2026 International Conference on Generative Artificial Intelligence and Education (GAIE 2026)
Singapore, Singapore
CONFERENCE
Event Details
Location: Singapore
Dates: February 6-8, 2026
Conference Website: https://www.aischolar.com/conference/icbdie2026?invite=conf2go
Call for Papers
Topics of Interest
Track 1: Generative Artificial Intelligence
- Generative Artificial Intelligence
- Large language models
- Generative adversarial networks
- Diffusion models
- Multimodal generative models
- Knowledge-augmented generation
- Explainable generative AI
- Human-in-the-loop generation
- Generative AI safety and ethics
- Prompt engineering
- Few-shot and zero-shot generation
- Adaptive content generation
Track 2: Data, Interaction, and Learning Analytics
- Educational data mining
- Learning analytics
- Student engagement analysis
- Human-AI collaborative learning
- Emotion recognition in education
- Privacy-preserving AI in education
- Edge and cloud AI for education
- Learning pathway modeling
- Cross-platform educational AI
- Ethical and fair AI in education
Track 3: Intelligent Educational Applications
- Intelligent tutoring systems
- Personalized learning
- Adaptive assessment
- Virtual teaching assistants
- Automated content generation
- Gamification
- Curriculum design support
- Conversational educational agents
- AI-supported collaborative learning
- Virtual labs and simulations
Publication
All accepted full papers will be published in the GAIE 2026 conference proceedings and submitted to EI and Scopus for indexing.
Important Dates
- Full Paper Submission Deadline: December 2, 2025
- Registration Deadline: January 23, 2026
- Final Paper Submission Deadline: January 30, 2026
- Conference Dates: February 6-8, 2026
Paper Submission
Please submit your full paper (Word + PDF) via the submission system:
https://www.aischolar.com/conference/icbdie2026/submission?invite=conf2go
Location
Singapore, Singapore
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