How do you deal with AI "hallucinations" in your automations?

Reddit r/AI_Agents News

Summary

A discussion about dealing with AI hallucination errors in business automations, focusing on damage control and practical mitigation strategies.

A friend of mine recently set up an AI automation for his business. It's saved him a ton of time, but every now and then it just makes wrong decisions. Nothing catastrophic yet, mostly small stuff he caught in time. But it got us both thinking, what happens when it doesn't catch it in time? We both know this isn't really a solvable problem, LLMs are just going to mess up sometimes. The question is more about damage control, do you have anything in place to catch mistakes before they cost you, or do you just deal with it when it happens? One critical mistake can cost more than he can afford. Curious what's actually worked for people running automations in a real business context.
Original Article

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