Description
This course contains the use of artificial intelligence.Artificial intelligence is moving rapidly from experimentation into everyday business operations. Yet many organizations still struggle to translate high-level policies, ethical principles, and regulatory expectations into practical decisions, workflows, controls, and accountability.AI Governance for Business Leaders: Policy to Practice is designed to help leaders close that gap.This course provides a practical, business-focused approach to AI governance, responsible AI, risk management, and enterprise AI adoption. It is built for professionals who need to guide AI initiatives, establish oversight, manage uncertainty, and ensure that innovation happens responsibly.You will begin by understanding why AI changes the leadership contract and what executives must do differently as AI becomes embedded across functions. You will develop the AI literacy needed to evaluate capabilities, limitations, vendor claims, model risks, and emerging forms of agentic AI without becoming a technical specialist.From there, you will learn how to identify valuable AI opportunities, prioritize use cases, and build an AI portfolio that balances business value, feasibility, readiness, and risk. You will explore how to design an effective AI operating model, including decision rights, governance forums, escalation paths, funding processes, business ownership, and executive accountability.The course also examines the foundations required for responsible implementation, including data governance, privacy, cybersecurity, technology architecture, vendor management, procurement, talent, and organizational readiness. You will learn how to redesign human and AI workflows, determine where human judgment is essential, establish review thresholds, and create reliable quality-assurance processes.A major focus of the course is moving from principles to practical controls. You will build a leadership-level understanding of AI risk taxonomy, fairness, ethics, transparency, explainability, privacy, confidential information, monitoring, auditability, incident response, and human oversight. You will also learn how to create policies and guardrails that employees can understand and apply in real working environments.Successful governance also depends on people. The course covers change leadership, employee adoption, manager enablement, practical training, communication, incentives, and communities of practice. You will learn how to introduce governance without creating unnecessary bureaucracy or slowing innovation.You will also develop methods for measuring AI ROI, establishing baselines, tracking benefits, evaluating total cost of ownership, and making informed scale, improve, or stop decisions. Additional topics include governing autonomous agents, managing permissions, designing exception-handling processes, and creating controls for increasingly automated workflows.Throughout the course, you will produce practical leadership artifacts, including an AI leadership charter, value portfolio map, operating model blueprint, readiness heatmap, responsible AI control plan, adoption strategy, measurement scorecard, stakeholder narrative, and implementation roadmap.By the end of the course, you will have a complete AI governance practice system that connects policy, strategy, risk, technology, people, measurement, and accountability—helping your organization move from AI governance language to responsible, repeatable, and scalable business practice.



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