a project by STorresi
Although CNCF projects are almost exclusively related to Linux containers, some ideas, like wrapping all the services into network proxies to create a distributed data-plane and enable true observability, could perhaps be explored for some kind of backport in complex legacy distributed systems, like... say... S4/HANA?!
I don't even know if this is feasible, but trying won't hurt... just stand at a safe distance from the cluster!
Looking for hackers with the skills:
sles4sap hana envoy containers networking experimental dangerous
This project is part of:
Hack Week 19
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