The Convergence of AI code and Cortical Functioning -- a Commentary
This is an incremental analysis for AI researchers and neuroscientists interested in the theoretical implications of biological inspiration in AI.
The commentary examines the convergence between AI neural networks and biological cortical functioning, questioning the attainability of general AI with current tools based on neocortical structure.
Neural nets, one of the oldest architectures for AI programming, are loosely based on biological neurons and their properties. Recent work on language applications has made the AI code closer to biological reality in several ways. This commentary examines this convergence and, in light of what is known of neocortical structure, addresses the question of whether ``general AI'' looks attainable with these tools.