Shame on all of the people involved in this: the people in these companies, the journalists who shovel shit (hope they get replaced real soon), researchers who should know better, and dementia ridden legislators.
So utterly predictable and slimy. All of those who are so gravely concerned about "alignment" in this context, give yourselves a pat on the back for hyping up science fiction stories and enabling regulatory capture.
The fact that these systems can extrapolate well beyond their training data by learning algorithms is quite different than what has come before, and anyone stating that they "simply" predict next token is severely shortsighted. Things don't have to be 'brain-like' to be useful, or to have capabilities of reasoning, but we have evidence that these systems have aligned well with reasoning tasks, perform well at causal reasoning, and we also have mathematical proofs that show how.
So I don't understand your sentiment.
As for the fact that it gets things wrong sometimes - sure, this doesn't say it actually learned every algorithm (in whichever model you may be thinking about). But the nice thing is that we now have this proof via category theory, and it allows us to both frame and understand what has occurred, and to consider how to align the systems to learn algorithms better.
What's a token?