Udemy
    •  
    •  
    •  
    •  
    •  
    •  
    •  
    •  
Bereik wereldwijd miljoenen mensen door optimaal gebruik te maken van je kennis.
Meer informatie
Je winkelwagentje is leeg.
Verder winkelen
Artificial Intelligence Governance Professional (AIGP)
Rollenspel
Score 4,3 van de 5(898 scores)
6.377 studenten
Laatst bijgewerkt: 3-2026
Engels

Wat je leert

  • Policy Makers – Develop AI governance frameworks that align with legal and ethical standards.
  • Compliance Officers – Ensure AI systems comply with global regulatory requirements and industry best practices.
  • Business Executives – Understand the risks and opportunities of AI governance in corporate decision-making.
  • Data Scientists – Implement AI models that adhere to fairness, transparency, and accountability principles.
  • Legal Professionals – Analyze AI-related laws, regulations, and liability concerns in various jurisdictions.
  • Cybersecurity Experts – Mitigate risks related to AI security, data privacy, and adversarial attacks.
  • AI Researchers – Incorporate responsible AI principles into research and development processes.
  • Product Managers – Design AI-driven products with governance, compliance, and ethical considerations in mind.
  • Educators & Trainers – Teach AI governance principles to students and professionals effectively.
  • Investors & Venture Capitalists – Assess AI startups for ethical risks, governance maturity, and regulatory compliance.

Cursusinhoud

10 secties114 collegesTotale lengte van 9u 47m
  • Artificial Intelligence Governance Professional (AIGP) Study Guide0:05

    Artificial Intelligence Governance Professional (AIGP) Study Guide

    Please download the study guide from the course resource link

    Artificial Intelligence Governance Professional (AIGP)

  • AIGP Study Guide (Downloadable Resource)0:20
  • What Is the AIGP Certification1:15

    Learn what the AIGP certification is, why it was developed by the International Association of Privacy Professionals (IAPP), and how it supports responsible AI governance across legal, ethical, and technical domains. This lecture introduces the value and global recognition of the AIGP credential in today’s AI-driven world.

  • What Is Artificial Intelligence (AI)?5:04

    This lecture explains what artificial intelligence really means in practice, why the term causes confusion in organizations, and how AI evolved from rule-based systems to data-driven learning. Learners gain a clear, usable definition of AI and understand the core components—technology, autonomy, human involvement, and output—that determine risk and governance needs.

  • AI as a Socio-technical System3:23

    This lecture explores AI as a socio-technical system where technology, people, workflows, and incentives interact. Learners see how AI outputs influence human behavior, how tools quietly become decision-makers, and why governance must address workflows and accountability, not just model accuracy.

  • Classifying AI Systems Using the OECD Five Dimensions4:44

    This lecture introduces the OECD’s five-dimension framework for classifying AI systems in a practical, non-technical way. Learners learn how classification clarifies risk by examining who is affected, the economic context, data inputs, model type, and system outputs, enabling better governance decisions.

  • Modern Drivers of AI and Data Science Adoption5:03

    This lecture explains why AI adoption has accelerated across organizations, covering cloud computing, data availability, improved models, specialized hardware, easier tools, and business pressure. Learners understand why AI scales quickly and why governance must be built for speed, not added afterward.

  • Types of AI – ANI, AGI, and ASI6:19

    This lecture clarifies the differences between Artificial Narrow Intelligence (ANI), Artificial General Intelligence (AGI), and Artificial Super Intelligence (ASI). Learners understand where today’s AI fits, what future forms of AI might involve, and why most governance applies to narrow, task-specific systems used today.

  • AI Uses and Impacts – Value and Opportunities4:12

    This lecture examines how organizations create value with AI through speed, scale, forecasting, detection, personalization, optimization, and interaction support. Learners also explore how these benefits introduce risk at scale and why value and governance must be considered together.

  • AI Use Cases and Benefits Overview3:59

    This lecture categorizes common AI use cases such as recognition, event detection, forecasting, personalization, optimization, recommendation, and interaction support. Learners learn how naming the use case makes AI easier to govern by revealing predictable risk patterns and oversight needs.

  • What Is AI Governance?4:18

    This lecture provides a clear, practical definition of AI governance and explains why it becomes essential once AI influences real outcomes. Learners understand governance as lifecycle oversight that enables accountability, transparency, and defensibility beyond one-time compliance.

  • Principles vs. Frameworks in AI Governance4:35

    This lecture distinguishes AI principles from AI governance frameworks and explains why organizations need both. Learners see how principles define values like fairness and transparency, while frameworks translate those values into repeatable processes and controls.

  • A Comprehensive Approach to AI Governance4:27

    This lecture outlines what a comprehensive AI governance approach looks like in practice, covering use cases, context, data, models, workflows, ownership, testing, and monitoring. Learners understand how governing the full system prevents real-world surprises and failures.

  • Common AI Models Explained4:16

    This lecture introduces common AI model types, including statistical models, decision trees, neural networks, and language models. Learners understand how model choice affects explainability, testing, monitoring, and governance expectations without needing deep technical knowledge.

  • How AI Systems Are Trained – Machine Learning Basics4:20

    This lecture explains how AI systems are trained using data rather than hand-written rules. Learners explore how training data, labels, metrics, and updates shape system behavior and why training decisions are central to AI risk and governance.

  • AI vs Machine Learning vs Deep Learning vs Generative AI4:13

    This lecture clarifies commonly confused AI terms and explains how AI, machine learning, deep learning, and generative AI relate to each other. Learners gain a vocabulary that helps them describe systems accurately and apply the right governance controls.

  • Types of Machine Learning Models4:21

    This lecture covers supervised, unsupervised, reinforcement, and semi-supervised learning, along with classification and regression models. Learners understand how different learning styles influence risk, explainability, and oversight requirements.

  • Transformers, NLP, and Multimodal Models4:38

    This lecture explains natural language processing, transformer models, and multimodal AI in plain language. Learners understand why modern AI tools feel powerful, where they commonly fail, and how governance manages risks like hallucination and overreliance.

  • AI Model Relationships and Tradeoffs4:26

    This lecture compares classic vs generative models, proprietary vs open-source systems, and small vs large language models. Learners understand how these choices affect control, cost, transparency, and organizational responsibility.

  • Expert Systems and Rule-Based AI4:29

    This lecture introduces expert systems and explains how rule-based AI differs from machine-learning systems. Learners see why expert systems still require governance, especially in regulated workflows, and how outdated rules can create automated harm.

  • AI Platforms and Common Organizational Use Cases4:10
  • Understanding the AI Technology Stack3:55

    This lecture breaks down the AI technology stack, including data, models, deployment, operations, security, and people. Learners gain a system-level view that helps them place governance controls where real risk appears.

  • Compute Infrastructure for AI Systems4:28

    This lecture explains compute, storage, networks, and software in a governance-friendly way. Learners understand how infrastructure choices affect privacy, security, reliability, and scalability, and why infrastructure is part of AI risk.

  • Observability and Monitoring in AI Systems4:04

    This lecture focuses on observability, monitoring, and incident response as essential components of AI governance. Learners learn how to detect data drift, performance issues, bias signals, and failures early, keeping AI systems safe after deployment.

  • Aligning AI System Definitions and Risk in Governance Discussions
  • AIGP Quiz

Vereisten

  • No prior experience in AI governance is required—this course covers everything from the basics to advanced topics.
  • A basic understanding of AI, technology, or business operations is helpful but not mandatory.

Beschrijving

This course contains the use of artificial intelligence. Fully Updated for the Latest IAPP AIGP Body of Knowledge (BoK) v2.1 — Effective February 2, 2026!

In today’s rapidly evolving AI landscape, businesses and institutions need experts in AI Governance, Ethics, and Compliance who can evaluate AI systems, curate standards, and implement strategies for adhering to AI regulations. This course is your comprehensive guide to mastering the skills required to become a certified Artificial Intelligence Governance Professional (AIGP).

This AIGP certification training equips professionals with the knowledge and skills to develop, integrate, and deploy trustworthy AI systems in alignment with emerging laws, policies, and AI risk management frameworks. We have meticulously updated our curriculum to cover every domain and competency in the latest IAPP AIGP BoK v2.1, ensuring you are fully prepared for the 2026 AIGP certification exam and beyond. Source

What You Will Learn

This course provides in-depth coverage of the four core domains of the IAPP AIGP certification:

Domain I: Foundations of AI Governance

  • Understand the complete AI system lifecycle, from development to deployment and monitoring.

  • Recognize and mitigate potential biases and ethical concerns in AI systems.

  • Evaluate and update data governance and intellectual property policies for AI.

  • Manage third-party risks with updated documents, assessments, and contracts. Source

Domain II: Legal and Regulatory Landscape

  • Gain a comprehensive understanding of international AI laws, standards, and compliance frameworks.

  • Learn how to align AI projects with legal requirements, including transparency and lawful basis for data processing.

  • Navigate the complexities of automated decision-making rules under data privacy laws.

  • Master key elements of AI-specific laws, including the EU AI Act, the South Korean AI Basic Law, and emerging U.S. federal and state regulations.

  • Familiarize yourself with crucial ISO standards, including the newly added ISO 42005. Source

Domain III: Governing AI Development

  • Implement robust governance for the design and construction of AI systems.

  • Oversee the collection and use of data for training and testing AI models and systems.

  • Manage the release, monitoring, and maintenance of AI systems effectively.

  • Apply risk assessment methodologies and compliance frameworks to ensure responsible AI development. Source

Domain IV: Governing AI Deployment and Use

  • Explore various AI deployment options, including newly introduced agentic architectures.

  • Implement operational governance and risk management strategies for AI in your organization.

  • Conduct thorough impact assessments and risk analyses.

  • Monitor AI system performance against established standards and best practices.

  • Develop and implement a comprehensive AI strategy and governance policies. Source

Get Certified and Advance Your Career

  • Master the 4 domains of the IAPP AIGP certification exam with 9+ hours of on-demand video and supplementary materials.

  • Prepare for the 2026 AIGP certification exam with expert-led training aligned to the latest BoK v2.1.

  • Develop a strong foundation in responsible AI governance and AI risk management frameworks.

  • Stay ahead of AI compliance regulations and best practices for responsible AI deployment.

This training is designed for professionals who want to lead in AI governance and ensure compliance with AI laws and ethical standards. Whether you’re an AI strategist, compliance officer, privacy professional, risk leader, or tech leader, this course will provide the practical skills and knowledge needed to succeed in the evolving AI regulatory landscape.

Voor wie is deze cursus bedoeld:

  • Policy Makers & Regulators – Professionals responsible for drafting AI-related policies and regulations.
  • Compliance Officers – Those ensuring AI systems align with legal and ethical guidelines.
  • Business Executives & Leaders – Decision-makers who want to integrate AI governance into corporate strategy.
  • Data Scientists & AI Engineers – Professionals looking to understand responsible AI development.
  • Legal Professionals & Lawyers – Those navigating AI-related laws, ethics, and compliance.
  • Cybersecurity Experts – Professionals securing AI systems and managing risks related to AI threats.
  • AI Product Managers – Individuals managing AI-driven products with a focus on compliance and governance.
  • Researchers & Academics – Those studying AI ethics, bias, and governance frameworks.
  • Ethicists & Social Scientists – Professionals focused on the societal impact of AI.
  • Investors & Venture Capitalists – Those assessing AI companies for ethical AI adoption and risk management.
  • Government & Public Sector Officials – Individuals ensuring AI is used responsibly in government projects.