Project Description
Try running openSUSE MicroOS on a home NAS.
MicroOS is immutable system by nature, it is relatively close to a firmware we upload to routers, phones etc. and that might make it suitable for NAS installations too.
Goal for this Hackweek
- Explore benefits and downsides of a NAS running MicroOS
- Report any issues found upstream
- Stretch goals:
- Create patterns to install pre-selected packages
- Explore encryption of home directories
- Automatically run kodi as a service to upgrade nas to HTPC
- Pick several services and run them in containers
- write a blog post: https://microos.opensuse.org/blog/
Resources
- https://microos.opensuse.org/
- TBD
This project is part of:
Hack Week 22
Activity
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Give it a go at https://g7.github.io/adsbreceiver/ !
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