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cross-posted from: https://lemmy.ml/post/45766694

Hey :) For a while now I use gpt-oss-20b on my home lab for lightweight coding tasks and some automation. I'm not so up to date with the current self-hosted LLMs and since the model I'm using was released at the beginning of August 2025 (From an LLM development perspective, it feels like an eternity to me) I just wanted to use the collective wisdom of lemmy to maybe replace my model with something better out there.

Edit:

Specs:

GPU: RTX 3060 (12GB vRAM)

RAM: 64 GB

gpt-oss-20b does not fit into the vRAM completely but it partially offloaded and is reasonably fast (enough for me)

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[-] sobchak@programming.dev 5 points 1 month ago* (last edited 1 month ago)

I tried some new ones recently (though I have a 24GB GPU). Qwen3.5 9B is pretty impressive for such a small model for agentic stuff like Claude Code. (I can run the Opus distilled model quantized to 6 bit with the full 256k context and no CPU offloading). Gemma4 26B is good if I don't need agentic stuff or a lot of context (it sucks for agentic stuff). You can probably run the smaller versions of these, or with less context.

this post was submitted on 11 Apr 2026
21 points (86.2% liked)

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