Stuck on Repeat: When Reinforcement Learning Fails to Notice the Rules Changed
A dashboard still looks the same after the business changes. The buttons are in the same place. The form fields have the same labels. The workflow still asks for the same approval, the same handoff, the same final action. From the outside, nothing has moved. Then the rules underneath change. A supplier starts behaving differently after a policy shift. A trading market reacts differently after a liquidity regime changes. A robot arm keeps seeing the same objects, but the hardware has worn slightly. A customer-service automation still receives the same message types, but the escalation logic behind the organization has quietly changed. ...