Recently, there has been considerable interest in large language models: machine learning systems which produce human-like text and dialogue. Applications of these systems have been plagued by persistent inaccuracies in their output; these are often called “AI hallucinations”. We argue that these falsehoods, and the overall activity of large language models, is better understood as bullshit in the sense explored by Frankfurt (On Bullshit, Princeton, 2005): the models are in an important way indifferent to the truth of their outputs. We distinguish two ways in which the models can be said to be bullshitters, and argue that they clearly meet at least one of these definitions. We further argue that describing AI misrepresentations as bullshit is both a more useful and more accurate way of predicting and discussing the behaviour of these systems.
Here's a good & readable summary paper to pin your critiques on
For me it is wrong more than 95% of the time. I stopped using it because it was just a waste of time. I am not doing particularly difficult or esoteric programming work and it just could not hack it at all. Often the ways it was wrong were quite subtle. And it presents wrong answers with the exact same confidence it presents right answers.
For me it is wrong more than 95% of the time. I stopped using it because it was just a waste of time. I am not doing particularly difficult or esoteric programming work and it just could not hack it at all. Often the ways it was wrong were quite subtle. And it presents wrong answers with the exact same confidence it presents right answers.