How do utility-based agents change AI’s role?
Utility-based agents in AI operate by assessing multiple possible actions and choosing the one with optimal utility. Rather than fixed rule execution, they reason about trade-offs, risk, and rewards. This approach enhances flexibility in decision environments like resource allocation, scheduling, or autonomous systems. As complexity grows, these agents offer better balance autonomy and control.
Read Full Article ...