Im using Ollama on my server with the WebUI. It has no GPU so its not quick to reply but not too slow either.

Im thinking about removing the VM as i just dont use it, are there any good uses or integrations into other apps that might convince me to keep it?

  • @thirdBreakfast
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    52 months ago

    I use the Continue VS Code plugin with Ollama to use a couple of different models (deepseek-coder-v2 & starcoder2) to recreate a local only Github Copilot type experience for coding. This is on an M1 Apple Silicon though. For autocomplete the generation needs to be pretty brisk - I’m not sure how that would go in a VM without a GPU.

    • @[email protected]
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      22 months ago

      How well does the M1 chip keep up? What size models are you running with it? Interested in getting an M1 laptop and I am curious.

      • @thirdBreakfast
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        12 months ago
        starcoder2:latest       	f67ae0f64584	1.7 GB	3 days ago 	
        phi3:latest             	d184c916657e	2.2 GB	3 weeks ago	
        deepseek-coder-v2:latest	8577f96d693e	8.9 GB	3 weeks ago	
        llama3:8b-instruct-q8_0 	1b8e49cece7f	8.5 GB	3 weeks ago	
        dolphin-mistral:latest  	5dc8c5a2be65	4.1 GB	3 weeks ago	
        codeqwen:latest         	df352abf55b1	4.2 GB	3 weeks ago	
        llama3:latest           	365c0bd3c000	4.7 GB	4 weeks ago
        

        I mostly use starcoder2 with Continue for code autocomplete, the big deepseek coder is a bit slow (I can feel it thinking), but it and the regular llama3 are good for chatbot type programming questions.

        I don’t really have anything to compare the M1 performance to. I guess the 8GB models output text a little slower than the web versions of the same models, and the 4GB ones about the same. Using ollama in the terminal, there’s sometimes a 0.5-2 second pause before it starts outputting. Not with phi3 though - it’s surprisingly snappy for the quality of answers.