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3 Week Responsible AI & Governance Certification
131 students

3 Week Responsible AI & Governance Certification

Build ethical, compliant, and trustworthy AI systems with governance, audits, risk controls, and responsible AI practice
Created bySchool of AI
Last updated 6/2026
English

What you'll learn

  • Understand the core principles of Responsible AI, including ethics, fairness, transparency, accountability, and trust.
  • Identify different types of AI bias, including data bias, model bias, and human bias, and explain how bias enters the AI lifecycle.
  • Evaluate major AI risks such as hallucinations, misuse, reliability failures, safety concerns, and harmful downstream impacts.
  • Apply practical concepts from AI governance frameworks, including the NIST AI Risk Management Framework and the EU AI Act.
  • Classify AI systems based on risk levels and understand the difference between high-risk, limited-risk, and low-risk AI use cases.
  • Design basic governance controls, policies, workflows, and accountability structures for AI systems inside organizations.
  • Understand how to monitor AI systems for drift, failures, incidents, and performance changes after deployment.
  • Conduct a basic AI audit simulation using documentation, traceability, risk assessment, and governance review practices.
  • Evaluate third-party AI vendors using responsible AI, compliance, transparency, and risk management criteria.
  • Explain how strong AI governance can become a competitive advantage by improving trust, safety, reliability, and long-term adoption.

Course content

3 sections19 lectures6h 52m total length
  • Certificate of Completion0:27
  • Day 1 — Why Responsible AI Matters Now22:46
  • Day 2 — Types of Bias in AI Systems25:07
  • Day 3 — Fairness in AI: Concepts & Tradeoffs25:49
  • Day 4 — AI Risks: Hallucinations, Misuse & Harm26:39
  • Day 5 — Transparency, Explainability & Trust26:06
  • Week 1 Lab — AI Risk & Bias Assessment12:29

Requirements

  • No prior experience with AI governance, compliance, or legal frameworks is required.
  • Basic awareness of artificial intelligence or generative AI is helpful, but not required.
  • No coding or technical development background is needed.
  • A willingness to think critically about AI ethics, bias, fairness, risk, and accountability.
  • Interest in understanding how organizations can build and use AI systems responsibly.
  • Access to a computer, tablet, or laptop to watch lessons and complete course activities.
  • Ability to read short case studies, review examples, and participate in practical governance exercises.
  • This course is beginner-friendly and designed for learners from both technical and non-technical backgrounds.
  • Professionals from business, technology, compliance, risk, HR, product, legal, and leadership roles can take this course.
  • Curiosity about how AI systems can be made safer, fairer, more transparent, and more trustworthy.

Description

This course contains the use of artificial intelligence.

The 3 Week Responsible AI & Governance Certification is designed to help learners understand how to build, evaluate, manage, and govern AI systems in a way that is ethical, transparent, safe, and aligned with real-world business expectations. As organizations adopt artificial intelligence, generative AI, automation, and decision-support systems at a faster pace, the need for Responsible AI, AI governance, risk management, and compliance has become more important than ever.

This course begins with the foundations of AI ethics, exploring why responsible AI matters today across business, legal, and societal contexts. You will examine real-world AI failures and understand how poor design, weak oversight, biased data, and unclear accountability can lead to serious consequences. You will learn the major types of AI bias, including data bias, model bias, and human bias, and see where bias can enter the AI lifecycle from data collection to deployment.

The course then introduces the core ideas behind fairness in AI, including conceptual fairness metrics, tradeoffs, and why fairness cannot be treated as a single universal rule. You will also explore major AI risks such as hallucinations, misuse, unreliable outputs, safety failures, and harmful downstream impacts. Through the Week 1 lab, you will conduct an AI Risk & Bias Assessment to identify risks in an AI system and think critically about mitigation strategies.

In Week 2, the course moves into AI governance frameworks, regulations, and organizational accountability. You will learn what governance means in the context of AI and how roles, responsibilities, policies, workflows, and controls help organizations manage AI responsibly. The course introduces global regulatory trends, including the EU AI Act, the evolving US AI landscape, and the growing need for AI oversight. You will study the NIST AI Risk Management Framework, including the practical ideas behind map, measure, and manage. You will also learn how risk-based classification works under the EU AI Act, including the difference between high-risk and low-risk AI systems. The Week 2 lab guides you through designing a practical governance framework for an AI system.

In Week 3, you will focus on implementation, monitoring, audits, and long-term responsible AI operations. You will learn how to build responsible AI principles into systems through guardrails, constraints, design-time governance, and runtime governance. You will explore model monitoring, incident response, drift detection, internal audits, documentation, traceability, and vendor risk management. The course also shows how strong AI governance can become a strategic advantage by building trust, improving reliability, reducing risk, and strengthening organizational credibility.

By the end of this certification, you will have a practical understanding of Responsible AI, AI ethics, AI governance, NIST AI RMF, EU AI Act, auditing, risk management, and compliance workflows for modern AI systems.

Who this course is for:

  • Business leaders, managers, and executives who want to understand how to adopt AI responsibly across teams and organizations.
  • Product managers, project managers, and program managers working on AI-powered products, platforms, or automation initiatives.
  • Compliance, risk, legal, audit, and governance professionals who need a practical introduction to AI oversight and responsible AI practices.
  • HR, operations, finance, healthcare, education, and business professionals who want to understand how AI decisions can affect people and organizations.
  • Data, technology, and AI professionals who want to strengthen their knowledge of AI ethics, bias, fairness, transparency, monitoring, and governance.
  • Consultants and advisors helping organizations evaluate AI systems, vendors, risks, policies, and compliance requirements.
  • Entrepreneurs and startup founders building AI products who want to create trustworthy, responsible, and regulation-aware solutions.
  • Anyone interested in learning how frameworks like the NIST AI Risk Management Framework and the EU AI Act apply to real-world AI systems.
  • Professionals who want to move beyond simply using AI tools and learn how to evaluate whether AI systems are safe, fair, accountable, and reliable.
  • Beginners from both technical and non-technical backgrounds who want a clear, practical foundation in Responsible AI and AI Governance.