Use AI as a strategic analysis accelerator. Sharpen stakeholder analysis, process mapping, options and trade-off analysis, and executive-ready documentation, then build your own custom AI assistant for recurring analysis work.
This free AI for Business Analysts course is built for mid-career analysts, product and business strategists, and management consultants who want AI to sharpen their thinking, not replace it. The focus is the strategic core of the role: framing messy problems, analyzing stakeholders, mapping processes, comparing options, designing solutions, and turning dense analysis into executive-ready narratives. It is fully no-code, so you spend your time on judgment instead of tooling.
Across nine short lessons you will learn to use AI as a thinking partner with a reliable prompt structure, draft and correct stakeholder maps, convert interview notes into clear process maps, build weighted options grids, pressure-test solution designs, and write summaries, roadmaps, and board narratives that land. You will also build a reusable custom AI assistant so your standards and templates travel from project to project, and you will fold it all into one repeatable, AI-augmented workflow you can run on a real engagement.
Every lesson keeps the analyst in control: AI drafts and challenges, you decide and verify. You will learn where AI quietly hurts your credibility, how to keep confidential data out of unapproved tools, and why every fact needs checking before it reaches a stakeholder. The course is 100% free and includes a free certificate of completion you can add to your resume or LinkedIn profile.
4 modules • 9 lessons
It is for mid-career business analysts, product and business strategists, and management consultants who want to apply AI to the strategic and analytical core of their work. It is beginner friendly and assumes no prior AI experience.
No. This course stays in the strategic-analysis lane: stakeholder analysis, process mapping, options and trade-off analysis, solution design, and executive communication. Technical data work like SQL and dashboards is covered by separate courses.
No. Every core technique works on free AI plans. One lesson covers building custom AI assistants, where building a Custom GPT or a Claude Project requires a paid plan as of mid-2026, and it shows a free-plan alternative using a saved reusable prompt.
No. The whole course is built on one rule: AI drafts and challenges, you decide and verify. AI accelerates the drafting and stress-testing, while judgment, political reads, and accountability stay with you.
Yes. The course is 100% free with no trial or payment. Finish the lessons and pass the final exam to earn a free certificate of completion you can add to your resume or LinkedIn profile.

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