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this post was submitted on 01 Jan 2026
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One of PyFed's selling points was that it was easier to work with than Lemmy. It's going to be amusing when that takes a 180 turn and people start complaining.
Python is great for prototyping and iterating on small projects or as glue for modules written in C and C++. What it isn't great at is linearly scaling on a single node. When the day that throwing more powerful hardware at the problem stops being an option, Kubernetes is going to walk through that door and fuck any semblance of simplicity up.
I would agree with that sentiment, but seems like peoples' actual experiences are a bit different: https://jeena.net/lemmy-switch-to-piefed
Possibly a testament of how software architecture can be more important than any lower level technical decisions.
I think Lemmy has some in-memory data structures that limit the backend to a single node, too. Also postgres is great, but Lemmy really fucked up their database performance somehow.
But yeah large python codebases turn into spaghetti really quickly.