Dr. LauraAnn

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Dr. LauraAnn

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    • About Dr. LauraAnn
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  • About Dr. LauraAnn
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Call for Chapters: Forthcoming IGI-Global Book

  

Inspiring Transformation Through AI-Powered Whole-Person Leadership unites faith, science, and applied research to reveal how synchronicity, self-efficacy, and servant leadership can illuminate a path toward purpose-filled, ethical innovation in an AI-driven world. Edited by Dr. LauraAnn Migliore. 

Submit a Chapter Proposal

Collaborative Synergy Learning Model (CSLM)

Building Self-Efficacy in an AI-Driven Learning Ecosystem

The Collaborative Synergy Learning Model (CSLM) reimagines learning as a transformative quest fueled by curiosity, mystery, and awe. Rooted in faith, science, and psychology, CSLM integrates Jung’s synchronicity, Bandura’s self-efficacy, and the wisdom of Proverbs 25:2 to build confidence and purpose in learning. Through ethical collaboration with AI and the 70-20-10 learning ratio design, CSLM equips educators and leaders to create environments where leadership and learning grow together – preparing people to thrive with integrity in an AI-driven world.

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Dr. LauraAnn

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Advancing Scholarly Excellence in an AI-Driven World

Email: doc@drlauraann.com

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