AI Risk Tri-Defense: Applying the Three-Lines-of-Defense Model Training Course

 

AI Risk Tri-Defense: Applying the Three-Lines-of-Defense Model Training Course

Introduction

As organizations increasingly adopt Artificial Intelligence (AI) in critical business operations, managing AI-related risk has become a strategic priority. Traditional risk management frameworks often fail to address the complexity of AI systems, which can introduce operational, compliance, ethical, and reputational risks. The AI Risk Tri-Defense: Applying the Three-Lines-of-Defense Model Training Course equips professionals with the knowledge and practical skills to integrate AI risk into the widely recognized Three-Lines-of-Defense (3LOD) model, ensuring effective governance, accountability, and resilience.

This course guides participants through the application of AI-specific risk controls across operational management, risk oversight, and independent assurance layers. Using practical case studies, simulations, and governance frameworks such as ISO 31000 and NIST AI RMF, participants will learn how to strengthen AI risk monitoring, define clear responsibilities, and ensure regulatory compliance. By mastering AI risk tri-defense strategies, leaders and risk professionals will be able to safeguard their organizations from emerging AI threats while maintaining operational efficiency, ethical standards, and stakeholder trust.

Target Audience

  • AI governance officers and risk managers
  • Compliance and regulatory affairs professionals
  • Internal audit and assurance teams
  • Operational managers overseeing AI implementations
  • IT and cybersecurity leaders managing AI systems
  • Policy advisors in AI strategy and regulation
  • Enterprise risk management consultants
  • Board members and executive leadership teams

Duration

10 days

Course Objectives

  1. Understand the Three-Lines-of-Defense model and its application to AI risk.
  2. Identify operational, compliance, and ethical risks in AI systems.
  3. Design AI risk policies and governance frameworks aligned with 3LOD.
  4. Implement monitoring and reporting mechanisms for AI risk.
  5. Strengthen internal controls for AI model development and deployment.
  6. Integrate AI risk management with enterprise risk and compliance programs.
  7. Conduct independent assurance and audit on AI systems.
  8. Apply ISO 31000 and NIST frameworks to AI governance.
  9. Enhance organizational accountability and transparency in AI use.
  10. Assess emerging AI risks and anticipate regulatory changes.
  11. Build cross-functional teams for effective AI risk oversight.

Physical Training Schedule

Start & End Date

Location

Fee (USD)

Register

Jan 5- Jan 16, 2026

Kigali

3,950

Jan 19-Jan 30, 2026

Nairobi

2,450

Feb 2- Feb 13, 2026

Mombasa

3,250

Feb 16- Feb 27, 2026

Nairobi

2,450

Mar 2- Mar 13, 2026

Kigali

3,950

Mar 16- Mar 27, 2026

Nairobi

2,450

Apr 6- Apr 17, 2026

Dar es Salaam

3,950

Apr 13- Apr 24, 2026

Nairobi

2,450

May 4- May 15, 2026

Pretoria

4,000

May 18- May 29, 2026

Nairobi

2,450

June 1- June 12, 2026

Mombasa

3,240

June 15- June 26, 2026

Nairobi

2,450

July 6- July 17, 2026

Nairobi

2,450

July 20- July 31, 2026

Dar es Salaam

3,950

Aug 3- Aug 14, 2026

Nairobi

2,450

Aug 17- Aug 28, 2026

Kigali

3,950

Sep 7- Sept 18, 2026

Nairobi

2,450

Sep 14- Sept 25, 2026

Pretoria

4,000

Oct 5- Oct 16, 2026

Nairobi

2,450

Oct 19- Oct 30, 2026

Mombasa

3,250

Nov 2- Nov 13, 2026

Nairobi

2,450

Nov 16- Nov 27, 2026

Kigali

3,950

Dec 7 – Dec 18, 2026

Nairobi

2,450

Online Training Schedule

Start & End Date

Fee (USD)

Register

Jan 5-Jan 16, 2026

1,200

Feb 2- Feb 13, 2026

1,200

Mar 2- Mar 13, 2026

1,200

Apr 6 – Apr 17, 2026

1,200

May 4 – May 15 , 2026

1,200

Jun 1 – Jun 12, 2026

1,200

July 6 – July 17, 2026

1,200

Aug 3 – Aug 14, 2026

1,200

Sept 7 – Sept 18, 2026

1,200

Oct 5 – Oct 16, 2026

1,200

Nov 2 – Nov 13, 2026

1,200

Dec 7 – Dec 18, 2026

1,200

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