this post was submitted on 26 Apr 2025
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LocalLLaMA

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This is one of the "smartest" models you can fit on a 24GB GPU now, with no offloading and very little quantization loss. It feels big and insightful, like a better (albeit dry) Llama 3.3 70B with thinking, and with more STEM world knowledge than QwQ 32B, but comfortably fits thanks the new exl3 quantization!

Quantization Loss

You need to use a backend that support exl3, like (at the moment) text-gen-web-ui or (soon) TabbyAPI.

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[โ€“] Fisch@discuss.tchncs.de 3 points 2 weeks ago (1 children)

There's a "What's missing" section there that lists ROCm, so I'm pretty sure it's planned to be added

[โ€“] brucethemoose@lemmy.world 3 points 2 weeks ago* (last edited 2 weeks ago)

That, and exl2 has ROCm support.

There was always the bugaboo of uttering a prayer to get rocm flash attention working (come on, AMD...), but exl3 has plans to switch to flashinfer, which should eliminate that issue.