Dr. Mihye Won

Associate Professor

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Biography

Mihye Won is an Associate Professor at the Faculty of Education at Monash University, specializing in innovative pedagogical approaches that enhance students' understanding of scientific concepts and reasoning. Her research focuses on dialogic teaching and the use of visual tools, student-generated diagrams, immersive Virtual Reality, and generative AI to foster engaging and effective science learning experiences. Mihye has led international multidisciplinary research teams funded by the Australian Research Council (ARC), making significant contributions to advancing students' collaborative problem-solving and scientific thinking. She actively supports teachers, doctoral candidates, and early career researchers in cultivating a research culture that promotes inclusive and growth-oriented learning environments.

Research Interests

Experience

Adjunct Senior Research Fellow

2024-01-01 — Present

Curtin University • Australia

Continuing external research collaboration focusing on education.

Editorial Board Member

2023-01-01 — Present

International Journal Science Education (IJSE) • Remote

Engaging in editorial workflow and peer review processes.

Advisory Board Member

2023-01-01 — Present

Chemistry Education Research Practice (CERP) • Remote

Consulting on topics related to chemistry education research.

Requirements for Monash University

Master Program
Requirements
GPA Requirement
Required:3
IELTS
Listening
Required:6
Reading
Required:6
Writing
Required:6
Speaking
Required:6
Overall
Required:6.5
TOEFL
Listening
Required:12
Reading
Required:13
Writing
Required:21
Speaking
Required:18
Total
Required:79
Prerequisites
Bachelor degree (or equivalent) in a related field
Application Checklist
  • Academic Transcripts
  • Proof of English Proficiency
  • Curriculum Vitae
  • Copy of Passport
Specialization Notes

Requirements are standardized across the Faculty of Information Technology for most Master's programs including Computer Science and Data Science.