
“CISOs should demand a Safety Relevance Layer in their risk modeling, a structured framework that requires every AI-generated finding to pass automated verification, including dynamic proof-of-concept validation and strong false-positive filtering, before it reaches a human analyst,” Datta said.
Those controls should also cover disclosure, particularly when AI tools identify flaws in third-party open-source components that the enterprise does not control, Datta said. Organizations need predefined escalation paths, notification timelines, and role assignments that take effect once a confirmed issue is found in an external dependency.
“Ad hoc disclosure in an AI-accelerated environment isn’t just a process gap; it’s a liability,” Datta said. “Trusting AI in the production pipeline requires verifiable auditability: organizations must be able to trace why the AI flagged a line of code, how it validated the exploit, and how it determined that the patch would not break downstream production systems.”
