Prerequisites
The Roadmap
AI Literacy: What Leaders Must Know
1–2 weeksBuild a clear mental model of what AI is, how it works at a conceptual level, and what it can realistically achieve. Understand the difference between Machine Learning, Deep Learning, and Generative AI. Learn to separate genuine capabilities from hype, and understand the key limitations that affect business decisions.
Identifying AI Opportunities in Your Business
1–2 weeksLearn a systematic framework for identifying where AI can create the most value in your organization. Understand which problems are good fits for AI (and which aren't), how to prioritize AI initiatives by impact and feasibility, and how to build business cases that quantify the ROI of AI investments.
Building & Managing AI Teams
1 weekUnderstand the AI talent landscape — what roles you need, where to find talent, how to evaluate AI professionals, and how to structure AI teams for success. Learn the difference between centralized and embedded AI teams, and how to create a culture where AI initiatives thrive rather than stall.
AI Ethics, Risk & Governance
1 weekAI introduces new risks — bias in decision-making, privacy violations, regulatory compliance, reputational damage, and security vulnerabilities. Learn the governance frameworks, risk assessment approaches, and responsible AI principles that protect your organization while enabling innovation.
AI Strategy & Transformation
1 weekSynthesize everything into a coherent AI strategy for your organization. Learn to create an AI roadmap, secure executive sponsorship and board buy-in, manage organizational change, measure AI success, and position your company competitively in an AI-driven market.
Tools & Technologies
Career Outcomes
Frequently Asked Questions
Do business leaders need to learn to code?
No. Business leaders need AI literacy — understanding what AI can do, its limitations, and how to evaluate AI proposals — not coding skills. Your role is to identify opportunities, make investment decisions, build teams, and drive organizational adoption. Leave the coding to your technical team.
How do I convince my board to invest in AI?
Start with a specific, high-impact use case that has quantifiable ROI — not a vague 'AI transformation' initiative. Show the business case: what it costs, what it saves, and the timeline to value. Reference competitors using AI. Start small with a pilot project, demonstrate results, then scale. Boards respond to numbers and demonstrated impact, not AI hype.
What's the biggest mistake companies make with AI?
Starting with technology instead of business problems. Companies buy AI tools then look for problems to solve, instead of identifying their highest-value business challenges and then evaluating whether AI is the right solution. The second biggest mistake is underinvesting in data quality and organizational change management.
How long does AI transformation take?
A single AI pilot project can show results in 3-6 months. Becoming an AI-driven organization is a multi-year journey. Most companies follow a pattern: pilot (3-6 months) → prove value (6-12 months) → scale successful projects (12-24 months) → embed AI into culture and processes (ongoing). The key is starting now and learning by doing.

