Why AI's Hype Doesn't Match Reality: Rethinking True Intelligence
Artificial intelligence is advancing rapidly, acing exams like the SAT or PhD-level math problems, but this progress masks a core flaw: AI lacks the ability to truly learn like humans do. Instead of measuring smarts by task performance alone, real intelligence involves acquiring new knowledge ongoing, not just applying what's pre-fed. For instance, current AI needs millions of examples to grasp a concept, like coding in a niche library, while humans learn from a single conversation or experience. The vision for better AI? Focus on systems that never stop learning, draw from a lifelong stream of personal experiences (like how unique life events shape a person's ideas), and scale smarter with more computing power, not endless data. This shift could create AI that adapts autonomously, collaborates like a teammate, and handles any new task without retraining.
Check the vide here.