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#run#strix#halo#amd#numbers#page#gguf#ram#unsloth#something
Discussion Sentiment
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Discussion (9 Comments)Read Original on HackerNews
Anyway. I wouldn't recommend following the steps posted in there. Poke around google, or ask your friendly neighborhood LLM for some advice on how to set up your Strix Halo laptop/desktop for the tasks described. A good resource to start with would probably be the unsloth page for whichever model you are trying to run. (There are a few quantization groups that are competing for top-place with gguf's, and unsloth is regularly at the top-- with incredible documentation on inference, training, etc.)
Anyway, sorry to be harsh. I understand that this is just a blog for jotting down stuff you're doing, which is a great thing to do. I'm mostly just commenting on the fact that this is on the front page of hn for some reason.
The industry looks like it's started to move towards Vulkan. If AMD cards have figured out how to reliably run compute shaders without locking up (never a given in my experience, but that was some time ago) then there shouldn't be a reason to use speciality APIs or software written by AMD outside of drivers.
ROCm was always a bit problematic, but the issue was if AMD card's weren't good enough for AMD engineers to reliably support tensor multiplication then there was no way anyone else was going to be able to do it. It isn't like anyone is confused about multiplying matricies together, it isn't for everyone but the naive algorithm is a core undergrad topic and the advanced algorithms surely aren't that crazy to implement. It was never a library problem.
It looks like context is set to 32k which is the bare minimum needed for OpenCode with its ~10k initial system prompt. So overall, something like Unsloth's UD q8 XL or q6 XL quants free up a lot of memory and bandwidth moving into the next tier of usefulness.
I'll give a specific example in my feedback, You said:
``` so far, so good, I was able to play with PyTorch and run Qwen3.6 on llama.cpp with a large context window ```
But there are no numbers, results or output paste. Performance, or timings.
Anyone with ram can run these models, it will just be impracticably slow. The halo strix is for a descent performance, so you sharing numbers will be valuable here.
Do you mind sharing these? Thanks!