An interesting observation from Licklider is that most of his "thinking" in a day-to-day computational task thought experiment is not so much thinking, but more a rote, mechanical, automatable data collection and visualization. It is this observation that leads him to conclude that the strengths and weaknesses of humans and computers are complementary; That computers can do the busy work, and humans can do thinking work. This has been the prevailing paradigm for the next 64 years, and it's only very recently (last ~year) that computers have started to make a dent into "thinking" in a general, scaleable, and economy-impacting way. Not in an explicit, hard, predicate logic way, but in an implicit, soft, statistical way. Hence the LLM-driven AI summer of today.
显示更多