What is the best way to learn LLM / generative AI topics in depth:
- loss functions
- finetuning (LoRA, QLoRA, etc)
- creating good datasets
- quantization, AWQ
etc. I know there is the Fast AI course, but more interested in these above topics. Seems like there are scattered guides, notebooks and a promising repo here: https://github.com/peremartra/Large-Language-Model-Notebooks-Course but nothing comprehensive.
Karpathys channel is awesome for intro, then you can just start reading the papers for more in depth learning