Currently, dealing with forkbombs and similar issues with Docker and runC is not very nice (you have to set a global limit for all Docker processes or you have to limit kernel memory which isn't very practical). I'm going to work on getting some patches merged into runC and Docker to enable PIDs support for Docker.
Looking for hackers with the skills:
This project is part of:
Hack Week 13
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Description
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Goals
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- Optionally, improve Ansible side of things as well...
Resources
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SUSE AI Meets the Game Board by moio
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Description
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- https://github.com/g7/adsbreceiver
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Description
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Resources
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