
How to Build an AI Governance Policy in 4 Steps
A four‑step framework—define scope, map risks, set up governance structures, and implement continuous controls—helps businesses create an AI governance policy that reduces risk and drives ROI.
AI policy, regulation and governance.

A four‑step framework—define scope, map risks, set up governance structures, and implement continuous controls—helps businesses create an AI governance policy that reduces risk and drives ROI.

The Atlantic Council’s AI governance roadmap proposes unified standards on hardware security, data stewardship and ethical oversight, aiming to harmonise global AI policy and boost responsible innovation.

The Trump administration and a bipartisan House committee unveiled a new AI governance package, including an executive order, agency risk registers, and the AI Transparency and Accountability Act, to tighten oversight and boost federal AI adoption.

Google’s new white paper proposes a pragmatic three‑pillar roadmap—opportunity, responsibility, security—to guide U.S. AI governance, emphasizing continuous risk management and stakeholder engagement.

The U.S. federal government is shifting from AI governance to execution, allocating billions in R&D and mandating agency‑wide AI deployments through new executive orders.
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