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💾 trunk/6360d5837b87b28a285bc3e5e98e1b1a2cbab0b9: [BE] Add macOS OpenMP embedding to PostBuildSteps (#180239)


Nachrichtenbereich: 💾 Downloads
🔗 Quelle: github.com

Move the macOS OpenMP embedding step out of setup.py::_embed_libomp
into CMake so the wheel is self-contained under the scikit-build-core
build (gh-180247) as well as the legacy setuptools... [Weiterlesen]

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