Ai Ethics And Governance For Everyone 2025
Published 7/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 244.95 MB | Duration: 0h 53m
Published 7/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 244.95 MB | Duration: 0h 53m
A Practical Guide to AI Governance: Build Trust, Manage Risk, and Navigate Global Regulations.
What you'll learn
Implement practical AI Governance using the NIST AI Risk Management Framework to build trustworthy and compliant AI systems from the ground up.
Master techniques to detect and mitigate algorithmic bias. Learn to use industry tools like Fairlearn and AIF360 to ensure fairness in your AI models.
Navigate the complex global AI regulatory landscape. Understand and apply key requirements from the EU AI Act, US policies, and China's regulations.
Develop a complete Responsible AI strategy. Learn to create Model Cards, conduct ethical risk assessments, and lead with confidence in the age of AI.
Requirements
An Interest in AI and its Impact
No Technical Background Required
A Willingness to Think Critically
Description
AI Ethics and Governance for EveryoneGo from Theory to Practice. Learn to Build, Govern, and Lead Responsible AI with Real-World Frameworks and Tools.In an era powered by AI, ethical literacy is a critical skill. This course provides a clear, practical path to understanding and implementing AI ethics. You'll move beyond abstract concepts and learn to use globally recognized governance frameworks, test for bias, and navigate the complex regulatory landscape. By the end, you'll have the confidence and tools to build, manage, and lead trustworthy AI initiatives.What you'll learnImplement Practical AI Governance using the official NIST AI Risk Management Framework.Detect and Mitigate Algorithmic Bias with an understanding of industry tools like Fairlearn and AI Fairness 360.Navigate the Global Regulatory Landscape, including the EU AI Act and the divergent approaches of the US and China.Master the Core Principles of Fairness, Accountability, and Transparency (FAT) in real-world projects.Analyze Frontier Ethical Challenges in Generative AI, Autonomous Systems, and the emerging field of Neurorights.Create "Model Cards" and other structured documentation for responsible AI development.Who this course is for:AI/ML Developers & Data Scientists who want to build fairness and safety into their models.Product Managers & Business Leaders responsible for AI strategy and ethical oversight.Compliance, Legal, & Policy Professionals navigating AI regulations and risk.Any professional or student seeking to understand and shape the future of responsible technology.RequirementsAn interest in Artificial Intelligence and its impact on society.No programming or advanced technical background is required.This course includes:1 hour of on-demand video4 Downloadable Resources, including checklists and templates4 Course specific AI Role playsInteractive Role-Playing ScenariosArticles and links to key frameworksFull lifetime accessCertificate of completion
Overview
Section 1: Module 1: The Foundations of AI Ethics
Lecture 1 Building Responsible AI Systems
Lecture 2 Introduction: Why AI Ethics and Governance Matter Now
Lecture 3 The Core Principles: Fairness, Accountability, and Transparency (FAT)
Lecture 4 Beyond FAT: The Pillars of Trustworthy AI
Lecture 5 A Human-Centric Approach: Identifying Stakeholders and Societal Impact
Lecture 6 The Trolley Problem & Its Limits: From Philosophy to Practicality
Section 2: Module 2: Core Challenges in Practice
Lecture 7 Unpacking Algorithmic Bias: Types, Sources, and Dangers
Lecture 8 Case Study Deep Dive: Real-World Bias Failures
Lecture 9 The "Black Box" Problem: Explainability (XAI) and Interpretability
Lecture 10 Data Privacy in the AI Era: A Global Challenge
Lecture 11 Generative AI's Unique Ethical Minefield
Section 3: Module 3: AI Governance in Action
Lecture 12 Building an AI Governance Framework: From Principles to Policy
Lecture 13 The Responsible AI Lifecycle: Embedding Ethics from Day One
Lecture 14 Key Frameworks: An Introduction to NIST AI RMF and IEEE P7000
Lecture 15 A Tour of Industry Toolkits: Google, Microsoft, and IBM
Lecture 16 Your Open-Source Toolbox for Fairness and Explainability
Section 4: Module 4: The Future of AI Ethics and Governance
Lecture 17 The Global Regulatory Chessboard: EU vs. US vs. China
Lecture 18 Emerging Regulations: A Look at India, Brazil, and the Global South
Lecture 19 The Final Frontier? Lethal Autonomous Weapons (LAWS)
Lecture 20 The Next Human Right? The Debate Over Neurorights
Lecture 21 Conclusion: Your Role as an Ethical Leader and Future Trends
AI/ML Developers, Data Scientists, and Engineers: Professionals who are building AI systems and want to learn how to implement ethics-by-design, mitigate bias, and use technical toolkits for explainability.,Product Managers and Business Leaders: Individuals responsible for AI strategy, product roadmaps, and risk assessment who need to make informed decisions that align business goals with ethical standards.,Compliance, Legal, and Policy Professionals: Specialists who navigate the complex web of global regulations, internal governance policies, and liability issues emerging in the AI space.