Position: Deployed Reinforcement Learning should be Continual 事件

PRODUCT_LAUNCH2026-06-04影响: MEDIUM

Position: Deployed Reinforcement Learning should be Continual arXiv:2606.04029v1 Announce Type: cross Abstract: Reinforcement Learning (RL) has received increasing attention and adoption in real-world use cases. Most of these systems follow a train-then-fix paradigm, where trained agents do not learn while interacting with the world until performance degrades and retraining becomes necessary. In this position paper, we argue that deploying an agent that is incapable of optimality, but receives

Position: Deployed Reinforcement Learning should be Continual · 相关报道