Extend Teuthology to meet our needs. This includes (but is not limited too):

  • replace ceph-cm-ansible
  • add testing for DeepSea
  • make Teuthology more comfortable to use (e.g. easier installation)
  • integrate OBS for quicker test-runs (buildpackages is otherwise run before every test)
  • test report emailing (does it work in OpenStack, how can the reports be improved)

Looking for hackers with the skills:

python ci functionaltesting

This project is part of:

Hack Week 15

Activity

  • almost 4 years ago: smithfarm added keyword "python" to this project.
  • almost 4 years ago: smithfarm added keyword "ci" to this project.
  • almost 4 years ago: smithfarm added keyword "functionaltesting" to this project.
  • almost 8 years ago: denisok liked this project.
  • almost 8 years ago: smithfarm joined this project.
  • almost 8 years ago: jfajerski started this project.
  • almost 8 years ago: jfajerski originated this project.

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