this post was submitted on 19 Apr 2026
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LocalLLaMA

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When I first got into local LLMs nearly 3 years ago, in mid 2023, the frontier closed models were ofcourse impressively capable.

I then tried my hand on running 7b size local models, primarily one called Zephyr-7b (what happened to these models?? Dolphin anyone??), on my gaming PC with 8GB AMD RX580 GPU. Fair to say it was just a curiosity exercise (in terms of model performance).

Fast forward to this month, I revisit local LLM. (Although I no longer have the gaming PC, cost-of-living-crisis anyone ๐Ÿ˜ซ )

And, the 31b size models look very sufficient. #Qwen has taken the helm in this order. Which is still very expensive to setup locally, although within grasp.

I'm rooting for the edge-computing models now - the ~2b size models. Due to their low footprint, they are practical to run in a SBC 24/7 at home for many people.

But these edge models are the 'curiosity category' now.

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[โ€“] ntn888@lemmy.ml 5 points 3 weeks ago (2 children)

hey, thanks for your response.. yeah that's what I meant, the 2b models aren't usable in today's state, but more practical for everyday use if they work out..

I actually meant the 31b models are useful for my purpose. I don't do full-on agentic coding, just interactive chat/prompting. Example, I make good use for making linux shell scripts (as I don't know howto myself). Currently I use qwen3.5-flash via cloud. It's as good as the frontier models back then if not better..

[โ€“] PixelatedSaturn@lemmy.world 2 points 3 weeks ago (1 children)

I wanted to use smaller models, but then do more work on the "thinking" process. I didn't come far, because it get so slow with normal hardware and too expensive on dedicated one. Time consuming (I'm also not a programmer) but a fun project, but in the end I just decided to satisfy the privacy angle with protons ai Lumo.

[โ€“] inari@piefed.zip 2 points 3 weeks ago (1 children)

Proton has AI? Damn, that's gotta be bleeding their coffers