TriQuest:An AI Copilot-Powered Platform for Interdisciplinary Curriculum Design
- URL: http://arxiv.org/abs/2510.03369v2
- Date: Thu, 23 Oct 2025 11:54:51 GMT
- Title: TriQuest:An AI Copilot-Powered Platform for Interdisciplinary Curriculum Design
- Authors: Huazhen Wang, Huimin Yang, Hainbin Lin, Yan Dong, Lili Chen, Liangliang Xia, Wenwen Xu,
- Abstract summary: Interdisciplinary teaching is a cornerstone of modern curriculum reform, but its implementation is hindered by challenges in knowledge integration and time-consuming lesson planning.<n>We introduce TriQuest, an AI-copilot platform designed to solve these problems.<n>TriQuest uses large language models and knowledge graphs via an intuitive GUI to help teachers efficiently generate high-quality interdisciplinary lesson plans.
- Score: 6.674574912039411
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Interdisciplinary teaching is a cornerstone of modern curriculum reform, but its implementation is hindered by challenges in knowledge integration and time-consuming lesson planning. Existing tools often lack the required pedagogical and domain-specific depth.We introduce TriQuest, an AI-copilot platform designed to solve these problems. TriQuest uses large language models and knowledge graphs via an intuitive GUI to help teachers efficiently generate high-quality interdisciplinary lesson plans. Its core features include intelligent knowledge integration from various disciplines and a human-computer collaborative review process to ensure quality and innovation.In a study with 43 teachers, TriQuest increased curriculum design efficiency and improved lesson plan quality. It also significantly lowered design barriers and cognitive load. Our work presents a new paradigm for empowering teacher professional development with intelligent technologies.
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