AI RESEARCH

LiSA: Lifelong Safety Adaptation via Conservative Policy Induction

arXiv CS.LG

ArXi:2605.14454v1 Announce Type: new As AI agents move from chat interfaces to systems that read private data, call tools, and execute multi-step workflows, guardrails become a last line of defense against concrete deployment harms. In these settings, guardrail failures are no longer merely answer-quality errors: they can leak secrets, authorize unsafe actions, or block legitimate work. The hardest failures are often contextual: whether an action is acceptable depends on local privacy norms, organizational policies, and user expectations that resist pre-deployment specification.