Agentic Workflow for Education: Concepts and Applications

Authors

  • Yuan-Hao JIANG Shanghai Institute of Artificial Intelligence for Education, East China Normal University, Shanghai, China; Lab of Artificial Intelligence for Education, East China Normal University, Shanghai, China Author
  • Yijie LU Faculty of Education, East China Normal University, Shanghai, China Author
  • Ling DAI Shanghai Institute of Artificial Intelligence for Education, East China Normal University, Shanghai, China; National Institute of Education, Nanyang Technological University, Singapore Author
  • Jiatong WANG Shanghai Institute of Artificial Intelligence for Education, East China Normal University, Shanghai, China; Lab of Artificial Intelligence for Education, East China Normal University, Shanghai, China Author
  • Ruijia LI Shanghai Institute of Artificial Intelligence for Education, East China Normal University, Shanghai, China; Faculty of Education, East China Normal University, Shanghai, China Author
  • Bo JIANG Shanghai Institute of Artificial Intelligence for Education, East China Normal University, Shanghai, China; Lab of Artificial Intelligence for Education, East China Normal University, Shanghai, China Author

Abstract

With the rapid advancement of Large Language Models (LLMs) and Artificial Intelligence (AI) agents, agentic workflows are showing transformative potential in education. This study introduces the Agentic Workflow for Education (AWE), a four-component model comprising self-reflection, tool invocation, task planning, and multi-agent collaboration. We distinguish AWE from traditional LLM-based linear interactions and propose a theoretical framework grounded in the von Neumann Multi-Agent System (MAS) architecture. Through a paradigm shift from static prompt-response systems to dynamic, nonlinear workflows, AWE enables scalable, personalized, and collaborative task execution. We further identify four core application domains: integrated learning environments, personalized AI-assisted learning, simulation-based experimentation, and data-driven decision-making. A case study on automated math test generation shows that AWE-generated items are statistically comparable to real exam questions (P ≥ 0.439), validating the model's effectiveness. AWE offers a promising path toward reducing teacher workload, enhancing instructional quality, and enabling broader educational innovation.

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Published

2025-12-01

How to Cite

Agentic Workflow for Education: Concepts and Applications. (2025). International Conference on Computers in Education. https://library.apsce.net/index.php/ICCE/article/view/5675