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The Impact of Artificial Intelligence on Education in the United States

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Dissertation

Degree:
The Impact of Artificial Intelligence on Education in the United States

Author:

Group

First M. Last

Advisor:

Dr. First Last

City, 2026

Contents

Abstract
Introduction
1.1 Problem Statement: The Rapid Integration of AI in US Classrooms
1.2 Purpose of the Study: Evaluating Educational Equity and Efficiency
1.3 Research Questions and Hypotheses
1.4 Significance of the Study for US Educational Policy
1.5 Definition of Key Terms in Artificial Intelligence and Pedagogy
Chapter 1. Theoretical Framework
1.1 Connectivism: Learning in the Digital Age
1.2 Cognitive Load Theory and AI-Enhanced Instructional Design
1.3 The Technology Acceptance Model (TAM) in Educational Settings
1.4 Constructivist Perspectives on Personalized AI Tutors
1.5 Socio-Technical Systems Theory and Institutional Change
Chapter 2. Methodological Approaches
2.1 Population and Sampling: Surveying US K-12 and Higher Ed
2.2 Instrumentation and Data Collection Protocols
2.3 Ethical Considerations and IRB Compliance
Analysis
3.1 Historical Evolution of EdTech to Generative AI
3.2 Quantitative Trends in Federal and State AI Funding
3.3 Qualitative Assessment of Teacher Pedagogical Shifts
3.4 Legislative Environment: US Department of Education Guidelines
3.5 Effectiveness of Generative AI in Writing and Literacy Instruction
3.6 Impact of AI Tools on STEM Engagement and Proficiency
3.7 Socioeconomic Disparities in AI Literacy and Access
Chapter 4. Discussion and Interpretation
Conclusion
Bibliography

Introduction

The rapid proliferation of algorithmic systems across American classrooms has moved beyond mere technological adoption, evolving into a fundamental restructuring of how knowledge is produced and assessed. Global analyses of scientific output indicate a surge in research regarding the integration of automated systems, signaling a transition from experimental pilot programs to institutionalized digital frameworks (Cabanillas-García). Within the United States, this transition is particularly pronounced as higher education institutions find themselves at the epicenter of a technological shift that challenges traditional pedagogical assumptions. Stakeholder perceptions vary significantly across the academic landscape, as faculty and administrators navigate the tension between innovation and the potential erosion of academic integrity (Lawrence). The urgency of this study arises from the speed at which these technologies have been deployed, often outpacing the development of ethical guidelines or institutional policies. American universities currently face a dual challenge: the need to modernize curricula to remain competitive and the responsibility to protect the equity of the educational experience. Evidence suggests that student knowledge and ethical perceptions regarding artificial intelligence are often fragmented, with many undergraduates viewing these tools through a lens of efficiency rather than critical engagement (Basch). This disconnect creates a vulnerability within the educational system where the tools of instruction may inadvertently undermine the goals of critical thinking. Systematic reviews of generative artificial intelligence themes indicate that the primary disruption lies in how students and educators interact with content generation (Nguyen). As these technologies become ubiquitous, the traditional metrics for evaluating student performance are becoming obsolete, necessitating a total re-evaluation of assessment paradigms. The core problem addressed in this research is the lack of a cohesive policy framework that addresses the socio-economic consequences of artificial intelligence integration in the United States. While the promise of personalized learning persists, the reality often involves deepening systemic inequities. Disparities in institutional funding for research and implementation create a stratified landscape where well-resourced universities pioneer proprietary tools while underfunded institutions struggle with basic digital literacy and access (Xiang). This digital divide is not merely a matter of hardware but extends to the quality of the algorithmic tools available to different demographic groups. The absence of standardized implementation strategies means that the benefits of automated instruction are distributed unevenly, potentially widening the achievement gap that has long plagued the American educational system. Central to this inquiry is a primary research question: How does the integration of artificial intelligence-driven teaching strategies and institutional funding structures influence educational equity and pedagogical quality within the United States higher education system? To address this, the study investigates whether current implementation strategies prioritize institutional efficiency over student-centered learning outcomes. It further explores the extent to which generative tools have forced a shift in assessment methods and whether these shifts are consistent across different academic disciplines. By examining these variables, the research seeks to identify the specific points where technological integration conflicts with the democratic goals of public and private education. The primary aim of this dissertation is to evaluate the multifaceted impact of artificial intelligence on educational quality, equity, and institutional governance within the United States. Achieving this goal requires a structured approach focused on four specific objectives. First, the study analyzes artificial intelligence-driven teaching strategies in U.S. higher education to determine their effectiveness in enhancing student engagement. Second, it assesses institutional funding disparities in research to highlight the economic barriers to equitable implementation. Third, the research examines the shift in assessment paradigms triggered by the rise of generative tools. Finally, the study proposes policy frameworks designed to ensure that the future of automated education is both equitable and pedagogically sound. The object of this study is the United States educational system, with a specific focus on post-secondary institutions. The subject of the research encompasses the implementation and socio-economic consequences of these technologies, particularly regarding how they reshape institutional power dynamics and instructional practices. By distinguishing between the system as a whole and the specific technological interventions within it, the study maintains a focus on the structural changes occurring in American academia. This distinction is vital for understanding how local implementations are influenced by broader economic and political pressures. The scope of this research is delimited to the United States educational context between 2020 and 2026, a period marked by the rapid emergence of large language models and automated tutoring systems. While international trends are considered to provide context (Cabanillas-García), the primary analysis remains focused on American institutional structures. The study does not attempt to evaluate the technical architecture of specific algorithms; instead, it focuses on their application and social impact. Furthermore, while K-12 education is referenced where relevant, the primary emphasis is on higher education due to its role as a primary site for both the development and adoption of high-level algorithmic tools. The theoretical significance of this work lies in its contribution to the growing body of literature on digital pedagogy and the sociology of education. It challenges the techno-optimist narrative that often dominates discussions of educational technology, providing a more nuanced view of how automation affects the labor of teaching and the process of learning. Practically, the research offers significant value to university administrators, policymakers, and educators who are currently tasked with drafting guidelines for the use of generative tools. By providing evidence-based recommendations for equitable implementation, this study serves as a resource for mitigating the risks associated with the digital divide. The influence of these technologies is not uniform across all fields of study. In mathematics education, global trends suggest a move toward automated tutoring systems that provide real-time feedback and personalized learning paths (Nanda). Similarly, chemistry education utilizes digital availability to simulate complex laboratory environments, allowing for a more flexible approach to STEM instruction (Bauyrzhan). Even in highly specialized areas like dental education, interactive applications demonstrate the potential for niche health education that bridges the gap between clinical practice and the classroom (Xiao). These varied applications suggest that any successful policy framework must be flexible enough to accommodate the unique needs of different academic departments. The transition to online and distance education has further accelerated the reliance on automated systems. Systematic reviews of empirical studies highlight that the role of artificial intelligence in online learning often centers on enhancing student engagement through data-driven feedback loops (Doğan). However, the reliance on these systems also raises concerns about data privacy and the surveillance of student behavior. The shift toward automated proctoring and behavioral analytics represents a significant change in the relationship between students and institutions, one that requires careful ethical consideration. The emergence of large language models like ChatGPT has disrupted long-standing assessment paradigms more than perhaps any other technological advancement. These tools allow for the automation of complex content generation, challenging the traditional essay as a primary measure of student competence (Kim). As a result, educators are being forced to move toward process-based assessments rather than final-product evaluations to ensure that students are developing original critical thinking skills. This shift represents a fundamental change in the "contract" between the learner and the teacher, moving away from a transactional model of education toward one that emphasizes the development of human-centric skills that machines cannot yet replicate. The methodology for this dissertation utilizes a mixed-methods approach to capture both the quantitative trends in funding and the qualitative shifts in pedagogical strategy. Data collection involves a systematic analysis of institutional policy documents, funding reports from the National Science Foundation, and peer-reviewed literature. Additionally, the study incorporates stakeholder perception data to understand how the people most affected by these changes—students and faculty—are responding to the implementation of automated tools. This multifaceted approach ensures that the findings are grounded in both empirical data and the lived experiences of those within the American educational system. The structure of the dissertation is organized into five chapters that move from broad theoretical concerns to specific policy recommendations. Following this introduction, the second chapter provides a comprehensive review of the current literature, focusing on the historical development of educational technology and the specific emergence of algorithmic systems. The third chapter details the research methodology, explaining the rationale for the chosen data collection and analysis techniques. The fourth chapter presents the findings of the study, organized around the four primary objectives: teaching strategies, funding disparities, assessment shifts, and policy frameworks. The fifth and final chapter synthesizes these findings, offering a set of strategic recommendations for the equitable implementation of artificial intelligence in the United States. By centering the analysis on the intersection of technology and equity, this research aims to provide a critical perspective on one of the most significant shifts in the history of American education. The goal is not to advocate for or against the use of these tools, but to ensure that their integration serves the broader purpose of fostering a more just and effective educational system. As the boundaries between human and machine intelligence continue to blur, the responsibility of the educational system to define the value of human knowledge becomes more vital than ever.

References

  1. Artificial intelligence in higher education: stakeholder perceptions and policy implications (2026)
    Sara C. Lawrence
    DOI Link
  2. Artificial Intelligence in Higher Education: Student Knowledge, Attitudes, and Ethical Perceptions in the United States (2025)
    Corey Basch, Grace Hillyer, Bailey Gold et al.
    DOI Link
  3. Ethical use of artificial intelligence based tools in higher education: are future business leaders ready? (2024)
    Sabiha Mumtaz, Jamie Carmichael, Michael Weiss et al.
    DOI Link
  4. An Approach to Collecting School District Level COVID-19 Mask Mandate Information in the United States form the Web using Tools Powered by Artificial Intelligence. (2022)
    Sadaf Asrar, Imer Arnautovic, Dan Loew
  5. Artificial Intelligence-Based Analytics for Impacts of COVID-19 and Online Learning on College Students' Mental Health (2022)
    Mostafa Rezapour, Scott K. Elmshaeuser
  6. Generative artificial intelligence for academic research: evidence from guidance issued for researchers by higher education institutions in the United States (2025)
    Amrita Ganguly, Aditya Johri, Areej Ali et al.
  7. Do Teachers Dream of GenAI Widening Educational (In)equality? Envisioning the Future of K-12 GenAI Education from Global Teachers' Perspectives (2025)
    Ruiwei Xiao, Qing Xiao, Xinying Hou et al.
  8. The Use of Artificial Intelligence by Students in Vocational Colleges in China and the United States (2024)
    An Yan
  9. Comparison of Undergraduate Curriculum Systems of Artificial Intelligence Programs in China and the United States—Taking Tsinghua University and Massachusetts Institute of Technology as Examples (2024)
    Yuan Cheng
  10. How are school psychologists using artificial intelligence in 2024? A descriptive study. (2026)
    Ryan L Farmer, Adam B Lockwood, Randy G Floyd et al.
  11. Politics of Generative Artificial Intelligence in Empowering Higher Education in the United States (2025)
    Jian Li
  12. AI-Driven Personalized Learning Systems for K-12 Education: Enhancing Educational Equity and Outcomes in the United States (2026)
    Jason Miller, Mary Johnson
  13. Generative Artificial Intelligence and Academic Practices: A Comparative Analysis of Approaches in Europe, the United States and China (2025)
    Marieta Hristova
  14. International Trends and Influencing Factors in the Integration of Artificial Intelligence in Education with the Application of Qualitative Methods (2025)
    Juan Luis Cabanillas-García
  15. Assessing a Smartphone App (AICaries) That Uses Artificial Intelligence to Detect Dental Caries in Children and Provides Interactive Oral Health Education: Protocol for a Design and Usability Testing Study (2021)
    Jin Xiao, Jiebo Luo, Oriana Ly-Mapes et al.
  16. Trends and emerging themes in the effects of generative artificial intelligence in education: A systematic review (2025)
    Trang Ngoc Nguyen, H. T. Trương
  17. Exploring the Use of Artificial Intelligence in Teaching Chemistry at Higher Education Institutions: A Systematic Analysis and Student Perspectives (2025)
    L. Bauyrzhan, A. Zhylysbayeva
  18. The Use of Artificial Intelligence (AI) in Online Learning and Distance Education Processes: A Systematic Review of Empirical Studies (2023)
    Murat Ertan Doğan, Tulay Goru Dogan, Aras Bozkurt
  19. Factors influencing the adoption of generative artificial intelligence into classroom teaching by university teachers: An empirical study using SPSS PROCESS macros. (2025)
    Yong Xiang, Chenxin Yang, Zhigang Jin et al.
  20. Artificial Intelligence in Mathematics Education: A Systematic Review of Global Trends and Emerging Themes (2025)
    Sunit Biswaprakash Nanda, Deepak Kumar Pradhan
  21. Application of artificial intelligence chatbots, including ChatGPT, in education, scholarly work, programming, and content generation and its prospects: a narrative review. (2023)
    Tae Won Kim
  22. ARTIFICIAL INTELLIGENCE IN EDUCATION, GLOBAL PRACTICES,FUNCTIONAL TYPOLOGY, AND QUESTIONING ALGORITHMIC LOGIC (2025)
    Marina Vasileva Connell
  23. Integration of artificial intelligence into virtual reality environments for educational simulations (2026)
    Olga Darii, Maria Beldiga
  24. Generative Artificial Intelligence: Risks and Benefits for Educational Institutions (2023)
    Ahmet Göçen, Rabia Asan
  25. An empirical investigation of college students' acceptance of translation technologies. (2024)
    Xiang Li, Zhaoyang Gao, Hong Liao
  26. AI integration in higher education: Exploring practical implications and perspectives (2025)
    S. Santhosh Kumar, Abdul Kadir Khan, Sandip Shinde
  27. Potentially Divergent Paths in the AI Era? A Mixed-Method Policy Analysis of Artificial Intelligence Integration Frameworks Across Texas Hispanic-Serving Institutions (2025)
    Chunling Niu, Soheila Sadeghi, Jin Rui et al.
  28. Integration of Artificial Intelligence in The Higher Education Institutions (2025)
    Fayziyeva Nigora Nurmuhammedovna
  29. Assessing the impact of artificial intelligence integration on educational processes in higher education institutions of Ukraine and Kazakhstan (2025)
    Olena Bazyl, Oryngul Abilova, Olena Karpenko et al.
  30. Artificial intelligence in higher education: the state of the field (2023)
    Helen Crompton, Diane Burke
  31. Integration Of Artificial Intelligence Into Accounting Curricula: Trends And Challenges In Indian Educational Institutions (2025)
    Chingshubam Singh, W Nicolas, Kiirii Monsang et al.
  32. What Is the Impact of ChatGPT on Education? A Rapid Review of the Literature (2023)
    Chung Kwan Lo
  33. Ethical compliance and institutional policy support for artificial intelligence integration in African TVET Education: A structural equation modeling approach. (2025)
    Musa Adekunle Ayanwale, Christian Basil Omeh, Folasade Mardiyya Oyeniran et al.
  34. The Effectiveness of Employing Educational Technologies in Developing Higher Education Institutions through Artificial Intelligence Applications (2026)
    Amna Al-Kout
  35. Shaping the Future of Education: Exploring the Potential and Consequences of AI and ChatGPT in Educational Settings (2023)
    Simone Grassini
  36. Exploring the Impact and Integration of Artificial Intelligence in Higher Education (2024)
    Diane Burke, Helen Crompton
  37. Impact of Artificial Intelligence Technologies in Science and Education (2025)
    Nikita Lavrenchuk
  38. Artificial Intelligence and Its Potential to Transform Higher Education in the Arab States (2026)
    Hamdan Al Fazari
  39. ChatGPT in higher education: Considerations for academic integrity and student learning (2023)
    Articl Info, Miriam Sullivan, Andrew Kelly et al.
  40. APPLICATION OF ARTIFICIAL INTELLIGENCE IN DIGITAL INFORMATION TECHNOLOGIES AND PROGRAMMING DISCIPLINES IN HIGHER EDUCATIONAL INSTITUTIONS (2025)
    Khudoyberdiev Abdumalik Dilmurodovich
  41. Application of Artificial Intelligence Software to Identify Emotions of Lung Cancer Patients in Preoperative Health Education: A Cross-Sectional Study. (2025)
    Xiaoxue Chen, Ziya Xin, Dong Yang et al.
  42. Perception of generative AI use in UK higher education (2024)
    Abayomi Arowosegbe, J. Alqahtani, Tope Oyelade
  43. The impact of ChatGPT generative artificial intelligence on music education (2024)
    Yuxia Zhao
  44. The Role of Artificial Intelligence in Human Resource Management within Selected Educational Institutions (2025)
    Sanjeev Dogra, Swati Singh
  45. Exploring the Role of Artificial Intelligence in Education -Impact on Teachers (2025)
    Mrs. Shwetha Y
  46. The Impact of Artificial Intelligence on Early Childhood Education (2026)
    Annie White, Lauren Chase
  47. Artificial Intelligence toward Sustainable Impact Accelerator through Education, Research, and Advocacy: Critical Assessments (2026)
    Samsul Ariffin Abdul Karim
  48. The Impact of Artificial Intelligence in Education and Learning: (2024)
    Mahmoud Mohammed Al-Arifi
  49. Artificial Intelligence for Social Impact in Education: Addressing Access to Quality Education for Underprivileged Communities (2025)
    Ajit Singh
  50. The use of artificial intelligence in the individualization of student learning in higher technical educational institutions (2025)
    Natalia Tverdokhliebova, Nataliіa Yevtushenko
  51. Artificial intelligence in education: Addressing ethical challenges in K-12 settings (2021)
    Selin Akgün, Christine Greenhow
  52. Detecting Artificial Intelligence-Generated Personal Statements in Professional Physical Therapist Education Program Applications: A Lexical Analysis. (2024)
    John H Hollman, Beth A Cloud-Biebl, David A Krause et al.
  53. Artificial intelligence in secondary schools: implications for administrators across four leadership dimensions (2026)
    Rahul Kumar, Samita Sarkar
  54. STRATEGIC INTEGRATION OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES INTO THE EDUCATIONAL ENVIRONMENT OF MODERN PRESCHOOL EDUCATION INSTITUTIONS (2025)
    Halyna Kudenko
  55. Impact of Artificial Intelligence on Education: Present Realities and Future Considerations (2023)
    Irfan Chaudhuri, Mark Tappan, Md. Shahidul Islam
  56. Integration of Artificial Intelligence into Educational Programs to Develop Scientific Analysis Skills in a Multidisciplinary Environment (2024)
    G. Baisova
  57. INCORPORATION OF ARTIFICIAL INTELLIGENCE IN HIGHER EDUCATION SYSTEM IN THE REPUBLIC OF ARMENIA: CONTEXT AND INTERNATIONAL PERSPECTIVES (2025)
    A. Gevorgyan, Robert Khachatryan
  58. General and special education teachers' readiness for artificial intelligence in classrooms: A structural equation modeling study of knowledge, attitudes, and practices in select UAE public and private schools. (2025)
    Mohammad Fteiha, Mohammad Al-Rashaida, Mohammed Ghazal
  59. Research of Integration of Innovations of Artificial Intelligence in Modern Educational Technologies (2024)
    Zhenni Yang
  60. Generative artificial intelligence in secondary education: Applications and effects on students' innovation skills and digital literacy. (2025)
    Dang Wu, Jianyang Zhang
  61. Leveraging artificial intelligence to assess the impact of COVID-19 on the teacher-student relationship in higher education. (2025)
    Md Juwel Ahmed Sarker, Mahmudul Hasan, Alamgir Kabir et al.
  62. Enhancing inclusive education in the UAE: Integrating AI for diverse learning needs. (2024)
    Alia El Naggar, Eman Gaad, Shannaiah Aubrey Mae Inocencio
  63. Fear Factor: Faculty Perceptions of Artificial Intelligence in Physician Associate Education. (2025)
    Lisa M Alexander, Jonathan Bowser, Kara Caruthers et al.
  64. Artificial Intelligence Technologies in College English Translation Teaching. (2023)
    Yuhua Wang
  65. Influence of artificial intelligence in education on adolescents' social adaptability: The mediatory role of social support. (2023)
    Tinghong Lai, Chuyin Xie, Minhua Ruan et al.
  66. The Role and Impact of Artificial Intelligence In Modern Education: Analysis of Problems and Prospects (2024)
    Svitlana Iasechko, Maksym Iasechko
  67. Mapping artificial intelligence research in higher education toward sustainable development (2025)
    Tieu Thi My Hong, Nguyen Thi Thanh Tung, Nguyen Thi Phuong Thanh
  68. Artificial Intelligence and Workforce Diversity in Nuclear Medicine. (2025)
    K Elizabeth Hawk, Geoffrey M Currie
  69. Ethical Integration of Artificial Intelligence in Inclusive Education (2025)
    Utsav Krishan Murari, Hemlata Parmar
  70. Exploring Generative Artificial Intelligence to Enhance Reflective Writing in Pharmacy Education. (2025)
    Kaitlin M Alexander, Margeaux Johnson, Michelle Z Farland et al.
  71. The emergent role of artificial intelligence, natural learning processing, and large language models in higher education and research. (2023)
    Tariq Alqahtani, Hisham A Badreldin, Mohammed Alrashed et al.
  72. Innovative technologies based on artificial intelligence as a tool for modernization of the educational process in higher educational institutions (2025)
    K. V. Voievoda
  73. Application and Prospect Analysis of Artificial Intelligence in the Field of Physical Education. (2022)
    Wujun Xiang
  74. Artificial intelligence-assisted full-mouth radiograph mounting in dental education. (2024)
    Jennifer Chang, Logan Bliss, Nikola Angelov et al.
  75. Towards Better Utilization Of Artificial Intelligence Technologies In Achieving Quality Educational Processes In Higher Education Institutions:, A Situational Analysis With A Forward-Looking Perspective (2025)
    محمد مناصرية
  76. New Era of Artificial Intelligence in Education: Towards a Sustainable Multifaceted Revolution (2023)
    Firuz Kamalov, David Santandreu Calonge, Ikhlaas Gurrib
  77. Artificial Intelligence in Education and Educational Research: Challenges, Risks, and Prospects for Integration (2025)
    Oleg Spirin, Mariia Shyshkina
  78. A Survey of Artificial Intelligence Techniques Employed for Adaptive Educational Systems within E-Learning Platforms (2016)
    Khalid Colchester, Hani Hagras, Daniyal Alghazzawi et al.
  79. A Multi-dimensional Framework for Artificial Intelligence Integration in Game Development across Artistic, Educational, and Environmental Contexts​ (2026)
    Danlu Fei
  80. The Impact of Artificial Intelligence on Education (2024)
    Isa Erbas, Eduina Maksuti
  81. Examining the Impact of Assistive Technology on Psychological Health, Family Education, and Curriculum Research in Japan: Insights from Artificial Intelligence. (2024)
    Yanqi Guo
  82. Integration of Artificial Intelligence for educational excellence and innovation in higher education institutions (2024)
    Anshu Prakash Murdan, Roshan Halkhoree
  83. Artificial intelligence impacts in education and pediatric mental health. (2025)
    Grace Liberatore, Alyssa Kim, Jack Brenner et al.
  84. Artificial Intelligence Efficacy as a Function of Trainee Interpreter Proficiency: Lessons from a Randomized Controlled Trial. (2024)
    David A Fussell, Cynthia C Tang, Jake Sternhagen et al.
  85. Pharmacists' perceptions of artificial intelligence: A national survey. (2025)
    Kyle A Gustafson, Casey Rowe, Paul Gavaza et al.
  86. Integration of Artificial Intelligence into Educational Processes Increasing Efficiency and Personalization of Training in Higher Educational Institutions of Uzbekistan (2024)
    Marina Abdurashidova, Muhammad Balbaa, Nilufar Ismailova
  87. Effects of Artificial Intelligence on Educational Functioning: A Review and Meta-Analysis (2025)
    GeckHong Yeo, Jennifer E. Lansford
  88. Creation of smart control automation systems with integration of artificial intelligence and advanced machine vision technologies in educational institutions (2024)
    X. Chang
  89. Boundaries Between Research Ethics and Ethical Research Use in Artificial Intelligence Health Research. (2021)
    Gabrielle Samuel, Jenn Chubb, Gemma Derrick
  90. Blockchain Technology and Artificial Intelligence’s Effects on the Advancement of Contemporary Educational Technologies (2025)
    Zhensheng Liu
  91. The Use of Artificial Intelligence in Educational Institutions: Social Consequences of Artificial Intelligence in Education (2023)
    Fatih ULAŞAN
  92. THE USE OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES IN EDUCATIONAL INSTITUTIONS IN THE MODERN CONTEXT (2025)
    L.V. Melnyk, O.V. Maidanyk
  93. Artificial intelligence and the impact on medical genetics. (2023)
    Benjamin D Solomon, Wendy K Chung
  94. The Importance of Artificial Intelligence in Modern Media Education Technologies in Institutions of Higher Education (2023)
    Gulandom Abdujabbarovna Samigova
  95. Innovative Methodological Approach Based On Artificial Intelligence To The Activities Of Specialized Educational Institutions (2025)
    Ubbiev Alisher Taiirovich
  96. Use of the opportunities of artificial intelligence technologies in teaching in the educational process of higher educational institutions (2024)
    Jamshid Salimov, Giyos Choryorqulov
  97. RETRACTED: TGEL-transformer: Fusing educational theories with deep learning for interpretable student performance prediction. (2025)
    Yuhao Gong, Fei Wang, Yuchen Zhang et al.
  98. Artificial Intelligence as a Harbinger of Engagement and Collaboration (2025)
    Soufiane Ouariach, Fatima Zahra Ouariach, Mohamed Khaldi
  99. Integration of Artificial Intelligence in Health Numeracy: A Case Study on Nutritional Label Analysis in Secondary Mathematics Education (2025)
    Rosa Isela González-Polo González-Polo, Apolo Castaneda Castaneda
  100. The Impact of Artificial Intelligence Technologies on Educational Strategies (2024)
    Natalia Bobro
  101. ARTIFICIAL INTELLIGENCE TECHNOLOGIES AND DIGITAL TOOLS IN THE QUALITY ASSURANCE SYSTEM OF GENERAL SECONDARY EDUCATION INSTITUTIONS (2025)
    Oleh Topuzov, Svitlana Alieksieieva, Kateryna Ladonia
  102. Making Artificial Intelligence Accessible in Ghana's Educational Institutions: Barriers and Pathways (2025)
    Bill Wertz-Ayittah
  103. Current Trends in Artificial Intelligence Educational Practices (2025)
    Sara Rguig
  104. Integrating Artificial Intelligence in Higher Education (2025)
    Praveen Kumar Dubey, Angela R. Crevar
  105. Exploratory Study of Perceptions on Generative Artificial Intelligence Applications in Tutorial Action Within University Education (2025)
    Antonio Carrasco-Rodríguez, Sofía-Ángela Albero-Verdú
  106. AI-scending the scope: Perspectives on the integration and utilization of artificial intelligence and machine learning in genetic counseling graduate programs. (2025)
    Ofir Feuer, Kyla Holmes, Sarah Kane et al.
  107. Speculative futures on ChatGPT and generative artificial intelligence (AI): A collective reflection from the educational landscape (2023)
    Aras Bozkurt, J. Xiao, Steven Imanuel Lambert et al.
  108. Artificial Intelligence for Assessment and Feedback to Enhance Student Success in Higher Education (2022)
    Monika Hooda, Chhavi Rana, Omdev Dahiya et al.
  109. Artificial Intelligence Integration in Education: Personalized Learning, Theoret (2025)
    Zeynep EKER
  110. A Review on Artificial Intelligence in Education (2021)
    Jiahui Huang, Salmiza Saleh, Yufei Liu
  111. Artificial Intelligence (AI) Integration in Higher Education (2024)
    Seema Yadav
  112. Impact of Artificial Intelligence in Achieving Quality Education (2024)
    Agatha Aballa Nkechi, Akintayo O. Ojo, Obinna A. Eneh
  113. ChatGPT: Bullshit spewer or the end of traditional assessments in higher education? (2023)
    Jürgen Rudolph, Samson Tan, Shannon Tan
  114. INTEGRATION OF GENERATIVE ARTIFICIAL INTELLIGENCE INTO THE EDUCATIONAL PROCESS (2026)
    T. Belaya, Yu. Babuk
  115. Artificial Intelligence in Education: Maintaining Educational Quality Amid Emerging Generative Technologies (2026)
    Thomas Zijl, Adam Belloum, Ana Oprescu et al.
  116. USING ARTIFICIAL INTELLIGENCE IN TEACHING FOREIGN LANGUAGES IN HIGHER EDUCATIONAL INSTITUTIONS (2026)
    Tetiana Cherepovska
  117. Barriers to the Effective Integration of Artificial Intelligence in Educational Systems (2026)
    Ashish Sharma
  118. IMPLEMENTATION OF EDUCATIONAL PLATFORMS WITH ARTIFICIAL INTELLIGENCE TECHNOLOGIES (2026)
    Dmytro Khrystovoi
  119. The relationship between artificial intelligence literacy and artificial intelligence anxiety: A cross-sectional study among pediatric nurses. (2026)
    Dilek Uludaşdemir, Ganime Ayar, Eda Emine Yetkin
  120. Artificial intelligence in higher education (2026)
    Katerina Beta
  121. Digital Transformation in Higher Education: Artificial Intelligence Tools, Pedagogical Practice, and Data Literacy Development (2025)
    Tessa T. Taefi, L. Lou, D. Reddy et al.
  122. Artificial Intelligence/Machine Learning Education in Radiology: Multi-institutional Survey of Radiology Residents in the United States. (2023)
    Ninad V. Salastekar, C. Maxfield, Tarek N. Hanna et al.
  123. Artificial Intelligence Literacy: Developing a Multi-institutional Infrastructure for AI Education. (2022)
    J. Perchik, A. D. Smith, A. A. Elkassem et al.
  124. The Digital Metaverse: Applications in Artificial Intelligence, Medical Education, and Integrative Health (2022)
    A. Ahuja, Bryce W. Polascik, Divyesh Doddapaneni et al.
  125. Utilizing artificial intelligence to address dermatology curriculum deficiencies in pre-clinical medical education. (2025)
    Lauren McGrath, Melanie Rodriguez, Maria Mariencheck et al.
  126. Artificial Intelligence in Assessment: A Bibliometric Review of Research Development, Thematic Patterns and Research Clusters (2026)
    Ashmimi Maisara Asha’ari, Nor Farawahidah Abdul Rahman, Anis Diyana Halim et al.
  127. Comparative Analysis of Artificial Intelligence Education Policies in China, the United States and Mongolia (2024)
    Hao Li, Munkhjargal Davaasuren, Naranchimeg Dorjpalam
  128. Exploring the Stratified Nature of Artificial Intelligence Research Funding in United States Educational Systems: A Bibliometric and Network Analysis (2024)
    Zachary W. Taylor, Kayla Stan
  129. Artificial Intelligence and Teaching Strategies: A Comparative Study of Higher Education in China and the United States (2024)
    Fanlong Meng, Wenxun Luo
  130. Evolution of Artificial Intelligence in Medical Education From 2000 to 2024: Bibliometric Analysis (2025)
    Rui Li, Tong Wu
  131. Building bridges to the future of learning: Exploring artificial intelligence research using R-Studio assisted bibliometrics (2024)
    Sainee Tamphu, Imam Suyitno, Gatut Susanto et al.
  132. Scientometric analysis on the use of ChatGPT, artificial intelligence, or intelligent conversational agent in the role of medical training (2024)
    Frank Mayta-Tovalino, Fran Espinoza-Carhuancho, Daniel Alvitez-Temoche et al.
  133. Generative Artificial Intelligence in Medical Education—Policies and Training at US Osteopathic Medical Schools: Descriptive Cross-Sectional Survey (2025)
    Tsunagu Ichikawa, Elizabeth Olsen, Arathi Vinod et al.
  134. Global research trends and thematic developments in artificial intelligence applications in medical education: a bibliometric study (2025)
    Wang Bo, Dhakir Abbas Ali, Oyyappan Duraipandi
  135. Artificial intelligence in science education: A bibliometric review (2023)
    R. S. Akhmadieva, N. Udina, Y. Kosheleva et al.
  136. Digital Leadership in Education: A Bibliometric Analysis of Research Trends from 1993 to 2024. (2025)
    John Olayemi OKunlola, Suraiya Rathankoomar Naicker
  137. Artificial intelligence in higher education: a bibliometric analysis and topic modeling approach (2023)
    V. Maphosa, Mfowabo Maphosa
  138. The Use of Artificial Intelligence in Nursing Education: A Scoping Review. (2025)
    Toni Doston, Justin Fontenot, Dawn Morris et al.
  139. The Impact of Artificial Intelligence-Assisted Learning on Nursing Students' Ethical Decision-making and Clinical Reasoning in Pediatric Care: A Quasi-Experimental Study. (2024)
    Hyewon Shin, Jennie C De Gagne, Sang Suk Kim et al.
  140. Exploring the integration of artificial intelligence in radiology education: A scoping review. (2025)
    Muying Lucy Hui, Ethan Sacoransky, Andrew Chung et al.
  141. INTEGRATION OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES INTO THE PROCESS OF FOREIGN LANGUAGE LEARNING IN HIGHER MILITARY EDUCATIONAL INSTITUTIONS: AN ANALYTICAL OVERVIEW (2025)
    Ye.A. Ivanchenko, A.M. Horlichenko
  142. Mapping Artificial Intelligence Integration in Education: A Decade of Innovation and Impact (2013–2023)—A Bibliometric Analysis (2024)
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  143. A bibliometric analysis of the economic effects of using artificial intelligence and ChatGPT tools in higher education institutions (2025)
    Anna Vorontsova, Svitlana Tarasenko, Wojciech Duranowski et al.
  144. Toward amplifying the good in nursing education: A quality improvement study on implementing artificial intelligence-based assistants in a learning system. (2025)
    Regina G Russell, Jules White, Allen Karns et al.
  145. Bibliometric Analysis of Artificial Intelligence in STEM Education (2024)
    Thiti Jantakun, Kitsadaporn Jantakun, Thada Jantakoon
  146. The Impact of Generative Artificial Intelligence on Legal Education and Coping Strategies (2025)
    Lei Li
  147. Can large language models serve as digital assistants for medical undergraduates? – A bibliometric mapping and scoping analysis of the medical-education literature (2025)
    Hong Wang, Wenhui Shan, Ruoyan Liu et al.
  148. From Scalpel to Simulation: Reviewing the Future of Cadaveric Dissection in the Upcoming Era of Virtual and Augmented Reality and Artificial Intelligence. (2024)
    Wajid A Chatha
  149. Tool or Tyrant: Guiding and Guarding Generative Artificial Intelligence Use in Nursing Education. (2024)
    Susan Hayes Lane, Tammy Haley, Dana E Brackney
  150. An Academic Viewpoint (2025) on the Integration of Generative Artificial Intelligence in Medical Education: Transforming Learning and Practices. (2025)
    Mohammad Almansour, Mona Soliman, Raniah Aldekhyyel et al.

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