The book covers theoretical foundations on how LLMs can enhance learning, cognitive reinforcement, improving learning efficiency, and personalization in learning, applications across the curriculum, teacher training and support for LLM integration, using in assessment and evaluation, and measuring the impact and affordances of LLMs. It acknowledges the challenges that come with integrating LLMs into education and will address the responsible development and deployment strategies to ensure that the models become powerful tools for good in the hands of educators. It explores potential research directions, such as the development of domain-specific models, and the creation of ethical frameworks for LLM use in education. As education enters an era of AIenablement, this visionary book equips teachers, administrators, technologists, and policymakers with an authoritative guide to harnessing the power of large language models. Readers will discover how these advanced systems can expand access to quality education, tailor learning experiences, and nurture the innovators and critical thinkers of tomorrow, and glimpse into the future of learning and education with LLMs.
Large language models (LLMs), advanced AI systems trained on vast text datasets, are reshaping education. This book explores their role in revolutionizing learning through cognitive reinforcement, personalization, curriculum-wide applications, and teacher training.
PART I: FOUNDATIONS, FRAMEWORKS, AND ETHICAL CONSIDERATIONS.
Responsible, Ethical, and Effective Use of LLMs in Higher Education.
Prompting Learning: The EPICC Framework for Effective Prompt Engineering in
Education. Improving Large Foundation Models in Education for Multi-cultural
Understanding. Engagement Dynamics in AI-Augmented Classrooms: Factors and
Evolution. Engagement Diversity in AI-Enhanced Learning: Demographic and
Disciplinary Perspectives. PART II: PRACTICAL TOOLS AND APPLICATIONS FOR
EDUCATORS. vTA: How an Instructor Leverages Large Language Models for
Superior Student Learning. A Step Towards Adaptive Online Learning: Exploring
the Role of GPT as Virtual Teaching Assistants in Online Education. Leverage
LLMs on Knowledge Tagging for Math Questions in Education. The Educators
Co-Pilot: Leveraging Generative AI and OERs for Learning Path Design. PART
III: STUDENT-CENTERED LEARNING AND EMERGING TRENDS WITH AI. CHAPTER 10:
Examining Graduate Students Experiences in Using Generative AI for Academic
Writing: Insights from Cambodian Higher Education. Generating Feedback for
Programming Exercises with OpenAIs o1-preview. From Algorithms to
Classrooms: The Future of Education with Large Language Models.
Myint Swe Khine holds Master's degrees from the University of Southern California, USA, and the University of Surrey, UK, as well as a Doctor of Education from Curtin University, Australia. He has worked at the National Institute of Education at Nanyang Technological University, Singapore, and was a Professor at Emirates College for Advanced Education in the United Arab Emirates. He currently teaches at the School of Education, Curtin University, Australia.
László Bognár is a distinguished professor of Applied Statistics at the University of Dunaújváros, Hungary, with a focus on Statistics in Educational Sciences, Six Sigma, and Quality Statistics. Dr. Bognár has served in various leadership roles, including rector, director-general, deputy director-general, and the President of the Chamber of Engineers of Fejér County, contributing significantly to the engineering and academic communities.
Ernest Afari holds a PhD in Mathematics Education from Curtin University, Australia, and an MSc (Mathematics) from the University of British Columbia, Vancouver, Canada. His research focuses on structural equation modeling, psychometrics, and the application of statistical procedures to education. He currently teaches at the University of Bahrain, Kingdom of Bahrain.