The current geekos install at http://geekos.prv.suse.net/search is not reachable for employees outside of engineering. We want to move it to the SUSE IT maintained EKS cluster to make it available for all.

Looking for hackers with the skills:

eks rails docker ci aws

This project is part of:

Hack Week 20

Activity

  • over 3 years ago: lcaparroz liked this project.
  • over 3 years ago: digitaltomm added keyword "rails" to this project.
  • over 3 years ago: digitaltomm added keyword "docker" to this project.
  • over 3 years ago: digitaltomm added keyword "ci" to this project.
  • over 3 years ago: digitaltomm added keyword "aws" to this project.
  • almost 4 years ago: digitaltomm joined this project.
  • almost 4 years ago: digitaltomm left this project.
  • almost 4 years ago: RicardoFelipeKlein liked this project.
  • almost 4 years ago: gfilippetti liked this project.
  • almost 4 years ago: hennevogel left this project.
  • almost 4 years ago: hennevogel added keyword "eks" to this project.
  • almost 4 years ago: hennevogel joined this project.
  • almost 4 years ago: dirkmueller disliked this project.
  • almost 4 years ago: dirkmueller liked this project.
  • almost 4 years ago: hennevogel liked this project.
  • almost 4 years ago: digitaltomm joined this project.
  • almost 4 years ago: kalabiyau started this project.
  • almost 4 years ago: digitaltomm originated this project.

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