Not really. The state of the art models are huge, even the open-weight ones. You really don’t want to quantize below 4-bit, and even that’s a bit of a stretch… Ideally you’d use at least 8-bit to get good results with these models when used for coding.
GLM-5.1 needs around 400GB VRAM at 4-bit quantization. Apple aren’t making the Mac Studio with 512GB unified RAM any more, so you’d need something like 5 x Nvidia A100 80GB to run a model like this.
Distillation works better than quantization, to the point Qwen recently out-benchmarked its 397B model with a 27B model, two months apart. Arguably the only reason to train comically large models is that this is a decent strategy for finding very small models.
Not really. The state of the art models are huge, even the open-weight ones. You really don’t want to quantize below 4-bit, and even that’s a bit of a stretch… Ideally you’d use at least 8-bit to get good results with these models when used for coding.
GLM-5.1 needs around 400GB VRAM at 4-bit quantization. Apple aren’t making the Mac Studio with 512GB unified RAM any more, so you’d need something like 5 x Nvidia A100 80GB to run a model like this.
Kimi K2.6 is around the same size.
Distillation works better than quantization, to the point Qwen recently out-benchmarked its 397B model with a 27B model, two months apart. Arguably the only reason to train comically large models is that this is a decent strategy for finding very small models.