Project Description

I want to learn more about Fleet (https://fleet.rancher.io/) and GitOps

Goal for this Hackweek

I know what Fleet is and what it isn't. I know its sweet spots and where it fails.

Resources

https://fleet.rancher.io/

Looking for hackers with the skills:

fleet learning

This project is part of:

Hack Week 21

Activity

  • over 3 years ago: jzerebecki liked this project.
  • over 3 years ago: kwk added keyword "fleet" to this project.
  • over 3 years ago: kwk added keyword "learning" to this project.
  • over 3 years ago: kwk originated this project.

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