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CASIT: Collective Intelligent Agent System for Internet of Things

Ningze Zhong, Yi Wang, Rui Xiong, Yingyue Zheng, Yang Li,Mingjun Ouyang,Dan Shen,Xiangwei Zhu

IEEE INTERNET OF THINGS JOURNAL(2024)

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摘要
In the last few years, the bottleneck of bandwidth in Internet of Thing (IoT) has driven expectations to figure out new ways to preprocess the information needed to be transmitted. The ways which were used before are not smart enough and they cannot align to the users' need. Large language model (LLM)-based intelligent agent is a very hot concept in AI community, which aims to save various problems via adapting LLM to different industries. In this article, we present a collective intelligent agent system for the IoT (CASIT) that is a pioneering LLM-agent-based IoT system. We put forward a IoT framework that can be used to lots of scenarios. CASIT refers to a system based on multiple intelligent LLM agents, which realizes complex tasks through cooperation and makes full use of collective intelligence. In order to solve the problems, we designed the Memory Mechanism and Summary Mechanism that enable LLMs to efficiently process the data by comparing historical data with Local Knowledge and Chat History in the prompt. After experimental verification, we have found that our framework could accurately conclude the abnormal information, and it outperforms the single LLM system when we input 200 sets of temperature and humidity data from five different places. The system provides a new solution and method for information processing in all IoT systems. Our framework may also provide refreshing ideas for edge computing and semantic communication.
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关键词
Internet of Things,Edge computing,Task analysis,Intelligent agents,Bandwidth,Natural languages,Multi-agent systems,Collective intelligent agent system,collective wisdom,Internet of Things (IoT),large language model (LLM)
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