AI Business
AI+ Chief AI Officer
This course prepares C-level executives for the Chief AI Officer (CAIO) role by learning to drive AI strategy, manage risks, and enable data-driven decision-making. Gain skills in AI roadmaps, team building, regulations, and impact assessment.
1 Day (8 hours)

Targeted Audience
Chief Artificial Intelligence Officer (CAIO)
Chief Technology Officer (CTO)
Chief Information Officer (CIO)
AI Strategy Consultant
Prerequisites for Success
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Must have experience in a leadership or business admin role.
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Basic understanding of business management and strategies.
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Familiarity with fundamental AI concepts and technologies is recommended but not mandatory

Modules | 8
Examination | 1
Passing Score | 70%
COURSE AGENDA
Module 1: Foundations of AI and Leadership in the Digital Era
1.1 Defining Artificial Intelligence
1.2 Key AI Technologies
1.3 The CAIO’s Unique Role
1.4 Navigating Cybersecurity Challenges
1.5 Establishing Cross-Departmental Collaboration
1.6 Case Study
Module 2: Crafting a Strategic AI Roadmap
2.1 Aligning AI with Business Objectives
2.2 Setting Measurable Goals
2.3 Identifying Opportunities for Innovation
2.4 Engaging Stakeholders Across Departments
2.5 Monitoring Progress and Adjusting Plans
2.6 Case Study
Module 3: Building a High-Performance AI Team
3.1 Key Roles in an AI Team
3.2 Recruitment Strategies for Top Talent
3.3 Cultivating a Collaborative Culture
3.4 Continuous Learning Initiatives
3.5 Evaluating Team Performance
3.6 Case Study
Module 4: Ethics in AI Governance and Risk Management
4.1 Integrating Ethical Frameworks into AI Development
4.2 Conducting Ethical Impact Assessments
4.3 Developing Risk Mitigation Strategies
4.4 Establishing Transparency Protocols
4.5 AI Governance Models and Frameworks
4.6 Case Study
Module 5: Data-Driven Decision-Making and Business Impact Assessment
5.1 The Role of Data in AI Initiatives
5.2 Business Impact Assessment Frameworks
5.3 Measuring ROI from AI Investments
5.4 Hypothesis Testing in AI Projects
5.5 Resource Allocation Strategies
5.6 Case Study
Module 6: Driving Organization: Wide Adoption of AI
6.1 Creating Change Management Strategies
6.2 Communicating the Value of AI Initiatives
6.3 Addressing Resistance to Change
6.4 Metrics for Success Evaluation
6.5 Case Study
Module 7: Leveraging Generative AI for Business Innovation
7.1 Understanding Generative AI Capabilities
7.2 Identifying Areas for Innovation with Generative AI
7.3 Integrating Generative Solutions into Business Processes
7.4 Managing Risks Associated with Generative Applications
7.5 Creating Interdepartmental Synergies with Generative AI
7.6 Case Study
Module 8: Capstone Project
8.1 Project Overview and Objectives
8.2 Collaborative Work Sessions
8.3 Presentation Skills Workshop
8.4 Final Presentations and Constructive Feedback
8.5 Reflection on Key Takeaways from the Course Experience