Event Information
0–10 minutes – Opening and Framing:
Introduce the session’s focus on moving AI from an efficiency tool to a driver of student outcomes. Engage attendees with a quick live poll on AI readiness and a short discussion on district challenges.
10–25 minutes – Superintendent Perspective:
Dr. Owoh shares how Jacksonville North Pulaski aligned AI with board goals, accountability metrics, and improvement plans. Participants reflect on which district goals AI could help accelerate and discuss briefly with peers.
25–40 minutes – Curriculum and Classroom View:
Curriculum coordinator and teacher discuss implementation models, professional learning, and equity impacts across K–12. Participants identify one instructional challenge and map how AI could address it.
40–55 minutes – Data and Outcomes:
Present real growth data from urban and rural districts with different demographics. Attendees review sample AI dashboards and discuss how similar data could inform interventions in their own districts.
55–60 minutes – Action Planning and Closing:
Participants outline one next step for piloting or scaling AI in their context and complete a one-minute reflection. A QR code will link to a downloadable “AI for Student Growth” framework.
Engagement frequency: Attendees interact every 10 minutes through polls, pair-shares, data analysis, and planning prompts to ensure continuous reflection and application.
After this session, participants will be able to:
1. Identify district-level opportunities to use AI as a lever for improving student outcomes and equity across diverse populations.
2. Analyze case studies from urban and rural districts to determine key success factors in scaling AI initiatives with measurable impact.
3. Design an actionable framework aligning AI implementation with board goals, accountability systems, and instructional improvement plans.
4. Implement strategies to strengthen teacher buy-in, professional learning, and classroom fidelity.
5. Evaluate evidence of impact using AI-enabled data dashboards to inform continuous improvement cycles.
1. Bloom, B. S. (1984). The 2 Sigma Problem: The Search for Methods of Group Instruction as Effective as One-to-One Tutoring.
2. Darling-Hammond, L., et al. (2020). The Learning Policy Institute: Effective Professional Development.
3. U.S. Department of Education, Office of Educational Technology. (2023). AI and the Future of Teaching and Learning: Insights and Recommendations.
4. Pane, J. F., et al. (2015). RAND Corporation: Continued Progress: Promising Evidence on Personalized Learning.
5. Hattie, J. (2012). Visible Learning: A Synthesis of Over 800 Meta-Analyses Relating to Achievement.
6. Kulik, J. A., & Fletcher, J. D. (2016). Effectiveness of Intelligent Tutoring Systems: A Meta-Analytic Review.
7. Fullan, M., & Quinn, J. (2016). Coherence: The Right Drivers in Action for Schools, Districts, and Systems.
8. ISTE (2024). AI in Education: Practical Strategies for Schools.
9. Zhao, Y. (2023). Learners Without Borders: New Learning Ecosystems for an AI World.
10. Thinkverse Internal Case Studies (2025). District Implementation Impact Reports: Urban and Rural Comparisons.
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