1. Welcome and why this matters now
- Rapid AI adoption across the public sector
- Growing risk of Shadow AI and unmanaged data usage
- Balancing innovation with regulation, security and public trust
2. AI governance – The do’s
- Treat governance as a business-wide responsibility, not just IT
- Align AI governance to existing public sector frameworks
- Establish clear guardrails (approved tools, data usage, accountability)
- Build governance into the AI lifecycle, not after deployment
3. AI governance – The don’ts
- Don’t rely on policies without enforcement
- Don’t ignore Shadow AI
- Don’t over‑govern and block innovation
- Don’t separate AI governance from data governance
4. Data readiness: The foundation for safe AI
- AI is only as reliable as its data
- Key elements of AI‑ready data:
- Ownership, classification and quality
- Secure access and identity controls
- Lineage, monitoring and auditability
- Why data readiness directly reduces AI risk
5. From theory to action
- Understanding your current AI and data reality
- Moving from fragmented controls to governance by design
- Building a phased, pragmatic roadmap
6. Q&A + Close & CTA
- Audience questions
- CTA: assess AI and data readiness and regain control safely
Shaun Jackson
Microsoft Cloud Security Specialist, Bytes
Adam Goodley
Microsoft Cloud Security Specialist, Bytes
Jacob Neil
AI Business Solutions Presales Architect, Bytes