You’re misunderstanding tool use, the LLM only queries something to be done then the actual system returns the result. You can also summarize the result or something but hallucinations in that workload are remarkably low (however without tuning they can drop important information from the response)
The place where it can hallucinate is generating steps for your natural language query, or the entry stage. That’s why you need to safeguard like your ass depends on it. (Which it does, if your boss is stupid enough)
pinball_wizard@lemmy.zip 5 days ago
I’m quite aware that it’s less likely to yessir technically hallucinate in these cases.
But that doesn’t address the core issue that the query was written by the LLM, without expert oversight, which still leads to situations that are effectively halucinations.
Technically, it is returning a “correct” direct answer to a question that no rational actor would ever have asked.
The meaningless, correct-looking and wrong result for the end user is still just going to be called a halucination, by common folks.
For common usage, it’s important not to promise end users that these scenarios are free of halucination.
You and I understand that technically, they’re not getting back a halucination, just an answer to a bad question.
But for the end user to understand how to use the tool safely, they still need to know that a meaningless correct looking and wrong answer is still possible (and today, still also likely).