From Taxonomy to Action
Risk lists are useful, but enterprise teams need controls that operate inside real AI workflows. Map each risk to inspection points, policy decisions, evidence, and remediation owners.
Runtime Controls
Prompt injection, sensitive disclosure, excessive agency, and insecure tool use require runtime decisions. The system must understand context, action severity, and data exposure.
Workforce Controls
Shadow AI, data leakage, and unapproved tools require browser and app governance. Employees need approved paths and feedback when sensitive data is at risk.
Testing Controls
Red teaming validates whether controls work against realistic attacks. Findings should be risk-ranked and retested after remediation.