I know some people doing old-school logic-based AI research. They’re happy because there’s more AI funding in general, and they can present themselves as “what neural networks are missing” or “the next big thing”. Or they come up with projects involving hybrid systems.
Symbolic AI? Pretty sure a combo of that and ML would be needed. Pure ML is too unreliable and have limited coherence, and nobody knows how to program useful symbolic AI from scratch. But if you combine them they can cover each other’s weak spots.
That’s unlikely. What’s more likely is that you were not yet exposed to AI research and did not read through the academic reviews and articles of the time. AI is a serious topic in science and engineering since more than half a century.
I was reading papers daily, and there was progress but even in the field of symbolic ai the focus was on weak ai, a range of approaches that try to solve single problems. They were trying to find marketable techniques, not looking for the sparkle of intelligence. Then big data came and people started specialising in techniques that were also useful for ml, and boom.
I remember when Google started running classifiers backwards for the first time to produce the very first generation of generative ML. Very small crowd following it closely.
What I mean is that “back in my day” there were maybe 10 people in the world seriously investigating strong AI
I know some people doing old-school logic-based AI research. They’re happy because there’s more AI funding in general, and they can present themselves as “what neural networks are missing” or “the next big thing”. Or they come up with projects involving hybrid systems.
Symbolic AI? Pretty sure a combo of that and ML would be needed. Pure ML is too unreliable and have limited coherence, and nobody knows how to program useful symbolic AI from scratch. But if you combine them they can cover each other’s weak spots.
That’s unlikely. What’s more likely is that you were not yet exposed to AI research and did not read through the academic reviews and articles of the time. AI is a serious topic in science and engineering since more than half a century.
I was reading papers daily, and there was progress but even in the field of symbolic ai the focus was on weak ai, a range of approaches that try to solve single problems. They were trying to find marketable techniques, not looking for the sparkle of intelligence. Then big data came and people started specialising in techniques that were also useful for ml, and boom.
I remember when Google started running classifiers backwards for the first time to produce the very first generation of generative ML. Very small crowd following it closely.