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

Looking for hackers with the skills:

microos nas raid containers services htpc

This project is part of:

Hack Week 22

Activity

  • almost 2 years ago: c-hagenest liked this project.
  • almost 2 years ago: okurz liked this project.
  • almost 2 years ago: dmach added keyword "containers" to this project.
  • almost 2 years ago: dmach added keyword "services" to this project.
  • almost 2 years ago: dmach added keyword "htpc" to this project.
  • almost 2 years ago: dmach added keyword "microos" to this project.
  • almost 2 years ago: dmach added keyword "nas" to this project.
  • almost 2 years ago: dmach added keyword "raid" to this project.
  • almost 2 years ago: dmach started this project.
  • almost 2 years ago: dmach originated this project.

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