To add more flexibility, variability and increase testing capacity we would like to move QAM cloud nodes from physical machines(in NUE) into virtual environment.

Looking for hackers with the skills:

kvm cloud

This project is part of:

Hack Week 11

Activity

  • about 10 years ago: alexandrubonini liked this project.
  • about 10 years ago: alexandrubonini joined this project.
  • about 10 years ago: pluskalm liked this project.
  • about 10 years ago: djz88 added keyword "kvm" to this project.
  • about 10 years ago: djz88 added keyword "cloud" to this project.
  • about 10 years ago: djz88 started this project.
  • about 10 years ago: djz88 originated this project.

  • Comments

    • osukup
      about 10 years ago by osukup | Reply

      Done , next project ?

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