Description

Agama is a new Linux installer that will be very likely used for SLES 16.

It offers an UI for configuring the target system (language, patterns, network, etc). One of the more complex sections is the storage configuration, which is going to be revamped. This project consists on exploring the possibility of having something similar to the YaST Expert Partitioner for Agama.

Goals

  • Explore different approaches for the storage UI in Agama.

Looking for hackers with the skills:

javascript patternfly storage agama typescript

This project is part of:

Hack Week 24

Activity

  • about 1 year ago: michals liked this project.
  • about 1 year ago: enavarro_suse liked this project.
  • about 1 year ago: ancorgs joined this project.
  • about 1 year ago: dgdavid joined this project.
  • about 1 year ago: joseivanlopez added keyword "typescript" to this project.
  • about 1 year ago: jadamek liked this project.
  • about 1 year ago: joseivanlopez added keyword "javascript" to this project.
  • about 1 year ago: joseivanlopez added keyword "patternfly" to this project.
  • about 1 year ago: joseivanlopez added keyword "storage" to this project.
  • about 1 year ago: joseivanlopez added keyword "agama" to this project.
  • about 1 year ago: ancorgs liked this project.
  • about 1 year ago: joseivanlopez started this project.
  • about 1 year ago: joseivanlopez originated this project.

  • Comments

    • joseivanlopez
      about 1 year ago by joseivanlopez | Reply

      An initial version of the Expert Partitioner was implemented in Agama, see demo.

      Supported features:

      • List all devices.
      • Delete all partitions from a disk.
      • Automatically add the partitions for installation to a disk.
      • Add partition for /home, swap or boot.
      • Add a custom partition.
      • Delete any individual partition.

      Conclusion: the Agama infrastructure makes very easy to implement something similar to the YaST Partitioner without too much effort.

    • joseivanlopez
      about 1 year ago by joseivanlopez | Reply

      https://github.com/joseivanlopez/agama/pull/2

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