I have an GTX 1660 Super (6 GB)

Right now I have ollama with:

  • deepseek-r1:8b
  • qwen2.5-coder:7b

Do you recommend any other local models to play with my GPU?

  • SmokeyDope@lemmy.world
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    7 days ago

    I have a 1070ti 6gb so right there with you. Its important to note though that our use cases and expectations may differ. Also I’m using kobold.cpp with cublas partial offloading to run the models

    Qwen 14B R1 distill q6km for testing out CoT, science/math related questions, internet search RAG, and best token speed to performance ratio

    Arliai Mistral NeMo 12B finetune q4km for smut and creative writing.

    Beepo 22b Mistral Small 2407 uncensored fine tune model that will tell me all the forbidden no-no knowledge.

    Mistral Small 3 2501 for the best generally performing model that can fit on the card with bearable token speed and context window.

    Minicpm for multimodal vision for document scanning.

  • Possibly linux@lemmy.zip
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    7 days ago

    Mistral

    I personally run models on my laptop. I have 48 GB of ram and a i5-12500U. It runs a little slow but usable

    • DisonantezkoOP
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      7 days ago

      My gear is an old:

      I7-4790 16GB RAM

      How many tokens by second?

      • Possibly linux@lemmy.zip
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        7 days ago

        The biggest bottleneck is going to be memory. I would just stick with GPU only since your GPU memory has the most bandwidth.

  • The Hobbyist@lemmy.zip
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    7 days ago

    Deepseek is good at reasoning, qwen is good at programming, but I find llama3.1 8b to be well suited for creativity, writing, translations and other tasks which fall out of the scope of your two models. It’s a decent all arounder. It’s about 4.9GB in q4_K_M.

    • DisonantezkoOP
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      7 days ago

      It’s not out of my scope, I’m just learning what can I do locally with my current machine.


      Today I read about RAG, maybe I’m gonna try an easy local setup to chat with a PDF.