Open TutorAI: An Open-source Platform for Personalized and Immersive Learning with Generative AI
- URL: http://arxiv.org/abs/2602.07176v1
- Date: Fri, 06 Feb 2026 20:24:33 GMT
- Title: Open TutorAI: An Open-source Platform for Personalized and Immersive Learning with Generative AI
- Authors: Mohamed El Hajji, Tarek Ait Baha, Aicha Dakir, Hammou Fadili, Youssef Es-Saady,
- Abstract summary: This paper presents Open TutorAI, an open-source educational platform based on LLMs and generative technologies.<n>The system integrates natural language processing with customizable 3D avatars to enable multimodal learner interaction.<n>It includes tools for organizing content, providing embedded feedback, and offering dedicated interfaces for learners, educators, and parents.
- Score: 1.440818306216858
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Recent advances in artificial intelligence have created new possibilities for making education more scalable, adaptive, and learner-centered. However, existing educational chatbot systems often lack contextual adaptability, real-time responsiveness, and pedagogical agility. which can limit learner engagement and diminish instructional effectiveness. Thus, there is a growing need for open, integrative platforms that combine AI and immersive technologies to support personalized, meaningful learning experiences. This paper presents Open TutorAI, an open-source educational platform based on LLMs and generative technologies that provides dynamic, personalized tutoring. The system integrates natural language processing with customizable 3D avatars to enable multimodal learner interaction. Through a structured onboarding process, it captures each learner's goals and preferences in order to configure a learner-specific AI assistant. This assistant is accessible via both text-based and avatar-driven interfaces. The platform includes tools for organizing content, providing embedded feedback, and offering dedicated interfaces for learners, educators, and parents. This work focuses on learner-facing components, delivering a tool for adaptive support that responds to individual learner profiles without requiring technical expertise. Its assistant-generation pipeline and avatar integration enhance engagement and emotional presence, creating a more humanized, immersive learning environment. Embedded learning analytics support self-regulated learning by tracking engagement patterns and generating actionable feedback. The result is Open TutorAI, which unites modular architecture, generative AI, and learner analytics within an open-source framework. It contributes to the development of next-generation intelligent tutoring systems.
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