True, I wonder what the AI was chasing. I would imagine you could download the updated bios for that board to a USB using another machine and maybe get the bios working again, then they may be able to salvage things. Dells bios recovery can usually bypass any USB boot restrictions that were in the previous bios settings
It’s usually some random thought that is in the right neighborhood, but not quite spot on. A human troubleshooter would straight up say that it’s impossible to tell you what the problem is, so you would need to narrow it down by testing a few things.
An LLM just says that you need to update drivers or whatever. If the problem is caused by something obscure (like this one), an LLM will never be able to figure it out. This kind of stuff apparently just doesn’t exist in the training data, so there’s no way for the model to extrapolate and reach the right conclusion. Instead, it will continuously interpolate with the data it has, and you’ll end up with an infinite list of wrong answers.
Sycophancy really doesn’t help either. If you have any ideas what might cause the problem, the LLM will cling to those, no matter how wrong you might be. Troubleshooting requires critical thinking and LLMs don’t seem to be very good at that.
True, I wonder what the AI was chasing. I would imagine you could download the updated bios for that board to a USB using another machine and maybe get the bios working again, then they may be able to salvage things. Dells bios recovery can usually bypass any USB boot restrictions that were in the previous bios settings
The AI probably forgot what the initial prompt was halfway through the conversation due to context length lol
It’s usually some random thought that is in the right neighborhood, but not quite spot on. A human troubleshooter would straight up say that it’s impossible to tell you what the problem is, so you would need to narrow it down by testing a few things.
An LLM just says that you need to update drivers or whatever. If the problem is caused by something obscure (like this one), an LLM will never be able to figure it out. This kind of stuff apparently just doesn’t exist in the training data, so there’s no way for the model to extrapolate and reach the right conclusion. Instead, it will continuously interpolate with the data it has, and you’ll end up with an infinite list of wrong answers.
Sycophancy really doesn’t help either. If you have any ideas what might cause the problem, the LLM will cling to those, no matter how wrong you might be. Troubleshooting requires critical thinking and LLMs don’t seem to be very good at that.