this post was submitted on 11 Jul 2023
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LocalLLaMA

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I've been messing around with GPTQ models with ExLlama in ooba, and have gotten 33b models @ 3k running smoothly, but was looking to try something bigger than my VRAM can hold.

However, I'm clearly doing something wrong, and the koboldcpp.exe documentation isn't clear to me. Does anyone have a good setup guide? My understanding is koboldcpp.exe is preferable for GGML, as ooba's llama.cpp doesn't support GGML at >4k context yet.

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[–] actuallyacat 2 points 2 years ago

Those are OpenCL platform and device identifiers, you can use clinfo to find out which numbers are what on your system.

Also note that if you're building kobold.cpp yourself, you need to build with LLAMA_CLBLAST=1 for OpenCL support to exist in the first place. Or LLAMA_CUBLAS for CUDA.