Design of Intelligent Generation Agent for Power Supply Scheme based on Large Language Model
DOI: https://doi.org/10.62517/jike.202504211
Author(s)
Yanfei Shu*, Yukun Wang, Jinming Gao
Affiliation(s)
Beijing China-power Information Technology Co., Ltd., Haidian, Beijing, China
*Corresponding Author
Abstract
With the rapid development of artificial intelligence big model technology, intelligent generation of power supply solutions has become a focus of continuous optimization in the business environment. In response to the problems of manual based, time-consuming, and inaccurate power supply scheme preparation, this article proposes to use a large model to construct an intelligent agent called "Power Supply Scheme Intelligent Generation", which integrates multimodal perception, cognitive reasoning, and analytical decision-making capabilities, reconstructs the business process of power supply scheme preparation, and creates an intelligent new mode of automatic intelligent generation, real-time push, and real-time response to customers of power supply schemes. It promotes a more convenient experience, more efficient process, and more time-saving, and helps accelerate the upgrading of industry expansion and installation.
Keywords
Large Model; Agent; Power Supply Scheme; Automatically Generated
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