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Final Assessment

AI Leadership for School Coordinators and Institution Heads — Final Assessment

Forty questions across the orientation and ten modules — including scenario, policy-interpretation, risk-classification and vendor-comparison items. Pass mark 80%. Every question explains why answers are correct or incorrect. Attempt again after focused remediation if needed.

1. What must an institutional AI leadership programme enable, beyond tool use?

2. Before adopting AI, what should a leader assess first?

3. In a RACI, how many people are Accountable for a decision?

4. Who remains accountable for an AI outcome when the tool is a third-party product?

5. What is the real goal of teacher AI capacity building?

6. Why is mandating unprepared AI adoption a governance risk?

7. How should responsible AI principles be applied?

8. What does proportionality require before an intrusive AI tool is adopted?

9. Which AI use case belongs in the prohibited tier for schools?

10. What is the clearest red line in a school acceptable-use policy?

11. Why must prompt data be treated as potentially sensitive?

12. What does data minimisation require?

13. How should a course treat legal claims about children's data?

14. Why is shadow AI a governance concern?

15. What is the correct first action when student data is exposed to a public AI tool?

16. Why are low-bandwidth and shared-device support requirements, not extras?

17. Which vendor criteria most protect student data?

18. Why can a 'free' public AI tool cost more overall than a paid platform?

19. What should drive an AI vendor decision?

20. What is the constant that must accompany AI use in teaching?

21. Can an AI-detection score be the sole basis for a misconduct finding?

22. What is the most durable response to AI in assessment?

23. What distinguishes proportionate monitoring from surveillance?

24. Why is rising AI usage an insufficient measure of value?

25. What is the correct focus of effective incident management?

26. Why state where AI is NOT used when communicating to parents?

27. Why must an AI adoption include a non-AI alternative?

28. Why consult students and parents before adoption?

29. Where should an institution start prioritising AI use cases?

30. Why must a ninety-day pilot include a stop criterion?

31. What is the purpose of a decision gate between roadmap phases?

32. How should a capstone answer a board's 'why fund uncertain AI?' question?

33. What must the capstone plan acknowledge about its content?

34. Should this course or its certificate claim government or board accreditation?

35. What must every module require of the learner at least once?

36. How should factual, legal or regulatory statements be handled?

37. Should the embedded AI assistant answer graded assessment questions?

38. What is the passing score for the final knowledge assessment?

39. What is the recommended capstone passing score?

40. What is the practical output a learner produces by completing the programme?

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