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I've been testing Ollama in Docker/WSL with the idea that if I like it I'll eventually move my GPU into my home server and get an upgrade for my gaming pc. When you run a model it has to load the whole thing into VRAM. I use the 8gb models so it takes 20-40 seconds to load the model and then each response is really fast after that and the GPU hit is pretty small. After I think five minutes by default it will unload the model to free up VRAM.
Basically this means that you either need to wait a bit for the model to warm up or you need to extend that timeout so that it stays warm longer. That means that I cannot really use my GPU for anything else while the LLM is loaded.
I haven't tracked power usage, but besides the VRAM requirements it doesn't seem too intensive on resources, but maybe I just haven't done anything complex enough yet.