Responsible AI: Global Risks, Governance, and Human Oversight
1h 27mGeneral2026-04-10
Authors

Microsoft
Supporting inclusive economic opportunity

United Nations University
Course details
As AI systems become widely deployed and increasingly influential, organizations and individuals face growing risks—from model failures and bias to regulatory conflicts and misinformation. Understanding how to navigate these challenges requires more than technical knowledge.
In this course, get a practical, globally informed overview in AI risks, governance models, and responsible use. Using real examples, you'll learn to recognize failure patterns, assess explainability gaps and data privacy risks, and maintain human oversight in high-stakes decisions. Along the way, develop the literacy to know when not to use AI tools and how to evaluate AI systems against global governance standards.
This course features Professor Arisa Ema of the University of Tokyo—one of Japan's leading experts on AI governance and a renowned contributor to national AI policy councils.
Learning objectives
Identify and evaluate major AI risks including bias, privacy breaches, hallucinations, adversarial attacks, and robustness failures.
Compare governance models across the EU, US, Japan, and international organizations, understanding their implications for global AI deployment.
Apply practical responsible-AI practices within their organization, including transparency, explainability, and human oversight.
Recognise when AI should not be used and how to avoid overdependence in both personal and professional contexts.
Build foundational AI literacy needed to interpret AI outputs, question assumptions, and maintain integrity in decision-making.
In this course, get a practical, globally informed overview in AI risks, governance models, and responsible use. Using real examples, you'll learn to recognize failure patterns, assess explainability gaps and data privacy risks, and maintain human oversight in high-stakes decisions. Along the way, develop the literacy to know when not to use AI tools and how to evaluate AI systems against global governance standards.
This course features Professor Arisa Ema of the University of Tokyo—one of Japan's leading experts on AI governance and a renowned contributor to national AI policy councils.
Learning objectives
Identify and evaluate major AI risks including bias, privacy breaches, hallucinations, adversarial attacks, and robustness failures.
Compare governance models across the EU, US, Japan, and international organizations, understanding their implications for global AI deployment.
Apply practical responsible-AI practices within their organization, including transparency, explainability, and human oversight.
Recognise when AI should not be used and how to avoid overdependence in both personal and professional contexts.
Build foundational AI literacy needed to interpret AI outputs, question assumptions, and maintain integrity in decision-making.
Concepts
Introduction
- What it means to think critically about AI
Foundations - AI, Society, and Literacy
- Why we should consider AI and society
- Why the ability to think critically is part of AI literacy
- How AI design shapes society
- What AI means to different people
- Why AI systems fail beyond technical capability
Bias, Fairness, and Case Studies
- Why bias is not an exception
- How the COMPAS system discriminated against Black defendants
- Why technical fixes are not enough
- Why AI bias is not a mistake
Responsibility, Transparency, and Safety
- What responsibility means in AI
- How responsibility, accountability, and liability differ
- Why explainability and transparency matter in AI
- Why AI safety requires robustness
- How AI can be deceived
Information Integrity, Privacy, and Profiling
- How misinformation and disinformation spread in the AI era
- Why privacy becomes a critical issue
- How AI-based profiling works
- What resurrection technologies ask us
- How AI changes the nature of work
- Why AI governance is needed
- Why dependency on AI is a growing risk
Related courses
- Responsible AI Algorithm Design
- The AI Equity Imperative: Building a More Inclusive Future with AI
- Essential AI Governance: Bridging Responsible AI, Compliance, and Regulation
- Building Trustworthy AI Systems: Transparency, Explainability, and Control with ISO/IEC TR 24028
- Understanding AI’s Global Impact: Governance, Equity, and Responsibility
- Navigating AI Regulations: A Business Guide to Risk, Responsibility, and Strategy
- Navigating the EU AI Act
- Introduction to Responsible AI Algorithm Design
Related learn paths
- Technical Literacy and Future Readiness for Senior Executives
- Understanding Generative AI for Tech Leaders
- Applying AI as a Tech Leader
- Mastering Data Governance and Ethics
- Sustainability Transformation for Leaders
- AI Regulations for Tech Leaders: The EU AI Act and More
- Building AI Products: Security Essentials Professional Certificate by LinkedIn Learning
- Responsible AI Foundations