AI Governance
AI governance is the organizational system of policies, roles, decision rights, processes, and controls used to direct and oversee artificial intelligence throughout its lifecycle. It enables accountable decisions, proportionate risk management, traceability, and ongoing oversight across enterprise AI programs, digital products, operational workflows, and higher-impact applications.
AI adoption often spreads faster than ownership and oversight. Teams may deploy copilots, automated recommendations, or agents without shared approval criteria, monitoring duties, or escalation paths. Friction appears when these systems affect people, sensitive data, regulated decisions, or critical operations. Common contexts include customer-facing tools, internal copilots, decision support, and automation. AI governance clarifies who decides, what evidence is required, and when reassessment is necessary. This page covers its components, business impact, operating logic, common use cases, risks, and relationship with Responsible AI.
Core Components of AI Governance
AI governance connects organizational authority with technical and operational controls. It determines who can approve, deploy, modify, suspend, or retire an AI system and what evidence supports those decisions. Models may be centralized, federated, or hybrid.
Key components
What it’s not
Why AI Governance Matters
How AI Governance Works
Inputs and prerequisites
Example flow
An internal assistant needs company documents. Before release, the organization classifies data exposure, assigns an owner, tests access boundaries, and defines monitoring. Material model, permission, or retrieval changes trigger reassessment.
Common Use Cases & Examples
Use case: Enterprise AI intake and approval
Use case: Governance of higher-impact decision support
Use case: Oversight of generative and agentic AI workflows