Generative AI in teacher education: a systematic review
Document Type
Review
Publication Date
4-1-2026
Abstract
This study addresses a critical gap in the literature by conducting one of the earliest systematic reviews (2021-2025) on generative artificial intelligence (GenAI) in teacher education. Using a structured screening and coding process, 35 peer-reviewed articles from Scopus and Web of Science (WoS) were analyzed to examine methodological trends, geographical disparities, and cross-cultural adaptability. The review identifies four major application areas, including stakeholder perception analysis, instructional resource generation, curriculum design, and student-AI collaborative learning, and synthesizes their underlying pedagogical mechanisms. Key findings reveal pronounced geographical imbalance (with no studies from Africa or Latin America), heavy reliance on short-term qualitative designs, and limited empirical or longitudinal validation. Based on these insights, the study proposes a conceptual framework linking GenAI applications, challenges, and future research pathways. This work contributes a structured evidence base and offers guidance for advancing GenAI-integrated teacher education through more rigorous, inclusive, and context-sensitive research.
Publication Title
International Journal of Evaluation and Research in Education
ISSN
22528822
DOI
10.11591/ijere.v15i2.37225
Recommended Citation
Yuan, Longfa; Razak, Rafiza Abdul; Kamsin, Amirrudin; and Abdul-Rahman, Siti Soraya, "Generative AI in teacher education: a systematic review" (2026). Research Publications (2026 to 2030). 127.
https://knova.um.edu.my/research_publications_2026_2030/127
Volume
15
Issue
2
First Page
966