"Well-unknown" questions are maybe the one situation where LLMs will say "I don't know", simply because of all the overwhelming statements in its training data referring to the question as unknown. It'd be interesting to see how LLMs would adapt to changing facts. Suppose the Collatz conjecture was proven this year, and the next the major models got retrained. Would they be able to reconcile all the new discussion with the previous data?