AI Isn’t Smarter Than a Baby—Yet
Wired AI 1 day ago
Researchers at Meta, Stanford, and other institutions created the EgoBabyVLM Challenge, a test that measures how well vision language models can learn from approximately one thousand hours of egocentric video recorded from cameras worn by infants. Current cutting-edge AI models fail substantially on this benchmark, struggling to extract meaning from the messy, realistic footage that babies process efficiently. The findings suggest that designing AI systems with learning mechanisms inspired by infant brains—such as better attention mechanisms and social cue interpretation—could create more efficient models that learn from less data and require less energy.