Artificial intelligence promises transformative business value, but without strong governance foundations, AI initiatives risk being biased, opaque, or non-compliant. Organizations are increasingly expected—by regulators, customers, and society at large—to ensure AI systems are ethical, explainable, and trustworthy. Yet, most governance efforts remain fragmented: AI governance is treated separately from Responsible AI principles, while Data Governance operates in a silo.
This seminar connects the dots. Participants will gain a comprehensive understanding of how Data Governance underpins Responsible AI, and how AI Governance frameworks operationalize ethics and compliance in practice. Combining strategy, case studies, and hands-on frameworks, the course provides attendees with the tools to design and implement governance approaches that make AI not only innovative, but also reliable and responsible.
Learning Objectives
By the end of this seminar, participants will be able to:
Who is it for?
Part 1 — Foundations & Risks
Part 2 — Frameworks & Practices
Part 3 — Connecting the Dots & Implementation