Never really occurred to me before how huge a 10x savings would be in terms of parameters on consumer hardware.
Like, obviously 10x is a lot, but with the way things are going, it wouldn’t surprise me to see that kind of leap in the next year or two tbh.
That would actually be insane. Right now, I still need my GPU and about 8-10 gigs of VRAM to run a 7B model tho, so idk how that’s supposed to work on a phone. Still, being able to run a model that’s as good as a 70B model but with the speed and memory usage of a 7B model would be huge.
I have never worked on machine learning, what does the B stand for? Billion? Bytes?
I think it’s how many billion parameters the model has
I only need ~4 GB of RAM/VRAM for a 7B model, my GPU only has 6GB VRAM anyway. 7B models are smaller than you think, or you have a very inefficient setup.
That’s weird, maybe I actually am doing something wrong. Is it because I’m using GGUF models maybe?
llama2 gguf with 2bit quantisation only needs ~5gb vram. 8bits need >9gb. Anything inbetween is possible. There are even 1.5bit and even 1bit options (not gguf AFAIK). Generally fewer bits means worse results though.
Finally. Wrong answers to questions using my phone.