Add kvm binpack weigher for hana binpacking + general purpose balancing#545
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PhilippMatthes merged 4 commits intomainfrom Feb 26, 2026
Merged
Add kvm binpack weigher for hana binpacking + general purpose balancing#545PhilippMatthes merged 4 commits intomainfrom
PhilippMatthes merged 4 commits intomainfrom
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SoWieMarkus
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Feb 26, 2026
Co-authored-by: Markus Wieland <44964229+SoWieMarkus@users.noreply.github.com>
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Test Coverage ReportTest Coverage 📊: 68.9% |
SoWieMarkus
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Feb 26, 2026
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This change adds a binpack weigher similar to the one we implemented for the pods scheduler, but for the nova pipelines based on the hypervisor crd for kvm workloads. We also reuse it for the general purpose balancing pipelines, where the algorithm (best-fit) is simply inverted (worst-fit).