Our current computer and AI systems are built on neuroscience principles from almost a century ago. Recent advances in our understanding of biological computation have not crossed into computer science to catalyze advancements. We outline a multidimensional blueprint for a form of bio-inspired agent leveraging modern neuroscience principles (including the co-localization of memory and compute, plasticity, embodiment, active inference, and neurodevelopmental principles). We discuss how combining these core features could theoretically lead to cognitive agents that are aligned to our prosocial values, transparent, explainable, and energy efficient (i.e., “good” robots). In particular, we leverage Marr's tri-level framework and advocate for an “Implementation Level” consisting of embodied neuromorphic hardware, an “Algorithmic Level” consisting of Active Inference, and a “Computational Level” consisting of prosocial goals (supported by evidence of prosociality catalyzing the development of our own complex cognitive abilities). A developmental process scaffolds different prosocial computations over time. Supporting our perspective, we include simulation data demonstrating the transfer of priors between two different prosocial behaviors (computational level) via active inference (algorithmic level), supported by an embodied process (implementation level). Agent behavior is transparent and explainable throughout. We advocate for this blueprint as a guide in creating capable, ethical, and sustainable machine intelligence.
A Marr-Inspired Framework for Raising “Good” Robots
Di Nuovo A.
2025-01-01
Abstract
Our current computer and AI systems are built on neuroscience principles from almost a century ago. Recent advances in our understanding of biological computation have not crossed into computer science to catalyze advancements. We outline a multidimensional blueprint for a form of bio-inspired agent leveraging modern neuroscience principles (including the co-localization of memory and compute, plasticity, embodiment, active inference, and neurodevelopmental principles). We discuss how combining these core features could theoretically lead to cognitive agents that are aligned to our prosocial values, transparent, explainable, and energy efficient (i.e., “good” robots). In particular, we leverage Marr's tri-level framework and advocate for an “Implementation Level” consisting of embodied neuromorphic hardware, an “Algorithmic Level” consisting of Active Inference, and a “Computational Level” consisting of prosocial goals (supported by evidence of prosociality catalyzing the development of our own complex cognitive abilities). A developmental process scaffolds different prosocial computations over time. Supporting our perspective, we include simulation data demonstrating the transfer of priors between two different prosocial behaviors (computational level) via active inference (algorithmic level), supported by an embodied process (implementation level). Agent behavior is transparent and explainable throughout. We advocate for this blueprint as a guide in creating capable, ethical, and sustainable machine intelligence.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


