OS-700-past-60]_,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100
,gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_,gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030
,gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_,gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942 [#mi300_624-past-60]_,gfx942 [#mi300_622-past-60]_,gfx942 [#mi300_621-past-60]_,gfx942 [#mi300_620-past-60]_, gfx942 [#mi300_612-past-60]_, gfx942 [#mi300_612-past-60]_, gfx942 [#mi300_611-past-60]_, gfx942 [#mi300_610-past-60]_, gfx942 [#mi300_602-past-60]_, gfx942 [#mi300_600-past-60]_
,gfx90a [#mi200x-os-past-60]_,gfx90a [#mi200x-os-past-60]_,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a
,gfx908 [#mi100-os-past-60]_,gfx908 [#mi100-os-past-60]_,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908
,,,,,,,,,,,,,,,,,,,,
FRAMEWORK SUPPORT,.. _framework-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`PyTorch <../compatibility/ml-compatibility/pytorch-compatibility>`,"2.8, 2.7, 2.6","2.7, 2.6, 2.5","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13"
:doc:`TensorFlow <../compatibility/ml-compatibility/tensorflow-compatibility>`,"2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_","2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.14.0, 2.13.1, 2.12.1","2.14.0, 2.13.1, 2.12.1"
:doc:`JAX <../compatibility/ml-compatibility/jax-compatibility>`,0.6.0,0.6.0,0.4.35,0.4.35,0.4.35,0.4.35,0.4.31,0.4.31,0.4.31,0.4.31,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26
:doc:`verl <../compatibility/ml-compatibility/verl-compatibility>` [#verl_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.3.0.post0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Stanford Megatron-LM <../compatibility/ml-compatibility/stanford-megatron-lm-compatibility>` [#stanford-megatron-lm_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,85f95ae,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`DGL <../compatibility/ml-compatibility/dgl-compatibility>` [#dgl_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,2.4.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Megablocks <../compatibility/ml-compatibility/megablocks-compatibility>` [#megablocks_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.7.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Taichi <../compatibility/ml-compatibility/taichi-compatibility>` [#taichi_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,1.8.0b1,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Ray <../compatibility/ml-compatibility/ray-compatibility>` [#ray_compat-past-60]_,N/A,N/A,N/A,N/A,2.48.0.post0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`llama.cpp <../compatibility/ml-compatibility/llama-cpp-compatibility>` [#llama-cpp_compat-past-60]_,N/A,b6356,b6356,b6356,b6356,b5997,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`FlashInfer <../compatibility/ml-compatibility/flashinfer-compatibility>` [#flashinfer_compat-past-60]_,N/A,N/A,N/A,N/A,v0.2.5,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
`ONNX Runtime <https://onnxruntime.ai/docs/build/eps.html#amd-migraphx>`_,1.22.0,1.22.0,1.20.0,1.20.0,1.20.0,1.20.0,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.14.1,1.14.1
,,,,,,,,,,,,,,,,,,,,
,,,,,,,,,,,,,,,,,,,,
THIRD PARTY COMMS,.. _thirdpartycomms-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
`UCC <https://github.com/ROCm/ucc>`_,>=1.4.0,>=1.4.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.2.0,>=1.2.0
`UCX <https://github.com/ROCm/ucx>`_,>=1.17.0,>=1.17.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1
,,,,,,,,,,,,,,,,,,,,
THIRD PARTY ALGORITHM,.. _thirdpartyalgorithm-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
Thrust,2.6.0,2.6.0,2.5.0,2.5.0,2.5.0,2.5.0,2.3.2,2.3.2,2.3.2,2.3.2,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.1,2.0.1
CUB,2.6.0,2.6.0,2.5.0,2.5.0,2.5.0,2.5.0,2.3.2,2.3.2,2.3.2,2.3.2,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.1,2.0.1
,,,,,,,,,,,,,,,,,,,,
DRIVER & USER SPACE [#kfd_support-past-60]_,.. _kfd-userspace-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`AMD GPU Driver <rocm-install-on-linux:reference/user-kernel-space-compat-matrix>`,"30.10.2, 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x","30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x, 6.2.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x","6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x"
,,,,,,,,,,,,,,,,,,,,
ML & COMPUTER VISION,.. _mllibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`Composable Kernel <composable_kernel:index>`,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0
:doc:`MIGraphX <amdmigraphx:index>`,2.13.0,2.13.0,2.12.0,2.12.0,2.12.0,2.12.0,2.11.0,2.11.0,2.11.0,2.11.0,2.10.0,2.10.0,2.10.0,2.10.0,2.9.0,2.9.0,2.9.0,2.9.0,2.8.0,2.8.0
:doc:`MIOpen <miopen:index>`,3.5.0,3.5.0,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`MIVisionX <mivisionx:index>`,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0,3.0.0,3.0.0,2.5.0,2.5.0,2.5.0,2.5.0,2.5.0,2.5.0
:doc:`rocAL <rocal:index>`,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.0,2.0.0,2.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
:doc:`rocDecode <rocdecode:index>`,1.0.0,1.0.0,0.10.0,0.10.0,0.10.0,0.10.0,0.8.0,0.8.0,0.8.0,0.8.0,0.6.0,0.6.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.0,0.5.0,N/A,N/A
:doc:`rocJPEG <rocjpeg:index>`,1.1.0,1.1.0,0.8.0,0.8.0,0.8.0,0.8.0,0.6.0,0.6.0,0.6.0,0.6.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`rocPyDecode <rocpydecode:index>`,0.6.0,0.6.0,0.3.1,0.3.1,0.3.1,0.3.1,0.2.0,0.2.0,0.2.0,0.2.0,0.1.0,0.1.0,0.1.0,0.1.0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`RPP <rpp:index>`,2.0.0,2.0.0,1.9.10,1.9.10,1.9.10,1.9.10,1.9.1,1.9.1,1.9.1,1.9.1,1.8.0,1.8.0,1.8.0,1.8.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0
,,,,,,,,,,,,,,,,,,,,
COMMUNICATION,.. _commlibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`RCCL <rccl:index>`,2.26.6,2.26.6,2.22.3,2.22.3,2.22.3,2.22.3,2.21.5,2.21.5,2.21.5,2.21.5,2.20.5,2.20.5,2.20.5,2.20.5,2.18.6,2.18.6,2.18.6,2.18.6,2.18.3,2.18.3
:doc:`rocSHMEM <rocshmem:index>`,3.0.0,3.0.0,2.0.1,2.0.1,2.0.0,2.0.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
,,,,,,,,,,,,,,,,,,,,
MATH LIBS,.. _mathlibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
`half <https://github.com/ROCm/half>`_ ,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0
:doc:`hipBLAS <hipblas:index>`,3.0.2,3.0.0,2.4.0,2.4.0,2.4.0,2.4.0,2.3.0,2.3.0,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.0,2.0.0
:doc:`hipBLASLt <hipblaslt:index>`,1.0.0,1.0.0,0.12.1,0.12.1,0.12.1,0.12.0,0.10.0,0.10.0,0.10.0,0.10.0,0.8.0,0.8.0,0.8.0,0.8.0,0.7.0,0.7.0,0.7.0,0.7.0,0.6.0,0.6.0
:doc:`hipFFT <hipfft:index>`,1.0.20,1.0.20,1.0.18,1.0.18,1.0.18,1.0.18,1.0.17,1.0.17,1.0.17,1.0.17,1.0.16,1.0.15,1.0.15,1.0.14,1.0.14,1.0.14,1.0.14,1.0.14,1.0.13,1.0.13
:doc:`hipfort <hipfort:index>`,0.7.0,0.7.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.1,0.5.1,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0
:doc:`hipRAND <hiprand:index>`,3.0.0,3.0.0,2.12.0,2.12.0,2.12.0,2.12.0,2.11.1,2.11.1,2.11.1,2.11.0,2.11.1,2.11.0,2.11.0,2.11.0,2.10.16,2.10.16,2.10.16,2.10.16,2.10.16,2.10.16
:doc:`hipSOLVER <hipsolver:index>`,3.0.0,3.0.0,2.4.0,2.4.0,2.4.0,2.4.0,2.3.0,2.3.0,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.1,2.1.1,2.1.1,2.1.0,2.0.0,2.0.0
:doc:`hipSPARSE <hipsparse:index>`,4.0.1,4.0.1,3.2.0,3.2.0,3.2.0,3.2.0,3.1.2,3.1.2,3.1.2,3.1.2,3.1.1,3.1.1,3.1.1,3.1.1,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,3.0.0
:doc:`hipSPARSELt <hipsparselt:index>`,0.2.4,0.2.4,0.2.3,0.2.3,0.2.3,0.2.3,0.2.2,0.2.2,0.2.2,0.2.2,0.2.1,0.2.1,0.2.1,0.2.1,0.2.0,0.2.0,0.1.0,0.1.0,0.1.0,0.1.0
:doc:`rocALUTION <rocalution:index>`,4.0.0,4.0.0,3.2.3,3.2.3,3.2.3,3.2.2,3.2.1,3.2.1,3.2.1,3.2.1,3.2.1,3.2.0,3.2.0,3.2.0,3.1.1,3.1.1,3.1.1,3.1.1,3.0.3,3.0.3
:doc:`rocBLAS <rocblas:index>`,5.0.2,5.0.0,4.4.1,4.4.1,4.4.0,4.4.0,4.3.0,4.3.0,4.3.0,4.3.0,4.2.4,4.2.1,4.2.1,4.2.0,4.1.2,4.1.2,4.1.0,4.1.0,4.0.0,4.0.0
:doc:`rocFFT <rocfft:index>`,1.0.34,1.0.34,1.0.32,1.0.32,1.0.32,1.0.32,1.0.31,1.0.31,1.0.31,1.0.31,1.0.30,1.0.29,1.0.29,1.0.28,1.0.27,1.0.27,1.0.27,1.0.26,1.0.25,1.0.23
:doc:`rocRAND <rocrand:index>`,4.0.0,4.0.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.1,3.1.0,3.1.0,3.1.0,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,2.10.17
:doc:`rocSOLVER <rocsolver:index>`,3.30.1,3.30.0,3.28.2,3.28.2,3.28.0,3.28.0,3.27.0,3.27.0,3.27.0,3.27.0,3.26.2,3.26.0,3.26.0,3.26.0,3.25.0,3.25.0,3.25.0,3.25.0,3.24.0,3.24.0
:doc:`rocSPARSE <rocsparse:index>`,4.0.2,4.0.2,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.1,3.2.0,3.2.0,3.2.0,3.1.2,3.1.2,3.1.2,3.1.2,3.0.2,3.0.2
:doc:`rocWMMA <rocwmma:index>`,2.0.0,2.0.0,1.7.0,1.7.0,1.7.0,1.7.0,1.6.0,1.6.0,1.6.0,1.6.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0,1.4.0,1.4.0,1.3.0,1.3.0
:doc:`Tensile <tensile:src/index>`,4.44.0,4.44.0,4.43.0,4.43.0,4.43.0,4.43.0,4.42.0,4.42.0,4.42.0,4.42.0,4.41.0,4.41.0,4.41.0,4.41.0,4.40.0,4.40.0,4.40.0,4.40.0,4.39.0,4.39.0
,,,,,,,,,,,,,,,,,,,,
PRIMITIVES,.. _primitivelibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`hipCUB <hipcub:index>`,4.0.0,4.0.0,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.1,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`hipTensor <hiptensor:index>`,2.0.0,2.0.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0,1.4.0,1.4.0,1.3.0,1.3.0,1.3.0,1.3.0,1.2.0,1.2.0,1.2.0,1.2.0,1.1.0,1.1.0
:doc:`rocPRIM <rocprim:index>`,4.0.1,4.0.0,3.4.1,3.4.1,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.2,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`rocThrust <rocthrust:index>`,4.0.0,4.0.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.1.1,3.1.0,3.1.0,3.0.1,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,3.0.0
,,,,,,,,,,,,,,,,,,,,
SUPPORT LIBS,,,,,,,,,,,,,,,,,,,,
`hipother <https://github.com/ROCm/hipother>`_,7.0.51830,7.0.51830,6.4.43483,6.4.43483,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
`rocm-core <https://github.com/ROCm/rocm-core>`_,7.0.2,7.0.1/7.0.0,6.4.3,6.4.2,6.4.1,6.4.0,6.3.3,6.3.2,6.3.1,6.3.0,6.2.4,6.2.2,6.2.1,6.2.0,6.1.5,6.1.2,6.1.1,6.1.0,6.0.2,6.0.0
`ROCT-Thunk-Interface <https://github.com/ROCm/ROCT-Thunk-Interface>`_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,20240607.5.7,20240607.5.7,20240607.4.05,20240607.1.4246,20240125.5.08,20240125.5.08,20240125.5.08,20240125.3.30,20231016.2.245,20231016.2.245
,,,,,,,,,,,,,,,,,,,,
SYSTEM MGMT TOOLS,.. _tools-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`AMD SMI <amdsmi:index>`,26.0.2,26.0.0,25.5.1,25.5.1,25.4.2,25.3.0,24.7.1,24.7.1,24.7.1,24.7.1,24.6.3,24.6.3,24.6.3,24.6.2,24.5.1,24.5.1,24.5.1,24.4.1,23.4.2,23.4.2
:doc:`ROCm Data Center Tool <rdc:index>`,1.1.0,1.1.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0
:doc:`rocminfo <rocminfo:index>`,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
:doc:`ROCm SMI <rocm_smi_lib:index>`,7.8.0,7.8.0,7.7.0,7.5.0,7.5.0,7.5.0,7.4.0,7.4.0,7.4.0,7.4.0,7.3.0,7.3.0,7.3.0,7.3.0,7.2.0,7.2.0,7.0.0,7.0.0,6.0.2,6.0.0
:doc:`ROCm Validation Suite <rocmvalidationsuite:index>`,1.2.0,1.2.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.0.60204,1.0.60202,1.0.60201,1.0.60200,1.0.60105,1.0.60102,1.0.60101,1.0.60100,1.0.60002,1.0.60000
,,,,,,,,,,,,,,,,,,,,
PERFORMANCE TOOLS,,,,,,,,,,,,,,,,,,,,
:doc:`ROCm Bandwidth Test <rocm_bandwidth_test:index>`,2.6.0,2.6.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0
:doc:`ROCm Compute Profiler <rocprofiler-compute:index>`,3.2.3,3.2.3,3.1.1,3.1.1,3.1.0,3.1.0,3.0.0,3.0.0,3.0.0,3.0.0,2.0.1,2.0.1,2.0.1,2.0.1,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCm Systems Profiler <rocprofiler-systems:index>`,1.1.1,1.1.0,1.0.2,1.0.2,1.0.1,1.0.0,0.1.2,0.1.1,0.1.0,0.1.0,1.11.2,1.11.2,1.11.2,1.11.2,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCProfiler <rocprofiler:index>`,2.0.70002,2.0.70000,2.0.60403,2.0.60402,2.0.60401,2.0.60400,2.0.60303,2.0.60302,2.0.60301,2.0.60300,2.0.60204,2.0.60202,2.0.60201,2.0.60200,2.0.60105,2.0.60102,2.0.60101,2.0.60100,2.0.60002,2.0.60000
:doc:`ROCprofiler-SDK <rocprofiler-sdk:index>`,1.0.0,1.0.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.0,0.5.0,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCTracer <roctracer:index>`,4.1.70002,4.1.70000,4.1.60403,4.1.60402,4.1.60401,4.1.60400,4.1.60303,4.1.60302,4.1.60301,4.1.60300,4.1.60204,4.1.60202,4.1.60201,4.1.60200,4.1.60105,4.1.60102,4.1.60101,4.1.60100,4.1.60002,4.1.60000
,,,,,,,,,,,,,,,,,,,,
DEVELOPMENT TOOLS,,,,,,,,,,,,,,,,,,,,
:doc:`HIPIFY <hipify:index>`,20.0.0,20.0.0,19.0.0,19.0.0,19.0.0,19.0.0,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24455,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
:doc:`ROCm CMake <rocmcmakebuildtools:index>`,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.13.0,0.13.0,0.13.0,0.13.0,0.12.0,0.12.0,0.12.0,0.12.0,0.11.0,0.11.0
:doc:`ROCdbgapi <rocdbgapi:index>`,0.77.4,0.77.3,0.77.2,0.77.2,0.77.2,0.77.2,0.77.0,0.77.0,0.77.0,0.77.0,0.76.0,0.76.0,0.76.0,0.76.0,0.71.0,0.71.0,0.71.0,0.71.0,0.71.0,0.71.0
:doc:`ROCm Debugger (ROCgdb) <rocgdb:index>`,16.3.0,16.3.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,14.2.0,14.2.0,14.2.0,14.2.0,14.1.0,14.1.0,14.1.0,14.1.0,13.2.0,13.2.0
`rocprofiler-register <https://github.com/ROCm/rocprofiler-register>`_,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.3.0,0.3.0,0.3.0,0.3.0,N/A,N/A
:doc:`ROCr Debug Agent <rocr_debug_agent:index>`,2.1.0,2.1.0,2.0.4,2.0.4,2.0.4,2.0.4,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3
,,,,,,,,,,,,,,,,,,,,
COMPILERS,.. _compilers-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
`clang-ocl <https://github.com/ROCm/clang-ocl>`_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.5.0,0.5.0,0.5.0,0.5.0,0.5.0,0.5.0
:doc:`hipCC <hipcc:index>`,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
`Flang <https://github.com/ROCm/flang>`_,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24455,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
:doc:`llvm-project <llvm-project:index>`,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24491,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
`OpenMP <https://github.com/ROCm/llvm-project/tree/amd-staging/openmp>`_,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24491,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
,,,,,,,,,,,,,,,,,,,,
RUNTIMES,.. _runtime-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,
:doc:`AMD CLR <hip:understand/amd_clr>`,7.0.51831,7.0.51830,6.4.43484,6.4.43484,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
:doc:`HIP <hip:index>`,7.0.51831,7.0.51830,6.4.43484,6.4.43484,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
`OpenCL Runtime <https://github.com/ROCm/clr/tree/develop/opencl>`_,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0
:doc:`ROCr Runtime <rocr-runtime:index>`,1.18.0,1.18.0,1.15.0,1.15.0,1.15.0,1.15.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.13.0,1.13.0,1.13.0,1.13.0,1.13.0,1.12.0,1.12.0
ROCm Version,7.1.0,7.0.2,7.0.1/7.0.0,6.4.3,6.4.2,6.4.1,6.4.0,6.3.3,6.3.2,6.3.1,6.3.0,6.2.4,6.2.2,6.2.1,6.2.0, 6.1.5, 6.1.2, 6.1.1, 6.1.0, 6.0.2, 6.0.0
:ref:`Operating systems & kernels <OS-kernel-versions>`,Ubuntu 24.04.3,Ubuntu 24.04.3,Ubuntu 24.04.3,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,Ubuntu 24.04.2,"Ubuntu 24.04.1, 24.04","Ubuntu 24.04.1, 24.04","Ubuntu 24.04.1, 24.04",Ubuntu 24.04,,,,,,
,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5,"Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4","Ubuntu 22.04.5, 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3","Ubuntu 22.04.4, 22.04.3, 22.04.2","Ubuntu 22.04.4, 22.04.3, 22.04.2"
,,,,,,,,,,,,,,,,"Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5","Ubuntu 20.04.6, 20.04.5"
,"RHEL 10.0 [#rhel-10-702-past-60]_, 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_","RHEL 10.0 [#rhel-10-702-past-60]_, 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_","RHEL 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_","RHEL 9.6, 9.4","RHEL 9.6, 9.4","RHEL 9.6, 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.5, 9.4","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.4, 9.3, 9.2","RHEL 9.3, 9.2","RHEL 9.3, 9.2"
,RHEL 8.10 [#rhel-700-past-60]_,RHEL 8.10 [#rhel-700-past-60]_,RHEL 8.10 [#rhel-700-past-60]_,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,RHEL 8.10,"RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.10, 8.9","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8","RHEL 8.9, 8.8"
,SLES 15 SP7 [#sles-710-past-60]_,SLES 15 SP7 [#sles-db-700-past-60]_,SLES 15 SP7 [#sles-db-700-past-60]_,"SLES 15 SP7, SP6","SLES 15 SP7, SP6",SLES 15 SP6,SLES 15 SP6,"SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP6, SP5","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4","SLES 15 SP5, SP4"
,,,,,,,,,,,,,,,,,CentOS 7.9,CentOS 7.9,CentOS 7.9,CentOS 7.9,CentOS 7.9
,"Oracle Linux 10, 9, 8 [#ol-710-mi300x-past-60]_","Oracle Linux 10, 9, 8 [#ol-700-mi300x-past-60]_","Oracle Linux 9, 8 [#ol-700-mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_","Oracle Linux 9, 8 [#mi300x-past-60]_",Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.10 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,Oracle Linux 8.9 [#mi300x-past-60]_,,,
,"Debian 13 [#db-710-mi300x-past-60]_, 12 [#db12-710-past-60]_","Debian 13 [#db-mi300x-past-60]_, 12 [#sles-db-700-past-60]_",Debian 12 [#sles-db-700-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,Debian 12 [#single-node-past-60]_,,,,,,,,,,,
,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-past-60]_,Azure Linux 3.0 [#az-mi300x-630-past-60]_,Azure Linux 3.0 [#az-mi300x-630-past-60]_,,,,,,,,,,,,
,Rocky Linux 9 [#rl-700-past-60]_,Rocky Linux 9 [#rl-700-past-60]_,Rocky Linux 9 [#rl-700-past-60]_,,,,,,,,,,,,,,,,,,
,.. _architecture-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`Architecture <rocm-install-on-linux:reference/system-requirements>`,CDNA4,CDNA4,CDNA4,,,,,,,,,,,,,,,,,,
,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3,CDNA3
,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2,CDNA2
,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA,CDNA
,RDNA4,RDNA4,RDNA4,RDNA4,RDNA4,RDNA4,,,,,,,,,,,,,,,
,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3,RDNA3
,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2,RDNA2
,.. _gpu-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`GPU / LLVM target <rocm-install-on-linux:reference/system-requirements>`,gfx950 [#mi350x-os-710-past-60]_,gfx950 [#mi350x-os-700-past-60]_,gfx950 [#mi350x-os-700-past-60]_,,,,,,,,,,,,,,,,,,
,gfx1201 [#RDNA-OS-700-past-60]_,gfx1201 [#RDNA-OS-700-past-60]_,gfx1201 [#RDNA-OS-700-past-60]_,gfx1201 [#RDNA-OS-past-60]_,gfx1201 [#RDNA-OS-past-60]_,gfx1201 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1200 [#RDNA-OS-700-past-60]_,gfx1200 [#RDNA-OS-700-past-60]_,gfx1200 [#RDNA-OS-700-past-60]_,gfx1200 [#RDNA-OS-past-60]_,gfx1200 [#RDNA-OS-past-60]_,gfx1200 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_,gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_,gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_,gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_,gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_,gfx1101 [#RDNA-OS-past-60]_,,,,,,,,,,,,,,,
,gfx1100 [#RDNA-OS-700-past-60]_,gfx1100 [#RDNA-OS-700-past-60]_,gfx1100 [#RDNA-OS-700-past-60]_,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100,gfx1100
,gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_,gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_,gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030,gfx1030
,gfx942 [#mi325x-os-710past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_,gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_,gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942,gfx942 [#mi300_624-past-60]_,gfx942 [#mi300_622-past-60]_,gfx942 [#mi300_621-past-60]_,gfx942 [#mi300_620-past-60]_, gfx942 [#mi300_612-past-60]_, gfx942 [#mi300_612-past-60]_, gfx942 [#mi300_611-past-60]_, gfx942 [#mi300_610-past-60]_, gfx942 [#mi300_602-past-60]_, gfx942 [#mi300_600-past-60]_
,gfx90a [#mi200x-os-past-60]_,gfx90a [#mi200x-os-past-60]_,gfx90a [#mi200x-os-past-60]_,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a,gfx90a
,gfx908 [#mi100-710-os-past-60]_,gfx908 [#mi100-os-past-60]_,gfx908 [#mi100-os-past-60]_,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908,gfx908
,,,,,,,,,,,,,,,,,,,,,
FRAMEWORK SUPPORT,.. _framework-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`PyTorch <../compatibility/ml-compatibility/pytorch-compatibility>`,"2.8, 2.7, 2.6","2.8, 2.7, 2.6","2.7, 2.6, 2.5","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.6, 2.5, 2.4, 2.3","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 1.13","2.4, 2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.3, 2.2, 2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13","2.1, 2.0, 1.13"
:doc:`TensorFlow <../compatibility/ml-compatibility/tensorflow-compatibility>`,"2.20.0, 2.19.1, 2.18.1","2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_","2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.18.1, 2.17.1, 2.16.2","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.17.0, 2.16.2, 2.15.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.16.1, 2.15.1, 2.14.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.15.0, 2.14.0, 2.13.1","2.14.0, 2.13.1, 2.12.1","2.14.0, 2.13.1, 2.12.1"
:doc:`JAX <../compatibility/ml-compatibility/jax-compatibility>`,0.6.0,0.6.0,0.6.0,0.4.35,0.4.35,0.4.35,0.4.35,0.4.31,0.4.31,0.4.31,0.4.31,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26,0.4.26
:doc:`verl <../compatibility/ml-compatibility/verl-compatibility>` [#verl_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.3.0.post0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Stanford Megatron-LM <../compatibility/ml-compatibility/stanford-megatron-lm-compatibility>` [#stanford-megatron-lm_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,85f95ae,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`DGL <../compatibility/ml-compatibility/dgl-compatibility>` [#dgl_compat-past-60]_,N/A,N/A,2.4.0,2.4.0,N/A,N/A,2.4.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Megablocks <../compatibility/ml-compatibility/megablocks-compatibility>` [#megablocks_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.7.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Taichi <../compatibility/ml-compatibility/taichi-compatibility>` [#taichi_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,1.8.0b1,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`Ray <../compatibility/ml-compatibility/ray-compatibility>` [#ray_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,2.48.0.post0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`llama.cpp <../compatibility/ml-compatibility/llama-cpp-compatibility>` [#llama-cpp_compat-past-60]_,N/A,N/A,b6652,b6356,b6356,b6356,b5997,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`FlashInfer <../compatibility/ml-compatibility/flashinfer-compatibility>` [#flashinfer_compat-past-60]_,N/A,N/A,N/A,N/A,N/A,v0.2.5,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
`ONNX Runtime <https://onnxruntime.ai/docs/build/eps.html#amd-migraphx>`_,1.22.0,1.22.0,1.22.0,1.20.0,1.20.0,1.20.0,1.20.0,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.17.3,1.14.1,1.14.1
,,,,,,,,,,,,,,,,,,,,,
,,,,,,,,,,,,,,,,,,,,,
THIRD PARTY COMMS,.. _thirdpartycomms-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
`UCC <https://github.com/ROCm/ucc>`_,>=1.4.0,>=1.4.0,>=1.4.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.3.0,>=1.2.0,>=1.2.0
`UCX <https://github.com/ROCm/ucx>`_,>=1.17.0,>=1.17.0,>=1.17.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.15.0,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1,>=1.14.1
,,,,,,,,,,,,,,,,,,,,,
THIRD PARTY ALGORITHM,.. _thirdpartyalgorithm-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
Thrust,2.8.5,2.6.0,2.6.0,2.5.0,2.5.0,2.5.0,2.5.0,2.3.2,2.3.2,2.3.2,2.3.2,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.1,2.0.1
CUB,2.8.5,2.6.0,2.6.0,2.5.0,2.5.0,2.5.0,2.5.0,2.3.2,2.3.2,2.3.2,2.3.2,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.1,2.0.1
,,,,,,,,,,,,,,,,,,,,,
DRIVER & USER SPACE [#kfd_support-past-60]_,.. _kfd-userspace-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`AMD GPU Driver <rocm-install-on-linux:reference/user-kernel-space-compat-matrix>`,"30.20.0 [#mi325x_KVM-past-60]_, 30.10.2, 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x","30.10.2, 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x","30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x, 6.2.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x","6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x","6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x"
,,,,,,,,,,,,,,,,,,,,,
ML & COMPUTER VISION,.. _mllibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`Composable Kernel <composable_kernel:index>`,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0
:doc:`MIGraphX <amdmigraphx:index>`,2.14.0,2.13.0,2.13.0,2.12.0,2.12.0,2.12.0,2.12.0,2.11.0,2.11.0,2.11.0,2.11.0,2.10.0,2.10.0,2.10.0,2.10.0,2.9.0,2.9.0,2.9.0,2.9.0,2.8.0,2.8.0
:doc:`MIOpen <miopen:index>`,3.5.1,3.5.0,3.5.0,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`MIVisionX <mivisionx:index>`,3.4.0,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0,3.0.0,3.0.0,2.5.0,2.5.0,2.5.0,2.5.0,2.5.0,2.5.0
:doc:`rocAL <rocal:index>`,2.4.0,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.0,2.0.0,2.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
:doc:`rocDecode <rocdecode:index>`,1.4.0,1.0.0,1.0.0,0.10.0,0.10.0,0.10.0,0.10.0,0.8.0,0.8.0,0.8.0,0.8.0,0.6.0,0.6.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.0,0.5.0,N/A,N/A
:doc:`rocJPEG <rocjpeg:index>`,1.2.0,1.1.0,1.1.0,0.8.0,0.8.0,0.8.0,0.8.0,0.6.0,0.6.0,0.6.0,0.6.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`rocPyDecode <rocpydecode:index>`,0.7.0,0.6.0,0.6.0,0.3.1,0.3.1,0.3.1,0.3.1,0.2.0,0.2.0,0.2.0,0.2.0,0.1.0,0.1.0,0.1.0,0.1.0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`RPP <rpp:index>`,2.1.0,2.0.0,2.0.0,1.9.10,1.9.10,1.9.10,1.9.10,1.9.1,1.9.1,1.9.1,1.9.1,1.8.0,1.8.0,1.8.0,1.8.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0
,,,,,,,,,,,,,,,,,,,,,
COMMUNICATION,.. _commlibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`RCCL <rccl:index>`,2.27.7,2.26.6,2.26.6,2.22.3,2.22.3,2.22.3,2.22.3,2.21.5,2.21.5,2.21.5,2.21.5,2.20.5,2.20.5,2.20.5,2.20.5,2.18.6,2.18.6,2.18.6,2.18.6,2.18.3,2.18.3
:doc:`rocSHMEM <rocshmem:index>`,3.0.0,3.0.0,3.0.0,2.0.1,2.0.1,2.0.0,2.0.0,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A
,,,,,,,,,,,,,,,,,,,,,
MATH LIBS,.. _mathlibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
`half <https://github.com/ROCm/half>`_ ,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0,1.12.0
:doc:`hipBLAS <hipblas:index>`,3.1.0,3.0.2,3.0.0,2.4.0,2.4.0,2.4.0,2.4.0,2.3.0,2.3.0,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.0,2.1.0,2.1.0,2.1.0,2.0.0,2.0.0
:doc:`hipBLASLt <hipblaslt:index>`,1.1.0,1.0.0,1.0.0,0.12.1,0.12.1,0.12.1,0.12.0,0.10.0,0.10.0,0.10.0,0.10.0,0.8.0,0.8.0,0.8.0,0.8.0,0.7.0,0.7.0,0.7.0,0.7.0,0.6.0,0.6.0
:doc:`hipFFT <hipfft:index>`,1.0.21,1.0.20,1.0.20,1.0.18,1.0.18,1.0.18,1.0.18,1.0.17,1.0.17,1.0.17,1.0.17,1.0.16,1.0.15,1.0.15,1.0.14,1.0.14,1.0.14,1.0.14,1.0.14,1.0.13,1.0.13
:doc:`hipfort <hipfort:index>`,0.7.1,0.7.0,0.7.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.1,0.5.1,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0
:doc:`hipRAND <hiprand:index>`,3.1.0,3.0.0,3.0.0,2.12.0,2.12.0,2.12.0,2.12.0,2.11.1,2.11.1,2.11.1,2.11.0,2.11.1,2.11.0,2.11.0,2.11.0,2.10.16,2.10.16,2.10.16,2.10.16,2.10.16,2.10.16
:doc:`hipSOLVER <hipsolver:index>`,3.1.0,3.0.0,3.0.0,2.4.0,2.4.0,2.4.0,2.4.0,2.3.0,2.3.0,2.3.0,2.3.0,2.2.0,2.2.0,2.2.0,2.2.0,2.1.1,2.1.1,2.1.1,2.1.0,2.0.0,2.0.0
:doc:`hipSPARSE <hipsparse:index>`,4.1.0,4.0.1,4.0.1,3.2.0,3.2.0,3.2.0,3.2.0,3.1.2,3.1.2,3.1.2,3.1.2,3.1.1,3.1.1,3.1.1,3.1.1,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,3.0.0
:doc:`hipSPARSELt <hipsparselt:index>`,0.2.5,0.2.4,0.2.4,0.2.3,0.2.3,0.2.3,0.2.3,0.2.2,0.2.2,0.2.2,0.2.2,0.2.1,0.2.1,0.2.1,0.2.1,0.2.0,0.2.0,0.1.0,0.1.0,0.1.0,0.1.0
:doc:`rocALUTION <rocalution:index>`,4.0.1,4.0.0,4.0.0,3.2.3,3.2.3,3.2.3,3.2.2,3.2.1,3.2.1,3.2.1,3.2.1,3.2.1,3.2.0,3.2.0,3.2.0,3.1.1,3.1.1,3.1.1,3.1.1,3.0.3,3.0.3
:doc:`rocBLAS <rocblas:index>`,5.1.0,5.0.2,5.0.0,4.4.1,4.4.1,4.4.0,4.4.0,4.3.0,4.3.0,4.3.0,4.3.0,4.2.4,4.2.1,4.2.1,4.2.0,4.1.2,4.1.2,4.1.0,4.1.0,4.0.0,4.0.0
:doc:`rocFFT <rocfft:index>`,1.0.35,1.0.34,1.0.34,1.0.32,1.0.32,1.0.32,1.0.32,1.0.31,1.0.31,1.0.31,1.0.31,1.0.30,1.0.29,1.0.29,1.0.28,1.0.27,1.0.27,1.0.27,1.0.26,1.0.25,1.0.23
:doc:`rocRAND <rocrand:index>`,4.1.0,4.0.0,4.0.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.0,3.2.0,3.2.0,3.2.0,3.1.1,3.1.0,3.1.0,3.1.0,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,2.10.17
:doc:`rocSOLVER <rocsolver:index>`,3.31.0,3.30.1,3.30.0,3.28.2,3.28.2,3.28.0,3.28.0,3.27.0,3.27.0,3.27.0,3.27.0,3.26.2,3.26.0,3.26.0,3.26.0,3.25.0,3.25.0,3.25.0,3.25.0,3.24.0,3.24.0
:doc:`rocSPARSE <rocsparse:index>`,4.1.0,4.0.2,4.0.2,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.1,3.2.0,3.2.0,3.2.0,3.1.2,3.1.2,3.1.2,3.1.2,3.0.2,3.0.2
:doc:`rocWMMA <rocwmma:index>`,2.0.0,2.0.0,2.0.0,1.7.0,1.7.0,1.7.0,1.7.0,1.6.0,1.6.0,1.6.0,1.6.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0,1.4.0,1.4.0,1.3.0,1.3.0
:doc:`Tensile <tensile:src/index>`,4.44.0,4.44.0,4.44.0,4.43.0,4.43.0,4.43.0,4.43.0,4.42.0,4.42.0,4.42.0,4.42.0,4.41.0,4.41.0,4.41.0,4.41.0,4.40.0,4.40.0,4.40.0,4.40.0,4.39.0,4.39.0
,,,,,,,,,,,,,,,,,,,,,
PRIMITIVES,.. _primitivelibs-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`hipCUB <hipcub:index>`,4.1.0,4.0.0,4.0.0,3.4.0,3.4.0,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.1,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`hipTensor <hiptensor:index>`,2.0.0,2.0.0,2.0.0,1.5.0,1.5.0,1.5.0,1.5.0,1.4.0,1.4.0,1.4.0,1.4.0,1.3.0,1.3.0,1.3.0,1.3.0,1.2.0,1.2.0,1.2.0,1.2.0,1.1.0,1.1.0
:doc:`rocPRIM <rocprim:index>`,4.1.0,4.0.1,4.0.0,3.4.1,3.4.1,3.4.0,3.4.0,3.3.0,3.3.0,3.3.0,3.3.0,3.2.2,3.2.0,3.2.0,3.2.0,3.1.0,3.1.0,3.1.0,3.1.0,3.0.0,3.0.0
:doc:`rocThrust <rocthrust:index>`,4.1.0,4.0.0,4.0.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.3.0,3.1.1,3.1.0,3.1.0,3.0.1,3.0.1,3.0.1,3.0.1,3.0.1,3.0.0,3.0.0
,,,,,,,,,,,,,,,,,,,,,
SUPPORT LIBS,,,,,,,,,,,,,,,,,,,,,
`hipother <https://github.com/ROCm/hipother>`_,7.1.25424,7.0.51831,7.0.51830,6.4.43483,6.4.43483,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
`rocm-core <https://github.com/ROCm/rocm-core>`_,7.1.0,7.0.2,7.0.1/7.0.0,6.4.3,6.4.2,6.4.1,6.4.0,6.3.3,6.3.2,6.3.1,6.3.0,6.2.4,6.2.2,6.2.1,6.2.0,6.1.5,6.1.2,6.1.1,6.1.0,6.0.2,6.0.0
`ROCT-Thunk-Interface <https://github.com/ROCm/ROCT-Thunk-Interface>`_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,N/A [#ROCT-rocr-past-60]_,20240607.5.7,20240607.5.7,20240607.4.05,20240607.1.4246,20240125.5.08,20240125.5.08,20240125.5.08,20240125.3.30,20231016.2.245,20231016.2.245
,,,,,,,,,,,,,,,,,,,,,
SYSTEM MGMT TOOLS,.. _tools-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`AMD SMI <amdsmi:index>`,26.1.0,26.0.2,26.0.0,25.5.1,25.5.1,25.4.2,25.3.0,24.7.1,24.7.1,24.7.1,24.7.1,24.6.3,24.6.3,24.6.3,24.6.2,24.5.1,24.5.1,24.5.1,24.4.1,23.4.2,23.4.2
:doc:`ROCm Data Center Tool <rdc:index>`,1.2.0,1.1.0,1.1.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0,0.3.0
:doc:`rocminfo <rocminfo:index>`,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
:doc:`ROCm SMI <rocm_smi_lib:index>`,7.8.0,7.8.0,7.8.0,7.7.0,7.5.0,7.5.0,7.5.0,7.4.0,7.4.0,7.4.0,7.4.0,7.3.0,7.3.0,7.3.0,7.3.0,7.2.0,7.2.0,7.0.0,7.0.0,6.0.2,6.0.0
:doc:`ROCm Validation Suite <rocmvalidationsuite:index>`,1.2.0,1.2.0,1.2.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.1.0,1.0.60204,1.0.60202,1.0.60201,1.0.60200,1.0.60105,1.0.60102,1.0.60101,1.0.60100,1.0.60002,1.0.60000
,,,,,,,,,,,,,,,,,,,,,
PERFORMANCE TOOLS,,,,,,,,,,,,,,,,,,,,,
:doc:`ROCm Bandwidth Test <rocm_bandwidth_test:index>`,2.6.0,2.6.0,2.6.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0,1.4.0
:doc:`ROCm Compute Profiler <rocprofiler-compute:index>`,3.3.0,3.2.3,3.2.3,3.1.1,3.1.1,3.1.0,3.1.0,3.0.0,3.0.0,3.0.0,3.0.0,2.0.1,2.0.1,2.0.1,2.0.1,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCm Systems Profiler <rocprofiler-systems:index>`,1.2.0,1.1.1,1.1.0,1.0.2,1.0.2,1.0.1,1.0.0,0.1.2,0.1.1,0.1.0,0.1.0,1.11.2,1.11.2,1.11.2,1.11.2,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCProfiler <rocprofiler:index>`,2.0.70100,2.0.70002,2.0.70000,2.0.60403,2.0.60402,2.0.60401,2.0.60400,2.0.60303,2.0.60302,2.0.60301,2.0.60300,2.0.60204,2.0.60202,2.0.60201,2.0.60200,2.0.60105,2.0.60102,2.0.60101,2.0.60100,2.0.60002,2.0.60000
:doc:`ROCprofiler-SDK <rocprofiler-sdk:index>`,1.0.0,1.0.0,1.0.0,0.6.0,0.6.0,0.6.0,0.6.0,0.5.0,0.5.0,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,N/A,N/A,N/A,N/A,N/A,N/A
:doc:`ROCTracer <roctracer:index>`,4.1.70100,4.1.70002,4.1.70000,4.1.60403,4.1.60402,4.1.60401,4.1.60400,4.1.60303,4.1.60302,4.1.60301,4.1.60300,4.1.60204,4.1.60202,4.1.60201,4.1.60200,4.1.60105,4.1.60102,4.1.60101,4.1.60100,4.1.60002,4.1.60000
,,,,,,,,,,,,,,,,,,,,,
DEVELOPMENT TOOLS,,,,,,,,,,,,,,,,,,,,,
:doc:`HIPIFY <hipify:index>`,20.0.0,20.0.0,20.0.0,19.0.0,19.0.0,19.0.0,19.0.0,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24455,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
:doc:`ROCm CMake <rocmcmakebuildtools:index>`,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.14.0,0.13.0,0.13.0,0.13.0,0.13.0,0.12.0,0.12.0,0.12.0,0.12.0,0.11.0,0.11.0
:doc:`ROCdbgapi <rocdbgapi:index>`,0.77.4,0.77.4,0.77.3,0.77.2,0.77.2,0.77.2,0.77.2,0.77.0,0.77.0,0.77.0,0.77.0,0.76.0,0.76.0,0.76.0,0.76.0,0.71.0,0.71.0,0.71.0,0.71.0,0.71.0,0.71.0
:doc:`ROCm Debugger (ROCgdb) <rocgdb:index>`,16.3.0,16.3.0,16.3.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,15.2.0,14.2.0,14.2.0,14.2.0,14.2.0,14.1.0,14.1.0,14.1.0,14.1.0,13.2.0,13.2.0
`rocprofiler-register <https://github.com/ROCm/rocprofiler-register>`_,0.5.0,0.5.0,0.5.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.4.0,0.3.0,0.3.0,0.3.0,0.3.0,N/A,N/A
:doc:`ROCr Debug Agent <rocr_debug_agent:index>`,2.1.0,2.1.0,2.1.0,2.0.4,2.0.4,2.0.4,2.0.4,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3,2.0.3
,,,,,,,,,,,,,,,,,,,,,
COMPILERS,.. _compilers-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
`clang-ocl <https://github.com/ROCm/clang-ocl>`_,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,N/A,0.5.0,0.5.0,0.5.0,0.5.0,0.5.0,0.5.0
:doc:`hipCC <hipcc:index>`,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.1.1,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0,1.0.0
`Flang <https://github.com/ROCm/flang>`_,20.0.025425,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24455,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
:doc:`llvm-project <llvm-project:index>`,20.0.025425,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24491,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
`OpenMP <https://github.com/ROCm/llvm-project/tree/amd-staging/openmp>`_,20.0.025425,20.0.0.25385,20.0.0.25314,19.0.0.25224,19.0.0.25224,19.0.0.25184,19.0.0.25133,18.0.0.25012,18.0.0.25012,18.0.0.24491,18.0.0.24491,18.0.0.24392,18.0.0.24355,18.0.0.24355,18.0.0.24232,17.0.0.24193,17.0.0.24193,17.0.0.24154,17.0.0.24103,17.0.0.24012,17.0.0.23483
,,,,,,,,,,,,,,,,,,,,,
RUNTIMES,.. _runtime-support-compatibility-matrix-past-60:,,,,,,,,,,,,,,,,,,,,
:doc:`AMD CLR <hip:understand/amd_clr>`,7.1.25424,7.0.51831,7.0.51830,6.4.43484,6.4.43484,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
:doc:`HIP <hip:index>`,7.1.25424,7.0.51831,7.0.51830,6.4.43484,6.4.43484,6.4.43483,6.4.43482,6.3.42134,6.3.42134,6.3.42133,6.3.42131,6.2.41134,6.2.41134,6.2.41134,6.2.41133,6.1.40093,6.1.40093,6.1.40092,6.1.40091,6.1.32831,6.1.32830
`OpenCL Runtime <https://github.com/ROCm/clr/tree/develop/opencl>`_,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0,2.0.0
:doc:`ROCr Runtime <rocr-runtime:index>`,1.18.0,1.18.0,1.18.0,1.15.0,1.15.0,1.15.0,1.15.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.14.0,1.13.0,1.13.0,1.13.0,1.13.0,1.13.0,1.12.0,1.12.0
1 ROCm Version 7.1.0 7.0.2 7.0.1/7.0.0 6.4.3 6.4.2 6.4.1 6.4.0 6.3.3 6.3.2 6.3.1 6.3.0 6.2.4 6.2.2 6.2.1 6.2.0 6.1.5 6.1.2 6.1.1 6.1.0 6.0.2 6.0.0
2 :ref:`Operating systems & kernels <OS-kernel-versions>` Ubuntu 24.04.3 Ubuntu 24.04.3 Ubuntu 24.04.3 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.2 Ubuntu 24.04.1, 24.04 Ubuntu 24.04.1, 24.04 Ubuntu 24.04.1, 24.04 Ubuntu 24.04
3 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5 Ubuntu 22.04.5, 22.04.4 Ubuntu 22.04.5, 22.04.4 Ubuntu 22.04.5, 22.04.4 Ubuntu 22.04.5, 22.04.4 Ubuntu 22.04.5, 22.04.4, 22.04.3 Ubuntu 22.04.4, 22.04.3 Ubuntu 22.04.4, 22.04.3 Ubuntu 22.04.4, 22.04.3 Ubuntu 22.04.4, 22.04.3, 22.04.2 Ubuntu 22.04.4, 22.04.3, 22.04.2
4 Ubuntu 20.04.6, 20.04.5 Ubuntu 20.04.6, 20.04.5 Ubuntu 20.04.6, 20.04.5 Ubuntu 20.04.6, 20.04.5 Ubuntu 20.04.6, 20.04.5 Ubuntu 20.04.6, 20.04.5
5 RHEL 10.0 [#rhel-10-702-past-60]_, 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_ RHEL 10.0 [#rhel-10-702-past-60]_, 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_ RHEL 9.6 [#rhel-10-702-past-60]_, 9.4 [#rhel-94-702-past-60]_ RHEL 9.6, 9.4 RHEL 9.6, 9.4 RHEL 9.6, 9.5, 9.4 RHEL 9.5, 9.4 RHEL 9.5, 9.4 RHEL 9.5, 9.4 RHEL 9.5, 9.4 RHEL 9.5, 9.4 RHEL 9.4, 9.3 RHEL 9.4, 9.3 RHEL 9.4, 9.3 RHEL 9.4, 9.3 RHEL 9.4, 9.3, 9.2 RHEL 9.4, 9.3, 9.2 RHEL 9.4, 9.3, 9.2 RHEL 9.4, 9.3, 9.2 RHEL 9.3, 9.2 RHEL 9.3, 9.2
6 RHEL 8.10 [#rhel-700-past-60]_ RHEL 8.10 [#rhel-700-past-60]_ RHEL 8.10 [#rhel-700-past-60]_ RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10 RHEL 8.10, 8.9 RHEL 8.10, 8.9 RHEL 8.10, 8.9 RHEL 8.10, 8.9 RHEL 8.9, 8.8 RHEL 8.9, 8.8 RHEL 8.9, 8.8 RHEL 8.9, 8.8 RHEL 8.9, 8.8 RHEL 8.9, 8.8
7 SLES 15 SP7 [#sles-710-past-60]_ SLES 15 SP7 [#sles-db-700-past-60]_ SLES 15 SP7 [#sles-db-700-past-60]_ SLES 15 SP7, SP6 SLES 15 SP7, SP6 SLES 15 SP6 SLES 15 SP6 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP6, SP5 SLES 15 SP5, SP4 SLES 15 SP5, SP4 SLES 15 SP5, SP4 SLES 15 SP5, SP4 SLES 15 SP5, SP4 SLES 15 SP5, SP4
8 CentOS 7.9 CentOS 7.9 CentOS 7.9 CentOS 7.9 CentOS 7.9
9 Oracle Linux 10, 9, 8 [#ol-710-mi300x-past-60]_ Oracle Linux 10, 9, 8 [#ol-700-mi300x-past-60]_ Oracle Linux 9, 8 [#ol-700-mi300x-past-60]_ Oracle Linux 9, 8 [#mi300x-past-60]_ Oracle Linux 9, 8 [#mi300x-past-60]_ Oracle Linux 9, 8 [#mi300x-past-60]_ Oracle Linux 9, 8 [#mi300x-past-60]_ Oracle Linux 8.10 [#mi300x-past-60]_ Oracle Linux 8.10 [#mi300x-past-60]_ Oracle Linux 8.10 [#mi300x-past-60]_ Oracle Linux 8.10 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_ Oracle Linux 8.9 [#mi300x-past-60]_
10 Debian 13 [#db-710-mi300x-past-60]_, 12 [#db12-710-past-60]_ Debian 13 [#db-mi300x-past-60]_, 12 [#sles-db-700-past-60]_ Debian 12 [#sles-db-700-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_ Debian 12 [#single-node-past-60]_
11 Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-past-60]_ Azure Linux 3.0 [#az-mi300x-630-past-60]_ Azure Linux 3.0 [#az-mi300x-630-past-60]_
12 Rocky Linux 9 [#rl-700-past-60]_ Rocky Linux 9 [#rl-700-past-60]_ Rocky Linux 9 [#rl-700-past-60]_
13 .. _architecture-support-compatibility-matrix-past-60: .. _architecture-support-compatibility-matrix-past-60:
14 :doc:`Architecture <rocm-install-on-linux:reference/system-requirements>` CDNA4 CDNA4 CDNA4
15 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3 CDNA3
16 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2 CDNA2
17 CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA CDNA
18 RDNA4 RDNA4 RDNA4 RDNA4 RDNA4 RDNA4
19 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3 RDNA3
20 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2 RDNA2
21 .. _gpu-support-compatibility-matrix-past-60: .. _gpu-support-compatibility-matrix-past-60:
22 :doc:`GPU / LLVM target <rocm-install-on-linux:reference/system-requirements>` gfx950 [#mi350x-os-710-past-60]_ gfx950 [#mi350x-os-past-60]_ gfx950 [#mi350x-os-700-past-60]_ gfx950 [#mi350x-os-past-60]_ gfx950 [#mi350x-os-700-past-60]_
23 gfx1201 [#RDNA-OS-700-past-60]_ gfx1201 [#RDNA-OS-700-past-60]_ gfx1201 [#RDNA-OS-700-past-60]_ gfx1201 [#RDNA-OS-past-60]_ gfx1201 [#RDNA-OS-past-60]_ gfx1201 [#RDNA-OS-past-60]_
24 gfx1200 [#RDNA-OS-700-past-60]_ gfx1200 [#RDNA-OS-700-past-60]_ gfx1200 [#RDNA-OS-700-past-60]_ gfx1200 [#RDNA-OS-past-60]_ gfx1200 [#RDNA-OS-past-60]_ gfx1200 [#RDNA-OS-past-60]_
25 gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_ gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_ gfx1101 [#RDNA-OS-700-past-60]_ [#rd-v710-past-60]_ gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_ gfx1101 [#RDNA-OS-past-60]_ [#7700XT-OS-past-60]_ gfx1101 [#RDNA-OS-past-60]_
26 gfx1100 [#RDNA-OS-700-past-60]_ gfx1100 [#RDNA-OS-700-past-60]_ gfx1100 [#RDNA-OS-700-past-60]_ gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100 gfx1100
27 gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_ gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_ gfx1030 [#RDNA-OS-700-past-60]_ [#rd-v620-past-60]_ gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030 gfx1030
28 gfx942 [#mi325x-os-710past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_ gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_ gfx942 [#mi325x-os-past-60]_ [#mi300x-os-past-60]_ [#mi300A-os-past-60]_ gfx942 gfx942 gfx942 gfx942 gfx942 gfx942 gfx942 gfx942 gfx942 [#mi300_624-past-60]_ gfx942 [#mi300_622-past-60]_ gfx942 [#mi300_621-past-60]_ gfx942 [#mi300_620-past-60]_ gfx942 [#mi300_612-past-60]_ gfx942 [#mi300_612-past-60]_ gfx942 [#mi300_611-past-60]_ gfx942 [#mi300_610-past-60]_ gfx942 [#mi300_602-past-60]_ gfx942 [#mi300_600-past-60]_
29 gfx90a [#mi200x-os-past-60]_ gfx90a [#mi200x-os-past-60]_ gfx90a [#mi200x-os-past-60]_ gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a gfx90a
30 gfx908 [#mi100-710-os-past-60]_ gfx908 [#mi100-os-past-60]_ gfx908 [#mi100-os-past-60]_ gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908 gfx908
31
32 FRAMEWORK SUPPORT .. _framework-support-compatibility-matrix-past-60: .. _framework-support-compatibility-matrix-past-60:
33 :doc:`PyTorch <../compatibility/ml-compatibility/pytorch-compatibility>` 2.8, 2.7, 2.6 2.8, 2.7, 2.6 2.7, 2.6, 2.5 2.6, 2.5, 2.4, 2.3 2.6, 2.5, 2.4, 2.3 2.6, 2.5, 2.4, 2.3 2.6, 2.5, 2.4, 2.3 2.4, 2.3, 2.2, 1.13 2.4, 2.3, 2.2, 1.13 2.4, 2.3, 2.2, 1.13 2.4, 2.3, 2.2, 2.1, 2.0, 1.13 2.3, 2.2, 2.1, 2.0, 1.13 2.3, 2.2, 2.1, 2.0, 1.13 2.3, 2.2, 2.1, 2.0, 1.13 2.3, 2.2, 2.1, 2.0, 1.13 2.1, 2.0, 1.13 2.1, 2.0, 1.13 2.1, 2.0, 1.13 2.1, 2.0, 1.13 2.1, 2.0, 1.13 2.1, 2.0, 1.13
34 :doc:`TensorFlow <../compatibility/ml-compatibility/tensorflow-compatibility>` 2.20.0, 2.19.1, 2.18.1 2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_ 2.19.1, 2.18.1, 2.17.1 [#tf-mi350-past-60]_ 2.18.1, 2.17.1, 2.16.2 2.18.1, 2.17.1, 2.16.2 2.18.1, 2.17.1, 2.16.2 2.18.1, 2.17.1, 2.16.2 2.17.0, 2.16.2, 2.15.1 2.17.0, 2.16.2, 2.15.1 2.17.0, 2.16.2, 2.15.1 2.17.0, 2.16.2, 2.15.1 2.16.1, 2.15.1, 2.14.1 2.16.1, 2.15.1, 2.14.1 2.16.1, 2.15.1, 2.14.1 2.16.1, 2.15.1, 2.14.1 2.15.0, 2.14.0, 2.13.1 2.15.0, 2.14.0, 2.13.1 2.15.0, 2.14.0, 2.13.1 2.15.0, 2.14.0, 2.13.1 2.14.0, 2.13.1, 2.12.1 2.14.0, 2.13.1, 2.12.1
35 :doc:`JAX <../compatibility/ml-compatibility/jax-compatibility>` 0.6.0 0.6.0 0.6.0 0.4.35 0.4.35 0.4.35 0.4.35 0.4.31 0.4.31 0.4.31 0.4.31 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26 0.4.26
36 :doc:`verl <../compatibility/ml-compatibility/verl-compatibility>` [#verl_compat-past-60]_ N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A 0.3.0.post0 N/A N/A N/A N/A N/A N/A
37 :doc:`Stanford Megatron-LM <../compatibility/ml-compatibility/stanford-megatron-lm-compatibility>` [#stanford-megatron-lm_compat-past-60]_ N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A 85f95ae N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
38 :doc:`DGL <../compatibility/ml-compatibility/dgl-compatibility>` [#dgl_compat-past-60]_ N/A N/A N/A 2.4.0 N/A 2.4.0 N/A N/A 2.4.0 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
39 :doc:`Megablocks <../compatibility/ml-compatibility/megablocks-compatibility>` [#megablocks_compat-past-60]_ N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A 0.7.0 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
40 :doc:`Taichi <../compatibility/ml-compatibility/taichi-compatibility>` [#taichi_compat-past-60]_ N/A N/A N/A N/A N/A N/A N/A N/A 1.8.0b1 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
41 :doc:`Ray <../compatibility/ml-compatibility/ray-compatibility>` [#ray_compat-past-60]_ N/A N/A N/A N/A N/A 2.48.0.post0 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
42 :doc:`llama.cpp <../compatibility/ml-compatibility/llama-cpp-compatibility>` [#llama-cpp_compat-past-60]_ N/A N/A b6356 b6652 b6356 b6356 b6356 b5997 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
43 :doc:`FlashInfer <../compatibility/ml-compatibility/flashinfer-compatibility>` [#flashinfer_compat-past-60]_ N/A N/A N/A N/A N/A v0.2.5 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
44 `ONNX Runtime <https://onnxruntime.ai/docs/build/eps.html#amd-migraphx>`_ 1.22.0 1.22.0 1.22.0 1.20.0 1.20.0 1.20.0 1.20.0 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.17.3 1.14.1 1.14.1
45
46
47 THIRD PARTY COMMS .. _thirdpartycomms-support-compatibility-matrix-past-60: .. _thirdpartycomms-support-compatibility-matrix-past-60:
48 `UCC <https://github.com/ROCm/ucc>`_ >=1.4.0 >=1.4.0 >=1.4.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.3.0 >=1.2.0 >=1.2.0
49 `UCX <https://github.com/ROCm/ucx>`_ >=1.17.0 >=1.17.0 >=1.17.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.15.0 >=1.14.1 >=1.14.1 >=1.14.1 >=1.14.1 >=1.14.1 >=1.14.1
50
51 THIRD PARTY ALGORITHM .. _thirdpartyalgorithm-support-compatibility-matrix-past-60: .. _thirdpartyalgorithm-support-compatibility-matrix-past-60:
52 Thrust 2.8.5 2.6.0 2.6.0 2.5.0 2.5.0 2.5.0 2.5.0 2.3.2 2.3.2 2.3.2 2.3.2 2.2.0 2.2.0 2.2.0 2.2.0 2.1.0 2.1.0 2.1.0 2.1.0 2.0.1 2.0.1
53 CUB 2.8.5 2.6.0 2.6.0 2.5.0 2.5.0 2.5.0 2.5.0 2.3.2 2.3.2 2.3.2 2.3.2 2.2.0 2.2.0 2.2.0 2.2.0 2.1.0 2.1.0 2.1.0 2.1.0 2.0.1 2.0.1
54
55 DRIVER & USER SPACE [#kfd_support-past-60]_ .. _kfd-userspace-support-compatibility-matrix-past-60: .. _kfd-userspace-support-compatibility-matrix-past-60:
56 :doc:`AMD GPU Driver <rocm-install-on-linux:reference/user-kernel-space-compat-matrix>` 30.20.0 [#mi325x_KVM-past-60]_, 30.10.2, 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x 30.10.2, 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x 30.10.1 [#driver_patch-past-60]_, 30.10, 6.4.x, 6.3.x, 6.2.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x 6.4.x, 6.3.x, 6.2.x, 6.1.x, 6.0.x, 5.7.x 6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x 6.2.x, 6.1.x, 6.0.x, 5.7.x, 5.6.x
57
58 ML & COMPUTER VISION .. _mllibs-support-compatibility-matrix-past-60: .. _mllibs-support-compatibility-matrix-past-60:
59 :doc:`Composable Kernel <composable_kernel:index>` 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0
60 :doc:`MIGraphX <amdmigraphx:index>` 2.14.0 2.13.0 2.13.0 2.12.0 2.12.0 2.12.0 2.12.0 2.11.0 2.11.0 2.11.0 2.11.0 2.10.0 2.10.0 2.10.0 2.10.0 2.9.0 2.9.0 2.9.0 2.9.0 2.8.0 2.8.0
61 :doc:`MIOpen <miopen:index>` 3.5.1 3.5.0 3.5.0 3.4.0 3.4.0 3.4.0 3.4.0 3.3.0 3.3.0 3.3.0 3.3.0 3.2.0 3.2.0 3.2.0 3.2.0 3.1.0 3.1.0 3.1.0 3.1.0 3.0.0 3.0.0
62 :doc:`MIVisionX <mivisionx:index>` 3.4.0 3.3.0 3.3.0 3.2.0 3.2.0 3.2.0 3.2.0 3.1.0 3.1.0 3.1.0 3.1.0 3.0.0 3.0.0 3.0.0 3.0.0 2.5.0 2.5.0 2.5.0 2.5.0 2.5.0 2.5.0
63 :doc:`rocAL <rocal:index>` 2.4.0 2.3.0 2.3.0 2.2.0 2.2.0 2.2.0 2.2.0 2.1.0 2.1.0 2.1.0 2.1.0 2.0.0 2.0.0 2.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0
64 :doc:`rocDecode <rocdecode:index>` 1.4.0 1.0.0 1.0.0 0.10.0 0.10.0 0.10.0 0.10.0 0.8.0 0.8.0 0.8.0 0.8.0 0.6.0 0.6.0 0.6.0 0.6.0 0.6.0 0.6.0 0.5.0 0.5.0 N/A N/A
65 :doc:`rocJPEG <rocjpeg:index>` 1.2.0 1.1.0 1.1.0 0.8.0 0.8.0 0.8.0 0.8.0 0.6.0 0.6.0 0.6.0 0.6.0 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
66 :doc:`rocPyDecode <rocpydecode:index>` 0.7.0 0.6.0 0.6.0 0.3.1 0.3.1 0.3.1 0.3.1 0.2.0 0.2.0 0.2.0 0.2.0 0.1.0 0.1.0 0.1.0 0.1.0 N/A N/A N/A N/A N/A N/A
67 :doc:`RPP <rpp:index>` 2.1.0 2.0.0 2.0.0 1.9.10 1.9.10 1.9.10 1.9.10 1.9.1 1.9.1 1.9.1 1.9.1 1.8.0 1.8.0 1.8.0 1.8.0 1.5.0 1.5.0 1.5.0 1.5.0 1.4.0 1.4.0
68
69 COMMUNICATION .. _commlibs-support-compatibility-matrix-past-60: .. _commlibs-support-compatibility-matrix-past-60:
70 :doc:`RCCL <rccl:index>` 2.27.7 2.26.6 2.26.6 2.22.3 2.22.3 2.22.3 2.22.3 2.21.5 2.21.5 2.21.5 2.21.5 2.20.5 2.20.5 2.20.5 2.20.5 2.18.6 2.18.6 2.18.6 2.18.6 2.18.3 2.18.3
71 :doc:`rocSHMEM <rocshmem:index>` 3.0.0 3.0.0 3.0.0 2.0.1 2.0.1 2.0.0 2.0.0 N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A
72
73 MATH LIBS .. _mathlibs-support-compatibility-matrix-past-60: .. _mathlibs-support-compatibility-matrix-past-60:
74 `half <https://github.com/ROCm/half>`_ 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0 1.12.0
75 :doc:`hipBLAS <hipblas:index>` 3.1.0 3.0.2 3.0.0 2.4.0 2.4.0 2.4.0 2.4.0 2.3.0 2.3.0 2.3.0 2.3.0 2.2.0 2.2.0 2.2.0 2.2.0 2.1.0 2.1.0 2.1.0 2.1.0 2.0.0 2.0.0
76 :doc:`hipBLASLt <hipblaslt:index>` 1.1.0 1.0.0 1.0.0 0.12.1 0.12.1 0.12.1 0.12.0 0.10.0 0.10.0 0.10.0 0.10.0 0.8.0 0.8.0 0.8.0 0.8.0 0.7.0 0.7.0 0.7.0 0.7.0 0.6.0 0.6.0
77 :doc:`hipFFT <hipfft:index>` 1.0.21 1.0.20 1.0.20 1.0.18 1.0.18 1.0.18 1.0.18 1.0.17 1.0.17 1.0.17 1.0.17 1.0.16 1.0.15 1.0.15 1.0.14 1.0.14 1.0.14 1.0.14 1.0.14 1.0.13 1.0.13
78 :doc:`hipfort <hipfort:index>` 0.7.1 0.7.0 0.7.0 0.6.0 0.6.0 0.6.0 0.6.0 0.5.1 0.5.1 0.5.0 0.5.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0
79 :doc:`hipRAND <hiprand:index>` 3.1.0 3.0.0 3.0.0 2.12.0 2.12.0 2.12.0 2.12.0 2.11.1 2.11.1 2.11.1 2.11.0 2.11.1 2.11.0 2.11.0 2.11.0 2.10.16 2.10.16 2.10.16 2.10.16 2.10.16 2.10.16
80 :doc:`hipSOLVER <hipsolver:index>` 3.1.0 3.0.0 3.0.0 2.4.0 2.4.0 2.4.0 2.4.0 2.3.0 2.3.0 2.3.0 2.3.0 2.2.0 2.2.0 2.2.0 2.2.0 2.1.1 2.1.1 2.1.1 2.1.0 2.0.0 2.0.0
81 :doc:`hipSPARSE <hipsparse:index>` 4.1.0 4.0.1 4.0.1 3.2.0 3.2.0 3.2.0 3.2.0 3.1.2 3.1.2 3.1.2 3.1.2 3.1.1 3.1.1 3.1.1 3.1.1 3.0.1 3.0.1 3.0.1 3.0.1 3.0.0 3.0.0
82 :doc:`hipSPARSELt <hipsparselt:index>` 0.2.5 0.2.4 0.2.4 0.2.3 0.2.3 0.2.3 0.2.3 0.2.2 0.2.2 0.2.2 0.2.2 0.2.1 0.2.1 0.2.1 0.2.1 0.2.0 0.2.0 0.1.0 0.1.0 0.1.0 0.1.0
83 :doc:`rocALUTION <rocalution:index>` 4.0.1 4.0.0 4.0.0 3.2.3 3.2.3 3.2.3 3.2.2 3.2.1 3.2.1 3.2.1 3.2.1 3.2.1 3.2.0 3.2.0 3.2.0 3.1.1 3.1.1 3.1.1 3.1.1 3.0.3 3.0.3
84 :doc:`rocBLAS <rocblas:index>` 5.1.0 5.0.2 5.0.0 4.4.1 4.4.1 4.4.0 4.4.0 4.3.0 4.3.0 4.3.0 4.3.0 4.2.4 4.2.1 4.2.1 4.2.0 4.1.2 4.1.2 4.1.0 4.1.0 4.0.0 4.0.0
85 :doc:`rocFFT <rocfft:index>` 1.0.35 1.0.34 1.0.34 1.0.32 1.0.32 1.0.32 1.0.32 1.0.31 1.0.31 1.0.31 1.0.31 1.0.30 1.0.29 1.0.29 1.0.28 1.0.27 1.0.27 1.0.27 1.0.26 1.0.25 1.0.23
86 :doc:`rocRAND <rocrand:index>` 4.1.0 4.0.0 4.0.0 3.3.0 3.3.0 3.3.0 3.3.0 3.2.0 3.2.0 3.2.0 3.2.0 3.1.1 3.1.0 3.1.0 3.1.0 3.0.1 3.0.1 3.0.1 3.0.1 3.0.0 2.10.17
87 :doc:`rocSOLVER <rocsolver:index>` 3.31.0 3.30.1 3.30.0 3.28.2 3.28.2 3.28.0 3.28.0 3.27.0 3.27.0 3.27.0 3.27.0 3.26.2 3.26.0 3.26.0 3.26.0 3.25.0 3.25.0 3.25.0 3.25.0 3.24.0 3.24.0
88 :doc:`rocSPARSE <rocsparse:index>` 4.1.0 4.0.2 4.0.2 3.4.0 3.4.0 3.4.0 3.4.0 3.3.0 3.3.0 3.3.0 3.3.0 3.2.1 3.2.0 3.2.0 3.2.0 3.1.2 3.1.2 3.1.2 3.1.2 3.0.2 3.0.2
89 :doc:`rocWMMA <rocwmma:index>` 2.0.0 2.0.0 2.0.0 1.7.0 1.7.0 1.7.0 1.7.0 1.6.0 1.6.0 1.6.0 1.6.0 1.5.0 1.5.0 1.5.0 1.5.0 1.4.0 1.4.0 1.4.0 1.4.0 1.3.0 1.3.0
90 :doc:`Tensile <tensile:src/index>` 4.44.0 4.44.0 4.44.0 4.43.0 4.43.0 4.43.0 4.43.0 4.42.0 4.42.0 4.42.0 4.42.0 4.41.0 4.41.0 4.41.0 4.41.0 4.40.0 4.40.0 4.40.0 4.40.0 4.39.0 4.39.0
91
92 PRIMITIVES .. _primitivelibs-support-compatibility-matrix-past-60: .. _primitivelibs-support-compatibility-matrix-past-60:
93 :doc:`hipCUB <hipcub:index>` 4.1.0 4.0.0 4.0.0 3.4.0 3.4.0 3.4.0 3.4.0 3.3.0 3.3.0 3.3.0 3.3.0 3.2.1 3.2.0 3.2.0 3.2.0 3.1.0 3.1.0 3.1.0 3.1.0 3.0.0 3.0.0
94 :doc:`hipTensor <hiptensor:index>` 2.0.0 2.0.0 2.0.0 1.5.0 1.5.0 1.5.0 1.5.0 1.4.0 1.4.0 1.4.0 1.4.0 1.3.0 1.3.0 1.3.0 1.3.0 1.2.0 1.2.0 1.2.0 1.2.0 1.1.0 1.1.0
95 :doc:`rocPRIM <rocprim:index>` 4.1.0 4.0.1 4.0.0 3.4.1 3.4.1 3.4.0 3.4.0 3.3.0 3.3.0 3.3.0 3.3.0 3.2.2 3.2.0 3.2.0 3.2.0 3.1.0 3.1.0 3.1.0 3.1.0 3.0.0 3.0.0
96 :doc:`rocThrust <rocthrust:index>` 4.1.0 4.0.0 4.0.0 3.3.0 3.3.0 3.3.0 3.3.0 3.3.0 3.3.0 3.3.0 3.3.0 3.1.1 3.1.0 3.1.0 3.0.1 3.0.1 3.0.1 3.0.1 3.0.1 3.0.0 3.0.0
97
98 SUPPORT LIBS
99 `hipother <https://github.com/ROCm/hipother>`_ 7.1.25424 7.0.51830 7.0.51831 7.0.51830 6.4.43483 6.4.43483 6.4.43483 6.4.43482 6.3.42134 6.3.42134 6.3.42133 6.3.42131 6.2.41134 6.2.41134 6.2.41134 6.2.41133 6.1.40093 6.1.40093 6.1.40092 6.1.40091 6.1.32831 6.1.32830
100 `rocm-core <https://github.com/ROCm/rocm-core>`_ 7.1.0 7.0.2 7.0.1/7.0.0 6.4.3 6.4.2 6.4.1 6.4.0 6.3.3 6.3.2 6.3.1 6.3.0 6.2.4 6.2.2 6.2.1 6.2.0 6.1.5 6.1.2 6.1.1 6.1.0 6.0.2 6.0.0
101 `ROCT-Thunk-Interface <https://github.com/ROCm/ROCT-Thunk-Interface>`_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ N/A [#ROCT-rocr-past-60]_ 20240607.5.7 20240607.5.7 20240607.4.05 20240607.1.4246 20240125.5.08 20240125.5.08 20240125.5.08 20240125.3.30 20231016.2.245 20231016.2.245
102
103 SYSTEM MGMT TOOLS .. _tools-support-compatibility-matrix-past-60: .. _tools-support-compatibility-matrix-past-60:
104 :doc:`AMD SMI <amdsmi:index>` 26.1.0 26.0.2 26.0.0 25.5.1 25.5.1 25.4.2 25.3.0 24.7.1 24.7.1 24.7.1 24.7.1 24.6.3 24.6.3 24.6.3 24.6.2 24.5.1 24.5.1 24.5.1 24.4.1 23.4.2 23.4.2
105 :doc:`ROCm Data Center Tool <rdc:index>` 1.2.0 1.1.0 1.1.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0 0.3.0
106 :doc:`rocminfo <rocminfo:index>` 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0
107 :doc:`ROCm SMI <rocm_smi_lib:index>` 7.8.0 7.8.0 7.8.0 7.7.0 7.5.0 7.5.0 7.5.0 7.4.0 7.4.0 7.4.0 7.4.0 7.3.0 7.3.0 7.3.0 7.3.0 7.2.0 7.2.0 7.0.0 7.0.0 6.0.2 6.0.0
108 :doc:`ROCm Validation Suite <rocmvalidationsuite:index>` 1.2.0 1.2.0 1.2.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.1.0 1.0.60204 1.0.60202 1.0.60201 1.0.60200 1.0.60105 1.0.60102 1.0.60101 1.0.60100 1.0.60002 1.0.60000
109
110 PERFORMANCE TOOLS
111 :doc:`ROCm Bandwidth Test <rocm_bandwidth_test:index>` 2.6.0 2.6.0 2.6.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0 1.4.0
112 :doc:`ROCm Compute Profiler <rocprofiler-compute:index>` 3.3.0 3.2.3 3.2.3 3.1.1 3.1.1 3.1.0 3.1.0 3.0.0 3.0.0 3.0.0 3.0.0 2.0.1 2.0.1 2.0.1 2.0.1 N/A N/A N/A N/A N/A N/A
113 :doc:`ROCm Systems Profiler <rocprofiler-systems:index>` 1.2.0 1.1.1 1.1.0 1.0.2 1.0.2 1.0.1 1.0.0 0.1.2 0.1.1 0.1.0 0.1.0 1.11.2 1.11.2 1.11.2 1.11.2 N/A N/A N/A N/A N/A N/A
114 :doc:`ROCProfiler <rocprofiler:index>` 2.0.70100 2.0.70002 2.0.70000 2.0.60403 2.0.60402 2.0.60401 2.0.60400 2.0.60303 2.0.60302 2.0.60301 2.0.60300 2.0.60204 2.0.60202 2.0.60201 2.0.60200 2.0.60105 2.0.60102 2.0.60101 2.0.60100 2.0.60002 2.0.60000
115 :doc:`ROCprofiler-SDK <rocprofiler-sdk:index>` 1.0.0 1.0.0 1.0.0 0.6.0 0.6.0 0.6.0 0.6.0 0.5.0 0.5.0 0.5.0 0.5.0 0.4.0 0.4.0 0.4.0 0.4.0 N/A N/A N/A N/A N/A N/A
116 :doc:`ROCTracer <roctracer:index>` 4.1.70100 4.1.70002 4.1.70000 4.1.60403 4.1.60402 4.1.60401 4.1.60400 4.1.60303 4.1.60302 4.1.60301 4.1.60300 4.1.60204 4.1.60202 4.1.60201 4.1.60200 4.1.60105 4.1.60102 4.1.60101 4.1.60100 4.1.60002 4.1.60000
117
118 DEVELOPMENT TOOLS
119 :doc:`HIPIFY <hipify:index>` 20.0.0 20.0.0 20.0.0 19.0.0 19.0.0 19.0.0 19.0.0 18.0.0.25012 18.0.0.25012 18.0.0.24491 18.0.0.24455 18.0.0.24392 18.0.0.24355 18.0.0.24355 18.0.0.24232 17.0.0.24193 17.0.0.24193 17.0.0.24154 17.0.0.24103 17.0.0.24012 17.0.0.23483
120 :doc:`ROCm CMake <rocmcmakebuildtools:index>` 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.14.0 0.13.0 0.13.0 0.13.0 0.13.0 0.12.0 0.12.0 0.12.0 0.12.0 0.11.0 0.11.0
121 :doc:`ROCdbgapi <rocdbgapi:index>` 0.77.4 0.77.4 0.77.3 0.77.2 0.77.2 0.77.2 0.77.2 0.77.0 0.77.0 0.77.0 0.77.0 0.76.0 0.76.0 0.76.0 0.76.0 0.71.0 0.71.0 0.71.0 0.71.0 0.71.0 0.71.0
122 :doc:`ROCm Debugger (ROCgdb) <rocgdb:index>` 16.3.0 16.3.0 16.3.0 15.2.0 15.2.0 15.2.0 15.2.0 15.2.0 15.2.0 15.2.0 15.2.0 14.2.0 14.2.0 14.2.0 14.2.0 14.1.0 14.1.0 14.1.0 14.1.0 13.2.0 13.2.0
123 `rocprofiler-register <https://github.com/ROCm/rocprofiler-register>`_ 0.5.0 0.5.0 0.5.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.4.0 0.3.0 0.3.0 0.3.0 0.3.0 N/A N/A
124 :doc:`ROCr Debug Agent <rocr_debug_agent:index>` 2.1.0 2.1.0 2.1.0 2.0.4 2.0.4 2.0.4 2.0.4 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3 2.0.3
125
126 COMPILERS .. _compilers-support-compatibility-matrix-past-60: .. _compilers-support-compatibility-matrix-past-60:
127 `clang-ocl <https://github.com/ROCm/clang-ocl>`_ N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A N/A 0.5.0 0.5.0 0.5.0 0.5.0 0.5.0 0.5.0
128 :doc:`hipCC <hipcc:index>` 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.1.1 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0 1.0.0
129 `Flang <https://github.com/ROCm/flang>`_ 20.0.025425 20.0.0.25385 20.0.0.25314 19.0.0.25224 19.0.0.25224 19.0.0.25184 19.0.0.25133 18.0.0.25012 18.0.0.25012 18.0.0.24491 18.0.0.24455 18.0.0.24392 18.0.0.24355 18.0.0.24355 18.0.0.24232 17.0.0.24193 17.0.0.24193 17.0.0.24154 17.0.0.24103 17.0.0.24012 17.0.0.23483
130 :doc:`llvm-project <llvm-project:index>` 20.0.025425 20.0.0.25385 20.0.0.25314 19.0.0.25224 19.0.0.25224 19.0.0.25184 19.0.0.25133 18.0.0.25012 18.0.0.25012 18.0.0.24491 18.0.0.24491 18.0.0.24392 18.0.0.24355 18.0.0.24355 18.0.0.24232 17.0.0.24193 17.0.0.24193 17.0.0.24154 17.0.0.24103 17.0.0.24012 17.0.0.23483
131 `OpenMP <https://github.com/ROCm/llvm-project/tree/amd-staging/openmp>`_ 20.0.025425 20.0.0.25385 20.0.0.25314 19.0.0.25224 19.0.0.25224 19.0.0.25184 19.0.0.25133 18.0.0.25012 18.0.0.25012 18.0.0.24491 18.0.0.24491 18.0.0.24392 18.0.0.24355 18.0.0.24355 18.0.0.24232 17.0.0.24193 17.0.0.24193 17.0.0.24154 17.0.0.24103 17.0.0.24012 17.0.0.23483
132
133 RUNTIMES .. _runtime-support-compatibility-matrix-past-60: .. _runtime-support-compatibility-matrix-past-60:
134 :doc:`AMD CLR <hip:understand/amd_clr>` 7.1.25424 7.0.51831 7.0.51830 6.4.43484 6.4.43484 6.4.43483 6.4.43482 6.3.42134 6.3.42134 6.3.42133 6.3.42131 6.2.41134 6.2.41134 6.2.41134 6.2.41133 6.1.40093 6.1.40093 6.1.40092 6.1.40091 6.1.32831 6.1.32830
135 :doc:`HIP <hip:index>` 7.1.25424 7.0.51831 7.0.51830 6.4.43484 6.4.43484 6.4.43483 6.4.43482 6.3.42134 6.3.42134 6.3.42133 6.3.42131 6.2.41134 6.2.41134 6.2.41134 6.2.41133 6.1.40093 6.1.40093 6.1.40092 6.1.40091 6.1.32831 6.1.32830
136 `OpenCL Runtime <https://github.com/ROCm/clr/tree/develop/opencl>`_ 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0 2.0.0
137 :doc:`ROCr Runtime <rocr-runtime:index>` 1.18.0 1.18.0 1.18.0 1.15.0 1.15.0 1.15.0 1.15.0 1.14.0 1.14.0 1.14.0 1.14.0 1.14.0 1.14.0 1.14.0 1.13.0 1.13.0 1.13.0 1.13.0 1.13.0 1.12.0 1.12.0

View File

@@ -12,7 +12,7 @@ You can also refer to the :ref:`past versions of ROCm compatibility matrix<past-
GPUs listed in the following table support compute workloads (no display
information or graphics). If youre using ROCm with AMD Radeon GPUs or Ryzen APUs for graphics
workloads, see the :docs:`Use ROCm on Radeon and Ryzen <radeon:index.html>` to verify
workloads, see the :doc:`Use ROCm on Radeon and Ryzen <radeon:index>` to verify
compatibility and system requirements.
.. |br| raw:: html
@@ -22,16 +22,16 @@ compatibility and system requirements.
.. container:: format-big-table
.. csv-table::
:header: "ROCm Version", "7.0.2", "7.0.1/7.0.0", "6.4.0"
:header: "ROCm Version", "7.1.0", "7.0.2", "6.4.0"
:stub-columns: 1
:ref:`Operating systems & kernels <OS-kernel-versions>`,Ubuntu 24.04.3,Ubuntu 24.04.3,Ubuntu 24.04.2
,Ubuntu 22.04.5,Ubuntu 22.04.5,Ubuntu 22.04.5
,"RHEL 10.0 [#rhel-10-702]_, 9.6 [#rhel-10-702]_, 9.4 [#rhel-94-702]_","RHEL 9.6 [#rhel-10-702]_, 9.4 [#rhel-94-702]_","RHEL 9.5, 9.4"
,"RHEL 10.0 [#rhel-10-702]_, 9.6 [#rhel-10-702]_, 9.4 [#rhel-94-702]_","RHEL 10.0 [#rhel-10-702]_, 9.6 [#rhel-10-702]_, 9.4 [#rhel-94-702]_","RHEL 9.5, 9.4"
,RHEL 8.10 [#rhel-700]_,RHEL 8.10 [#rhel-700]_,RHEL 8.10
,SLES 15 SP7 [#sles-db-700]_,SLES 15 SP7 [#sles-db-700]_,SLES 15 SP6
,"Oracle Linux 10, 9, 8 [#ol-700-mi300x]_","Oracle Linux 9, 8 [#ol-700-mi300x]_","Oracle Linux 9, 8 [#ol-mi300x]_"
,"Debian 13 [#db-mi300x]_, 12 [#sles-db-700]_",Debian 12 [#sles-db-700]_,Debian 12 [#single-node]_
,SLES 15 SP7 [#sles-710]_,SLES 15 SP7 [#sles-db-700]_,SLES 15 SP6
,"Oracle Linux 10, 9, 8 [#ol-710-mi300x]_","Oracle Linux 10, 9, 8 [#ol-700-mi300x]_","Oracle Linux 9, 8 [#ol-mi300x]_"
,"Debian 13 [#db-710-mi300x]_, 12 [#db12-710]_","Debian 13 [#db-mi300x]_, 12 [#sles-db-700]_",Debian 12 [#single-node]_
,Azure Linux 3.0 [#az-mi300x]_,Azure Linux 3.0 [#az-mi300x]_,Azure Linux 3.0 [#az-mi300x]_
,Rocky Linux 9 [#rl-700]_,Rocky Linux 9 [#rl-700]_,
,.. _architecture-support-compatibility-matrix:,,
@@ -43,22 +43,22 @@ compatibility and system requirements.
,RDNA3,RDNA3,RDNA3
,RDNA2,RDNA2,RDNA2
,.. _gpu-support-compatibility-matrix:,,
:doc:`GPU / LLVM target <rocm-install-on-linux:reference/system-requirements>`,gfx950 [#mi350x-os]_,gfx950 [#mi350x-os]_,
:doc:`GPU / LLVM target <rocm-install-on-linux:reference/system-requirements>`,gfx950 [#mi350x-os-710]_,gfx950 [#mi350x-os-700]_,
,gfx1201 [#RDNA-OS-700]_,gfx1201 [#RDNA-OS-700]_,
,gfx1200 [#RDNA-OS-700]_,gfx1200 [#RDNA-OS-700]_,
,gfx1101 [#RDNA-OS-700]_ [#rd-v710]_,gfx1101 [#RDNA-OS-700]_ [#rd-v710]_,
,gfx1100 [#RDNA-OS-700]_,gfx1100 [#RDNA-OS-700]_,gfx1100
,gfx1030 [#RDNA-OS-700]_ [#rd-v620]_,gfx1030 [#RDNA-OS-700]_ [#rd-v620]_,gfx1030
,gfx942 [#mi325x-os]_ [#mi300x-os]_ [#mi300A-os]_,gfx942 [#mi325x-os]_ [#mi300x-os]_ [#mi300A-os]_,gfx942
,gfx942 [#mi325x-os-710]_ [#mi300x-os]_ [#mi300A-os]_,gfx942 [#mi325x-os]_ [#mi300x-os]_ [#mi300A-os]_,gfx942
,gfx90a [#mi200x-os]_,gfx90a [#mi200x-os]_,gfx90a
,gfx908 [#mi100-os]_,gfx908 [#mi100-os]_,gfx908
,gfx908 [#mi100-710-os]_,gfx908 [#mi100-os]_,gfx908
,,,
FRAMEWORK SUPPORT,.. _framework-support-compatibility-matrix:,,
:doc:`PyTorch <../compatibility/ml-compatibility/pytorch-compatibility>`,"2.8, 2.7, 2.6","2.7, 2.6, 2.5","2.6, 2.5, 2.4, 2.3"
:doc:`TensorFlow <../compatibility/ml-compatibility/tensorflow-compatibility>`,"2.19.1, 2.18.1, 2.17.1 [#tf-mi350]_","2.19.1, 2.18.1, 2.17.1 [#tf-mi350]_","2.18.1, 2.17.1, 2.16.2"
:doc:`PyTorch <../compatibility/ml-compatibility/pytorch-compatibility>`,"2.8, 2.7, 2.6","2.8, 2.7, 2.6","2.6, 2.5, 2.4, 2.3"
:doc:`TensorFlow <../compatibility/ml-compatibility/tensorflow-compatibility>`,"2.20.0, 2.19.1, 2.18.1","2.19.1, 2.18.1, 2.17.1 [#tf-mi350]_","2.18.1, 2.17.1, 2.16.2"
:doc:`JAX <../compatibility/ml-compatibility/jax-compatibility>`,0.6.0,0.6.0,0.4.35
:doc:`DGL <../compatibility/ml-compatibility/dgl-compatibility>` [#dgl_compat]_,N/A,N/A,2.4.0
:doc:`llama.cpp <../compatibility/ml-compatibility/llama-cpp-compatibility>` [#llama-cpp_compat]_,N/A,b6356,b5997
:doc:`llama.cpp <../compatibility/ml-compatibility/llama-cpp-compatibility>` [#llama-cpp_compat]_,N/A,N/A,b5997
`ONNX Runtime <https://onnxruntime.ai/docs/build/eps.html#amd-migraphx>`_,1.22.0,1.22.0,1.20.0
,,,
THIRD PARTY COMMS,.. _thirdpartycomms-support-compatibility-matrix:,,
@@ -66,76 +66,76 @@ compatibility and system requirements.
`UCX <https://github.com/ROCm/ucx>`_,>=1.17.0,>=1.17.0,>=1.15.0
,,,
THIRD PARTY ALGORITHM,.. _thirdpartyalgorithm-support-compatibility-matrix:,,
Thrust,2.6.0,2.6.0,2.5.0
CUB,2.6.0,2.6.0,2.5.0
Thrust,2.8.5,2.6.0,2.5.0
CUB,2.8.5,2.6.0,2.5.0
,,,
DRIVER & USER SPACE [#kfd_support]_,.. _kfd-userspace-support-compatibility-matrix:,,
:doc:`AMD GPU Driver <rocm-install-on-linux:reference/user-kernel-space-compat-matrix>`,"30.10.2, 30.10.1 [#driver_patch]_, |br| 30.10, 6.4.x, 6.3.x","30.10.1 [#driver_patch]_, 30.10, |br| 6.4.x, 6.3.x, 6.2.x","6.4.x, 6.3.x, 6.2.x, 6.1.x"
:doc:`AMD GPU Driver <rocm-install-on-linux:reference/user-kernel-space-compat-matrix>`,"30.20.0 [#mi325x_KVM]_, 30.10.2, |br| 30.10.1 [#driver_patch]_, 30.10, 6.4.x","30.10.2, 30.10.1 [#driver_patch]_, |br| 30.10, 6.4.x, 6.3.x","6.4.x, 6.3.x, 6.2.x, 6.1.x"
,,,
ML & COMPUTER VISION,.. _mllibs-support-compatibility-matrix:,,
:doc:`Composable Kernel <composable_kernel:index>`,1.1.0,1.1.0,1.1.0
:doc:`MIGraphX <amdmigraphx:index>`,2.13.0,2.13.0,2.12.0
:doc:`MIOpen <miopen:index>`,3.5.0,3.5.0,3.4.0
:doc:`MIVisionX <mivisionx:index>`,3.3.0,3.3.0,3.2.0
:doc:`rocAL <rocal:index>`,2.3.0,2.3.0,2.2.0
:doc:`rocDecode <rocdecode:index>`,1.0.0,1.0.0,0.10.0
:doc:`rocJPEG <rocjpeg:index>`,1.1.0,1.1.0,0.8.0
:doc:`rocPyDecode <rocpydecode:index>`,0.6.0,0.6.0,0.3.1
:doc:`RPP <rpp:index>`,2.0.0,2.0.0,1.9.10
:doc:`MIGraphX <amdmigraphx:index>`,2.14.0,2.13.0,2.12.0
:doc:`MIOpen <miopen:index>`,3.5.1,3.5.0,3.4.0
:doc:`MIVisionX <mivisionx:index>`,3.4.0,3.3.0,3.2.0
:doc:`rocAL <rocal:index>`,2.4.0,2.3.0,2.2.0
:doc:`rocDecode <rocdecode:index>`,1.4.0,1.0.0,0.10.0
:doc:`rocJPEG <rocjpeg:index>`,1.2.0,1.1.0,0.8.0
:doc:`rocPyDecode <rocpydecode:index>`,0.7.0,0.6.0,0.3.1
:doc:`RPP <rpp:index>`,2.1.0,2.0.0,1.9.10
,,,
COMMUNICATION,.. _commlibs-support-compatibility-matrix:,,
:doc:`RCCL <rccl:index>`,2.26.6,2.26.6,2.22.3
:doc:`RCCL <rccl:index>`,2.27.7,2.26.6,2.22.3
:doc:`rocSHMEM <rocshmem:index>`,3.0.0,3.0.0,2.0.0
,,,
MATH LIBS,.. _mathlibs-support-compatibility-matrix:,,
`half <https://github.com/ROCm/half>`_ ,1.12.0,1.12.0,1.12.0
:doc:`hipBLAS <hipblas:index>`,3.0.2,3.0.0,2.4.0
:doc:`hipBLASLt <hipblaslt:index>`,1.0.0,1.0.0,0.12.0
:doc:`hipFFT <hipfft:index>`,1.0.20,1.0.20,1.0.18
:doc:`hipfort <hipfort:index>`,0.7.0,0.7.0,0.6.0
:doc:`hipRAND <hiprand:index>`,3.0.0,3.0.0,2.12.0
:doc:`hipSOLVER <hipsolver:index>`,3.0.0,3.0.0,2.4.0
:doc:`hipSPARSE <hipsparse:index>`,4.0.1,4.0.1,3.2.0
:doc:`hipSPARSELt <hipsparselt:index>`,0.2.4,0.2.4,0.2.3
:doc:`rocALUTION <rocalution:index>`,4.0.0,4.0.0,3.2.2
:doc:`rocBLAS <rocblas:index>`,5.0.2,5.0.0,4.4.0
:doc:`rocFFT <rocfft:index>`,1.0.34,1.0.34,1.0.32
:doc:`rocRAND <rocrand:index>`,4.0.0,4.0.0,3.3.0
:doc:`rocSOLVER <rocsolver:index>`,3.30.1,3.30.0,3.28.0
:doc:`rocSPARSE <rocsparse:index>`,4.0.2,4.0.2,3.4.0
:doc:`hipBLAS <hipblas:index>`,3.1.0,3.0.2,2.4.0
:doc:`hipBLASLt <hipblaslt:index>`,1.1.0,1.0.0,0.12.0
:doc:`hipFFT <hipfft:index>`,1.0.21,1.0.20,1.0.18
:doc:`hipfort <hipfort:index>`,0.7.1,0.7.0,0.6.0
:doc:`hipRAND <hiprand:index>`,3.1.0,3.0.0,2.12.0
:doc:`hipSOLVER <hipsolver:index>`,3.1.0,3.0.0,2.4.0
:doc:`hipSPARSE <hipsparse:index>`,4.1.0,4.0.1,3.2.0
:doc:`hipSPARSELt <hipsparselt:index>`,0.2.5,0.2.4,0.2.3
:doc:`rocALUTION <rocalution:index>`,4.0.1,4.0.0,3.2.2
:doc:`rocBLAS <rocblas:index>`,5.1.0,5.0.2,4.4.0
:doc:`rocFFT <rocfft:index>`,1.0.35,1.0.34,1.0.32
:doc:`rocRAND <rocrand:index>`,4.1.0,4.0.0,3.3.0
:doc:`rocSOLVER <rocsolver:index>`,3.31.0,3.30.1,3.28.0
:doc:`rocSPARSE <rocsparse:index>`,4.1.0,4.0.2,3.4.0
:doc:`rocWMMA <rocwmma:index>`,2.0.0,2.0.0,1.7.0
:doc:`Tensile <tensile:src/index>`,4.44.0,4.44.0,4.43.0
,,,
PRIMITIVES,.. _primitivelibs-support-compatibility-matrix:,,
:doc:`hipCUB <hipcub:index>`,4.0.0,4.0.0,3.4.0
:doc:`hipCUB <hipcub:index>`,4.1.0,4.0.0,3.4.0
:doc:`hipTensor <hiptensor:index>`,2.0.0,2.0.0,1.5.0
:doc:`rocPRIM <rocprim:index>`,4.0.1,4.0.0,3.4.0
:doc:`rocThrust <rocthrust:index>`,4.0.0,4.0.0,3.3.0
:doc:`rocPRIM <rocprim:index>`,4.1.0,4.0.1,3.4.0
:doc:`rocThrust <rocthrust:index>`,4.1.0,4.0.0,3.3.0
,,,
SUPPORT LIBS,,,
`hipother <https://github.com/ROCm/hipother>`_,7.0.51830,7.0.51830,6.4.43482
`rocm-core <https://github.com/ROCm/rocm-core>`_,7.0.2,7.0.1/7.0.0,6.4.0
`hipother <https://github.com/ROCm/hipother>`_,7.1.25424,7.0.51831,6.4.43482
`rocm-core <https://github.com/ROCm/rocm-core>`_,7.1.0,7.0.2,6.4.0
`ROCT-Thunk-Interface <https://github.com/ROCm/ROCT-Thunk-Interface>`_,N/A [#ROCT-rocr]_,N/A [#ROCT-rocr]_,N/A [#ROCT-rocr]_
,,,
SYSTEM MGMT TOOLS,.. _tools-support-compatibility-matrix:,,
:doc:`AMD SMI <amdsmi:index>`,26.0.2,26.0.0,25.3.0
:doc:`ROCm Data Center Tool <rdc:index>`,1.1.0,1.1.0,0.3.0
:doc:`AMD SMI <amdsmi:index>`,26.1.0,26.0.2,25.3.0
:doc:`ROCm Data Center Tool <rdc:index>`,1.2.0,1.1.0,0.3.0
:doc:`rocminfo <rocminfo:index>`,1.0.0,1.0.0,1.0.0
:doc:`ROCm SMI <rocm_smi_lib:index>`,7.8.0,7.8.0,7.5.0
:doc:`ROCm Validation Suite <rocmvalidationsuite:index>`,1.2.0,1.2.0,1.1.0
,,,
PERFORMANCE TOOLS,,,
:doc:`ROCm Bandwidth Test <rocm_bandwidth_test:index>`,2.6.0,2.6.0,1.4.0
:doc:`ROCm Compute Profiler <rocprofiler-compute:index>`,3.2.3,3.2.3,3.1.0
:doc:`ROCm Systems Profiler <rocprofiler-systems:index>`,1.1.1,1.1.0,1.0.0
:doc:`ROCProfiler <rocprofiler:index>`,2.0.70002,2.0.70000,2.0.60400
:doc:`ROCm Compute Profiler <rocprofiler-compute:index>`,3.3.0,3.2.3,3.1.0
:doc:`ROCm Systems Profiler <rocprofiler-systems:index>`,1.2.0,1.1.1,1.0.0
:doc:`ROCProfiler <rocprofiler:index>`,2.0.70100,2.0.70002,2.0.60400
:doc:`ROCprofiler-SDK <rocprofiler-sdk:index>`,1.0.0,1.0.0,0.6.0
:doc:`ROCTracer <roctracer:index>`,4.1.70002,4.1.70000,4.1.60400
:doc:`ROCTracer <roctracer:index>`,4.1.70100,4.1.70002,4.1.60400
,,,
DEVELOPMENT TOOLS,,,
:doc:`HIPIFY <hipify:index>`,20.0.0,20.0.0,19.0.0
:doc:`ROCm CMake <rocmcmakebuildtools:index>`,0.14.0,0.14.0,0.14.0
:doc:`ROCdbgapi <rocdbgapi:index>`,0.77.4,0.77.3,0.77.2
:doc:`ROCdbgapi <rocdbgapi:index>`,0.77.4,0.77.4,0.77.2
:doc:`ROCm Debugger (ROCgdb) <rocgdb:index>`,16.3.0,16.3.0,15.2.0
`rocprofiler-register <https://github.com/ROCm/rocprofiler-register>`_,0.5.0,0.5.0,0.4.0
:doc:`ROCr Debug Agent <rocr_debug_agent:index>`,2.1.0,2.1.0,2.0.4
@@ -143,40 +143,49 @@ compatibility and system requirements.
COMPILERS,.. _compilers-support-compatibility-matrix:,,
`clang-ocl <https://github.com/ROCm/clang-ocl>`_,N/A,N/A,N/A
:doc:`hipCC <hipcc:index>`,1.1.1,1.1.1,1.1.1
`Flang <https://github.com/ROCm/flang>`_,20.0.0.25385,20.0.0.25314,19.0.0.25133
:doc:`llvm-project <llvm-project:index>`,20.0.0.25385,20.0.0.25314,19.0.0.25133
`OpenMP <https://github.com/ROCm/llvm-project/tree/amd-staging/openmp>`_,20.0.0.25385,20.0.0.25314,19.0.0.25133
`Flang <https://github.com/ROCm/flang>`_,20.0.025425,20.0.0.25385,19.0.0.25133
:doc:`llvm-project <llvm-project:index>`,20.0.025425,20.0.0.25385,19.0.0.25133
`OpenMP <https://github.com/ROCm/llvm-project/tree/amd-staging/openmp>`_,20.0.025425,20.0.0.25385,19.0.0.25133
,,,
RUNTIMES,.. _runtime-support-compatibility-matrix:,,
:doc:`AMD CLR <hip:understand/amd_clr>`,7.0.51831,7.0.51830,6.4.43482
:doc:`HIP <hip:index>`,7.0.51831,7.0.51830,6.4.43482
:doc:`AMD CLR <hip:understand/amd_clr>`,7.1.25424,7.0.51831,6.4.43482
:doc:`HIP <hip:index>`,7.1.25424,7.0.51831,6.4.43482
`OpenCL Runtime <https://github.com/ROCm/clr/tree/develop/opencl>`_,2.0.0,2.0.0,2.0.0
:doc:`ROCr Runtime <rocr-runtime:index>`,1.18.0,1.18.0,1.15.0
.. rubric:: Footnotes
.. [#rhel-10-702] RHEL 10.0 and RHEL 9.6 are supported on all listed :ref:`supported_GPUs` except AMD Radeon PRO V620 GPU.
.. [#rhel-94-702] RHEL 9.4 is supported on all AMD Instinct GPUs listed under :ref:`supported_GPUs`.
.. [#rhel-700] RHEL 8.10 is supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, MI210, and MI100 GPUs.
.. [#sles-710] **For ROCm 7.1.x** - SLES 15 SP7 is supported only on AMD Instinct MI325X, MI300X, MI300A, MI250X, MI250, MI210, and MI100 GPUs.
.. [#sles-db-700] **For ROCm 7.0.x** - SLES 15 SP7 and Debian 12 are supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#ol-710-mi300x] **For ROCm 7.1.x** - Oracle Linux 10 and 9 are supported only on AMD Instinct MI355X, MI350X, MI325X, and MI300X GPUs. Oracle Linux 8 is supported only on AMD Instinct MI300X GPU.
.. [#ol-700-mi300x] **For ROCm 7.0.x** - Oracle Linux 10 and 9 are supported only on AMD Instinct MI355X, MI350X, and MI300X GPUs. Oracle Linux 8 is supported only on AMD Instinct MI300X GPU.
.. [#ol-mi300x] **Prior ROCm 7.0.0** - Oracle Linux is supported only on AMD Instinct MI300X GPUs.
.. [#db-710-mi300x] **For ROCm 7.1.x** - Debian 13 is supported only on AMD Instinct MI325X and MI300X GPUs.
.. [#db12-710] **For ROCm 7.1.x** - Debian 12 is supported only on AMD Instinct MI325X, MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#db-mi300x] **For ROCm 7.0.2** - Debian 13 is supported only on AMD Instinct MI300X GPUs.
.. [#sles-db-700] **For ROCm 7.0.x** - SLES 15 SP7 and Debian 12 are supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#az-mi300x] Starting ROCm 6.4.0, Azure Linux 3.0 is supported only on AMD Instinct MI300X and AMD Radeon PRO V710 GPUs.
.. [#rl-700] Rocky Linux 9 is supported only on AMD Instinct MI300X and MI300A GPUs.
.. [#single-node] **Prior to ROCm 7.0.0** - Debian 12 is supported only on AMD Instinct MI300X GPUs for single-node functionality.
.. [#mi350x-os] AMD Instinct MI355X (gfx950) and MI350X(gfx950) GPUs are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, Oracle Linux 10, and Oracle Linux 9.
.. [#RDNA-OS-700] **For ROCm 7.0.x** - AMD Radeon PRO AI PRO R9700 (gfx1201), AMD Radeon RX 9070 XT (gfx1201), AMD Radeon RX 9070 GRE (gfx1201), AMD Radeon RX 9070 (gfx1201), AMD Radeon RX 9060 XT (gfx1200), AMD Radeon RX 9060 (gfx1200), AMD Radeon RX 7800 XT (gfx1101), AMD Radeon RX 7700 XT (gfx1101), AMD Radeon PRO W7700 (gfx1101), and AMD Radeon PRO W6800 (gfx1030) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, and RHEL 9.6.
.. [#rd-v710] **For ROCm 7.0.x** - AMD Radeon PRO V710 (gfx1101) GPUs are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, and Azure Linux 3.0.
.. [#rd-v620] **For ROCm 7.0.x** - AMD Radeon PRO V620 (gfx1030) GPUs are supported only on Ubuntu 24.04.3 and Ubuntu 22.04.5.
.. [#mi325x-os] **For ROCm 7.0.x** - AMD Instinct MI325X GPUs (gfx942) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#mi300x-os] **For ROCm 7.0.x** - AMD Instinct MI300X GPUs (gfx942) are supported on all listed :ref:`supported_distributions`.
.. [#mi300A-os] **For ROCm 7.0.x** - AMD Instinct MI300A GPUs (gfx942) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, Debian 12, and Rocky Linux 9.
.. [#mi200x-os] **For ROCm 7.0.x** - AMD Instinct MI200 Series GPUs (gfx90a) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, and Debian 12.
.. [#mi100-os] **For ROCm 7.0.x** - AMD Instinct MI100 GPUs (gfx908) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, and RHEL 8.10.
.. [#mi350x-os-710] AMD Instinct MI355X (gfx950) and MI350X (gfx950) GPUs supports all listed :ref:`supported_distributions` except RHEL 8.10, SLES 15 SP7, Debian 12, Rocky 9, Azure Linux 3.0, and Oracle Linux 8.
.. [#mi350x-os-700] AMD Instinct MI355X (gfx950) and MI350X (gfx950) GPUs only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, Oracle Linux 10, and Oracle Linux 9.
.. [#RDNA-OS-700] **For ROCm 7.0.x** - AMD Radeon PRO AI PRO R9700 (gfx1201), AMD Radeon RX 9070 XT (gfx1201), AMD Radeon RX 9070 GRE (gfx1201), AMD Radeon RX 9070 (gfx1201), AMD Radeon RX 9060 XT (gfx1200), AMD Radeon RX 9060 (gfx1200), AMD Radeon RX 7800 XT (gfx1101), AMD Radeon RX 7700 XT (gfx1101), AMD Radeon PRO W7700 (gfx1101), and AMD Radeon PRO W6800 (gfx1030) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, and RHEL 9.6.
.. [#rd-v710] **For ROCm 7.0.x** - AMD Radeon PRO V710 (gfx1101) GPUs only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, and Azure Linux 3.0.
.. [#rd-v620] **For ROCm 7.0.x** - AMD Radeon PRO V620 (gfx1030) GPUs only supports Ubuntu 24.04.3 and Ubuntu 22.04.5.
.. [#mi325x-os-710] **For ROCm 7.1.x** - AMD Instinct MI325X GPUs (gfx942) supports all listed :ref:`supported_distributions` except RHEL 8.10, Rocky 9, Azure Linux 3.0, and Oracle Linux 8.
.. [#mi325x-os] **For ROCm 7.0.x** - AMD Instinct MI325X GPUs (gfx942) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#mi300x-os] **Starting ROCm 7.0.x** - AMD Instinct MI300X GPUs (gfx942) supports all listed :ref:`supported_distributions`.
.. [#mi300A-os] **Starting ROCm 7.0.x** - AMD Instinct MI300A GPUs (gfx942) supports all listed :ref:`supported_distributions` except on Debian 13, Azure Linux 3.0, Oracle Linux 10, Oracle Linux 9, and Oracle Linux 8.
.. [#mi200x-os] **For ROCm 7.0.x** - AMD Instinct MI200 Series GPUs (gfx90a) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, and Debian 12.
.. [#mi100-710-os] **For ROCM 7.1.x** - AMD Instinct MI100 GPUs (gfx908) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, and SLES 15 SP7.
.. [#mi100-os] **For ROCm 7.0.x** - AMD Instinct MI100 GPUs (gfx908) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, and RHEL 8.10.
.. [#tf-mi350] TensorFlow 2.17.1 is not supported on AMD Instinct MI350 Series GPUs. Use TensorFlow 2.19.1 or 2.18.1 with MI350 Series GPUs instead.
.. [#dgl_compat] DGL is supported only on ROCm 6.4.0.
.. [#dgl_compat] DGL is supported only on ROCm 7.0.0, ROCm 6.4.3 and ROCm 6.4.0.
.. [#llama-cpp_compat] llama.cpp is supported only on ROCm 7.0.0 and ROCm 6.4.x.
.. [#mi325x_KVM] For AMD Instinct MI325X KVM SR-IOV users, do not use AMD GPU Driver (amdgpu) 30.20.0.
.. [#driver_patch] AMD GPU Driver (amdgpu) 30.10.1 is a quality release that resolves an issue identified in the 30.10 release. There are no other significant changes or feature additions in ROCm 7.0.1 from ROCm 7.0.0. AMD GPU Driver (amdgpu) 30.10.1 is compatible with ROCm 7.0.1 and ROCm 7.0.0.
.. [#kfd_support] As of ROCm 6.4.0, forward and backward compatibility between the AMD GPU Driver (amdgpu) and its user space software is provided up to a year apart. For earlier ROCm releases, the compatibility is provided for +/- 2 releases. The supported user space versions on this page were accurate as of the time of initial ROCm release. For the most up-to-date information, see the latest version of this information at `User and AMD GPU Driver support matrix <https://rocm.docs.amd.com/projects/install-on-linux/en/latest/reference/user-kernel-space-compat-matrix.html>`_.
.. [#ROCT-rocr] Starting from ROCm 6.3.0, the ROCT Thunk Interface is included as part of the ROCr runtime package.
@@ -257,25 +266,32 @@ Expand for full historical view of:
.. [#rhel-10-702-past-60] RHEL 10.0 and RHEL 9.6 are supported on all listed :ref:`supported_GPUs` except AMD Radeon PRO V620 GPU.
.. [#rhel-94-702-past-60] RHEL 9.4 is supported on all AMD Instinct GPUs listed under :ref:`supported_GPUs`.
.. [#rhel-700-past-60] **For ROCm 7.0.x** - RHEL 8.10 is supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, MI210, and MI100 GPUs.
.. [#sles-710-past-60] **For ROCm 7.1.x** - SLES 15 SP7 is supported only on AMD Instinct MI325X, MI300X, MI300A, MI250X, MI250, MI210, and MI100 GPUs.
.. [#sles-db-700-past-60] **For ROCm 7.0.x** - SLES 15 SP7 and Debian 12 are supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#ol-710-mi300x-past-60] **For ROCm 7.1.x** - Oracle Linux 10 and 9 are supported only on AMD Instinct MI355X, MI350X, MI325X, and MI300X GPUs. Oracle Linux 8 is supported only on AMD Instinct MI300X GPU.
.. [#ol-700-mi300x-past-60] **For ROCm 7.0.x** - Oracle Linux 10 and 9 are supported only on AMD Instinct MI355X, MI350X, and MI300X GPUs. Oracle Linux 8 is supported only on AMD Instinct MI300X GPU.
.. [#mi300x-past-60] **Prior ROCm 7.0.0** - Oracle Linux is supported only on AMD Instinct MI300X GPUs.
.. [#db-710-mi300x-past-60] **For ROCm 7.1.x** - Debian 13 is supported only on AMD Instinct MI325X and MI300X GPUs.
.. [#db12-710-past-60] **For ROCm 7.1.x** - Debian 12 is supported only on AMD Instinct MI325X, MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#db-mi300x-past-60] **For ROCm 7.0.2** - Debian 13 is supported only on AMD Instinct MI300X GPUs.
.. [#sles-db-700-past-60] **For ROCm 7.0.x** - SLES 15 SP7 and Debian 12 are supported only on AMD Instinct MI300X, MI300A, MI250X, MI250, and MI210 GPUs.
.. [#single-node-past-60] **Prior to ROCm 7.0.0** - Debian 12 is supported only on AMD Instinct MI300X GPUs for single-node functionality.
.. [#az-mi300x-past-60] Starting from ROCm 6.4.0, Azure Linux 3.0 is supported only on AMD Instinct MI300X and AMD Radeon PRO V710 GPUs.
.. [#az-mi300x-630-past-60] **Prior ROCm 6.4.0**- Azure Linux 3.0 is supported only on AMD Instinct MI300X GPUs.
.. [#rl-700-past-60] Rocky Linux 9 is supported only on AMD Instinct MI300X and MI300A GPUs.
.. [#mi350x-os-past-60] AMD Instinct MI355X (gfx950) and MI350X(gfx950) GPUs are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, RHEL 9.4, and Oracle Linux 9.
.. [#RDNA-OS-700-past-60] **For ROCm 7.0.x** AMD Radeon PRO AI PRO R9700 (gfx1201), AMD Radeon RX 9070 XT (gfx1201), AMD Radeon RX 9070 GRE (gfx1201), AMD Radeon RX 9070 (gfx1201), AMD Radeon RX 9060 XT (gfx1200), AMD Radeon RX 9060 (gfx1200), AMD Radeon RX 7800 XT (gfx1101), AMD Radeon RX 7700 XT (gfx1101), AMD Radeon PRO W7700 (gfx1101), and AMD Radeon PRO W6800 (gfx1030) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, Oracle Linux 10, and Oracle Linux 9.
.. [#RDNA-OS-past-60] **Prior ROCm 7.0.0** - Radeon AI PRO R9700, Radeon RX 9070 XT (gfx1201), Radeon RX 9060 XT (gfx1200), Radeon PRO W7700 (gfx1101), and Radeon RX 7800 XT (gfx1101) are supported only on Ubuntu 24.04.2, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#rd-v710-past-60] **For ROCm 7.0.x** - AMD Radeon PRO V710 (gfx1101) is supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, and Azure Linux 3.0.
.. [#rd-v620-past-60] **For ROCm 7.0.x** - AMD Radeon PRO V620 (gfx1030) is supported only on Ubuntu 24.04.3 and Ubuntu 22.04.5.
.. [#mi325x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI325X GPU (gfx942) is supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#mi300x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI300X GPU (gfx942) is supported on all listed :ref:`supported_distributions`.
.. [#mi300A-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI300A GPU (gfx942) is supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, Debian 12, and Rocky Linux 9.
.. [#mi200x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI200 Series GPUs (gfx90a) are supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, and Debian 12.
.. [#mi100-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI100 GPU (gfx908) is supported only on Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, and RHEL 8.10.
.. [#7700XT-OS-past-60] **Prior to ROCm 7.0.0** - Radeon RX 7700 XT (gfx1101) is supported only on Ubuntu 24.04.2 and RHEL 9.6.
.. [#mi350x-os-710-past-60] **For ROCm 7.1.x** - AMD Instinct MI355X (gfx950) and MI350X (gfx950) GPUs supports all listed :ref:`supported_distributions` except RHEL 8.10, SLES 15 SP7, Debian 12, Rocky 9, Azure Linux 3.0, and Oracle Linux 8.
.. [#mi350x-os-700-past-60] **For ROCm 7.0.x** - AMD Instinct MI355X (gfx950) and MI350X (gfx950) GPUs only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, RHEL 9.4, and Oracle Linux 9.
.. [#RDNA-OS-700-past-60] **Starting ROCm 7.0.x** AMD Radeon PRO AI PRO R9700 (gfx1201), AMD Radeon RX 9070 XT (gfx1201), AMD Radeon RX 9070 GRE (gfx1201), AMD Radeon RX 9070 (gfx1201), AMD Radeon RX 9060 XT (gfx1200), AMD Radeon RX 9060 (gfx1200), AMD Radeon RX 7800 XT (gfx1101), AMD Radeon RX 7700 XT (gfx1101), AMD Radeon PRO W7700 (gfx1101), and AMD Radeon PRO W6800 (gfx1030) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, and RHEL 9.4.
.. [#RDNA-OS-past-60] **Prior ROCm 7.0.0** - Radeon AI PRO R9700, Radeon RX 9070 XT (gfx1201), Radeon RX 9060 XT (gfx1200), Radeon PRO W7700 (gfx1101), and Radeon RX 7800 XT (gfx1101) only supports Ubuntu 24.04.2, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#rd-v710-past-60] **Starting ROCm 7.0.x** - AMD Radeon PRO V710 (gfx1101) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, and Azure Linux 3.0.
.. [#rd-v620-past-60] **Starting ROCm 7.0.x** - AMD Radeon PRO V620 (gfx1030) only supports Ubuntu 24.04.3 and Ubuntu 22.04.5.
.. [#mi325x-os-710past-60] **For ROCm 7.1.x** - AMD Instinct MI325X GPU (gfx942) supports all listed :ref:`supported_distributions` except RHEL 8.10, Rocky 9, Azure Linux 3.0, and Oracle Linux 8.
.. [#mi325x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI325X GPU (gfx942) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 9.6, and RHEL 9.4.
.. [#mi300x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI300X GPU (gfx942) supports all listed :ref:`supported_distributions`.
.. [#mi300A-os-past-60] **Starting ROCm 7.0.x** - AMD Instinct MI300A GPUs (gfx942) supports all listed :ref:`supported_distributions` except on Debian 13, Azure Linux 3.0, Oracle Linux 10, Oracle Linux 9, and Oracle Linux 8.
.. [#mi200x-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI200 Series GPUs (gfx90a) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, SLES 15 SP7, and Debian 12.
.. [#mi100-710-os-past-60] **For ROCM 7.1.x** - AMD Instinct MI100 GPUs (gfx908) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, RHEL 8.10, and SLES 15 SP7.
.. [#mi100-os-past-60] **For ROCm 7.0.x** - AMD Instinct MI100 GPU (gfx908) only supports Ubuntu 24.04.3, Ubuntu 22.04.5, RHEL 10.0, RHEL 9.6, RHEL 9.4, and RHEL 8.10.
.. [#7700XT-OS-past-60] **Prior to ROCm 7.0.0** - Radeon RX 7700 XT (gfx1101) only supports Ubuntu 24.04.2 and RHEL 9.6.
.. [#mi300_624-past-60] **For ROCm 6.2.4** - MI300X (gfx942) is supported on listed operating systems *except* Ubuntu 22.04.5 [6.8 HWE] and Ubuntu 22.04.4 [6.5 HWE].
.. [#mi300_622-past-60] **For ROCm 6.2.2** - MI300X (gfx942) is supported on listed operating systems *except* Ubuntu 22.04.5 [6.8 HWE] and Ubuntu 22.04.4 [6.5 HWE].
.. [#mi300_621-past-60] **For ROCm 6.2.1** - MI300X (gfx942) is supported on listed operating systems *except* Ubuntu 22.04.5 [6.8 HWE] and Ubuntu 22.04.4 [6.5 HWE].
@@ -288,12 +304,13 @@ Expand for full historical view of:
.. [#tf-mi350-past-60] TensorFlow 2.17.1 is not supported on AMD Instinct MI350 Series GPUs. Use TensorFlow 2.19.1 or 2.18.1 with MI350 Series GPUs instead.
.. [#verl_compat-past-60] verl is supported only on ROCm 6.2.0.
.. [#stanford-megatron-lm_compat-past-60] Stanford Megatron-LM is supported only on ROCm 6.3.0.
.. [#dgl_compat-past-60] DGL is supported only on ROCm 6.4.0.
.. [#dgl_compat-past-60] DGL is supported only on ROCm 7.0.0, ROCm 6.4.3 and ROCm 6.4.0.
.. [#megablocks_compat-past-60] Megablocks is supported only on ROCm 6.3.0.
.. [#taichi_compat-past-60] Taichi is supported only on ROCm 6.3.2.
.. [#ray_compat-past-60] Ray is supported only on ROCm 6.4.1.
.. [#llama-cpp_compat-past-60] llama.cpp is supported only on ROCm 7.0.0 and 6.4.x.
.. [#flashinfer_compat-past-60] FlashInfer is supported only on ROCm 6.4.1.
.. [#mi325x_KVM-past-60] For AMD Instinct MI325X KVM SR-IOV users, do not use AMD GPU Driver (amdgpu) 30.20.0.
.. [#driver_patch-past-60] AMD GPU Driver (amdgpu) 30.10.1 is a quality release that resolves an issue identified in the 30.10 release. There are no other significant changes or feature additions in ROCm 7.0.1 from ROCm 7.0.0. AMD GPU Driver (amdgpu) 30.10.1 is compatible with ROCm 7.0.1 and ROCm 7.0.0.
.. [#kfd_support-past-60] As of ROCm 6.4.0, forward and backward compatibility between the AMD GPU Driver (amdgpu) and its user space software is provided up to a year apart. For earlier ROCm releases, the compatibility is provided for +/- 2 releases. The supported user space versions on this page were accurate as of the time of initial ROCm release. For the most up-to-date information, see the latest version of this information at `User and AMD GPU Driver support matrix <https://rocm.docs.amd.com/projects/install-on-linux/en/latest/reference/user-kernel-space-compat-matrix.html>`_.
.. [#ROCT-rocr-past-60] Starting from ROCm 6.3.0, the ROCT Thunk Interface is included as part of the ROCr runtime package.

View File

@@ -2,7 +2,7 @@
.. meta::
:description: Deep Graph Library (DGL) compatibility
:keywords: GPU, DGL compatibility
:keywords: GPU, CPU, deep graph library, DGL, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -10,24 +10,42 @@
DGL compatibility
********************************************************************************
Deep Graph Library `(DGL) <https://www.dgl.ai/>`_ is an easy-to-use, high-performance and scalable
Deep Graph Library (`DGL <https://www.dgl.ai/>`__) is an easy-to-use, high-performance, and scalable
Python package for deep learning on graphs. DGL is framework agnostic, meaning
if a deep graph model is a component in an end-to-end application, the rest of
that if a deep graph model is a component in an end-to-end application, the rest of
the logic is implemented using PyTorch.
* ROCm support for DGL is hosted in the `https://github.com/ROCm/dgl <https://github.com/ROCm/dgl>`_ repository.
* Due to independent compatibility considerations, this location differs from the `https://github.com/dmlc/dgl <https://github.com/dmlc/dgl>`_ upstream repository.
* Use the prebuilt :ref:`Docker images <dgl-docker-compat>` with DGL, PyTorch, and ROCm preinstalled.
* See the :doc:`ROCm DGL installation guide <rocm-install-on-linux:install/3rd-party/dgl-install>`
to install and get started.
DGL provides a high-performance graph object that can reside on either CPUs or GPUs.
It bundles structural data features for better control and provides a variety of functions
for computing with graph objects, including efficient and customizable message passing
primitives for Graph Neural Networks.
Supported devices
Support overview
================================================================================
- **Officially Supported**: TF32 with AMD Instinct MI300X (through hipblaslt)
- **Partially Supported**: TF32 with AMD Instinct MI250X
- The ROCm-supported version of DGL is maintained in the official `https://github.com/ROCm/dgl
<https://github.com/ROCm/dgl>`__ repository, which differs from the
`https://github.com/dmlc/dgl <https://github.com/dmlc/dgl>`__ upstream repository.
- To get started and install DGL on ROCm, use the prebuilt :ref:`Docker images <dgl-docker-compat>`,
which include ROCm, DGL, and all required dependencies.
- See the :doc:`ROCm DGL installation guide <rocm-install-on-linux:install/3rd-party/dgl-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://www.dgl.ai/pages/start.html>`__
for additional context.
Version support
--------------------------------------------------------------------------------
DGL is supported on `ROCm 7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__,
`ROCm 6.4.3 <https://repo.radeon.com/rocm/apt/6.4.3/>`__, and `ROCm 6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`__.
Supported devices
--------------------------------------------------------------------------------
**Officially Supported**: AMD Instinct™ MI300X, MI250X
.. _dgl-recommendations:
@@ -35,23 +53,42 @@ Use cases and recommendations
================================================================================
DGL can be used for Graph Learning, and building popular graph models like
GAT, GCN and GraphSage. Using these we can support a variety of use-cases such as:
GAT, GCN, and GraphSage. Using these models, a variety of use cases are supported:
- Recommender systems
- Network Optimization and Analysis
- 1D (Temporal) and 2D (Image) Classification
- Drug Discovery
Multiple use cases of DGL have been tested and verified.
However, a recommended example follows a drug discovery pipeline using the ``SE3Transformer``.
Refer to the `AMD ROCm blog <https://rocm.blogs.amd.com/>`_,
where you can search for DGL examples and best practices to optimize your training workflows on AMD GPUs.
For use cases and recommendations, refer to the `AMD ROCm blog <https://rocm.blogs.amd.com/>`__,
where you can search for DGL examples and best practices to optimize your workloads on AMD GPUs.
Coverage includes:
* Although multiple use cases of DGL have been tested and verified, a few have been
outlined in the `DGL in the Real World: Running GNNs on Real Use Cases
<https://rocm.blogs.amd.com/artificial-intelligence/dgl_blog2/README.html>`__ blog
post, which walks through four real-world graph neural network (GNN) workloads
implemented with the Deep Graph Library on ROCm. It covers tasks ranging from
heterogeneous e-commerce graphs and multiplex networks (GATNE) to molecular graph
regression (GNN-FiLM) and EEG-based neurological diagnosis (EEG-GCNN). For each use
case, the authors detail: the dataset and task, how DGL is used, and their experience
porting to ROCm. It is shown that DGL codebases often run without modification, with
seamless integration of graph operations, message passing, sampling, and convolution.
- Single-GPU training/inference
- Multi-GPU training
* The `Graph Neural Networks (GNNs) at Scale: DGL with ROCm on AMD Hardware
<https://rocm.blogs.amd.com/artificial-intelligence/why-graph-neural/README.html>`__
blog post introduces the Deep Graph Library (DGL) and its enablement on the AMD ROCm platform,
bringing high-performance graph neural network (GNN) training to AMD GPUs. DGL bridges
the gap between dense tensor frameworks and the irregular nature of graph data through a
graph-first, message-passing abstraction. Its design ensures scalability, flexibility, and
interoperability across frameworks like PyTorch and TensorFlow. AMDs ROCm integration
enables DGL to run efficiently on HIP-based GPUs, supported by prebuilt Docker containers
and open-source repositories. This marks a major step in AMD's mission to advance open,
scalable AI ecosystems beyond traditional architectures.
You can pre-process datasets and begin training on AMD GPUs through:
* Single-GPU training/inference
* Multi-GPU training
.. _dgl-docker-compat:
@@ -62,16 +99,17 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes `DGL images <https://hub.docker.com/r/rocm/dgl>`_
with ROCm and Pytorch backends on Docker Hub. The following Docker image tags and associated
inventories were tested on `ROCm 6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`_.
AMD validates and publishes `DGL images <https://hub.docker.com/r/rocm/dgl/tags>`__
with ROCm backends on Docker Hub. The following Docker image tags and associated
inventories represent the latest available DGL version from the official Docker Hub.
Click the |docker-icon| to view the image on Docker Hub.
.. list-table:: DGL Docker image components
.. list-table::
:header-rows: 1
:class: docker-image-compatibility
* - Docker
* - Docker image
- ROCm
- DGL
- PyTorch
- Ubuntu
@@ -79,130 +117,195 @@ Click the |docker-icon| to view the image on Docker Hub.
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu24.04_py3.12_pytorch_release_2.6.0/images/sha256-8ce2c3bcfaa137ab94a75f9e2ea711894748980f57417739138402a542dd5564"><i class="fab fa-docker fa-lg"></i></a>
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4.0.amd0_rocm7.0.0_ubuntu24.04_py3.12_pytorch_2.8.0/images/sha256-943698ddf54c22a7bcad2e5b4ff467752e29e4ba6d0c926789ae7b242cbd92dd"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`_
- `2.6.0 <https://github.com/ROCm/pytorch/tree/release/2.6>`_
- `7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.8.0 <https://github.com/pytorch/pytorch/releases/tag/v2.8.0>`__
- 24.04
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`_
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu24.04_py3.12_pytorch_release_2.4.1/images/sha256-cf1683283b8eeda867b690229c8091c5bbf1edb9f52e8fb3da437c49a612ebe4"><i class="fab fa-docker fa-lg"></i></a>
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4.0.amd0_rocm7.0.0_ubuntu24.04_py3.12_pytorch_2.6.0/images/sha256-b2ec286a035eb7d0a6aab069561914d21a3cac462281e9c024501ba5ccedfbf7"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`_
- `2.4.1 <https://github.com/ROCm/pytorch/tree/release/2.4>`_
- `7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.6.0 <https://github.com/pytorch/pytorch/releases/tag/v2.6.0>`__
- 24.04
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`_
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4.0.amd0_rocm7.0.0_ubuntu22.04_py3.10_pytorch_2.7.1/images/sha256-d27aee16df922ccf0bcd9107bfcb6d20d34235445d456c637e33ca6f19d11a51"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.7.1 <https://github.com/pytorch/pytorch/releases/tag/v2.7.1>`__
- 22.04
- `3.10.16 <https://www.python.org/downloads/release/python-31016/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4.0.amd0_rocm6.4.3_ubuntu24.04_py3.12_pytorch_2.6.0/images/sha256-f3ba6a3c9ec9f6c1cde28449dc9780e0c4c16c4140f4b23f158565fbfd422d6b"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `6.4.3 <https://repo.radeon.com/rocm/apt/6.4.3/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.6.0 <https://github.com/pytorch/pytorch/releases/tag/v2.6.0>`__
- 24.04
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu24.04_py3.12_pytorch_release_2.6.0/images/sha256-8ce2c3bcfaa137ab94a75f9e2ea711894748980f57417739138402a542dd5564"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.6.0 <https://github.com/pytorch/pytorch/releases/tag/v2.6.0>`__
- 24.04
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu24.04_py3.12_pytorch_release_2.4.1/images/sha256-cf1683283b8eeda867b690229c8091c5bbf1edb9f52e8fb3da437c49a612ebe4"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.4.1 <https://github.com/pytorch/pytorch/releases/tag/v2.4.1>`__
- 24.04
- `3.12.9 <https://www.python.org/downloads/release/python-3129/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu22.04_py3.10_pytorch_release_2.4.1/images/sha256-4834f178c3614e2d09e89e32041db8984c456d45dfd20286e377ca8635686554"><i class="fab fa-docker fa-lg"></i></a>
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu22.04_py3.10_pytorch_release_2.4.1/images/sha256-4834f178c3614e2d09e89e32041db8984c456d45dfd20286e377ca8635686554"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`_
- `2.4.1 <https://github.com/ROCm/pytorch/tree/release/2.4>`_
- `6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.4.1 <https://github.com/pytorch/pytorch/releases/tag/v2.4.1>`__
- 22.04
- `3.10.16 <https://www.python.org/downloads/release/python-31016/>`_
- `3.10.16 <https://www.python.org/downloads/release/python-31016/>`__
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu22.04_py3.10_pytorch_release_2.3.0/images/sha256-88740a2c8ab4084b42b10c3c6ba984cab33dd3a044f479c6d7618e2b2cb05e69"><i class="fab fa-docker fa-lg"></i></a>
<a href="https://hub.docker.com/layers/rocm/dgl/dgl-2.4_rocm6.4_ubuntu22.04_py3.10_pytorch_release_2.3.0/images/sha256-88740a2c8ab4084b42b10c3c6ba984cab33dd3a044f479c6d7618e2b2cb05e69"><i class="fab fa-docker fa-lg"></i> rocm/dgl</a>
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`_
- `2.3.0 <https://github.com/ROCm/pytorch/tree/release/2.3>`_
- `6.4.0 <https://repo.radeon.com/rocm/apt/6.4/>`__
- `2.4.0 <https://github.com/dmlc/dgl/releases/tag/v2.4.0>`__
- `2.3.0 <https://github.com/pytorch/pytorch/releases/tag/v2.3.0>`__
- 22.04
- `3.10.16 <https://www.python.org/downloads/release/python-31016/>`_
- `3.10.16 <https://www.python.org/downloads/release/python-31016/>`__
Key ROCm libraries for DGL
================================================================================
DGL on ROCm depends on specific libraries that affect its features and performance.
Using the DGL Docker container or building it with the provided docker file or a ROCm base image is recommended.
Using the DGL Docker container or building it with the provided Docker file or a ROCm base image is recommended.
If you prefer to build it yourself, ensure the following dependencies are installed:
.. list-table::
:header-rows: 1
* - ROCm library
- Version
- ROCm 7.0.0 Version
- ROCm 6.4.x Version
- Purpose
* - `Composable Kernel <https://github.com/ROCm/composable_kernel>`_
- :version-ref:`"Composable Kernel" rocm_version`
- 1.1.0
- 1.1.0
- Enables faster execution of core operations like matrix multiplication
(GEMM), convolutions and transformations.
* - `hipBLAS <https://github.com/ROCm/hipBLAS>`_
- :version-ref:`hipBLAS rocm_version`
- 3.0.0
- 2.4.0
- Provides GPU-accelerated Basic Linear Algebra Subprograms (BLAS) for
matrix and vector operations.
* - `hipBLASLt <https://github.com/ROCm/hipBLASLt>`_
- :version-ref:`hipBLASLt rocm_version`
- 1.0.0
- 0.12.0
- hipBLASLt is an extension of the hipBLAS library, providing additional
features like epilogues fused into the matrix multiplication kernel or
use of integer tensor cores.
* - `hipCUB <https://github.com/ROCm/hipCUB>`_
- :version-ref:`hipCUB rocm_version`
- 4.0.0
- 3.4.0
- Provides a C++ template library for parallel algorithms for reduction,
scan, sort and select.
* - `hipFFT <https://github.com/ROCm/hipFFT>`_
- :version-ref:`hipFFT rocm_version`
- 1.0.20
- 1.0.18
- Provides GPU-accelerated Fast Fourier Transform (FFT) operations.
* - `hipRAND <https://github.com/ROCm/hipRAND>`_
- :version-ref:`hipRAND rocm_version`
- 3.0.0
- 2.12.0
- Provides fast random number generation for GPUs.
* - `hipSOLVER <https://github.com/ROCm/hipSOLVER>`_
- :version-ref:`hipSOLVER rocm_version`
- 3.0.0
- 2.4.0
- Provides GPU-accelerated solvers for linear systems, eigenvalues, and
singular value decompositions (SVD).
* - `hipSPARSE <https://github.com/ROCm/hipSPARSE>`_
- :version-ref:`hipSPARSE rocm_version`
- 4.0.1
- 3.2.0
- Accelerates operations on sparse matrices, such as sparse matrix-vector
or matrix-matrix products.
* - `hipSPARSELt <https://github.com/ROCm/hipSPARSELt>`_
- :version-ref:`hipSPARSELt rocm_version`
- 0.2.4
- 0.2.3
- Accelerates operations on sparse matrices, such as sparse matrix-vector
or matrix-matrix products.
* - `hipTensor <https://github.com/ROCm/hipTensor>`_
- :version-ref:`hipTensor rocm_version`
- 2.0.0
- 1.5.0
- Optimizes for high-performance tensor operations, such as contractions.
* - `MIOpen <https://github.com/ROCm/MIOpen>`_
- :version-ref:`MIOpen rocm_version`
- 3.5.0
- 3.4.0
- Optimizes deep learning primitives such as convolutions, pooling,
normalization, and activation functions.
* - `MIGraphX <https://github.com/ROCm/AMDMIGraphX>`_
- :version-ref:`MIGraphX rocm_version`
- 2.13.0
- 2.12.0
- Adds graph-level optimizations, ONNX models and mixed precision support
and enable Ahead-of-Time (AOT) Compilation.
* - `MIVisionX <https://github.com/ROCm/MIVisionX>`_
- :version-ref:`MIVisionX rocm_version`
- 3.3.0
- 3.2.0
- Optimizes acceleration for computer vision and AI workloads like
preprocessing, augmentation, and inferencing.
* - `rocAL <https://github.com/ROCm/rocAL>`_
- :version-ref:`rocAL rocm_version`
- 3.3.0
- 2.2.0
- Accelerates the data pipeline by offloading intensive preprocessing and
augmentation tasks. rocAL is part of MIVisionX.
* - `RCCL <https://github.com/ROCm/rccl>`_
- :version-ref:`RCCL rocm_version`
- 2.26.6
- 2.22.3
- Optimizes for multi-GPU communication for operations like AllReduce and
Broadcast.
* - `rocDecode <https://github.com/ROCm/rocDecode>`_
- :version-ref:`rocDecode rocm_version`
- 1.0.0
- 0.10.0
- Provides hardware-accelerated data decoding capabilities, particularly
for image, video, and other dataset formats.
* - `rocJPEG <https://github.com/ROCm/rocJPEG>`_
- :version-ref:`rocJPEG rocm_version`
- 1.1.0
- 0.8.0
- Provides hardware-accelerated JPEG image decoding and encoding.
* - `RPP <https://github.com/ROCm/RPP>`_
- :version-ref:`RPP rocm_version`
- 2.0.0
- 1.9.10
- Speeds up data augmentation, transformation, and other preprocessing steps.
* - `rocThrust <https://github.com/ROCm/rocThrust>`_
- :version-ref:`rocThrust rocm_version`
- 4.0.0
- 3.3.0
- Provides a C++ template library for parallel algorithms like sorting,
reduction, and scanning.
* - `rocWMMA <https://github.com/ROCm/rocWMMA>`_
- :version-ref:`rocWMMA rocm_version`
- 2.0.0
- 1.7.0
- Accelerates warp-level matrix-multiply and matrix-accumulate to speed up matrix
multiplication (GEMM) and accumulation operations with mixed precision
support.
@@ -211,14 +314,14 @@ If you prefer to build it yourself, ensure the following dependencies are instal
Supported features
================================================================================
Many functions and methods available in DGL Upstream are also supported in DGL ROCm.
Many functions and methods available upstream are also supported in DGL on ROCm.
Instead of listing them all, support is grouped into the following categories to provide a general overview.
* DGL Base
* DGL Backend
* DGL Data
* DGL Dataloading
* DGL DGLGraph
* DGL Graph
* DGL Function
* DGL Ops
* DGL Sampling
@@ -230,26 +333,29 @@ Instead of listing them all, support is grouped into the following categories to
* DGL NN
* DGL Optim
* DGL Sparse
* GraphBolt
Unsupported features
================================================================================
* Graphbolt
* Partial TF32 Support (MI250x only)
* Kineto/ ROCTracer integration
* TF32 Support (only supported for PyTorch 2.7 and above)
* Kineto/ROCTracer integration
Unsupported functions
================================================================================
* ``more_nnz``
* ``bfs``
* ``format``
* ``multiprocess_sparse_adam_state_dict``
* ``record_stream_ndarray``
* ``half_spmm``
* ``segment_mm``
* ``gather_mm_idx_b``
* ``pgexplainer``
* ``sample_labors_prob``
* ``sample_labors_noprob``
* ``sparse_admin``
Previous versions
===============================================================================
See :doc:`rocm-install-on-linux:install/3rd-party/previous-versions/dgl-history` to find documentation for previous releases
of the ``ROCm/dgl`` Docker image.

View File

@@ -1,8 +1,8 @@
:orphan:
.. meta::
:description: FlashInfer deep learning framework compatibility
:keywords: GPU, LLM, FlashInfer, compatibility
:description: FlashInfer compatibility
:keywords: GPU, LLM, FlashInfer, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -11,7 +11,7 @@ FlashInfer compatibility
********************************************************************************
`FlashInfer <https://docs.flashinfer.ai/index.html>`__ is a library and kernel generator
for Large Language Models (LLMs) that provides high-performance implementation of graphics
for Large Language Models (LLMs) that provides a high-performance implementation of graphics
processing units (GPUs) kernels. FlashInfer focuses on LLM serving and inference, as well
as advanced performance across diverse scenarios.
@@ -25,28 +25,30 @@ offers high-performance LLM-specific operators, with easy integration through Py
For the latest feature compatibility matrix, refer to the ``README`` of the
`https://github.com/ROCm/flashinfer <https://github.com/ROCm/flashinfer>`__ repository.
Support for the ROCm port of FlashInfer is available as follows:
Support overview
================================================================================
- ROCm support for FlashInfer is hosted in the `https://github.com/ROCm/flashinfer
<https://github.com/ROCm/flashinfer>`__ repository. This location differs from the
`https://github.com/flashinfer-ai/flashinfer <https://github.com/flashinfer-ai/flashinfer>`_
- The ROCm-supported version of FlashInfer is maintained in the official `https://github.com/ROCm/flashinfer
<https://github.com/ROCm/flashinfer>`__ repository, which differs from the
`https://github.com/flashinfer-ai/flashinfer <https://github.com/flashinfer-ai/flashinfer>`__
upstream repository.
- To install FlashInfer, use the prebuilt :ref:`Docker image <flashinfer-docker-compat>`,
which includes ROCm, FlashInfer, and all required dependencies.
- To get started and install FlashInfer on ROCm, use the prebuilt :ref:`Docker images <flashinfer-docker-compat>`,
which include ROCm, FlashInfer, and all required dependencies.
- See the :doc:`ROCm FlashInfer installation guide <rocm-install-on-linux:install/3rd-party/flashinfer-install>`
to install and get started.
for installation and setup instructions.
- See the `Installation guide <https://docs.flashinfer.ai/installation.html>`__
in the upstream FlashInfer documentation.
- You can also consult the upstream `Installation guide <https://docs.flashinfer.ai/installation.html>`__
for additional context.
.. note::
Version support
--------------------------------------------------------------------------------
Flashinfer is supported on ROCm 6.4.1.
FlashInfer is supported on `ROCm 6.4.1 <https://repo.radeon.com/rocm/apt/6.4.1/>`__.
Supported devices
================================================================================
--------------------------------------------------------------------------------
**Officially Supported**: AMD Instinct™ MI300X
@@ -78,10 +80,9 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes `ROCm FlashInfer images <https://hub.docker.com/r/rocm/flashinfer/tags>`__
with ROCm and Pytorch backends on Docker Hub. The following Docker image tags and associated
inventories represent the FlashInfer version from the official Docker Hub.
The Docker images have been validated for `ROCm 6.4.1 <https://repo.radeon.com/rocm/apt/6.4.1/>`__.
AMD validates and publishes `FlashInfer images <https://hub.docker.com/r/rocm/flashinfer/tags>`__
with ROCm backends on Docker Hub. The following Docker image tag and associated
inventories represent the latest available FlashInfer version from the official Docker Hub.
Click |docker-icon| to view the image on Docker Hub.
.. list-table::

View File

@@ -2,7 +2,7 @@
.. meta::
:description: JAX compatibility
:keywords: GPU, JAX compatibility
:keywords: GPU, JAX, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -10,42 +10,38 @@
JAX compatibility
*******************************************************************************
JAX provides a NumPy-like API, which combines automatic differentiation and the
Accelerated Linear Algebra (XLA) compiler to achieve high-performance machine
learning at scale.
`JAX <https://docs.jax.dev/en/latest/notebooks/thinking_in_jax.html>`__ is a library
for array-oriented numerical computation (similar to NumPy), with automatic differentiation
and just-in-time (JIT) compilation to enable high-performance machine learning research.
JAX uses composable transformations of Python and NumPy through just-in-time
(JIT) compilation, automatic vectorization, and parallelization. To learn about
JAX, including profiling and optimizations, see the official `JAX documentation
<https://jax.readthedocs.io/en/latest/notebooks/quickstart.html>`_.
JAX provides an API that combines automatic differentiation and the
Accelerated Linear Algebra (XLA) compiler to achieve high-performance machine
learning at scale. JAX uses composable transformations of Python and NumPy through
JIT compilation, automatic vectorization, and parallelization.
ROCm support for JAX is upstreamed, and users can build the official source code
with ROCm support:
Support overview
================================================================================
- ROCm JAX release:
- The ROCm-supported version of JAX is maintained in the official `https://github.com/ROCm/rocm-jax
<https://github.com/ROCm/rocm-jax>`__ repository, which differs from the
`https://github.com/jax-ml/jax <https://github.com/jax-ml/jax>`__ upstream repository.
- Offers AMD-validated and community :ref:`Docker images <jax-docker-compat>`
with ROCm and JAX preinstalled.
- To get started and install JAX on ROCm, use the prebuilt :ref:`Docker images <jax-docker-compat>`,
which include ROCm, JAX, and all required dependencies.
- ROCm JAX repository: `ROCm/rocm-jax <https://github.com/ROCm/rocm-jax>`_
- See the :doc:`ROCm JAX installation guide <rocm-install-on-linux:install/3rd-party/jax-install>`
for installation and setup instructions.
- See the :doc:`ROCm JAX installation guide <rocm-install-on-linux:install/3rd-party/jax-install>`
to get started.
- You can also consult the upstream `Installation guide <https://jax.readthedocs.io/en/latest/installation.html#amd-gpu-linux>`__
for additional context.
- Official JAX release:
Version support
--------------------------------------------------------------------------------
- Official JAX repository: `jax-ml/jax <https://github.com/jax-ml/jax>`_
- See the `AMD GPU (Linux) installation section
<https://jax.readthedocs.io/en/latest/installation.html#amd-gpu-linux>`_ in
the JAX documentation.
.. note::
AMD releases official `ROCm JAX Docker images <https://hub.docker.com/r/rocm/jax>`_
quarterly alongside new ROCm releases. These images undergo full AMD testing.
`Community ROCm JAX Docker images <https://hub.docker.com/r/rocm/jax-community>`_
follow upstream JAX releases and use the latest available ROCm version.
AMD releases official `ROCm JAX Docker images <https://hub.docker.com/r/rocm/jax/tags>`_
quarterly alongside new ROCm releases. These images undergo full AMD testing.
`Community ROCm JAX Docker images <https://hub.docker.com/r/rocm/jax-community/tags>`_
follow upstream JAX releases and use the latest available ROCm version.
Use cases and recommendations
================================================================================
@@ -71,7 +67,7 @@ Use cases and recommendations
* The `Distributed fine-tuning with JAX on AMD GPUs <https://rocm.blogs.amd.com/artificial-intelligence/distributed-sft-jax/README.html>`_
outlines the process of fine-tuning a Bidirectional Encoder Representations
from Transformers (BERT)-based large language model (LLM) using JAX for a text
classification task. The blog post discuss techniques for parallelizing the
classification task. The blog post discusses techniques for parallelizing the
fine-tuning across multiple AMD GPUs and assess the model's performance on a
holdout dataset. During the fine-tuning, a BERT-base-cased transformer model
and the General Language Understanding Evaluation (GLUE) benchmark dataset was
@@ -90,9 +86,9 @@ For more use cases and recommendations, see `ROCm JAX blog posts <https://rocm.b
Docker image compatibility
================================================================================
AMD provides preconfigured Docker images with JAX and the ROCm backend.
These images are published on `Docker Hub <https://hub.docker.com/r/rocm/jax>`__ and are the
recommended way to get started with deep learning with JAX on ROCm.
AMD validates and publishes `JAX images <https://hub.docker.com/r/rocm/jax/tags>`__
with ROCm backends on Docker Hub.
For ``jax-community`` images, see `rocm/jax-community
<https://hub.docker.com/r/rocm/jax-community/tags>`__ on Docker Hub.
@@ -234,7 +230,7 @@ The ROCm supported data types in JAX are collected in the following table.
.. note::
JAX data type support is effected by the :ref:`key_rocm_libraries` and it's
JAX data type support is affected by the :ref:`key_rocm_libraries` and it's
collected on :doc:`ROCm data types and precision support <rocm:reference/precision-support>`
page.

View File

@@ -1,8 +1,8 @@
:orphan:
.. meta::
:description: llama.cpp deep learning framework compatibility
:keywords: GPU, GGML, llama.cpp compatibility
:description: llama.cpp compatibility
:keywords: GPU, GGML, llama.cpp, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -20,33 +20,32 @@ to accelerate inference and reduce memory usage. Originally built as a CPU-first
llama.cpp is easy to integrate with other programming environments and is widely
adopted across diverse platforms, including consumer devices.
ROCm support for llama.cpp is upstreamed, and you can build the official source code
with ROCm support:
- ROCm support for llama.cpp is hosted in the official `https://github.com/ROCm/llama.cpp
<https://github.com/ROCm/llama.cpp>`_ repository.
- Due to independent compatibility considerations, this location differs from the
`https://github.com/ggml-org/llama.cpp <https://github.com/ggml-org/llama.cpp>`_ upstream repository.
- To install llama.cpp, use the prebuilt :ref:`Docker image <llama-cpp-docker-compat>`,
which includes ROCm, llama.cpp, and all required dependencies.
- See the :doc:`ROCm llama.cpp installation guide <rocm-install-on-linux:install/3rd-party/llama-cpp-install>`
to install and get started.
- See the `Installation guide <https://github.com/ggml-org/llama.cpp/blob/master/docs/build.md#hip>`__
in the upstream llama.cpp documentation.
.. note::
llama.cpp is supported on ROCm 7.0.0 and ROCm 6.4.x.
Supported devices
Support overview
================================================================================
**Officially Supported**: AMD Instinct™ MI300X, MI325X, MI210
- The ROCm-supported version of llama.cpp is maintained in the official `https://github.com/ROCm/llama.cpp
<https://github.com/ROCm/llama.cpp>`__ repository, which differs from the
`https://github.com/ggml-org/llama.cpp <https://github.com/ggml-org/llama.cpp>`__ upstream repository.
- To get started and install llama.cpp on ROCm, use the prebuilt :ref:`Docker images <llama-cpp-docker-compat>`,
which include ROCm, llama.cpp, and all required dependencies.
- See the :doc:`ROCm llama.cpp installation guide <rocm-install-on-linux:install/3rd-party/llama-cpp-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://github.com/ggml-org/llama.cpp/blob/master/docs/build.md>`__
for additional context.
Version support
--------------------------------------------------------------------------------
llama.cpp is supported on `ROCm 7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__ and
`ROCm 6.4.x <https://repo.radeon.com/rocm/apt/6.4/>`__.
Supported devices
--------------------------------------------------------------------------------
**Officially Supported**: AMD Instinct™ MI325X, MI300X, MI210
Use cases and recommendations
================================================================================
@@ -84,9 +83,9 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes `ROCm llama.cpp Docker images <https://hub.docker.com/r/rocm/llama.cpp/tags>`__
AMD validates and publishes `llama.cpp images <https://hub.docker.com/r/rocm/llama.cpp/tags>`__
with ROCm backends on Docker Hub. The following Docker image tags and associated
inventories represent the available llama.cpp versions from the official Docker Hub.
inventories represent the latest available llama.cpp versions from the official Docker Hub.
Click |docker-icon| to view the image on Docker Hub.
.. important::
@@ -110,27 +109,27 @@ Click |docker-icon| to view the image on Docker Hub.
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu24.04_full/images/sha256-a2ecd635eaa65bb289a9041330128677f3ae88bee6fee0597424b17e38d4903c"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu24.04_full/images/sha256-a94f0c7a598cc6504ff9e8371c016d7a2f93e69bf54a36c870f9522567201f10g"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu24.04_server/images/sha256-cb46b47df415addb5ceb6e6fdf0be70bf9d7f6863bbe6e10c2441ecb84246d52"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu24.04_server/images/sha256-be175932c3c96e882dfbc7e20e0e834f58c89c2925f48b222837ee929dfc47ee"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu24.04_light/images/sha256-8f8536eec4b05c0ff1c022f9fc6c527ad1c89e6c1ca0906e4d39e4de73edbde9"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- `b6356 <https://github.com/ROCm/llama.cpp/tree/release/b6356>`__
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu24.04_light/images/sha256-d8ba0c70603da502c879b1f8010b439c8e7fa9f6cbdac8bbbbbba97cb41ebc9e"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- `b6652 <https://github.com/ROCm/llama.cpp/tree/release/b6652>`__
- `7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__
- 24.04
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu22.04_full/images/sha256-f36de2a3b03ae53e81c85422cb3780368c9891e1ac7884b04403a921fe2ea45d"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu22.04_full/images/sha256-37582168984f25dce636cc7288298e06d94472ea35f65346b3541e6422b678ee"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu22.04_server/images/sha256-df15e8ab11a6837cd3736644fec1e047465d49e37d610ab0b79df000371327df"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu22.04_server/images/sha256-7e70578e6c3530c6591cc2c26da24a9ee68a20d318e12241de93c83224f83720"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- .. raw:: html
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6356_rocm7.0.0_ubuntu22.04_light/images/sha256-4ea2d5bb7964f0ee3ea9b30ba7f343edd6ddfab1b1037669ca7eafad2e3c2bd7"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- `b6356 <https://github.com/ROCm/llama.cpp/tree/release/b6356>`__
<a href="https://hub.docker.com/layers/rocm/llama.cpp/llama.cpp-b6652.amd0_rocm7.0.0_ubuntu22.04_light/images/sha256-9a5231acf88b4a229677bc2c636ea3fe78a7a80f558bd80910b919855de93ad5"><i class="fab fa-docker fa-lg"></i> rocm/llama.cpp</a>
- `b6652 <https://github.com/ROCm/llama.cpp/tree/release/b6652>`__
- `7.0.0 <https://repo.radeon.com/rocm/apt/7.0/>`__
- 22.04

View File

@@ -2,7 +2,7 @@
.. meta::
:description: Megablocks compatibility
:keywords: GPU, megablocks, compatibility
:keywords: GPU, megablocks, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -10,28 +10,42 @@
Megablocks compatibility
********************************************************************************
Megablocks is a light-weight library for mixture-of-experts (MoE) training.
`Megablocks <https://github.com/databricks/megablocks>`__ is a lightweight library
for mixture-of-experts `(MoE) <https://huggingface.co/blog/moe>`__ training.
The core of the system is efficient "dropless-MoE" and standard MoE layers.
Megablocks is integrated with `https://github.com/stanford-futuredata/Megatron-LM <https://github.com/stanford-futuredata/Megatron-LM>`_,
Megablocks is integrated with `https://github.com/stanford-futuredata/Megatron-LM
<https://github.com/stanford-futuredata/Megatron-LM>`__,
where data and pipeline parallel training of MoEs is supported.
* ROCm support for Megablocks is hosted in the official `https://github.com/ROCm/megablocks <https://github.com/ROCm/megablocks>`_ repository.
* Due to independent compatibility considerations, this location differs from the `https://github.com/stanford-futuredata/Megatron-LM <https://github.com/stanford-futuredata/Megatron-LM>`_ upstream repository.
* Use the prebuilt :ref:`Docker image <megablocks-docker-compat>` with ROCm, PyTorch, and Megablocks preinstalled.
* See the :doc:`ROCm Megablocks installation guide <rocm-install-on-linux:install/3rd-party/megablocks-install>` to install and get started.
Support overview
================================================================================
.. note::
- The ROCm-supported version of Megablocks is maintained in the official `https://github.com/ROCm/megablocks
<https://github.com/ROCm/megablocks>`__ repository, which differs from the
`https://github.com/stanford-futuredata/Megatron-LM <https://github.com/stanford-futuredata/Megatron-LM>`__ upstream repository.
Megablocks is supported on ROCm 6.3.0.
- To get started and install Megablocks on ROCm, use the prebuilt :ref:`Docker image <megablocks-docker-compat>`,
which includes ROCm, Megablocks, and all required dependencies.
- See the :doc:`ROCm Megablocks installation guide <rocm-install-on-linux:install/3rd-party/megablocks-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://github.com/databricks/megablocks>`__
for additional context.
Version support
--------------------------------------------------------------------------------
Megablocks is supported on `ROCm 6.3.0 <https://repo.radeon.com/rocm/apt/6.3/>`__.
Supported devices
================================================================================
--------------------------------------------------------------------------------
- **Officially Supported**: AMD Instinct MI300X
- **Partially Supported** (functionality or performance limitations): AMD Instinct MI250X, MI210
- **Officially Supported**: AMD Instinct MI300X
- **Partially Supported** (functionality or performance limitations): AMD Instinct MI250X, MI210
Supported models and features
================================================================================
--------------------------------------------------------------------------------
This section summarizes the Megablocks features supported by ROCm.
@@ -41,20 +55,28 @@ This section summarizes the Megablocks features supported by ROCm.
* Mixture-of-Experts
* dropless-Mixture-of-Experts
.. _megablocks-recommendations:
Use cases and recommendations
================================================================================
The `ROCm Megablocks blog posts <https://rocm.blogs.amd.com/artificial-intelligence/megablocks/README.html>`_
guide how to leverage the ROCm platform for pre-training using the Megablocks framework.
* The `Efficient MoE training on AMD ROCm: How-to use Megablocks on AMD GPUs
<https://rocm.blogs.amd.com/artificial-intelligence/megablocks/README.html>`__
blog post guides how to leverage the ROCm platform for pre-training using the
Megablocks framework. It introduces a streamlined approach for training Mixture-of-Experts
(MoE) models using the Megablocks library on AMD hardware. Focusing on GPT-2, it
demonstrates how block-sparse computations can enhance scalability and efficiency in MoE
training. The guide provides step-by-step instructions for setting up the environment,
including cloning the repository, building the Docker image, and running the training container.
Additionally, it offers insights into utilizing the ``oscar-1GB.json`` dataset for pre-training
language models. By leveraging Megablocks and the ROCm platform, you can optimize your MoE
training workflows for large-scale transformer models.
It features how to pre-process datasets and how to begin pre-training on AMD GPUs through:
* Single-GPU pre-training
* Multi-GPU pre-training
.. _megablocks-docker-compat:
Docker image compatibility
@@ -64,10 +86,9 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes `ROCm Megablocks images <https://hub.docker.com/r/rocm/megablocks/tags>`_
with ROCm and Pytorch backends on Docker Hub. The following Docker image tags and associated
inventories represent the latest Megatron-LM version from the official Docker Hub.
The Docker images have been validated for `ROCm 6.3.0 <https://repo.radeon.com/rocm/apt/6.3/>`_.
AMD validates and publishes `Megablocks images <https://hub.docker.com/r/rocm/megablocks/tags>`__
with ROCm backends on Docker Hub. The following Docker image tag and associated
inventories represent the latest available Megablocks version from the official Docker Hub.
Click |docker-icon| to view the image on Docker Hub.
.. list-table::

View File

@@ -2,7 +2,7 @@
.. meta::
:description: PyTorch compatibility
:keywords: GPU, PyTorch compatibility
:keywords: GPU, PyTorch, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -15,40 +15,42 @@ deep learning. PyTorch on ROCm provides mixed-precision and large-scale training
using `MIOpen <https://github.com/ROCm/MIOpen>`__ and
`RCCL <https://github.com/ROCm/rccl>`__ libraries.
ROCm support for PyTorch is upstreamed into the official PyTorch repository. Due
to independent compatibility considerations, this results in two distinct
release cycles for PyTorch on ROCm:
PyTorch provides two high-level features:
- ROCm PyTorch release:
- Tensor computation (like NumPy) with strong GPU acceleration
- Provides the latest version of ROCm but might not necessarily support the
latest stable PyTorch version.
- Deep neural networks built on a tape-based autograd system (rapid computation
of multiple partial derivatives or gradients)
- Offers :ref:`Docker images <pytorch-docker-compat>` with ROCm and PyTorch
preinstalled.
Support overview
================================================================================
- ROCm PyTorch repository: `<https://github.com/ROCm/pytorch>`__
ROCm support for PyTorch is upstreamed into the official PyTorch repository.
ROCm development is aligned with the stable release of PyTorch, while upstream
PyTorch testing uses the stable release of ROCm to maintain consistency:
- See the :doc:`ROCm PyTorch installation guide <rocm-install-on-linux:install/3rd-party/pytorch-install>`
to get started.
- The ROCm-supported version of PyTorch is maintained in the official `https://github.com/ROCm/pytorch
<https://github.com/ROCm/pytorch>`__ repository, which differs from the
`https://github.com/pytorch/pytorch <https://github.com/pytorch/pytorch>`__ upstream repository.
- Official PyTorch release:
- To get started and install PyTorch on ROCm, use the prebuilt :ref:`Docker images <pytorch-docker-compat>`,
which include ROCm, PyTorch, and all required dependencies.
- Provides the latest stable version of PyTorch but might not necessarily
support the latest ROCm version.
- See the :doc:`ROCm PyTorch installation guide <rocm-install-on-linux:install/3rd-party/pytorch-install>`
for installation and setup instructions.
- Official PyTorch repository: `<https://github.com/pytorch/pytorch>`__
- See the `Nightly and latest stable version installation guide <https://pytorch.org/get-started/locally/>`__
or `Previous versions <https://pytorch.org/get-started/previous-versions/>`__
to get started.
- You can also consult the upstream `Installation guide <https://pytorch.org/get-started/locally/>`__ or
`Previous versions <https://pytorch.org/get-started/previous-versions/>`__ for additional context.
PyTorch includes tooling that generates HIP source code from the CUDA backend.
This approach allows PyTorch to support ROCm without requiring manual code
modifications. For more information, see :doc:`HIPIFY <hipify:index>`.
ROCm development is aligned with the stable release of PyTorch, while upstream
PyTorch testing uses the stable release of ROCm to maintain consistency.
Version support
--------------------------------------------------------------------------------
AMD releases official `ROCm PyTorch Docker images <https://hub.docker.com/r/rocm/pytorch/tags>`_
quarterly alongside new ROCm releases. These images undergo full AMD testing.
.. _pytorch-recommendations:
@@ -78,7 +80,7 @@ Use cases and recommendations
GPU.
* The :doc:`Inception with PyTorch documentation </conceptual/ai-pytorch-inception>`
describes how PyTorch integrates with ROCm for AI workloads It outlines the
describes how PyTorch integrates with ROCm for AI workloads. It outlines the
use of PyTorch on the ROCm platform and focuses on efficiently leveraging AMD
GPU hardware for training and inference tasks in AI applications.
@@ -89,9 +91,8 @@ For more use cases and recommendations, see `ROCm PyTorch blog posts <https://ro
Docker image compatibility
================================================================================
AMD provides preconfigured Docker images with PyTorch and the ROCm backend.
These images are published on `Docker Hub <https://hub.docker.com/r/rocm/pytorch>`__ and are the
recommended way to get started with deep learning with PyTorch on ROCm.
AMD validates and publishes `PyTorch images <https://hub.docker.com/r/rocm/pytorch/tags>`__
with ROCm backends on Docker Hub.
To find the right image tag, see the :ref:`PyTorch on ROCm installation
documentation <rocm-install-on-linux:pytorch-docker-support>` for a list of
@@ -360,15 +361,6 @@ with ROCm.
popular datasets, model architectures, and common image transformations
for computer vision applications.
* - `torchtext <https://docs.pytorch.org/text/stable/index.html>`_
- Text processing library for PyTorch. Provides data processing utilities
and popular datasets for natural language processing, including
tokenization, vocabulary management, and text embeddings.
**Note:** ``torchtext`` does not implement ROCm-specific kernels.
ROCm acceleration is provided through the underlying PyTorch framework
and ROCm library integration. Only official release exists.
* - `torchdata <https://meta-pytorch.org/data/beta/index.html#torchdata>`_
- Beta library of common modular data loading primitives for easily
constructing flexible and performant data pipelines, with features still
@@ -407,7 +399,18 @@ with ROCm.
**Note:** Only official release exists.
Key features and enhancements for PyTorch 2.7 with ROCm 7.0
Key features and enhancements for PyTorch 2.8 with ROCm 7.1
================================================================================
- MIOpen deep learning optimizations: Further optimized NHWC BatchNorm feature.
- Added float8 support for the DeepSpeed extension, allowing for decreased
memory footprint and increased throughput in training and inference workloads.
- ``torch.nn.functional.scaled_dot_product_attention`` now calling optimized
flash attention kernel automatically.
Key features and enhancements for PyTorch 2.7/2.8 with ROCm 7.0
================================================================================
- Enhanced TunableOp framework: Introduces ``tensorfloat32`` support for
@@ -442,10 +445,6 @@ Key features and enhancements for PyTorch 2.7 with ROCm 7.0
ROCm-specific test conditions, and enhanced unit test coverage for Flash
Attention and Memory Efficient operations.
- Build system and infrastructure improvements: Provides updated CentOS Stream 9
support, improved Docker configuration, migration to public MAGMA repository,
and enhanced QA automation scripts for PyTorch unit testing.
- Composable Kernel (CK) updates: Features updated CK submodule integration with
the latest optimizations and performance improvements for core mathematical
operations.
@@ -467,7 +466,7 @@ Key features and enhancements for PyTorch 2.7 with ROCm 7.0
network training or inference. For AMD platforms, ``amdclang++`` has been
validated as the supported compiler for building these extensions.
Known issues and notes for PyTorch 2.7 with ROCm 7.0
Known issues and notes for PyTorch 2.7/2.8 with ROCm 7.0 and ROCm 7.1
================================================================================
- The ``matmul.allow_fp16_reduced_precision_reduction`` and

View File

@@ -1,8 +1,8 @@
:orphan:
.. meta::
:description: Ray deep learning framework compatibility
:keywords: GPU, Ray compatibility
:description: Ray compatibility
:keywords: GPU, Ray, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -19,36 +19,35 @@ simplifying machine learning computations.
Ray is a general-purpose framework that runs many types of workloads efficiently.
Any Python application can be scaled with Ray, without extra infrastructure.
ROCm support for Ray is upstreamed, and you can build the official source code
with ROCm support:
- ROCm support for Ray is hosted in the official `https://github.com/ROCm/ray
<https://github.com/ROCm/ray>`_ repository.
- Due to independent compatibility considerations, this location differs from the
`https://github.com/ray-project/ray <https://github.com/ray-project/ray>`_ upstream repository.
- To install Ray, use the prebuilt :ref:`Docker image <ray-docker-compat>`
which includes ROCm, Ray, and all required dependencies.
- See the :doc:`ROCm Ray installation guide <rocm-install-on-linux:install/3rd-party/ray-install>`
for instructions to get started.
- See the `Installation section <https://docs.ray.io/en/latest/ray-overview/installation.html>`_
in the upstream Ray documentation.
- The Docker image provided is based on the upstream Ray `Daily Release (Nightly) wheels <https://docs.ray.io/en/latest/ray-overview/installation.html#daily-releases-nightlies>`__
corresponding to commit `005c372 <https://github.com/ray-project/ray/commit/005c372262e050d5745f475e22e64305fa07f8b8>`__.
.. note::
Ray is supported on ROCm 6.4.1.
Supported devices
Support overview
================================================================================
**Officially Supported**: AMD Instinct™ MI300X, MI210
- The ROCm-supported version of Ray is maintained in the official `https://github.com/ROCm/ray
<https://github.com/ROCm/ray>`__ repository, which differs from the
`https://github.com/ray-project/ray <https://github.com/ray-project/ray>`__ upstream repository.
- To get started and install Ray on ROCm, use the prebuilt :ref:`Docker image <ray-docker-compat>`,
which includes ROCm, Ray, and all required dependencies.
- The Docker image provided is based on the upstream Ray `Daily Release (Nightly) wheels
<https://docs.ray.io/en/latest/ray-overview/installation.html#daily-releases-nightlies>`__
corresponding to commit `005c372 <https://github.com/ray-project/ray/commit/005c372262e050d5745f475e22e64305fa07f8b8>`__.
- See the :doc:`ROCm Ray installation guide <rocm-install-on-linux:install/3rd-party/ray-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://docs.ray.io/en/latest/ray-overview/installation.html>`__
for additional context.
Version support
--------------------------------------------------------------------------------
Ray is supported on `ROCm 6.4.1 <https://repo.radeon.com/rocm/apt/6.4.1/>`__.
Supported devices
--------------------------------------------------------------------------------
**Officially Supported**: AMD Instinct™ MI300X, MI210
Use cases and recommendations
================================================================================
@@ -88,15 +87,15 @@ Docker image compatibility
AMD validates and publishes ready-made `ROCm Ray Docker images <https://hub.docker.com/r/rocm/ray/tags>`__
with ROCm backends on Docker Hub. The following Docker image tags and
associated inventories represent the latest Ray version from the official Docker Hub and are validated for
`ROCm 6.4.1 <https://repo.radeon.com/rocm/apt/6.4.1/>`_. Click the |docker-icon|
icon to view the image on Docker Hub.
associated inventories represent the latest Ray version from the official Docker Hub.
Click the |docker-icon| icon to view the image on Docker Hub.
.. list-table::
:header-rows: 1
:class: docker-image-compatibility
* - Docker image
- ROCm
- Ray
- Pytorch
- Ubuntu
@@ -105,6 +104,7 @@ icon to view the image on Docker Hub.
* - .. raw:: html
<a href="https://hub.docker.com/layers/rocm/ray/ray-2.48.0.post0_rocm6.4.1_ubuntu24.04_py3.12_pytorch2.6.0/images/sha256-0d166fe6bdced38338c78eedfb96eff92655fb797da3478a62dd636365133cc0"><i class="fab fa-docker fa-lg"></i> rocm/ray</a>
- `6.4.1 <https://repo.radeon.com/rocm/apt/6.4.1/>`__.
- `2.48.0.post0 <https://github.com/ROCm/ray/tree/release/2.48.0.post0>`_
- 2.6.0+git684f6f2
- 24.04

View File

@@ -2,7 +2,7 @@
.. meta::
:description: Stanford Megatron-LM compatibility
:keywords: Stanford, Megatron-LM, compatibility
:keywords: Stanford, Megatron-LM, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -10,34 +10,50 @@
Stanford Megatron-LM compatibility
********************************************************************************
Stanford Megatron-LM is a large-scale language model training framework developed by NVIDIA `https://github.com/NVIDIA/Megatron-LM <https://github.com/NVIDIA/Megatron-LM>`_. It is
designed to train massive transformer-based language models efficiently by model and data parallelism.
Stanford Megatron-LM is a large-scale language model training framework developed
by NVIDIA at `https://github.com/NVIDIA/Megatron-LM <https://github.com/NVIDIA/Megatron-LM>`_.
It is designed to train massive transformer-based language models efficiently by model
and data parallelism.
* ROCm support for Stanford Megatron-LM is hosted in the official `https://github.com/ROCm/Stanford-Megatron-LM <https://github.com/ROCm/Stanford-Megatron-LM>`_ repository.
* Due to independent compatibility considerations, this location differs from the `https://github.com/stanford-futuredata/Megatron-LM <https://github.com/stanford-futuredata/Megatron-LM>`_ upstream repository.
* Use the prebuilt :ref:`Docker image <megatron-lm-docker-compat>` with ROCm, PyTorch, and Megatron-LM preinstalled.
* See the :doc:`ROCm Stanford Megatron-LM installation guide <rocm-install-on-linux:install/3rd-party/stanford-megatron-lm-install>` to install and get started.
It provides efficient tensor, pipeline, and sequence-based model parallelism for
pre-training transformer-based language models such as GPT (Decoder Only), BERT
(Encoder Only), and T5 (Encoder-Decoder).
.. note::
Stanford Megatron-LM is supported on ROCm 6.3.0.
Supported Devices
Support overview
================================================================================
- **Officially Supported**: AMD Instinct MI300X
- **Partially Supported** (functionality or performance limitations): AMD Instinct MI250X, MI210
- The ROCm-supported version of Stanford Megatron-LM is maintained in the official `https://github.com/ROCm/Stanford-Megatron-LM
<https://github.com/ROCm/Stanford-Megatron-LM>`__ repository, which differs from the
`https://github.com/stanford-futuredata/Megatron-LM <https://github.com/stanford-futuredata/Megatron-LM>`__ upstream repository.
- To get started and install Stanford Megatron-LM on ROCm, use the prebuilt :ref:`Docker image <megatron-lm-docker-compat>`,
which includes ROCm, Stanford Megatron-LM, and all required dependencies.
- See the :doc:`ROCm Stanford Megatron-LM installation guide <rocm-install-on-linux:install/3rd-party/stanford-megatron-lm-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://github.com/NVIDIA/Megatron-LM>`__
for additional context.
Version support
--------------------------------------------------------------------------------
Stanford Megatron-LM is supported on `ROCm 6.3.0 <https://repo.radeon.com/rocm/apt/6.3/>`__.
Supported devices
--------------------------------------------------------------------------------
- **Officially Supported**: AMD Instinct™ MI300X
- **Partially Supported** (functionality or performance limitations): AMD Instinct™ MI250X, MI210
Supported models and features
================================================================================
--------------------------------------------------------------------------------
This section details models & features that are supported by the ROCm version on Stanford Megatron-LM.
Models:
* Bert
* BERT
* GPT
* T5
* ICT
@@ -54,13 +70,24 @@ Features:
Use cases and recommendations
================================================================================
See the `Efficient MoE training on AMD ROCm: How-to use Megablocks on AMD GPUs blog <https://rocm.blogs.amd.com/artificial-intelligence/megablocks/README.html>`_ post
to leverage the ROCm platform for pre-training by using the Stanford Megatron-LM framework of pre-processing datasets on AMD GPUs.
Coverage includes:
The following blog post mentions Megablocks, but you can run Stanford Megatron-LM with the same steps to pre-process datasets on AMD GPUs:
* Single-GPU pre-training
* Multi-GPU pre-training
* The `Efficient MoE training on AMD ROCm: How-to use Megablocks on AMD GPUs
<https://rocm.blogs.amd.com/artificial-intelligence/megablocks/README.html>`__
blog post guides how to leverage the ROCm platform for pre-training using the
Megablocks framework. It introduces a streamlined approach for training Mixture-of-Experts
(MoE) models using the Megablocks library on AMD hardware. Focusing on GPT-2, it
demonstrates how block-sparse computations can enhance scalability and efficiency in MoE
training. The guide provides step-by-step instructions for setting up the environment,
including cloning the repository, building the Docker image, and running the training container.
Additionally, it offers insights into utilizing the ``oscar-1GB.json`` dataset for pre-training
language models. By leveraging Megablocks and the ROCm platform, you can optimize your MoE
training workflows for large-scale transformer models.
It features how to pre-process datasets and how to begin pre-training on AMD GPUs through:
* Single-GPU pre-training
* Multi-GPU pre-training
.. _megatron-lm-docker-compat:
@@ -71,10 +98,9 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes `Stanford Megatron-LM images <https://hub.docker.com/r/rocm/megatron-lm>`_
AMD validates and publishes `Stanford Megatron-LM images <https://hub.docker.com/r/rocm/stanford-megatron-lm/tags>`_
with ROCm and Pytorch backends on Docker Hub. The following Docker image tags and associated
inventories represent the latest Megatron-LM version from the official Docker Hub.
The Docker images have been validated for `ROCm 6.3.0 <https://repo.radeon.com/rocm/apt/6.3/>`_.
inventories represent the latest Stanford Megatron-LM version from the official Docker Hub.
Click |docker-icon| to view the image on Docker Hub.
.. list-table::
@@ -82,6 +108,7 @@ Click |docker-icon| to view the image on Docker Hub.
:class: docker-image-compatibility
* - Docker image
- ROCm
- Stanford Megatron-LM
- PyTorch
- Ubuntu
@@ -91,6 +118,7 @@ Click |docker-icon| to view the image on Docker Hub.
<a href="https://hub.docker.com/layers/rocm/stanford-megatron-lm/stanford-megatron-lm85f95ae_rocm6.3.0_ubuntu24.04_py3.12_pytorch2.4.0/images/sha256-070556f078be10888a1421a2cb4f48c29f28b02bfeddae02588d1f7fc02a96a6"><i class="fab fa-docker fa-lg"></i></a>
- `6.3.0 <https://repo.radeon.com/rocm/apt/6.3/>`_
- `85f95ae <https://github.com/stanford-futuredata/Megatron-LM/commit/85f95aef3b648075fe6f291c86714fdcbd9cd1f5>`_
- `2.4.0 <https://github.com/ROCm/pytorch/tree/release/2.4>`_
- 24.04

View File

@@ -2,7 +2,7 @@
.. meta::
:description: Taichi compatibility
:keywords: GPU, Taichi compatibility
:keywords: GPU, Taichi, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -19,28 +19,52 @@ Taichi is widely used across various domains, including real-time physical simul
numerical computing, augmented reality, artificial intelligence, computer vision, robotics,
visual effects in film and gaming, and general-purpose computing.
* ROCm support for Taichi is hosted in the official `https://github.com/ROCm/taichi <https://github.com/ROCm/taichi>`_ repository.
* Due to independent compatibility considerations, this location differs from the `https://github.com/taichi-dev <https://github.com/taichi-dev>`_ upstream repository.
* Use the prebuilt :ref:`Docker image <taichi-docker-compat>` with ROCm, PyTorch, and Taichi preinstalled.
* See the :doc:`ROCm Taichi installation guide <rocm-install-on-linux:install/3rd-party/taichi-install>` to install and get started.
Support overview
================================================================================
.. note::
- The ROCm-supported version of Taichi is maintained in the official `https://github.com/ROCm/taichi
<https://github.com/ROCm/taichi>`__ repository, which differs from the
`https://github.com/taichi-dev/taichi <https://github.com/taichi-dev/taichi>`__ upstream repository.
Taichi is supported on ROCm 6.3.2.
- To get started and install Taichi on ROCm, use the prebuilt :ref:`Docker image <taichi-docker-compat>`,
which includes ROCm, Taichi, and all required dependencies.
Supported devices and features
===============================================================================
There is support through the ROCm software stack for all Taichi GPU features on AMD Instinct MI250X and MI210X Series GPUs with the exception of Taichis GPU rendering system, CGUI.
AMD Instinct MI300X Series GPUs will be supported by November.
- See the :doc:`ROCm Taichi installation guide <rocm-install-on-linux:install/3rd-party/taichi-install>`
for installation and setup instructions.
- You can also consult the upstream `Installation guide <https://github.com/taichi-dev/taichi>`__
for additional context.
Version support
--------------------------------------------------------------------------------
Taichi is supported on `ROCm 6.3.2 <https://repo.radeon.com/rocm/apt/6.3.2/>`__.
Supported devices
--------------------------------------------------------------------------------
- **Officially Supported**: AMD Instinct™ MI250X, MI210X (with the exception of Taichis GPU rendering system, CGUI)
- **Upcoming Support**: AMD Instinct™ MI300X
.. _taichi-recommendations:
Use cases and recommendations
================================================================================
To fully leverage Taichi's performance capabilities in compute-intensive tasks, it is best to adhere to specific coding patterns and utilize Taichi decorators.
A collection of example use cases is available in the `https://github.com/ROCm/taichi_examples <https://github.com/ROCm/taichi_examples>`_ repository,
providing practical insights and foundational knowledge for working with the Taichi programming language.
You can also refer to the `AMD ROCm blog <https://rocm.blogs.amd.com/>`_ to search for Taichi examples and best practices to optimize your workflows on AMD GPUs.
* The `Accelerating Parallel Programming in Python with Taichi Lang on AMD GPUs
<https://rocm.blogs.amd.com/artificial-intelligence/taichi/README.html>`__
blog highlights Taichi as an open-source programming language designed for high-performance
numerical computation, particularly in domains like real-time physical simulation,
artificial intelligence, computer vision, robotics, and visual effects. Taichi
is embedded in Python and uses just-in-time (JIT) compilation frameworks like
LLVM to optimize execution on GPUs and CPUs. The blog emphasizes the versatility
of Taichi in enabling complex simulations and numerical algorithms, making
it ideal for developers working on compute-intensive tasks. Developers are
encouraged to follow recommended coding patterns and utilize Taichi decorators
for performance optimization, with examples available in the `https://github.com/ROCm/taichi_examples
<https://github.com/ROCm/taichi_examples>`_ repository. Prebuilt Docker images
integrating ROCm, PyTorch, and Taichi are provided for simplified installation
and deployment, making it easier to leverage Taichi for advanced computational workloads.
.. _taichi-docker-compat:
@@ -52,9 +76,8 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes ready-made `ROCm Taichi Docker images <https://hub.docker.com/r/rocm/taichi/tags>`_
with ROCm backends on Docker Hub. The following Docker image tags and associated inventories
with ROCm backends on Docker Hub. The following Docker image tag and associated inventories
represent the latest Taichi version from the official Docker Hub.
The Docker images have been validated for `ROCm 6.3.2 <https://rocm.docs.amd.com/en/docs-6.3.2/about/release-notes.html>`_.
Click |docker-icon| to view the image on Docker Hub.
.. list-table::

View File

@@ -2,7 +2,7 @@
.. meta::
:description: TensorFlow compatibility
:keywords: GPU, TensorFlow compatibility
:keywords: GPU, TensorFlow, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -12,37 +12,33 @@ TensorFlow compatibility
`TensorFlow <https://www.tensorflow.org/>`__ is an open-source library for
solving machine learning, deep learning, and AI problems. It can solve many
problems across different sectors and industries but primarily focuses on
neural network training and inference. It is one of the most popular and
in-demand frameworks and is very active in open-source contribution and
development.
problems across different sectors and industries, but primarily focuses on
neural network training and inference. It is one of the most popular deep
learning frameworks and is very active in open-source development.
Support overview
================================================================================
- The ROCm-supported version of TensorFlow is maintained in the official `https://github.com/ROCm/tensorflow-upstream
<https://github.com/ROCm/tensorflow-upstream>`__ repository, which differs from the
`https://github.com/tensorflow/tensorflow <https://github.com/tensorflow/tensorflow>`__ upstream repository.
- To get started and install TensorFlow on ROCm, use the prebuilt :ref:`Docker images <tensorflow-docker-compat>`,
which include ROCm, TensorFlow, and all required dependencies.
- See the :doc:`ROCm TensorFlow installation guide <rocm-install-on-linux:install/3rd-party/tensorflow-install>`
for installation and setup instructions.
- You can also consult the `TensorFlow API versions <https://www.tensorflow.org/versions>`__ list
for additional context.
Version support
--------------------------------------------------------------------------------
The `official TensorFlow repository <http://github.com/tensorflow/tensorflow>`__
includes full ROCm support. AMD maintains a TensorFlow `ROCm repository
<http://github.com/rocm/tensorflow-upstream>`__ in order to quickly add bug
fixes, updates, and support for the latest ROCM versions.
- ROCm TensorFlow release:
- Offers :ref:`Docker images <tensorflow-docker-compat>` with
ROCm and TensorFlow pre-installed.
- ROCm TensorFlow repository: `<https://github.com/ROCm/tensorflow-upstream>`__
- See the :doc:`ROCm TensorFlow installation guide <rocm-install-on-linux:install/3rd-party/tensorflow-install>`
to get started.
- Official TensorFlow release:
- Official TensorFlow repository: `<https://github.com/tensorflow/tensorflow>`__
- See the `TensorFlow API versions <https://www.tensorflow.org/versions>`__ list.
.. note::
The official TensorFlow documentation does not cover ROCm support. Use the
ROCm documentation for installation instructions for Tensorflow on ROCm.
See :doc:`rocm-install-on-linux:install/3rd-party/tensorflow-install`.
fixes, updates, and support for the latest ROCm versions.
.. _tensorflow-docker-compat:
@@ -140,7 +136,7 @@ The following section maps supported data types and GPU-accelerated TensorFlow
features to their minimum supported ROCm and TensorFlow versions.
Data types
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
-----------------
The data type of a tensor is specified using the ``dtype`` attribute or
argument, and TensorFlow supports a wide range of data types for different use
@@ -258,7 +254,7 @@ are as follows:
- 1.7
Features
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
-----------------
This table provides an overview of key features in TensorFlow and their
availability in ROCm.
@@ -350,7 +346,7 @@ availability in ROCm.
- 1.9.2
Distributed library features
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
-------------------------------------
Enables developers to scale computations across multiple devices on a single machine or
across multiple machines.

View File

@@ -2,7 +2,7 @@
.. meta::
:description: verl compatibility
:keywords: GPU, verl compatibility
:keywords: GPU, verl, deep learning, framework compatibility
.. version-set:: rocm_version latest
@@ -10,24 +10,58 @@
verl compatibility
*******************************************************************************
Volcano Engine Reinforcement Learning for LLMs (verl) is a reinforcement learning framework designed for large language models (LLMs).
verl offers a scalable, open-source fine-tuning solution optimized for AMD Instinct GPUs with full ROCm support.
Volcano Engine Reinforcement Learning for LLMs (`verl <https://verl.readthedocs.io/en/latest/>`__)
is a reinforcement learning framework designed for large language models (LLMs).
verl offers a scalable, open-source fine-tuning solution by using a hybrid programming model
that makes it easy to define and run complex post-training dataflows efficiently.
* See the `verl documentation <https://verl.readthedocs.io/en/latest/>`_ for more information about verl.
* The official verl GitHub repository is `https://github.com/volcengine/verl <https://github.com/volcengine/verl>`_.
* Use the AMD-validated :ref:`Docker images <verl-docker-compat>` with ROCm and verl preinstalled.
* See the :doc:`ROCm verl installation guide <rocm-install-on-linux:install/3rd-party/verl-install>` to install and get started.
Its modular APIs separate computation from data, allowing smooth integration with other frameworks.
It also supports flexible model placement across GPUs for efficient scaling on different cluster sizes.
verl achieves high training and generation throughput by building on existing LLM frameworks.
Its 3D-HybridEngine reduces memory use and communication overhead when switching between training
and inference, improving overall performance.
.. note::
Support overview
================================================================================
verl is supported on ROCm 6.2.0.
- The ROCm-supported version of verl is maintained in the official `https://github.com/ROCm/verl
<https://github.com/ROCm/verl>`__ repository, which differs from the
`https://github.com/volcengine/verl <https://github.com/volcengine/verl>`__ upstream repository.
- To get started and install verl on ROCm, use the prebuilt :ref:`Docker image <verl-docker-compat>`,
which includes ROCm, verl, and all required dependencies.
- See the :doc:`ROCm verl installation guide <rocm-install-on-linux:install/3rd-party/verl-install>`
for installation and setup instructions.
- You can also consult the upstream `verl documentation <https://verl.readthedocs.io/en/latest/>`__
for additional context.
Version support
--------------------------------------------------------------------------------
verl is supported on `ROCm 6.2.0 <https://repo.radeon.com/rocm/apt/6.2/>`__.
Supported devices
--------------------------------------------------------------------------------
**Officially Supported**: AMD Instinct™ MI300X
.. _verl-recommendations:
Use cases and recommendations
================================================================================
The benefits of verl in large-scale reinforcement learning from human feedback (RLHF) are discussed in the `Reinforcement Learning from Human Feedback on AMD GPUs with verl and ROCm Integration <https://rocm.blogs.amd.com/artificial-intelligence/verl-large-scale/README.html>`_ blog.
* The benefits of verl in large-scale reinforcement learning from human feedback
(RLHF) are discussed in the `Reinforcement Learning from Human Feedback on AMD
GPUs with verl and ROCm Integration <https://rocm.blogs.amd.com/artificial-intelligence/verl-large-scale/README.html>`__
blog. The blog post outlines how the Volcano Engine Reinforcement Learning
(verl) framework integrates with the AMD ROCm platform to optimize training on
Instinct™ MI300X GPUs. The guide details the process of building a Docker image,
setting up single-node and multi-node training environments, and highlights
performance benchmarks demonstrating improved throughput and convergence accuracy.
This resource serves as a comprehensive starting point for deploying verl on AMD GPUs,
facilitating efficient RLHF training workflows.
.. _verl-supported_features:
@@ -61,8 +95,10 @@ Docker image compatibility
<i class="fab fa-docker"></i>
AMD validates and publishes ready-made `ROCm verl Docker images <https://hub.docker.com/r/rocm/verl/tags>`_
with ROCm backends on Docker Hub. The following Docker image tags and associated inventories represent the available verl versions from the official Docker Hub.
AMD validates and publishes ready-made `verl Docker images <https://hub.docker.com/r/rocm/verl/tags>`_
with ROCm backends on Docker Hub. The following Docker image tag and associated inventories
represent the latest verl version from the official Docker Hub.
Click |docker-icon| to view the image on Docker Hub.
.. list-table::
:header-rows: 1

View File

@@ -80,7 +80,7 @@ latex_elements = {
}
html_baseurl = os.environ.get("READTHEDOCS_CANONICAL_URL", "rocm.docs.amd.com")
html_context = {}
html_context = {"docs_header_version": "7.1.0"}
if os.environ.get("READTHEDOCS", "") == "True":
html_context["READTHEDOCS"] = True
@@ -89,15 +89,15 @@ project = "ROCm Documentation"
project_path = os.path.abspath(".").replace("\\", "/")
author = "Advanced Micro Devices, Inc."
copyright = "Copyright (c) 2025 Advanced Micro Devices, Inc. All rights reserved."
version = "7.0.2"
release = "7.0.2"
version = "7.1.0"
release = "7.1.0"
setting_all_article_info = True
all_article_info_os = ["linux", "windows"]
all_article_info_author = ""
# pages with specific settings
article_pages = [
{"file": "about/release-notes", "os": ["linux"], "date": "2025-10-10"},
{"file": "about/release-notes", "os": ["linux"], "date": "2025-10-30"},
{"file": "release/changelog", "os": ["linux"],},
{"file": "compatibility/compatibility-matrix", "os": ["linux"]},
{"file": "compatibility/ml-compatibility/pytorch-compatibility", "os": ["linux"]},
@@ -212,7 +212,7 @@ external_projects_current_project = "rocm"
# external_projects_remote_repository = ""
html_baseurl = os.environ.get("READTHEDOCS_CANONICAL_URL", "https://rocm-stg.amd.com/")
html_context = {}
html_context = {"docs_header_version": "7.1.0"}
if os.environ.get("READTHEDOCS", "") == "True":
html_context["READTHEDOCS"] = True

View File

@@ -0,0 +1,316 @@
dockers:
- pull_tag: rocm/vllm:rocm7.0.0_vllm_0.10.2_20251006
docker_hub_url: https://hub.docker.com/layers/rocm/vllm/rocm7.0.0_vllm_0.10.2_20251006/images/sha256-94fd001964e1cf55c3224a445b1fb5be31a7dac302315255db8422d813edd7f5
components:
ROCm: 7.0.0
vLLM: 0.10.2 (0.11.0rc2.dev160+g790d22168.rocm700)
PyTorch: 2.9.0a0+git1c57644
hipBLASLt: 1.0.0
dockerfile:
commit: 790d22168820507f3105fef29596549378cfe399
model_groups:
- group: Meta Llama
tag: llama
models:
- model: Llama 2 70B
mad_tag: pyt_vllm_llama-2-70b
model_repo: meta-llama/Llama-2-70b-chat-hf
url: https://huggingface.co/meta-llama/Llama-2-70b-chat-hf
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 4096
max_model_len: 4096
- model: Llama 3.1 8B
mad_tag: pyt_vllm_llama-3.1-8b
model_repo: meta-llama/Llama-3.1-8B-Instruct
url: https://huggingface.co/meta-llama/Llama-3.1-8B
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.1 8B FP8
mad_tag: pyt_vllm_llama-3.1-8b_fp8
model_repo: amd/Llama-3.1-8B-Instruct-FP8-KV
url: https://huggingface.co/amd/Llama-3.1-8B-Instruct-FP8-KV
precision: float8
config:
tp: 1
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.1 405B
mad_tag: pyt_vllm_llama-3.1-405b
model_repo: meta-llama/Llama-3.1-405B-Instruct
url: https://huggingface.co/meta-llama/Llama-3.1-405B-Instruct
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.1 405B FP8
mad_tag: pyt_vllm_llama-3.1-405b_fp8
model_repo: amd/Llama-3.1-405B-Instruct-FP8-KV
url: https://huggingface.co/amd/Llama-3.1-405B-Instruct-FP8-KV
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.1 405B MXFP4
mad_tag: pyt_vllm_llama-3.1-405b_fp4
model_repo: amd/Llama-3.1-405B-Instruct-MXFP4-Preview
url: https://huggingface.co/amd/Llama-3.1-405B-Instruct-MXFP4-Preview
precision: float4
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.3 70B
mad_tag: pyt_vllm_llama-3.3-70b
model_repo: meta-llama/Llama-3.3-70B-Instruct
url: https://huggingface.co/meta-llama/Llama-3.3-70B-Instruct
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.3 70B FP8
mad_tag: pyt_vllm_llama-3.3-70b_fp8
model_repo: amd/Llama-3.3-70B-Instruct-FP8-KV
url: https://huggingface.co/amd/Llama-3.3-70B-Instruct-FP8-KV
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 3.3 70B MXFP4
mad_tag: pyt_vllm_llama-3.3-70b_fp4
model_repo: amd/Llama-3.3-70B-Instruct-MXFP4-Preview
url: https://huggingface.co/amd/Llama-3.3-70B-Instruct-MXFP4-Preview
precision: float4
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- model: Llama 4 Scout 17Bx16E
mad_tag: pyt_vllm_llama-4-scout-17b-16e
model_repo: meta-llama/Llama-4-Scout-17B-16E-Instruct
url: https://huggingface.co/meta-llama/Llama-4-Scout-17B-16E-Instruct
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 32768
max_model_len: 8192
- model: Llama 4 Maverick 17Bx128E
mad_tag: pyt_vllm_llama-4-maverick-17b-128e
model_repo: meta-llama/Llama-4-Maverick-17B-128E-Instruct
url: https://huggingface.co/meta-llama/Llama-4-Maverick-17B-128E-Instruct
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 32768
max_model_len: 8192
- model: Llama 4 Maverick 17Bx128E FP8
mad_tag: pyt_vllm_llama-4-maverick-17b-128e_fp8
model_repo: meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8
url: https://huggingface.co/meta-llama/Llama-4-Maverick-17B-128E-Instruct-FP8
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 131072
max_model_len: 8192
- group: DeepSeek
tag: deepseek
models:
- model: DeepSeek R1 0528 FP8
mad_tag: pyt_vllm_deepseek-r1
model_repo: deepseek-ai/DeepSeek-R1-0528
url: https://huggingface.co/deepseek-ai/DeepSeek-R1-0528
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_seqs: 1024
max_num_batched_tokens: 131072
max_model_len: 8192
- group: OpenAI GPT OSS
tag: gpt-oss
models:
- model: GPT OSS 20B
mad_tag: pyt_vllm_gpt-oss-20b
model_repo: openai/gpt-oss-20b
url: https://huggingface.co/openai/gpt-oss-20b
precision: bfloat16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 8192
max_model_len: 8192
- model: GPT OSS 120B
mad_tag: pyt_vllm_gpt-oss-120b
model_repo: openai/gpt-oss-120b
url: https://huggingface.co/openai/gpt-oss-120b
precision: bfloat16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 8192
max_model_len: 8192
- group: Mistral AI
tag: mistral
models:
- model: Mixtral MoE 8x7B
mad_tag: pyt_vllm_mixtral-8x7b
model_repo: mistralai/Mixtral-8x7B-Instruct-v0.1
url: https://huggingface.co/mistralai/Mixtral-8x7B-Instruct-v0.1
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 32768
max_model_len: 8192
- model: Mixtral MoE 8x7B FP8
mad_tag: pyt_vllm_mixtral-8x7b_fp8
model_repo: amd/Mixtral-8x7B-Instruct-v0.1-FP8-KV
url: https://huggingface.co/amd/Mixtral-8x7B-Instruct-v0.1-FP8-KV
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 32768
max_model_len: 8192
- model: Mixtral MoE 8x22B
mad_tag: pyt_vllm_mixtral-8x22b
model_repo: mistralai/Mixtral-8x22B-Instruct-v0.1
url: https://huggingface.co/mistralai/Mixtral-8x22B-Instruct-v0.1
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 65536
max_model_len: 8192
- model: Mixtral MoE 8x22B FP8
mad_tag: pyt_vllm_mixtral-8x22b_fp8
model_repo: amd/Mixtral-8x22B-Instruct-v0.1-FP8-KV
url: https://huggingface.co/amd/Mixtral-8x22B-Instruct-v0.1-FP8-KV
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 65536
max_model_len: 8192
- group: Qwen
tag: qwen
models:
- model: Qwen3 8B
mad_tag: pyt_vllm_qwen3-8b
model_repo: Qwen/Qwen3-8B
url: https://huggingface.co/Qwen/Qwen3-8B
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 40960
max_model_len: 8192
- model: Qwen3 32B
mad_tag: pyt_vllm_qwen3-32b
model_repo: Qwen/Qwen3-32b
url: https://huggingface.co/Qwen/Qwen3-32B
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 40960
max_model_len: 8192
- model: Qwen3 30B A3B
mad_tag: pyt_vllm_qwen3-30b-a3b
model_repo: Qwen/Qwen3-30B-A3B
url: https://huggingface.co/Qwen/Qwen3-30B-A3B
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 40960
max_model_len: 8192
- model: Qwen3 30B A3B FP8
mad_tag: pyt_vllm_qwen3-30b-a3b_fp8
model_repo: Qwen/Qwen3-30B-A3B-FP8
url: https://huggingface.co/Qwen/Qwen3-30B-A3B-FP8
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 40960
max_model_len: 8192
- model: Qwen3 235B A22B
mad_tag: pyt_vllm_qwen3-235b-a22b
model_repo: Qwen/Qwen3-235B-A22B
url: https://huggingface.co/Qwen/Qwen3-235B-A22B
precision: float16
config:
tp: 8
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 40960
max_model_len: 8192
- model: Qwen3 235B A22B FP8
mad_tag: pyt_vllm_qwen3-235b-a22b_fp8
model_repo: Qwen/Qwen3-235B-A22B-FP8
url: https://huggingface.co/Qwen/Qwen3-235B-A22B-FP8
precision: float8
config:
tp: 8
dtype: auto
kv_cache_dtype: fp8
max_num_batched_tokens: 40960
max_model_len: 8192
- group: Microsoft Phi
tag: phi
models:
- model: Phi-4
mad_tag: pyt_vllm_phi-4
model_repo: microsoft/phi-4
url: https://huggingface.co/microsoft/phi-4
precision: float16
config:
tp: 1
dtype: auto
kv_cache_dtype: auto
max_num_batched_tokens: 16384
max_model_len: 8192

View File

@@ -1,13 +1,13 @@
dockers:
- pull_tag: rocm/vllm:rocm7.0.0_vllm_0.10.2_20251006
docker_hub_url: https://hub.docker.com/layers/rocm/vllm/rocm7.0.0_vllm_0.10.2_20251006/images/sha256-94fd001964e1cf55c3224a445b1fb5be31a7dac302315255db8422d813edd7f5
- pull_tag: rocm/vllm:rocm7.0.0_vllm_0.11.1_20251103
docker_hub_url: https://hub.docker.com/layers/rocm/vllm/rocm7.0.0_vllm_0.11.1_20251103/images/sha256-8d60429043d4d00958da46039a1de0d9b82df814d45da482497eef26a6076506
components:
ROCm: 7.0.0
vLLM: 0.10.2 (0.11.0rc2.dev160+g790d22168.rocm700)
vLLM: 0.11.1 (0.11.1rc2.dev141+g38f225c2a.rocm700)
PyTorch: 2.9.0a0+git1c57644
hipBLASLt: 1.0.0
dockerfile:
commit: 790d22168820507f3105fef29596549378cfe399
commit: 38f225c2abeadc04c2cc398814c2f53ea02c3c72
model_groups:
- group: Meta Llama
tag: llama

View File

@@ -84,6 +84,8 @@ The table below summarizes information about ROCm-enabled deep learning framewor
<a href="https://rocm.docs.amd.com/projects/install-on-linux/en/latest/install/3rd-party/dgl-install.html"><i class="fas fa-link fa-lg"></i></a>
-
- `Docker image <https://rocm.docs.amd.com/projects/install-on-linux/en/latest/install/3rd-party/dgl-install.html#use-a-prebuilt-docker-image-with-dgl-pre-installed>`__
- `Wheels package <https://rocm.docs.amd.com/projects/install-on-linux/en/latest/install/3rd-party/dgl-install.html#use-a-wheels-package>`__
- .. raw:: html
<a href="https://github.com/ROCm/dgl"><i class="fab fa-github fa-lg"></i></a>

File diff suppressed because it is too large Load Diff

View File

@@ -15,10 +15,9 @@ using PyTorch. It delves into specific workloads such as
:ref:`model inference <mi300x-vllm-optimization>`, offering strategies to
enhance efficiency.
The following topics highlight :ref:`auto-tunable configurations <mi300x-auto-tune>`
that streamline optimization as well as advanced techniques like
:ref:`Triton kernel optimization <mi300x-triton-kernel-performance-optimization>` for
meticulous tuning.
The following topics highlight :ref:`auto-tunable configurations <mi300x-auto-tune>` as
well as :ref:`Triton kernel optimization <mi300x-triton-kernel-performance-optimization>`
for meticulous tuning.
Workload tuning strategy
========================
@@ -86,27 +85,28 @@ Optimize model inference with vLLM
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
vLLM provides tools and techniques specifically designed for efficient model
inference on AMD Instinct MI300X GPUs. See :ref:`fine-tuning-llms-vllm`
for installation guidance. Optimizing performance with vLLM
involves configuring tensor parallelism, leveraging advanced features, and
ensuring efficient execution. Heres how to optimize vLLM performance:
inference on AMD Instinct GPUs. See the official `vLLM installation docs
<https://docs.vllm.ai/en/latest/getting_started/installation/gpu.html>`__ for
installation guidance. Optimizing performance with vLLM involves configuring
tensor parallelism, leveraging advanced features, and ensuring efficient
execution.
* Tensor parallelism: Configure the
:ref:`tensor-parallel-size parameter <mi300x-vllm-multiple-gpus>` to distribute
tensor computations across multiple GPUs. Adjust parameters such as
``batch-size``, ``input-len``, and ``output-len`` based on your workload.
* Configuration for vLLM: Set :ref:`parameters <mi300x-vllm-optimization>`
according to workload requirements. Benchmark performance to understand
characteristics and identify bottlenecks.
* Configuration for vLLM: Set engine arguments according to workload
requirements.
* Benchmarking and performance metrics: Measure latency and throughput to
evaluate performance.
.. seealso::
See :doc:`vllm-optimization` to learn more about vLLM performance
optimization techniques.
.. _mi300x-auto-tune:
Auto-tunable configurations
^^^^^^^^^^^^^^^^^^^^^^^^^^^
Auto-tunable configurations can significantly streamline performance
optimization by automatically adjusting parameters based on workload
characteristics. For example:
@@ -120,8 +120,7 @@ characteristics. For example:
your specific hardware.
* Triton: Use :ref:`Tritons auto-tuning features <mi300x-autotunable-kernel-config>`
to explore various kernel configurations and automatically select the
best-performing ones.
to explore various kernel configurations and select the best-performing ones.
Manual tuning
^^^^^^^^^^^^^
@@ -328,380 +327,21 @@ hardware counters are also included.
ROCm Systems Profiler timeline trace example.
.. _mi300x-vllm-optimization:
vLLM performance optimization
=============================
vLLM is a high-throughput and memory efficient inference and serving engine for large language models that has gained traction in the AI community for
its performance and ease of use. See :ref:`fine-tuning-llms-vllm` for a primer on vLLM with ROCm.
Performance environment variables
---------------------------------
The following performance tips are not *specific* to vLLM -- they are general
but relevant in this context. You can tune the following vLLM parameters to
achieve optimal request latency and throughput performance.
* As described in `Environment variables (MI300X)
<https://instinct.docs.amd.com/projects/amdgpu-docs/en/latest/system-optimization/mi300x.html#environment-variables>`_,
the environment variable ``HIP_FORCE_DEV_KERNARG`` can improve vLLM
performance. Set it to ``export HIP_FORCE_DEV_KERNARG=1``.
* Set the :ref:`RCCL environment variable <mi300x-rccl>` ``NCCL_MIN_NCHANNELS``
to ``112`` to increase the number of channels on MI300X to potentially improve
performance.
* Set the environment variable ``TORCH_BLAS_PREFER_HIPBLASLT=1`` to use hipBLASLt to improve performance.
Auto-tuning using PyTorch TunableOp
------------------------------------
Since vLLM is based on the PyTorch framework, PyTorch TunableOp can be used for auto-tuning.
You can run auto-tuning with TunableOp in two simple steps without modifying your code:
* Enable TunableOp and tuning. Optionally, enable verbose mode:
.. code-block:: shell
PYTORCH_TUNABLEOP_ENABLED=1 PYTORCH_TUNABLEOP_VERBOSE=1 your_vllm_script.sh
* Enable TunableOp and disable tuning and measure.
.. code-block:: shell
PYTORCH_TUNABLEOP_ENABLED=1 PYTORCH_TUNABLEOP_TUNING=0 your_vllm_script.sh
Learn more about TunableOp in the :ref:`PyTorch TunableOp <mi300x-tunableop>` section.
Performance tuning based on vLLM engine configurations
-------------------------------------------------------
The following subsections describe vLLM-specific configurations for performance tuning.
You can tune the following vLLM parameters to achieve optimal performance.
* ``tensor_parallel_size``
* ``gpu_memory_utilization``
* ``dtype``
* ``enforce_eager``
* ``kv_cache_dtype``
* ``input_len``
* ``output_len``
* ``max_num_seqs``
* ``num_scheduler_steps``
* ``max_model_len``
* ``enable_chunked_prefill``
* ``distributed_executor_backend``
* ``max_seq_len_to_capture``
Refer to `vLLM documentation <https://docs.vllm.ai/en/latest/models/performance.html>`_
for additional performance tips. :ref:`fine-tuning-llms-vllm` describes vLLM
usage with ROCm.
ROCm provides a prebuilt optimized Docker image for validating the performance
of LLM inference with vLLM on MI300X Series GPUs. The Docker image includes
ROCm, vLLM, and PyTorch. For more information, see
:doc:`/how-to/rocm-for-ai/inference/benchmark-docker/vllm`.
.. _mi300x-vllm-throughput-measurement:
Evaluating performance by throughput measurement
-------------------------------------------------
This tuning guide evaluates the performance of LLM inference workloads by measuring throughput in tokens per second (TPS). Throughput can be assessed using both real-world and synthetic data, depending on your evaluation goals.
Refer to the benchmarking script located at ``benchmarks/benchmark_throughput.py`` in the `vLLM repository <https://github.com/ROCm/vllm/blob/main/benchmarks/benchmark_throughput.py>`_.
Use this script to measure throughput effectively. You can assess throughput using real-world and synthetic data, depending on your evaluation goals.
* For realistic performance evaluation, you can use datasets like Hugging Face's
``ShareGPT_V3_unfiltered_cleaned_split.json``. This dataset includes real-world conversational
data, making it a good representation of typical use cases for language models. Download it using
the following command:
.. code-block:: shell
wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/ShareGPT_V3_unfiltered_cleaned_split.json
* For standardized benchmarking, you can set fixed input and output token
lengths. Synthetic prompts provide consistent benchmarking runs, making it
easier to compare performance across different models or configurations.
Additionally, a controlled environment simplifies analysis.
By balancing real-world data and synthetic data approaches, you can get a well-rounded understanding of model performance in varied scenarios.
.. _mi300x-vllm-single-node:
Maximizing vLLM instances on a single node
------------------------------------------
The general guideline is to maximize per-node throughput by running as many vLLM instances as possible.
However, running too many instances might lead to insufficient memory for the KV-cache, which can affect performance.
The Instinct MI300X GPU is equipped with 192 GB of HBM3 memory capacity and bandwidth.
For models that fit in one GPU -- to maximize the accumulated throughput -- you can run as many as eight vLLM instances
simultaneously on one MI300X node (with eight GPUs). To do so, use the GPU isolation environment
variable ``CUDA_VISIBLE_DEVICES``.
For example, this script runs eight instances of vLLM for throughput benchmarking at the same time
with a model that can fit in one GPU:
.. code-block:: shell
for i in $(seq 0 7);
do
CUDA_VISIBLE_DEVICES="$i" python3 /app/vllm/benchmarks/benchmark_throughput.py -tp 1 --dataset "/path/to/dataset/ShareGPT_V3_unfiltered_cleaned_split.json" --model /path/to/model &
done
The total throughput achieved by running ``N`` instances of vLLM is generally much higher than running a
single vLLM instance across ``N`` GPUs simultaneously (that is, configuring ``tensor_parallel_size`` as N or
using the ``-tp`` N option, where ``1 < N ≤ 8``).
vLLM on MI300X GPUs can run a variety of model weights, including Llama 2 (7b, 13b, 70b), Llama 3 (8b, 70b), Qwen2 (7b, 72b), Mixtral-8x7b, Mixtral-8x22b, and so on.
Notable configurations include Llama2-70b and Llama3-70b models on a single MI300X GPU, and the Llama3.1 405b model can fit on one single node with 8 MI300X GPUs.
.. _mi300x-vllm-gpu-memory-utilization:
Configure the gpu_memory_utilization parameter
----------------------------------------------
There are two ways to increase throughput by configuring ``gpu-memory-utilization`` parameter.
1. Increase ``gpu-memory-utilization`` to improve the throughput for a single instance as long as
it does not incur HIP or CUDA Out Of Memory. The default ``gpu-memory-utilization`` is 0.9.
You can set it to ``>0.9`` and ``<1``.
For example, below benchmarking command set the ``gpu-memory-utilization`` as 0.98, or 98%.
.. code-block:: shell
/vllm-workspace/benchmarks/benchmark_throughput.py --gpu-memory-utilization 0.98 --input-len 1024 --output-len 128 --model /path/to/model
2. Decrease ``gpu-memory-utilization`` to maximize the number of vLLM instances on the same GPU.
Specify GPU memory utilization to run as many instances of vLLM as possible on a single
GPU. However, too many instances can result in no memory for KV-cache. For small models, run
multiple instances of vLLM on the same GPU by specifying a smaller ``gpu-memory-utilization`` -- as
long as it would not cause HIP Out Of Memory.
For example, run two instances of the Llama3-8b model at the same time on a single GPU by specifying
``--gpu-memory-utilization`` to 0.4 (40%) as follows (on GPU ``0``):
.. code-block:: shell
CUDA_VISIBLE_DEVICES=0 python3 /vllm-workspace/benchmarks/benchmark_throughput.py --gpu-memory-utilization 0.4
--dataset "/path/to/dataset/ShareGPT_V3_unfiltered_cleaned_split.json" --model /path/to/model &
CUDA_VISIBLE_DEVICES=0 python3 /vllm-workspace/benchmarks/benchmark_throughput.py --gpu-memory-utilization 0.4
--dataset "/path/to/dataset/ShareGPT_V3_unfiltered_cleaned_split.json" --model /path/to/model &
See :ref:`vllm-engine-args` for other performance suggestions.
.. _mi300x-vllm-multiple-gpus:
Run vLLM on multiple GPUs
-------------------------
The two main reasons to use multiple GPUs are:
* The model size is too big to run vLLM using one GPU as it results HIP Out of Memory.
* To achieve better latency when using a single GPU is not desirable.
To run one vLLM instance on multiple GPUs, use the ``-tp`` or ``--tensor-parallel-size`` option to
specify multiple GPUs. Optionally, use the ``CUDA_VISIBLE_DEVICES`` environment variable to specify
the GPUs.
For example, you can use two GPUs to start an API server on port 8000:
.. code-block:: shell
python -m vllm.entrypoints.api_server --model /path/to/model --dtype
float16 -tp 2 --port 8000 &
To achieve both latency and throughput performance for serving, you can run multiple API servers on
different GPUs by specifying different ports for each server and use ``CUDA_VISIBLE_DEVICES`` to
specify the GPUs for each server, for example:
.. code-block:: shell
CUDA_VISIBLE_DEVICES=0,1 python -m vllm.entrypoints.api_server --model
/path/to/model --dtype float16 -tp 2 --port 8000 &
CUDA_VISIBLE_DEVICES=2,3 python -m vllm.entrypoints.api_server --model
/path/to/model --dtype float16 -tp 2 --port 8001 &
Choose an attention backend
---------------------------
vLLM on ROCm supports two attention backends, each suitable for different use cases and performance
requirements:
- **Triton Flash Attention** - For benchmarking, run vLLM scripts at
least once as a warm-up step so Triton can perform auto-tuning before
collecting benchmarking numbers. This is the default setting.
- **Composable Kernel (CK) Flash Attention** - To use CK Flash Attention, specify
the environment variable as ``export VLLM_USE_TRITON_FLASH_ATTN=0``.
Refer to :ref:`Model acceleration libraries <acceleration-flash-attention>`
to learn more about Flash Attention with Triton or CK backends.
.. _vllm-engine-args:
vLLM engine arguments
---------------------
The following are configuration suggestions to potentially improve performance with vLLM. See
`vLLM's engine arguments documentation <https://docs.vllm.ai/en/latest/serving/engine_args.html>`_
for a full list of configurable engine arguments.
Configure the max-num-seqs parameter
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
Increase the ``max-num-seqs`` parameter from the default ``256`` to ``512`` (``--max-num-seqs
512``). This increases the maximum number of sequences per iteration and can improve throughput.
Use the float16 dtype
^^^^^^^^^^^^^^^^^^^^^
The default data type (``dtype``) is specified in the models configuration file. For instance, some models use ``torch.bfloat16`` as their default ``dtype``.
Use float16 (``--dtype float16``) for better performance.
Multi-step scheduling
^^^^^^^^^^^^^^^^^^^^^
Setting ``num-scheduler-steps`` for multi-step scheduling can increase performance. Set it between 10 to 15 (``--num-scheduler-steps 10``).
Distributed executor backend
^^^^^^^^^^^^^^^^^^^^^^^^^^^^
The vLLM supports two modes of distributed executor backend: ``ray`` and ``mp``. When using the `<https://github.com/ROCm/vllm>`__ fork, using the ``mp``
backend (``--distributed_executor_backend mp``) is recommended.
Graph mode max-seq-len-to-capture
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
Maximum sequence length covered by CUDA graphs. In the default mode (where ``enforce_eager`` is ``False``), when a sequence has context length
larger than this, vLLM engine falls back to eager mode. The default is 8192.
When working with models that support long context lengths, set the parameter ``--max-seq-len-to-capture`` to 16384.
See this `vLLM blog <https://blog.vllm.ai/2024/10/23/vllm-serving-amd.html>`__ for details.
An example of long context length model is Qwen2-7b.
Whether to enable chunked prefill
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
Another vLLM performance tip is to enable chunked prefill to improve
throughput. Chunked prefill allows large prefills to be chunked into
smaller chunks and batched together with decode requests.
You can enable the feature by specifying ``--enable-chunked-prefill`` in the
command line or setting ``enable_chunked_prefill=True`` in the LLM
constructor. 
As stated in `vLLM's documentation, <https://docs.vllm.ai/en/latest/models/performance.html#chunked-prefill>`__,
you can tune the performance by changing ``max_num_batched_tokens``. By
default, it is set to 512 and optimized for ITL (inter-token latency).
Smaller ``max_num_batched_tokens`` achieves better ITL because there are
fewer prefills interrupting decodes.
Higher ``max_num_batched_tokens`` achieves better TTFT (time to the first
token) as you can put more prefill to the batch.
You might experience noticeable throughput improvements when
benchmarking on a single GPU or 8 GPUs using the vLLM throughput
benchmarking script along with the ShareGPT dataset as input.
In the case of fixed ``input-len``/``output-len``, for some configurations,
enabling chunked prefill increases the throughput. For some other
configurations, the throughput may be worse and elicit a need to tune
parameter ``max_num_batched_tokens`` (for example, increasing ``max_num_batched_tokens`` value to 4096 or larger).
.. note::
Chunked prefill is no longer recommended. See the vLLM blog: `Serving LLMs on AMD MI300X: Best Practices <https://blog.vllm.ai/2024/10/23/vllm-serving-amd.html>`_ (October 2024).
Quantization support
---------------------
Quantization reduces the precision of the models weights and activations, which significantly decreases the memory footprint.
``fp8(w8a8)`` and ``AWQ`` quantization are supported for ROCm.
FP8 quantization
^^^^^^^^^^^^^^^^^
`<https://github.com/ROCm/vllm>`__ supports FP8 (8-bit floating point) weight and activation quantization using hardware acceleration on the Instinct MI300X.
Quantization of models with FP8 allows for a 2x reduction in model memory requirements and up to a 1.6x improvement in throughput with minimal impact on accuracy.
AMD publishes Quark Quantized OCP FP8 models on Hugging Face. For example:
* `Llama-3.1-8B-Instruct-FP8-KV <https://huggingface.co/amd/Llama-3.1-8B-Instruct-FP8-KV>`__
* `Llama-3.1-70B-Instruct-FP8-KV <https://huggingface.co/amd/Llama-3.1-70B-Instruct-FP8-KV>`__
* `Llama-3.1-405B-Instruct-FP8-KV <https://huggingface.co/amd/Llama-3.1-405B-Instruct-FP8-KV>`__
* `Mixtral-8x7B-Instruct-v0.1-FP8-KV <https://huggingface.co/amd/Mixtral-8x7B-Instruct-v0.1-FP8-KV>`__
* `Mixtral-8x22B-Instruct-v0.1-FP8-KV <https://huggingface.co/amd/Mixtral-8x22B-Instruct-v0.1-FP8-KV>`__
To enable vLLM benchmarking to run on fp8 quantized models, use the ``--quantization`` parameter with value ``fp8`` (``--quantization fp8``).
AWQ quantization
^^^^^^^^^^^^^^^^
You can quantize your own models by installing AutoAWQ or picking one of the 400+ models on Hugging Face. Be aware that
that AWQ support in vLLM is currently underoptimized.
To enable vLLM to run on ``awq`` quantized models, using ``--quantization`` parameter with ``awq`` (``--quantization awq``).
You can find more specifics in the `vLLM AutoAWQ documentation <https://docs.vllm.ai/en/stable/quantization/auto_awq.html>`_.
fp8 kv-cached-dtype
^^^^^^^^^^^^^^^^^^^^^^^
Using ``fp8 kv-cache dtype`` can improve performance as it reduces the size
of ``kv-cache``. As a result, it reduces the cost required for reading and
writing the ``kv-cache``.
To use this feature, specify ``--kv-cache-dtype`` as ``fp8``.
To specify the quantization scaling config, use the
``--quantization-param-path`` parameter. If the parameter is not specified,
the default scaling factor of ``1`` is used, which can lead to less accurate
results. To generate ``kv-cache`` scaling JSON file, see `FP8 KV
Cache <https://github.com/vllm-project/llm-compressor/blob/main/examples/quantization_kv_cache/README.md>`__
in the vLLM GitHub repository.
Two sample Llama scaling configuration files are in vLLM for ``llama2-70b`` and
``llama2-7b``.
If building the vLLM using
`Dockerfile.rocm <https://github.com/vllm-project/vllm/blob/main/docker/Dockerfile.rocm>`_
for ``llama2-70b`` scale config, find the file at
``/vllm-workspace/tests/fp8_kv/llama2-70b-fp8-kv/kv_cache_scales.json`` at
runtime.
Below is a sample command to run benchmarking with this feature enabled
for the ``llama2-70b`` model:
.. code-block:: shell
python3 /vllm-workspace/benchmarks/benchmark_throughput.py --model \
/path/to/llama2-70b-model --kv-cache-dtype "fp8" \
--quantization-param-path \
"/vllm-workspace/tests/fp8_kv/llama2-70b-fp8-kv/kv_cache_scales.json" \
--input-len 512 --output-len 256 --num-prompts 500
vLLM is a high-throughput and memory efficient inference and serving engine for
large language models that has gained traction in the AI community for its
performance and ease of use. See :doc:`vllm-optimization`, where you'll learn
how to:
* Enable AITER (AI Tensor Engine for ROCm) to speed up on LLM models.
* Configure environment variables for optimal HIP, RCCL, and Quick Reduce performance.
* Select the right attention backend for your workload (AITER MHA/MLA vs. Triton).
* Choose parallelism strategies (tensor, pipeline, data, expert) for multi-GPU deployments.
* Apply quantization (``FP8``/``FP4``) to reduce memory usage by 2-4× with minimal accuracy loss.
* Tune engine arguments (batch size, memory utilization, graph modes) for your use case.
* Benchmark and scale across single-node and multi-node configurations.
.. _mi300x-tunableop:
@@ -946,33 +586,33 @@ for details.
.. code-block:: shell
HIP_FORCE_DEV_KERNARG=1  hipblaslt-bench --alpha 1 --beta 0 -r f16_r \
HIP_FORCE_DEV_KERNARG=1 hipblaslt-bench --alpha 1 --beta 0 -r f16_r \
--a_type f16_r --b_type f8_r --compute_type f32_f16_r \
--initialization trig_float  --cold_iters 100 --iters 1000 --rotating 256
--initialization trig_float --cold_iters 100 --iters 1000 --rotating 256
* Example 2: Benchmark forward epilogues and backward epilogues
* ``HIPBLASLT_EPILOGUE_RELU: "--activation_type relu";``
* ``HIPBLASLT_EPILOGUE_RELU: "--activation_type relu";``
* ``HIPBLASLT_EPILOGUE_BIAS: "--bias_vector";``
* ``HIPBLASLT_EPILOGUE_BIAS: "--bias_vector";``
* ``HIPBLASLT_EPILOGUE_RELU_BIAS: "--activation_type relu --bias_vector";``
* ``HIPBLASLT_EPILOGUE_RELU_BIAS: "--activation_type relu --bias_vector";``
* ``HIPBLASLT_EPILOGUE_GELU: "--activation_type gelu";``
* ``HIPBLASLT_EPILOGUE_GELU: "--activation_type gelu";``
* ``HIPBLASLT_EPILOGUE_DGELU": --activation_type gelu --gradient";``
* ``HIPBLASLT_EPILOGUE_GELU_BIAS: "--activation_type gelu --bias_vector";``
* ``HIPBLASLT_EPILOGUE_GELU_BIAS: "--activation_type gelu --bias_vector";``
* ``HIPBLASLT_EPILOGUE_GELU_AUX: "--activation_type gelu --use_e";``
* ``HIPBLASLT_EPILOGUE_GELU_AUX: "--activation_type gelu --use_e";``
* ``HIPBLASLT_EPILOGUE_GELU_AUX_BIAS: "--activation_type gelu --bias_vector --use_e";``
* ``HIPBLASLT_EPILOGUE_GELU_AUX_BIAS: "--activation_type gelu --bias_vector --use_e";``
* ``HIPBLASLT_EPILOGUE_DGELU_BGRAD: "--activation_type gelu --bias_vector --gradient";``
* ``HIPBLASLT_EPILOGUE_DGELU_BGRAD: "--activation_type gelu --bias_vector --gradient";``
* ``HIPBLASLT_EPILOGUE_BGRADA: "--bias_vector --gradient --bias_source a";``
* ``HIPBLASLT_EPILOGUE_BGRADA: "--bias_vector --gradient --bias_source a";``
* ``HIPBLASLT_EPILOGUE_BGRADB:  "--bias_vector --gradient --bias_source b";``
* ``HIPBLASLT_EPILOGUE_BGRADB: "--bias_vector --gradient --bias_source b";``
hipBLASLt auto-tuning using hipblaslt-bench
@@ -1031,26 +671,26 @@ The tuning tool is a two-step tool. It first runs the benchmark, then it creates
.. code-block:: python
defaultBenchOptions = {"ProblemType": {
    "TransposeA": 0,
    "TransposeB": 0,
    "ComputeInputDataType": "s",
    "ComputeDataType": "s",
    "DataTypeC": "s",
    "DataTypeD": "s",
    "UseBias": False
}, "TestConfig": {
    "ColdIter": 20,
    "Iter": 100,
    "AlgoMethod": "all",
    "RequestedSolutions": 2, # Only works in AlgoMethod heuristic
    "SolutionIndex": None, # Only works in AlgoMethod index
    "ApiMethod": "cpp",
    "RotatingBuffer": 0,
}, "TuningParameters": {
    "SplitK": [0]
}, "ProblemSizes": []}
defaultCreateLogicOptions = {}  # Currently unused
defaultBenchOptions = {"ProblemType": {
"TransposeA": 0,
"TransposeB": 0,
"ComputeInputDataType": "s",
"ComputeDataType": "s",
"DataTypeC": "s",
"DataTypeD": "s",
"UseBias": False
}, "TestConfig": {
"ColdIter": 20,
"Iter": 100,
"AlgoMethod": "all",
"RequestedSolutions": 2, # Only works in AlgoMethod heuristic
"SolutionIndex": None, # Only works in AlgoMethod index
"ApiMethod": "cpp",
"RotatingBuffer": 0,
}, "TuningParameters": {
"SplitK": [0]
}, "ProblemSizes": []}
defaultCreateLogicOptions = {} # Currently unused
* ``TestConfig``
1. ``ColdIter``: This is number the warm-up iterations before starting the kernel benchmark.
@@ -1230,7 +870,7 @@ command:
.. code-block:: shell
merge.py original_dir new_tuned_yaml_dir output_dir 
merge.py original_dir new_tuned_yaml_dir output_dir
The following table describes the logic YAML files.
@@ -1833,7 +1473,7 @@ de-quantize the ``int4`` key-value from the ``int4`` data type to ``fp16``.
From the IR snippet, you can see ``i32`` data is loaded from global memory to
registers (``%190``). With a few element-wise operations in registers, it is
stored in shared memory (``%269``) for the transpose operation (``%270``), which
stored in shared memory (``%269``) for the transpose operation (``%270``), which
needs data movement across different threads. With the transpose done, it is
loaded from LDS to register again (``%276``), and with a few more
element-wise operations, it is stored to LDS again (``%298``). The last step
@@ -1967,7 +1607,7 @@ something similar to the following:
loaded at: [0x7fd4f100c000-0x7fd4f100e070]
The kernel name and the code object file should be listed. In the
example above, the kernel name is vector_add_assert_trap, but this might
example above, the kernel name is vector_add_assert_trap, but this might
also look like:
.. code-block:: text
@@ -2081,3 +1721,8 @@ Hardware efficiency is maximized with 4 or fewer HIP streams. These environment
configuration to two compute streams and two RCCL streams, aligning with this best practice.
Additionally, RCCL is often pre-optimized for MI300 systems in production by querying the node
topology during startup, reducing the need for extensive manual tuning.
Further reading
===============
* :doc:`vllm-optimization`

View File

@@ -0,0 +1,482 @@
:orphan:
.. meta::
:description: Learn how to validate LLM inference performance on MI300X GPUs using AMD MAD and the ROCm vLLM Docker image.
:keywords: model, MAD, automation, dashboarding, validate
**********************************
vLLM inference performance testing
**********************************
.. caution::
This documentation does not reflect the latest version of ROCm vLLM
inference performance documentation. See :doc:`../vllm` for the latest version.
.. _vllm-benchmark-unified-docker-930:
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/previous-versions/vllm_0.10.1_20251006-benchmark-models.yaml
{% set docker = data.dockers[0] %}
The `ROCm vLLM Docker <{{ docker.docker_hub_url }}>`_ image offers a
prebuilt, optimized environment for validating large language model (LLM)
inference performance on AMD Instinct™ MI355X, MI350X, MI325X and MI300X
GPUs. This ROCm vLLM Docker image integrates vLLM and PyTorch tailored
specifically for AMD data center GPUs and includes the following components:
.. tab-set::
.. tab-item:: {{ docker.pull_tag }}
.. list-table::
:header-rows: 1
* - Software component
- Version
{% for component_name, component_version in docker.components.items() %}
* - {{ component_name }}
- {{ component_version }}
{% endfor %}
With this Docker image, you can quickly test the :ref:`expected
inference performance numbers <vllm-benchmark-performance-measurements-930>` for
AMD Instinct GPUs.
What's new
==========
The following is summary of notable changes since the :doc:`previous ROCm/vLLM Docker release <vllm-history>`.
* Added support for AMD Instinct MI355X and MI350X GPUs.
* Added support and benchmarking instructions for the following models. See :ref:`vllm-benchmark-supported-models-930`.
* Llama 4 Scout and Maverick
* DeepSeek R1 0528 FP8
* MXFP4 models (MI355X and MI350X only): Llama 3.3 70B MXFP4 and Llama 3.1 405B MXFP4
* GPT OSS 20B and 120B
* Qwen 3 32B, 30B-A3B, and 235B-A22B
* Removed the deprecated ``--max-seq-len-to-capture`` flag.
* ``--gpu-memory-utilization`` is now configurable via the `configuration files
<https://github.com/ROCm/MAD/tree/develop/scripts/vllm/configs>`__ in the MAD
repository.
.. _vllm-benchmark-supported-models-930:
Supported models
================
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/previous-versions/vllm_0.10.1_20251006-benchmark-models.yaml
{% set docker = data.dockers[0] %}
{% set model_groups = data.model_groups %}
.. _vllm-benchmark-available-models-930:
The following models are supported for inference performance benchmarking
with vLLM and ROCm. Some instructions, commands, and recommendations in this
documentation might vary by model -- select one to get started. MXFP4 models
are only supported on MI355X and MI350X GPUs.
.. raw:: html
<div id="vllm-benchmark-ud-params-picker" class="container-fluid">
<div class="row gx-0">
<div class="col-2 me-1 px-2 model-param-head">Model</div>
<div class="row col-10 pe-0">
{% for model_group in model_groups %}
<div class="col-4 px-2 model-param" data-param-k="model-group" data-param-v="{{ model_group.tag }}" tabindex="0">{{ model_group.group }}</div>
{% endfor %}
</div>
</div>
<div class="row gx-0 pt-1">
<div class="col-2 me-1 px-2 model-param-head">Variant</div>
<div class="row col-10 pe-0">
{% for model_group in model_groups %}
{% set models = model_group.models %}
{% for model in models %}
{% if models|length % 3 == 0 %}
<div class="col-4 px-2 model-param" data-param-k="model" data-param-v="{{ model.mad_tag }}" data-param-group="{{ model_group.tag }}" tabindex="0">{{ model.model }}</div>
{% else %}
<div class="col-6 px-2 model-param" data-param-k="model" data-param-v="{{ model.mad_tag }}" data-param-group="{{ model_group.tag }}" tabindex="0">{{ model.model }}</div>
{% endif %}
{% endfor %}
{% endfor %}
</div>
</div>
</div>
.. _vllm-benchmark-vllm-930:
{% for model_group in model_groups %}
{% for model in model_group.models %}
.. container:: model-doc {{ model.mad_tag }}
{% if model.precision == "float4" %}
.. important::
MXFP4 is supported only on MI355X and MI350X GPUs.
{% endif %}
.. note::
See the `{{ model.model }} model card on Hugging Face <{{ model.url }}>`_ to learn more about your selected model.
Some models require access authorization prior to use via an external license agreement through a third party.
{% if model.precision == "float8" and model.model_repo.startswith("amd") %}
This model uses FP8 quantization via `AMD Quark <https://quark.docs.amd.com/latest/>`__ for efficient inference on AMD GPUs.
{% endif %}
{% if model.precision == "float4" and model.model_repo.startswith("amd") %}
This model uses FP4 quantization via `AMD Quark <https://quark.docs.amd.com/latest/>`__ for efficient inference on AMD GPUs.
{% endif %}
{% endfor %}
{% endfor %}
.. _vllm-benchmark-performance-measurements-930:
Performance measurements
========================
To evaluate performance, the
`Performance results with AMD ROCm software <https://www.amd.com/en/developer/resources/rocm-hub/dev-ai/performance-results.html>`_
page provides reference throughput and serving measurements for inferencing popular AI models.
.. important::
The performance data presented in
`Performance results with AMD ROCm software <https://www.amd.com/en/developer/resources/rocm-hub/dev-ai/performance-results.html>`_
only reflects the latest version of this inference benchmarking environment.
The listed measurements should not be interpreted as the peak performance achievable by AMD Instinct GPUs or ROCm software.
System validation
=================
Before running AI workloads, it's important to validate that your AMD hardware is configured
correctly and performing optimally.
If you have already validated your system settings, including aspects like NUMA auto-balancing, you
can skip this step. Otherwise, complete the procedures in the :ref:`System validation and
optimization <rocm-for-ai-system-optimization>` guide to properly configure your system settings
before starting training.
To test for optimal performance, consult the recommended :ref:`System health benchmarks
<rocm-for-ai-system-health-bench>`. This suite of tests will help you verify and fine-tune your
system's configuration.
Pull the Docker image
=====================
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/previous-versions/vllm_0.10.1_20251006-benchmark-models.yaml
{% set docker = data.dockers[0] %}
Download the `ROCm vLLM Docker image <{{ docker.docker_hub_url }}>`_.
Use the following command to pull the Docker image from Docker Hub.
.. code-block:: shell
docker pull {{ docker.pull_tag }}
Benchmarking
============
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/previous-versions/vllm_0.10.1_20251006-benchmark-models.yaml
{% set docker = data.dockers[0] %}
{% set model_groups = data.model_groups %}
Once the setup is complete, choose between two options to reproduce the
benchmark results:
.. _vllm-benchmark-mad-930:
{% for model_group in model_groups %}
{% for model in model_group.models %}
.. container:: model-doc {{model.mad_tag}}
.. tab-set::
.. tab-item:: MAD-integrated benchmarking
The following run command is tailored to {{ model.model }}.
See :ref:`vllm-benchmark-supported-models-930` to switch to another available model.
1. Clone the ROCm Model Automation and Dashboarding (`<https://github.com/ROCm/MAD>`__) repository to a local
directory and install the required packages on the host machine.
.. code-block:: shell
git clone https://github.com/ROCm/MAD
cd MAD
pip install -r requirements.txt
2. On the host machine, use this command to run the performance benchmark test on
the `{{model.model}} <{{ model.url }}>`_ model using one node with the
:literal:`{{model.precision}}` data type.
.. code-block:: shell
export MAD_SECRETS_HFTOKEN="your personal Hugging Face token to access gated models"
madengine run \
--tags {{model.mad_tag}} \
--keep-model-dir \
--live-output
MAD launches a Docker container with the name
``container_ci-{{model.mad_tag}}``. The throughput and serving reports of the
model are collected in the following paths: ``{{ model.mad_tag }}_throughput.csv``
and ``{{ model.mad_tag }}_serving.csv``.
Although the :ref:`available models
<vllm-benchmark-available-models-930>` are preconfigured to collect
offline throughput and online serving performance data, you can
also change the benchmarking parameters. See the standalone
benchmarking tab for more information.
{% if model.tunableop %}
.. note::
For improved performance, consider enabling :ref:`PyTorch TunableOp <mi300x-tunableop>`.
TunableOp automatically explores different implementations and configurations of certain PyTorch
operators to find the fastest one for your hardware.
By default, ``{{model.mad_tag}}`` runs with TunableOp disabled (see
`<https://github.com/ROCm/MAD/blob/develop/models.json>`__). To enable it, include
the ``--tunableop on`` argument in your run.
Enabling TunableOp triggers a two-pass run -- a warm-up followed by the
performance-collection run.
{% endif %}
.. tab-item:: Standalone benchmarking
The following commands are optimized for {{ model.model }}.
See :ref:`vllm-benchmark-supported-models-930` to switch to another available model.
.. seealso::
For more information on configuration, see the `config files
<https://github.com/ROCm/MAD/tree/develop/scripts/vllm/configs>`__
in the MAD repository. Refer to the `vLLM engine <https://docs.vllm.ai/en/latest/configuration/engine_args.html#engineargs>`__
for descriptions of available configuration options
and `Benchmarking vLLM <https://github.com/vllm-project/vllm/blob/main/benchmarks/README.md>`__ for
additional benchmarking information.
.. rubric:: Launch the container
You can run the vLLM benchmark tool independently by starting the
`Docker container <{{ docker.docker_hub_url }}>`_ as shown
in the following snippet.
.. code-block:: shell
docker pull {{ docker.pull_tag }}
docker run -it \
--device=/dev/kfd \
--device=/dev/dri \
--group-add video \
--shm-size 16G \
--security-opt seccomp=unconfined \
--security-opt apparmor=unconfined \
--cap-add=SYS_PTRACE \
-v $(pwd):/workspace \
--env HUGGINGFACE_HUB_CACHE=/workspace \
--name test \
{{ docker.pull_tag }}
.. rubric:: Throughput command
Use the following command to start the throughput benchmark.
.. code-block:: shell
model={{ model.model_repo }}
tp={{ model.config.tp }}
num_prompts={{ model.config.num_prompts | default(1024) }}
in={{ model.config.in | default(128) }}
out={{ model.config.in | default(128) }}
dtype={{ model.config.dtype | default("auto") }}
kv_cache_dtype={{ model.config.kv_cache_dtype }}
max_num_seqs={{ model.config.max_num_seqs | default(1024) }}
max_num_batched_tokens={{ model.config.max_num_batched_tokens }}
max_model_len={{ model.config.max_model_len }}
vllm bench throughput --model $model \
-tp $tp \
--num-prompts $num_prompts \
--input-len $in \
--output-len $out \
--dtype $dtype \
--kv-cache-dtype $kv_cache_dtype \
--max-num-seqs $max_num_seqs \
--max-num-batched-tokens $max_num_batched_tokens \
--max-model-len $max_model_len \
--trust-remote-code \
--output-json ${model}_throughput.json \
--gpu-memory-utilization {{ model.config.gpu_memory_utilization | default(0.9) }}
.. rubric:: Serving command
1. Start the server using the following command:
.. code-block:: shell
model={{ model.model_repo }}
tp={{ model.config.tp }}
dtype={{ model.config.dtype }}
kv_cache_dtype={{ model.config.kv_cache_dtype }}
max_num_seqs=256
max_num_batched_tokens={{ model.config.max_num_batched_tokens }}
max_model_len={{ model.config.max_model_len }}
vllm serve $model \
-tp $tp \
--dtype $dtype \
--kv-cache-dtype $kv_cache_dtype \
--max-num-seqs $max_num_seqs \
--max-num-batched-tokens $max_num_batched_tokens \
--max-model-len $max_model_len \
--no-enable-prefix-caching \
--swap-space 16 \
--disable-log-requests \
--trust-remote-code \
--gpu-memory-utilization 0.9
Wait until the model has loaded and the server is ready to accept requests.
2. On another terminal on the same machine, run the benchmark:
.. code-block:: shell
# Connect to the container
docker exec -it test bash
# Wait for the server to start
until curl -s http://localhost:8000/v1/models; do sleep 30; done
# Run the benchmark
model={{ model.model_repo }}
max_concurrency=1
num_prompts=10
in=128
out=128
vllm bench serve --model $model \
--percentile-metrics "ttft,tpot,itl,e2el" \
--dataset-name random \
--ignore-eos \
--max-concurrency $max_concurrency \
--num-prompts $num_prompts \
--random-input-len $in \
--random-output-len $out \
--trust-remote-code \
--save-result \
--result-filename ${model}_serving.json
.. note::
For improved performance with certain Mixture of Experts models, such as Mixtral 8x22B,
try adding ``export VLLM_ROCM_USE_AITER=1`` to your commands.
If you encounter the following error, pass your access-authorized Hugging
Face token to the gated models.
.. code-block::
OSError: You are trying to access a gated repo.
# pass your HF_TOKEN
export HF_TOKEN=$your_personal_hf_token
.. raw:: html
<style>
mjx-container[jax="CHTML"][display="true"] {
text-align: left;
margin: 0;
}
</style>
.. note::
Throughput is calculated as:
- .. math:: throughput\_tot = requests \times (\mathsf{\text{input lengths}} + \mathsf{\text{output lengths}}) / elapsed\_time
- .. math:: throughput\_gen = requests \times \mathsf{\text{output lengths}} / elapsed\_time
{% endfor %}
{% endfor %}
Advanced usage
==============
For information on experimental features and known issues related to ROCm optimization efforts on vLLM,
see the developer's guide at `<https://github.com/ROCm/vllm/blob/documentation/docs/dev-docker/README.md>`__.
Reproducing the Docker image
----------------------------
To reproduce this ROCm-enabled vLLM Docker image release, follow these steps:
1. Clone the `vLLM repository <https://github.com/vllm-project/vllm>`__.
.. code-block:: shell
git clone https://github.com/vllm-project/vllm.git
cd vllm
2. Use the following command to build the image directly from the specified commit.
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/previous-versions/vllm_0.10.1_20251006-benchmark-models.yaml
{% set docker = data.dockers[0] %}
.. code-block:: shell
docker build -f docker/Dockerfile.rocm \
--build-arg REMOTE_VLLM=1 \
--build-arg VLLM_REPO=https://github.com/ROCm/vllm \
--build-arg VLLM_BRANCH="{{ docker.dockerfile.commit }}" \
-t vllm-rocm .
.. tip::
Replace ``vllm-rocm`` with your desired image tag.
Further reading
===============
- To learn more about the options for latency and throughput benchmark scripts,
see `<https://github.com/ROCm/vllm/tree/main/benchmarks>`_.
- To learn more about MAD and the ``madengine`` CLI, see the `MAD usage guide <https://github.com/ROCm/MAD?tab=readme-ov-file#usage-guide>`__.
- To learn more about system settings and management practices to configure your system for
AMD Instinct MI300X Series GPUs, see `AMD Instinct MI300X system optimization <https://instinct.docs.amd.com/projects/amdgpu-docs/en/latest/system-optimization/mi300x.html>`_.
- See :ref:`fine-tuning-llms-vllm` and :ref:`mi300x-vllm-optimization` for
a brief introduction to vLLM and optimization strategies.
- For application performance optimization strategies for HPC and AI workloads,
including inference with vLLM, see :doc:`/how-to/rocm-for-ai/inference-optimization/workload`.
- For a list of other ready-made Docker images for AI with ROCm, see
`AMD Infinity Hub <https://www.amd.com/en/developer/resources/infinity-hub.html#f-amd_hub_category=AI%20%26%20ML%20Models>`_.
Previous versions
=================
See :doc:`vllm-history` to find documentation for previous releases
of the ``ROCm/vllm`` Docker image.

View File

@@ -16,14 +16,23 @@ previous releases of the ``ROCm/vllm`` Docker image on `Docker Hub <https://hub.
- Components
- Resources
* - ``rocm/vllm:rocm7.0.0_vllm_0.10.2_20251006``
* - ``rocm/vllm:rocm7.0.0_vllm_0.11.1_20251024``
(latest)
-
* ROCm 7.0.0
* vLLM 0.11.1
* PyTorch 2.9.0
-
* :doc:`Documentation <../vllm>`
* `Docker Hub <https://hub.docker.com/layers/rocm/vllm/rocm7.0.0_vllm_0.10.2_20251006/images/sha256-94fd001964e1cf55c3224a445b1fb5be31a7dac302315255db8422d813edd7f5>`__
* - ``rocm/vllm:rocm7.0.0_vllm_0.10.2_20251006``
-
* ROCm 7.0.0
* vLLM 0.10.2
* PyTorch 2.9.0
-
* :doc:`Documentation <../vllm>`
* :doc:`Documentation <vllm-0.10.2-20251006>`
* `Docker Hub <https://hub.docker.com/layers/rocm/vllm/rocm7.0.0_vllm_0.10.2_20251006/images/sha256-94fd001964e1cf55c3224a445b1fb5be31a7dac302315255db8422d813edd7f5>`__
* - ``rocm/vllm:rocm6.4.1_vllm_0.10.1_20250909``

View File

@@ -6,7 +6,7 @@
vLLM inference performance testing
**********************************
.. _vllm-benchmark-unified-docker-930:
.. _vllm-benchmark-unified-docker-1024:
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/inference/vllm-benchmark-models.yaml
@@ -34,7 +34,7 @@ vLLM inference performance testing
{% endfor %}
With this Docker image, you can quickly test the :ref:`expected
inference performance numbers <vllm-benchmark-performance-measurements-930>` for
inference performance numbers <vllm-benchmark-performance-measurements-1024>` for
AMD Instinct GPUs.
What's new
@@ -42,27 +42,13 @@ What's new
The following is summary of notable changes since the :doc:`previous ROCm/vLLM Docker release <previous-versions/vllm-history>`.
* Added support for AMD Instinct MI355X and MI350X GPUs.
* Enabled :ref:`AITER <vllm-optimization-aiter-switches>` by default.
* Added support and benchmarking instructions for the following models. See :ref:`vllm-benchmark-supported-models-930`.
* Fixed ``rms_norm`` segfault issue with Qwen 3 235B.
* Llama 4 Scout and Maverick
* Known performance degradation on Llama 4 models due to `an upstream vLLM issue <https://github.com/vllm-project/vllm/issues/26320>`_.
* DeepSeek R1 0528 FP8
* MXFP4 models (MI355X and MI350X only): Llama 3.3 70B MXFP4 and Llama 3.1 405B MXFP4
* GPT OSS 20B and 120B
* Qwen 3 32B, 30B-A3B, and 235B-A22B
* Removed the deprecated ``--max-seq-len-to-capture`` flag.
* ``--gpu-memory-utilization`` is now configurable via the `configuration files
<https://github.com/ROCm/MAD/tree/develop/scripts/vllm/configs>`__ in the MAD
repository.
.. _vllm-benchmark-supported-models-930:
.. _vllm-benchmark-supported-models-1024:
Supported models
================
@@ -72,7 +58,7 @@ Supported models
{% set docker = data.dockers[0] %}
{% set model_groups = data.model_groups %}
.. _vllm-benchmark-available-models-930:
.. _vllm-benchmark-available-models-1024:
The following models are supported for inference performance benchmarking
with vLLM and ROCm. Some instructions, commands, and recommendations in this
@@ -108,7 +94,7 @@ Supported models
</div>
</div>
.. _vllm-benchmark-vllm-930:
.. _vllm-benchmark-vllm-1024:
{% for model_group in model_groups %}
{% for model in model_group.models %}
@@ -136,7 +122,7 @@ Supported models
{% endfor %}
{% endfor %}
.. _vllm-benchmark-performance-measurements-930:
.. _vllm-benchmark-performance-measurements-1024:
Performance measurements
========================
@@ -192,7 +178,7 @@ Benchmarking
Once the setup is complete, choose between two options to reproduce the
benchmark results:
.. _vllm-benchmark-mad-930:
.. _vllm-benchmark-mad-1024:
{% for model_group in model_groups %}
{% for model in model_group.models %}
@@ -204,7 +190,7 @@ Benchmarking
.. tab-item:: MAD-integrated benchmarking
The following run command is tailored to {{ model.model }}.
See :ref:`vllm-benchmark-supported-models-930` to switch to another available model.
See :ref:`vllm-benchmark-supported-models-1024` to switch to another available model.
1. Clone the ROCm Model Automation and Dashboarding (`<https://github.com/ROCm/MAD>`__) repository to a local
directory and install the required packages on the host machine.
@@ -233,7 +219,7 @@ Benchmarking
and ``{{ model.mad_tag }}_serving.csv``.
Although the :ref:`available models
<vllm-benchmark-available-models-930>` are preconfigured to collect
<vllm-benchmark-available-models-1024>` are preconfigured to collect
offline throughput and online serving performance data, you can
also change the benchmarking parameters. See the standalone
benchmarking tab for more information.
@@ -258,7 +244,7 @@ Benchmarking
.. tab-item:: Standalone benchmarking
The following commands are optimized for {{ model.model }}.
See :ref:`vllm-benchmark-supported-models-930` to switch to another available model.
See :ref:`vllm-benchmark-supported-models-1024` to switch to another available model.
.. seealso::
@@ -419,6 +405,10 @@ Advanced usage
For information on experimental features and known issues related to ROCm optimization efforts on vLLM,
see the developer's guide at `<https://github.com/ROCm/vllm/blob/documentation/docs/dev-docker/README.md>`__.
.. note::
If youre using this Docker image on other AMD GPUs such as the AMD Instinct MI200 Series or Radeon, add ``export VLLM_ROCM_USE_AITER=0`` to your command, since AITER is only supported on gfx942 and gfx950 architectures.
Reproducing the Docker image
----------------------------

View File

@@ -22,7 +22,7 @@ See the `GitHub repository <https://github.com/vllm-project/vllm>`_ and `officia
<https://docs.vllm.ai/>`_ for more information.
For guidance on using vLLM with ROCm, refer to `Installation with ROCm
<https://docs.vllm.ai/en/latest/getting_started/amd-installation.html>`_.
<https://docs.vllm.ai/en/stable/getting_started/installation/gpu.html#amd-rocm>`__.
vLLM installation
-----------------

View File

@@ -92,7 +92,7 @@ GPUs, which can impact end-to-end latency.
.. _healthcheck-install-transferbench:
1. To get started, use the instructions in the `TransferBench documentation
<https://rocm.docs.amd.com/projects/TransferBench/en/latest/install/install.html#install-transferbench>`_
<https://rocm.docs.amd.com/projects/TransferBench/en/latest/install/install.html#install-transferbench>`__
or use the following commands:
.. code:: shell
@@ -102,5 +102,5 @@ GPUs, which can impact end-to-end latency.
CC=hipcc make
2. Run the suggested TransferBench tests -- see `TransferBench benchmarking
<https://instinct.docs.amd.com/projects/system-acceptance/en/latest/mi300x/performance-bench.html#transferbench-benchmarking-results>`_
<https://instinct.docs.amd.com/projects/system-acceptance/en/latest/common/system-validation.html#transferbench>`__
in the Instinct performance benchmarking documentation for instructions.

View File

@@ -14,7 +14,7 @@ Training a model with Megatron-LM on ROCm
<https://hub.docker.com/r/rocm/megatron-lm/>`__ Docker Hub registry will be
deprecated soon in favor of `rocm/primus <https://hub.docker.com/r/rocm/primus>`__.
The ``rocm/primus`` Docker containers will cover PyTorch training ecosystem frameworks,
including Megatron-LM, `torchtitan, and torchtune <primus-pytorch>`__.
including Megatron-LM and :doc:`torchtitan <primus-pytorch>`.
Primus with Megatron is designed to replace this ROCm Megatron-LM training workflow.
To learn how to migrate workloads from Megatron-LM to Primus with Megatron,

View File

@@ -18,7 +18,7 @@ model training. Performance acceleration is powered by `Primus Turbo
<https://hub.docker.com/r/rocm/megatron-lm/>`__ Docker Hub registry will be
deprecated soon in favor of `rocm/primus <https://hub.docker.com/r/rocm/primus>`__.
The ``rocm/primus`` Docker containers will cover PyTorch training ecosystem frameworks,
including Megatron-LM, `torchtitan, and torchtune <primus-pytorch>`__.
including Megatron-LM and :doc:`torchtitan <primus-pytorch>`.
Primus with Megatron is designed to replace the :doc:`ROCm Megatron-LM
training <megatron-lm>` workflow. To learn how to migrate workloads from
@@ -183,7 +183,7 @@ Configuration
=============
Primus defines a training configuration in YAML for each model in
`examples/megatron/configs <https://github.com/AMD-AGI/rss/tree/e16b27bf6c1b2798f38848fc574fee60d9a9b902/examples/megatron/configs>`__.
`examples/megatron/configs <https://github.com/AMD-AGI/Primus/tree/e16b27bf6c1b2798f38848fc574fee60d9a9b902/examples/megatron/configs>`__.
.. datatemplate:yaml:: /data/how-to/rocm-for-ai/training/primus-megatron-benchmark-models.yaml

View File

@@ -17,7 +17,7 @@ Primus now supports the PyTorch torchtitan backend.
<https://hub.docker.com/r/rocm/pytorch-training/>`__ Docker Hub registry will be
deprecated soon in favor of `rocm/primus <https://hub.docker.com/r/rocm/primus>`__.
The ``rocm/primus`` Docker containers will cover PyTorch training ecosystem frameworks,
including `Megatron-LM <primus-megatron>`__, torchtitan, and torchtune.
including torchtitan and :doc:`Megatron-LM <primus-megatron>`.
Primus with the PyTorch torchtitan backend is designed to replace the
:doc:`ROCm PyTorch training <pytorch-training>` workflow. See

View File

@@ -14,7 +14,7 @@ Training a model with PyTorch on ROCm
<https://hub.docker.com/r/rocm/pytorch-training/>`__ Docker Hub registry will be
deprecated soon in favor of `rocm/primus <https://hub.docker.com/r/rocm/primus>`__.
The ``rocm/primus`` Docker containers will cover PyTorch training ecosystem frameworks,
including `Megatron-LM <primus-megatron>`__, torchtitan, and torchtune.
including torchtitan and :doc:`Megatron-LM <primus-megatron>`.
See :doc:`primus-pytorch` for details.

View File

@@ -46,7 +46,7 @@ In DDP training, each process or worker owns a replica of the model and processe
See the following developer blogs for more in-depth explanations and examples.
* `Multi GPU training with DDP — PyTorch Tutorials <https://pytorch.org/tutorials/beginner/ddp_Series_multigpu.html>`_
* `Multi GPU training with DDP — PyTorch Tutorials <https://docs.pytorch.org/tutorials/beginner/ddp_series_multigpu.html>`__
* `Building a decoder transformer model on AMD GPUs — ROCm Blogs
<https://rocm.blogs.amd.com/artificial-intelligence/decoder-transformer/README.html#distributed-training-on-multiple-gpus>`_

View File

@@ -10,6 +10,7 @@
| Version | Release date |
| ------- | ------------ |
| [7.1.0](https://rocm.docs.amd.com/en/docs-7.1.0/) | October 30, 2025 |
| [7.0.2](https://rocm.docs.amd.com/en/docs-7.0.2/) | October 10, 2025 |
| [7.0.1](https://rocm.docs.amd.com/en/docs-7.0.1/) | September 17, 2025 |
| [7.0.0](https://rocm.docs.amd.com/en/docs-7.0.0/) | September 16, 2025 |

View File

@@ -134,6 +134,8 @@ subtrees:
title: Profile and debug
- file: how-to/rocm-for-ai/inference-optimization/workload.rst
title: Workload optimization
- file: how-to/rocm-for-ai/inference-optimization/vllm-optimization.rst
title: vLLM V1 performance optimization
- url: https://rocm.docs.amd.com/projects/ai-developer-hub/en/latest/
title: AI tutorials

View File

@@ -1,4 +1,4 @@
rocm-docs-core==1.26.0
rocm-docs-core==1.29.0
sphinx-reredirects
sphinx-sitemap
sphinxcontrib.datatemplates==0.11.0

View File

@@ -2,7 +2,7 @@
# This file is autogenerated by pip-compile with Python 3.10
# by the following command:
#
# pip-compile docs/sphinx/requirements.in
# pip-compile requirements.in
#
accessible-pygments==0.0.5
# via pydata-sphinx-theme
@@ -29,7 +29,7 @@ cffi==2.0.0
# via
# cryptography
# pynacl
charset-normalizer==3.4.3
charset-normalizer==3.4.4
# via requests
click==8.3.0
# via
@@ -37,7 +37,7 @@ click==8.3.0
# sphinx-external-toc
comm==0.2.3
# via ipykernel
cryptography==46.0.2
cryptography==46.0.3
# via pyjwt
debugpy==1.8.17
# via ipykernel
@@ -64,7 +64,7 @@ gitpython==3.1.45
# via rocm-docs-core
greenlet==3.2.4
# via sqlalchemy
idna==3.10
idna==3.11
# via requests
imagesize==1.4.1
# via sphinx
@@ -72,7 +72,7 @@ importlib-metadata==8.7.0
# via
# jupyter-cache
# myst-nb
ipykernel==6.30.1
ipykernel==7.1.0
# via myst-nb
ipython==8.37.0
# via
@@ -94,7 +94,7 @@ jupyter-client==8.6.3
# via
# ipykernel
# nbclient
jupyter-core==5.8.1
jupyter-core==5.9.1
# via
# ipykernel
# jupyter-client
@@ -106,7 +106,7 @@ markdown-it-py==3.0.0
# myst-parser
markupsafe==3.0.3
# via jinja2
matplotlib-inline==0.1.7
matplotlib-inline==0.2.1
# via
# ipykernel
# ipython
@@ -137,11 +137,11 @@ parso==0.8.5
# via jedi
pexpect==4.9.0
# via ipython
platformdirs==4.4.0
platformdirs==4.5.0
# via jupyter-core
prompt-toolkit==3.0.52
# via ipython
psutil==7.1.0
psutil==7.1.3
# via ipykernel
ptyprocess==0.7.0
# via pexpect
@@ -163,7 +163,7 @@ pygments==2.19.2
# sphinx
pyjwt[crypto]==2.10.1
# via pygithub
pynacl==1.6.0
pynacl==1.6.1
# via pygithub
python-dateutil==2.9.0.post0
# via jupyter-client
@@ -179,7 +179,7 @@ pyzmq==27.1.0
# via
# ipykernel
# jupyter-client
referencing==0.36.2
referencing==0.37.0
# via
# jsonschema
# jsonschema-specifications
@@ -187,9 +187,9 @@ requests==2.32.5
# via
# pygithub
# sphinx
rocm-docs-core==1.26.0
# via -r docs/sphinx/requirements.in
rpds-py==0.27.1
rocm-docs-core==1.29.0
# via -r requirements.in
rpds-py==0.28.0
# via
# jsonschema
# referencing
@@ -230,13 +230,13 @@ sphinx-last-updated-by-git==0.3.8
sphinx-notfound-page==1.1.0
# via rocm-docs-core
sphinx-reredirects==0.1.6
# via -r docs/sphinx/requirements.in
# via -r requirements.in
sphinx-sitemap==2.9.0
# via -r docs/sphinx/requirements.in
# via -r requirements.in
sphinxcontrib-applehelp==2.0.0
# via sphinx
sphinxcontrib-datatemplates==0.11.0
# via -r docs/sphinx/requirements.in
# via -r requirements.in
sphinxcontrib-devhelp==2.0.0
# via sphinx
sphinxcontrib-htmlhelp==2.1.0
@@ -249,13 +249,13 @@ sphinxcontrib-runcmd==0.2.0
# via sphinxcontrib-datatemplates
sphinxcontrib-serializinghtml==2.0.0
# via sphinx
sqlalchemy==2.0.43
sqlalchemy==2.0.44
# via jupyter-cache
stack-data==0.6.3
# via ipython
tabulate==0.9.0
# via jupyter-cache
tomli==2.2.1
tomli==2.3.0
# via sphinx
tornado==6.5.2
# via

View File

@@ -0,0 +1,57 @@
<?xml version="1.0" encoding="UTF-8"?>
<manifest>
<remote name="rocm-org" fetch="https://github.com/ROCm/" />
<default revision="refs/tags/rocm-7.1.0"
remote="rocm-org"
sync-c="true"
sync-j="4" />
<!--list of projects for ROCm-->
<project name="ROCK-Kernel-Driver" />
<project name="amdsmi" />
<project name="rocm_bandwidth_test" />
<project name="rocm-examples" />
<!--HIP Projects-->
<project name="HIPIFY" />
<!-- The following projects are all associated with the AMDGPU LLVM compiler -->
<project name="half" />
<project name="llvm-project" />
<project name="spirv-llvm-translator" />
<!-- gdb projects -->
<project name="ROCdbgapi" />
<project name="ROCgdb" />
<project name="rocr_debug_agent" />
<!-- ROCm Libraries -->
<project groups="mathlibs" name="AMDMIGraphX" />
<project groups="mathlibs" name="MIVisionX" />
<project groups="mathlibs" name="ROCmValidationSuite" />
<project groups="mathlibs" name="composable_kernel" />
<project groups="mathlibs" name="hipTensor" />
<project groups="mathlibs" name="hipfort" />
<project groups="mathlibs" name="rccl" />
<project groups="mathlibs" name="rocAL" />
<project groups="mathlibs" name="rocALUTION" />
<project groups="mathlibs" name="rocDecode" />
<project groups="mathlibs" name="rocJPEG" />
<!-- The following components have been migrated to rocm-libraries:
hipBLAS-common hipBLAS hipBLASLt hipCUB
hipFFT hipRAND hipSPARSE hipSPARSELt
MIOpen rocBLAS rocFFT rocPRIM rocRAND
rocSPARSE rocThrust Tensile -->
<project groups="mathlibs" name="rocm-libraries" />
<!-- The following components have been migrated to rocm-systems:
aqlprofile clr hip hip-tests hipother
rdc rocm-core rocm_smi_lib rocminfo rocprofiler-compute
rocprofiler-register rocprofiler-sdk rocprofiler-systems
rocprofiler rocr-runtime roctracer -->
<project groups="mathlibs" name="rocm-systems" />
<project groups="mathlibs" name="rocPyDecode" />
<project groups="mathlibs" name="rocSHMEM" />
<project groups="mathlibs" name="rocWMMA" />
<project groups="mathlibs" name="rocm-cmake" />
<project groups="mathlibs" name="rpp" />
<project groups="mathlibs" name="TransferBench" />
<!-- Projects for OpenMP-Extras -->
<project name="aomp" path="openmp-extras/aomp" />
<project name="aomp-extras" path="openmp-extras/aomp-extras" />
<project name="flang" path="openmp-extras/flang" />
</manifest>

View File

@@ -0,0 +1,60 @@
<?xml version="1.0" encoding="UTF-8"?>
<manifest>
<remote name="rocm-org" fetch="https://github.com/ROCm/" />
<default revision="refs/tags/rocm-7.1.1"
remote="rocm-org"
sync-c="true"
sync-j="4" />
<!--list of projects for ROCm-->
<project name="ROCK-Kernel-Driver" />
<project name="amdsmi" />
<project name="rocm_bandwidth_test" />
<project name="rocm-examples" />
<!--HIP Projects-->
<project name="HIPIFY" />
<!-- The following projects are all associated with the AMDGPU LLVM compiler -->
<project name="half" />
<project name="llvm-project" />
<project name="spirv-llvm-translator" />
<!-- gdb projects -->
<project name="ROCdbgapi" />
<project name="ROCgdb" />
<project name="rocr_debug_agent" />
<!-- ROCm Libraries -->
<project groups="mathlibs" name="AMDMIGraphX" />
<project groups="mathlibs" name="MIVisionX" />
<project groups="mathlibs" name="ROCmValidationSuite" />
<project groups="mathlibs" name="composable_kernel" />
<project groups="mathlibs" name="hipSOLVER" />
<project groups="mathlibs" name="hipTensor" />
<project groups="mathlibs" name="hipTensor" />
<project groups="mathlibs" name="hipfort" />
<project groups="mathlibs" name="rccl" />
<project groups="mathlibs" name="rocAL" />
<project groups="mathlibs" name="rocALUTION" />
<project groups="mathlibs" name="rocDecode" />
<project groups="mathlibs" name="rocJPEG" />
<!-- The following components have been migrated to rocm-libraries:
hipBLAS-common hipBLAS hipBLASLt hipCUB
hipFFT hipRAND hipSPARSE hipSPARSELt
MIOpen rocBLAS rocFFT rocPRIM rocRAND
rocSPARSE rocThrust Tensile -->
<project groups="mathlibs" name="rocm-libraries" />
<!-- The following components have been migrated to rocm-systems:
aqlprofile clr hip hip-tests hipother
rdc rocm-core rocm_smi_lib rocminfo rocprofiler-compute
rocprofiler-register rocprofiler-sdk rocprofiler-systems
rocprofiler rocr-runtime roctracer -->
<project groups="mathlibs" name="rocm-systems" />
<project groups="mathlibs" name="rocPyDecode" />
<project groups="mathlibs" name="rocSHMEM" />
<project groups="mathlibs" name="rocSOLVER" />
<project groups="mathlibs" name="rocWMMA" />
<project groups="mathlibs" name="rocm-cmake" />
<project groups="mathlibs" name="rpp" />
<project groups="mathlibs" name="TransferBench" />
<!-- Projects for OpenMP-Extras -->
<project name="aomp" path="openmp-extras/aomp" />
<project name="aomp-extras" path="openmp-extras/aomp-extras" />
<project name="flang" path="openmp-extras/flang" />
</manifest>