Aigp Masterclass
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.00 GB | Duration: 16h 33m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.00 GB | Duration: 16h 33m
Master AI Risk, Ethics, and Compliance – Your Complete Guide to AIGP Certification by IAPP
What you'll learn
Privacy, Compliance, and Risk Professionals looking to expand their expertise into AI governance, including those with CIPP, CIPM, or CIPT certifications.
Technology and AI Practitioners such as data scientists, AI engineers, and product managers who need to understand ethical, legal, and risk considerations in AI
Corporate Leaders and Decision-Makers responsible for establishing AI strategies, governance frameworks, and compliance programs within their organizations.
Consultants and Auditors who support clients in implementing trustworthy AI systems and complying with emerging global AI regulations.
Requirements
Basic Understanding of AI Concepts – Familiarity with AI/ML fundamentals, use cases, or technologies will be helpful but not mandatory.
Knowledge of Privacy or Compliance – Prior exposure to data protection laws (like GDPR or DPDP Act) or risk frameworks is beneficial.
Description
Are you looking to become a Certified AI Governance Professional (AIGP)?The AIGP certification, offered by the IAPP, is the world’s first and only credential focused exclusively on AI governance. It equips professionals with the skills to manage risk, ensure compliance, and promote trustworthy AI systems within organizations.This course is based on official IAPP resources and is designed to help you master the AIGP Body of Knowledge efficiently. Through structured modules, real-life case examples, and exam-focused strategies, this course serves as a comprehensive guide to help you prepare confidently for the AIGP exam.What You’ll Learn:AI Governance Frameworks – Understand global standards, principles, and best practices for managing AI systems.Risk Management in AI – Identify, assess, and mitigate risks across the AI lifecycle.AI Accountability & Transparency – Learn how to build explainable, responsible, and auditable AI models.Privacy, Ethics, and Compliance – Align AI practices with privacy laws, ethical norms, and emerging regulations.Exam Preparation & Real-World Application – Strengthen your understanding with practical scenarios and expert tips.Who Should Enroll?This course is ideal for privacy professionals, risk managers, compliance officers, AI developers, data scientists, legal experts, and consultants aiming to lead or advise on responsible AI use.Master the knowledge and skills needed to drive ethical AI governance in your organization. Enroll today and take the first step toward becoming a certified AI governance leader!
Overview
Section 1: Definitions and Types of AI
Lecture 1 What is Aritificial Intelligence (AI)?
Lecture 2 Types of AI
Section 2: Risks and Harms of AI
Lecture 3 AI Bias
Lecture 4 AI Harms to Individuals
Lecture 5 AI Harms to Groups
Lecture 6 AI Harms to Societies
Lecture 7 AI Harms to Organizations
Lecture 8 AI Harms to Environment
Section 3: AI Characteristics Requiring Governance
Lecture 9 Complexity and Opacity
Lecture 10 Autonomy
Lecture 11 Speed and Scale
Lecture 12 Potential for Harm and Misuse
Lecture 13 Data Dependency
Lecture 14 Probabilistic versus Deterministic Outputs
Section 4: Principles of Responsible AI
Lecture 15 Introduction
Lecture 16 Fairness and Inclusiveness
Lecture 17 Transparency and Explainability
Lecture 18 Accountability and Responsibility
Lecture 19 Reliability and Safety
Lecture 20 Privacy and Security
Lecture 21 Human Oversight and Agility
Section 5: Establishing Organizational AI Governance
Lecture 22 Roles and Responsibilities
Lecture 23 Cross-Functional Collaboration
Lecture 24 Training and Awareness Programs
Lecture 25 Governance Approaches Based on Organization Type
Lecture 26 Developer vs. Deployer vs. User Distinctions
Section 6: AI lifecycle Policies and Procedures - Oversight and Accountability
Lecture 27 Use Case Assessment Frameworks
Lecture 28 Risk Management Methodologies
Lecture 29 Ethics-by-Design Principles
Lecture 30 Data Acquisition and Use Policies
Lecture 31 Model Development Standards
Lecture 32 Training and Testing Requirements
Lecture 33 Deployment and Monitoring Procedures
Section 7: AI Lifecycle Policies and Procedures - Data Privacy and Security for AI
Lecture 34 Evaluating Existing Policies
Lecture 35 AI-Specific Privacy Considerations
Lecture 36 Security Requirements for AI Systems
Lecture 37 Privacy-Preserving AI Techniques
Lecture 38 Policy Updates and Implementation
Section 8: AI Lifecycle Policies and Procedures - Third-Party Risk Management
Lecture 39 Third Party Risk Management
Section 9: Data Privacy Laws and AI
Lecture 40 Notice, Choice, and Consent Requirements
Lecture 41 Data Minimization and Privacy by Design
Lecture 42 Data Controller Obligations
Lecture 43 Sensitive Data Requirements
Section 10: Other Legal Frameworks for AI
Lecture 44 Intellectual Property Laws
Lecture 45 Non-Discrimination Laws
Lecture 46 Consumer Protection Framework
Lecture 47 Product Liability Laws
Section 11: EU AI Act Framework
Lecture 48 Risk Classification Framework
Lecture 49 Requirements by Risk Category
Lecture 50 General Purpose AI Model Requirements
Lecture 51 Enforcement Framework
Lecture 52 Organizational Context Requirements
Section 12: Industry Standards and Tools
Lecture 53 OECD AI Framework
Lecture 54 NIST AI Risk Management Framework
Lecture 55 NIST ARIA Program
Lecture 56 ISO AI standards (i.e., 22989 and 42001)
Section 13: Governing AI Development - AI Model Design and Build Governance
Lecture 57 Business Context Definition
Lecture 58 Impact Assessment
Lecture 59 Legal Compliance Analysis
Lecture 60 Governance Application in Design
Lecture 61 Risk Management in Design
Lecture 62 Design Documentation
Section 14: Governing AI Development - Data Governance for AI Training and Testing
Lecture 63 Data Governance Requirements
Lecture 64 Data Lineage and Provenance
Lecture 65 Training and Testing Procedures
Lecture 66 Issue and Risk Management
Lecture 67 Training and Testing Documentation
Section 15: Governing AI Development -Release, Monitoring, and Maintenance Governan
Lecture 68 Production Release Readiness
Lecture 69 Continuous Monitoring
Lecture 70 Performance Assessment
Lecture 71 Incident Management
Lecture 72 Cross-Functional Incident Analysis
Lecture 73 Public Disclosures
Section 16: Governing AI Deployment and Use - Deployment Decision Factors
Lecture 74 AI Use Case Context
Lecture 75 AI Model Type Selection
Lecture 76 Deployment Option Evaluation
Section 17: Governing AI Deployment and Use - AI Model Assessment
Lecture 77 Impact Assessment
Lecture 78 Legal Compliance Analysis
Lecture 79 Vendor/Open Source Agreement Evaluation
Lecture 80 Proprietary Model Considerations
Section 18: Governing AI Deployment and Use - Deployment and Use Governance
Lecture 81 Policy and Procedure Application
Lecture 82 Continuous Monitoring
Lecture 83 Performance Assessment
Lecture 84 Documentation Practices
Lecture 85 Risk Management for Unintended Use
Lecture 86 External Communication
Lecture 87 Deactivation and Localization
Privacy and Data Protection Professionals looking to expand their skillset into AI governance.,Compliance Officers and Risk Managers seeking to manage AI-related regulatory and operational risks.,AI and Data Science Practitioners who want to integrate ethical, legal, and accountability principles into AI development.,Legal Advisors and Consultants supporting organizations on responsible AI use and compliance strategies.,Policy Makers and Technology Leaders tasked with shaping internal AI governance frameworks and aligning with global standards.