The problem is, you have to know enough about the subject on which you're asking a question to land in the right place in the embedding. If you don't, you'll just get bunk. (I know it's popular to call AI bunk "hallucinations" these days, but really if it was being spouted by a half wit human we'd just call it "bunk".)
So you really have to be an expert in order to maximize your use of an LLM. And even then, you'll only be able to maximize your use of that LLM in the field in which your expertise lies.
A programmer, for instance, will likely never be able to ask a coherent enough question about economics or oncology for an LLM to give a reliable answer. Similarly, an oncologist will never be able to give a coherent enough software specification for an LLM to write an application for him or her.
That's the achilles heel of AI today as implemented by LLMs.
The other day i was on a call with 3 or 4 other people solving a config problem in a specific system. One of them asked chatgpt for the solution and got back a list of configuration steps to follow. He started the steps but one of them mentioned configuring an option that did not exist in the system at all. Textbook hallucination. It was obvious on the call that he was very surprised that the AI would give him an incorrect result, he was 100% convinced the answer was what the LLM said and never once thought to question what the LLM returned.
I've had a couple of instances with friends being equally shocked when an LLM turned out to be wrong. One of which was fairly disturbing, I was at a horse track and describing LLMs and to demonstrate i took a picture of the racing form thing and asked the LLM to formulate a medium risk betting strategy. My friend immediatately took it as some kind of supernatural insight and bet $100 on the plan it came up with. It was as if he believed the LLM could tell the future.Thank god it didn't work and he lost about $70. Had he won I don't know what would have happened, he probably would have asked again and bet everything he had.