In machine language it’s compare and branch as I said in my first post. But it’s still an if then.
Even LLMs run, in the end, on digital hardware that uses Boolean logic at its core.
Yes, but that's reductive and has nothing to do with how AI actually works. Nobody talks about IF/THEN statements at a transistor level. At that point it's TRUE or FALSE and we're talking about individual bits.
You guys are arguing theory vs. practice. Yes, in theory, LLMs and AI and neural networks are non-Boolean. In actual practice, the only practical way to implement them at the moment is using a binary computer. If we want to implement true AI, we may need to return to room-filling analog computers and allow some noise on the signals.
Actually, research is in progress to develop modern analog computers with an eye toward using them for deep learning.
New hardware offers faster computation for artificial intelligence, with much less energy
MIT researchers created protonic programmable resistors — building blocks of analog deep learning systems — that can process data 1 million times faster than synapses in the human brain. These ultrafast, low-energy resistors could enable analog deep learning systems that can train new and more...
news.mit.edu