AI Agent for Education: von Neumann Multi-Agent System Framework
Jiang, Yuan-Hao, Li, Ruijia, Zhou, Yizhou, Qi, Changyong, Hu, Hanglei, Wei, Yuang, Jiang, Bo, Wu, Yonghe
–arXiv.org Artificial Intelligence
The development of large language models has ushered in new paradigms for education. This paper centers on the multi-Agent system in education and proposes the von Neumann multi-Agent system framework. It breaks down each AI Agent into four modules: control unit, logic unit, storage unit, and input-output devices, defining four types of operations: task deconstruction, self-reflection, memory processing, and tool invocation. Furthermore, it introduces related technologies such as Chain-of-Thought, Reson+Act, and Multi-Agent Debate associated with these four types of operations. The paper also discusses the ability enhancement cycle of a multi-Agent system for education, including the outer circulation for human learners to promote knowledge construction and the inner circulation for LLM-based-Agents to enhance swarm intelligence. Through collaboration and reflection, the multi-Agent system can better facilitate human learners' learning and enhance their teaching abilities in this process.
arXiv.org Artificial Intelligence
Dec-30-2024
- Genre:
- Instructional Material (0.69)
- Research Report (0.53)
- Industry:
- Education
- Educational Setting (0.69)
- Educational Technology (0.47)
- Education
- Technology: