Project Description
Gardener is SAP's portable Kubernetes distribution and management framework, which aims to create a common base layer for current and future SAP applications and services. Rancher is the leading management framework for arbitrary Kubernetes distributions. Wouldn't it be great if Rancher and Gardener could work together, and Gardner became a first-class citizen in Rancher?
Goal for this Hackweek
- Install Gardener
- Install Rancher
- Enroll Gardener cluster under Rancher management
- Demonstate the capabilities gained with this setup
- Investigate what would be required to make Gardener a first-class-citizen in Rancher (akin to AKS, EKS, ... support)
Resources
- Starting as an independent exploration
- Happy for anyone interested in Gardener or Rancher to join!
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This project is part of:
Hack Week 20
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Work done in HackWeek 2023
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Goals for HackWeek 2024
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Description
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Results: Infrastructure Achievements
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The Context: AI + Board Games
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Description
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I would like to put one of my spare Raspberry Pis to good use, and what better way to see what flies above my head at any time?
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Resources
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What's missing:
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Give it a go at https://g7.github.io/adsbreceiver/ !
Project links
- https://g7.github.io/adsbreceiver/
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- https://build.opensuse.org/project/show/home:epaolantonio:adsbreceiver
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Description
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The current doc can be improved: some information are hard to be find out, some others are completely missing.
Dev Container might solve this situation.
Goals
Uyuni development in no time:
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Lots of pieces are already implemented: we need to connect them in a consistent solution.
Resources
- https://github.com/uyuni-project/uyuni/wiki
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Description
This project aims to empower the next generation of tech professionals by offering hands-on workshops on containerization and Kubernetes, with a strong focus on open-source technologies. By providing practical experience with these cutting-edge tools and fostering a deep understanding of open-source principles, we aim to bridge the gap between academia and industry.
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