Changelog for
python311-torch-devel-2.3.1-150600.1.2.x86_64.rpm :
* Thu Aug 29 2024 gyeeAATTsuse.com- Enable sle15_python_module_pythons.- GCC 9.3 or newer is required, regardless if CUDA is enabled. See https://github.com/pytorch/pytorch/blob/v2.3.1/CMakeLists.txt#L48 Therefore, for SLE15 we went with GCC 11 as it seems to be the most common one.- Use %gcc_version macro for Tumbleweed.
* Thu Jul 11 2024 cgollAATTsuse.com- update to 2.3.1 with following summarized highlights:
* from 2.0.x: - torch.compile is the main API for PyTorch 2.0, which wraps your model and returns a compiled model. It is a fully additive (and optional) feature and hence 2.0 is 100% backward compatible by definition - Accelerated Transformers introduce high-performance support for training and inference using a custom kernel architecture for scaled dot product attention (SPDA). The API is integrated with torch.compile() and model developers may also use the scaled dot product attention kernels directly by calling the new scaled_dot_product_attention() operato
* from 2.1.x: - automatic dynamic shape support in torch.compile, torch.distributed.checkpoint for saving/loading distributed training jobs on multiple ranks in parallel, and torch.compile support for the NumPy API. - In addition, this release offers numerous performance improvements (e.g. CPU inductor improvements, AVX512 support, scaled-dot-product-attention support) as well as a prototype release of torch.export, a sound full-graph capture mechanism, and torch.export-based quantization.
* from 2.2.x: - 2x performance improvements to scaled_dot_product_attention via FlashAttention-v2 integration, as well as AOTInductor, a new ahead-of-time compilation and deployment tool built for non-python server-side deployments.
* from 2.3.x: - support for user-defined Triton kernels in torch.compile, allowing for users to migrate their own Triton kernels from eager without experiencing performance complications or graph breaks. As well, Tensor Parallelism improves the experience for training Large Language Models using native PyTorch functions, which has been validated on training runs for 100B parameter models.- added seperate openmpi4 build- added sepetate vulcan build, although this functions isn\'t exposed to python abi- For the obs build all the vendored sources follow the pattern NAME-7digitcommit.tar.gz and not the NAME-COMMIT.tar.gz- added following patches:
* skip-third-party-check.patch
* fix-setup.patch- removed patches:
* pytorch-rm-some-gitmodules.patch
* fix-call-of-onnxInitGraph.patch
* Thu Jul 22 2021 guillaume.gardetAATTopensuse.org- Fix build on x86_64 by using GCC10 instead of GCC11 https://github.com/google/XNNPACK/issues/1550
* Thu Jul 22 2021 guillaume.gardetAATTopensuse.org- Update to 1.9.0- Release notes: https://github.com/pytorch/pytorch/releases/tag/v1.9.0- Drop upstreamed patch:
* fix-mov-operand-for-gcc.patch- Drop unneeded patches:
* removed-peachpy-depedency.patch- Refresh patches:
* skip-third-party-check.patch
* fix-call-of-onnxInitGraph.patch- Add new patch:
* pytorch-rm-some-gitmodules.patch
* Thu Jul 22 2021 guillaume.gardetAATTopensuse.org- Add _service file to ease future update of deps
* Thu Jul 22 2021 guillaume.gardetAATTopensuse.org- Update sleef to fix build on aarch64
* Fri Apr 23 2021 mceplAATTsuse.com- Don\'t build python36-
* package (missing pandas)
* Thu Jan 21 2021 codeAATTbnavigator.de- Fix python-rpm-macros usage
* Wed Oct 07 2020 guillaume.gardetAATTopensuse.org- Use GCC9 to build on aarch64 Tumbleweed to workaround SVE problem with GCC10 with sleef, see: https://github.com/pytorch/pytorch/issues/45971
* Thu Aug 20 2020 mliskaAATTsuse.cz- Use memoryperjob constraint instead of %limit_build macro.
* Tue Jun 23 2020 cgollAATTsuse.com- updated to new stable release 1.5.1 which has following changes: This release includes several major new API additions and improvements. These include new APIs for autograd allowing for easy computation of hessians and jacobians, a significant update to the C++ frontend, ‘channels last’ memory format for more performant computer vision models, a stable release of the distributed RPC framework used for model parallel training, and a new API that allows for the creation of Custom C++ Classes that was inspired by PyBind. Additionally torch_xla 1.5 is now available and tested with the PyTorch 1.5 release providing a mature Cloud TPU experience.
* see release.html for detailed information- added patches:
* fix-call-of-onnxInitGraph.patch for API mismatch in onnx
* fix-mov-operand-for-gcc.patch for aarch64 operands- removed sources:
* cpuinfo-89fe1695edf9ee14c22f815f24bac45577a4f135.tar.gz
* gloo-7c541247a6fa49e5938e304ab93b6da661823d0f.tar.gz
* onnx-fea8568cac61a482ed208748fdc0e1a8e47f62f5.tar.gz
* psimd-90a938f30ba414ada2f4b00674ee9631d7d85e19.tar.gz
* pthreadpool-13da0b4c21d17f94150713366420baaf1b5a46f4.tar.gz- added sources:
* cpuinfo-0e6bde92b343c5fbcfe34ecd41abf9515d54b4a7.tar.gz
* gloo-113bde13035594cafdca247be953610b53026553.tar.gz
* onnx-9fdae4c68960a2d44cd1cc871c74a6a9d469fa1f.tar.gz
* psimd-10b4ffc6ea9e2e11668f86969586f88bc82aaefa.tar.gz
* pthreadpool-d465747660ecf9ebbaddf8c3db37e4a13d0c9103.tar.gz
* Tue Jun 23 2020 cgollAATTsuse.com- updated to bugfix release 1.4.1 and added _multibuild file so that cuda versions can be build on commandline
* Thu Apr 23 2020 tchvatalAATTsuse.com- Make sure to pull py2/py3 package from the devel pkg
* Thu Apr 23 2020 tchvatalAATTsuse.com- Do not pull in python2 only dependencies
* Wed Feb 26 2020 sfleesAATTsuse.de- Exclude i586 builds for now, they fail with a cryptic return code of 1 from cmake from python.
* Fri Feb 21 2020 cgollAATTsuse.com- updated to stable release 1.4.0, which has as Highlights:
* Distributed Model Parallel Training
* Pruning functionalities have been added to PyTorch- New Features:
* torch.optim.lr_scheduler now support “chaining.”
* torch.distributed.rpc is a newly introduced package- full Changelog listed in relases file or under https://github.com/pytorch/pytorch/releases and in the releases.hml file- added files:
* skip-third-party-check.patch which is a patch to skip the check of disabled dependencies
* QNNPACK-7d2a4e9931a82adc3814275b6219a03e24e36b4c.tar.gz which is part of pytorch but developed in different repo
* releases.html which is the downloaded releases file- removed patch files:
* fix-build-options.patch
* honor-PSIMD-env.patch
* removed-some-tests.patch
* Tue Jan 14 2020 guillaume.gardetAATTopensuse.org- Requires python-PeachPy on x86_64 only, as it is optional and available on x86_64 only
* Wed Jan 08 2020 cgollAATTsuse.com- updated the requirement for examples and converters
* Wed Jun 12 2019 cgollAATTsuse.com- Updated to stable version 1.1.0, which needed also updates of following dependend sources:
* onnx-1.4.1.tar.gz -> onnx-22662bfd4dcc6baebf29e3b823a051676f991001.tar.gz- Removed following sources:
* FBGEMM-f65f0ebe54f0512d8f42ee10025b596e3f42e0b8.tar.gz- Added following sources:
* foxi-8f74bc4df3a4cfc69b1a3eadf62aa29d9961c72d.tar.gz- Changed patch
* fix-build-options.patch to work with new buid system and exclude FBGEMM- Added patch:
* honor-PSIMD-env.patch, which makes depend sources of pytorch to use the source of psimd
* Tue Mar 26 2019 cgollAATTsuse.com- Inital commit of pytorch/caffe2 which is an opensource machineleraning platform. This is the stable release 1.0.1 including like other tools a lot of third party sources, which could not be used from the base system due to messy build system. Additional sources are
* gloo, a communitcation library for GPUs as gloo-670b4d4aa46886cc66874e2a4dc846f5cfc2a285.tar.gz
* fbgemm, a low precission, high peformance matrix lib FBGEMM-f65f0ebe54f0512d8f42ee10025b596e3f42e0b8.tar.gz
* cpuinfo, a cross platform cpu information tool cpuinfo-89fe1695edf9ee14c22f815f24bac45577a4f135.tar.gz
* sleef, a function for elementary functions sleef-191f655caa25526ae226cf88dd2529265176014a.tar.gz
* pytbind11, which exposes C/C++ headers to pythob, but the source code of this library is deeply integrated into pytorch, so we need pybind11-25abf7efba0b2990f5a6dfb0a31bc65c0f2f4d17.tar.gz
* onnx, which is an format for exchaning neural networks as onnx-1.4.1.tar.gz
* pthreadpool, a pthread based thread tool implementation, which can be used when omp is not available pthreadpool-13da0b4c21d17f94150713366420baaf1b5a46f4.tar.gz
* FXdiv, a Header-only library for division via fixed-point multiplication by inverse, which has no stable API atm, so FXdiv-b742d1143724d646cd0f914646f1240eacf5bd73.tar.gz
* psimd, portable 128-bit SIMD intrinsics psimd-90a938f30ba414ada2f4b00674ee9631d7d85e19.tar.gz
* fp16, a numeric conversion library FP16-febbb1c163726b5db24bed55cc9dc42529068997.tar.gz
* gemmlowp, self-contained low-precision GEMM library as gemmlowp-8416bab644641a5c0a81ecf91a5cda804af0aee1.tar.gz
* fix-build-options.patch, which points pytorch to system libs
* removed-peachpy-depedency.patch, which forces to use system peachpy