AIGC驱动的高校资产智能化管理:技术路径与策略优化

AIGC-driven Intelligent Asset Management in Universities: Technical Paths and Strategy Optimization

  • 摘要: 针对高校资产管理效率低、决策支持不足等问题,文章探讨了人工智能生成内容(AIGC)技术在资产智能化管理中的应用策略。通过解析生成对抗网络(GAN)、自然语言处理(NLP)、多模态学习等AIGC核心技术,结合高校资产管理的特点,提出了在智能化资产盘点、预测性维护、资源配置优化等场景的适配方案;分析了非结构化数据处理、模型泛化能力及数据隐私等实施难点,提出了构建“人工−AI协同”管理模式、制定数据标准与共享机制等对策;提出了两大创新点:一是技术融合创新,首次提出了AIGC与数字孪生结合的高校三维资产管理模型;二是管理模式创新,设计了从“被动响应”到“主动预测”范式的转型路径。研究表明,AIGC技术可实现资产盘点智能化、精准预测资产需求,在降低人力成本、优化资源配置、为决策提供科学依据等方面意义重大,能有效推动高校资产管理的智能化与现代化进程,显著提升管理水平。

     

    Abstract: In response to issues such as low efficiency in asset management and insufficient decision-making support in universities, this article explores the application strategies of Artificial Intelligence Generated Content (AIGC) technology in intelligent asset management. By analyzing core AIGC technologies such as Generative Adversarial Networks (GAN), Natural Language Processing (NLP), and multimodal learning, and considering the characteristics of university asset management, it proposes adaptation solutions for scenarios like intelligent asset inventory, predictive maintenance, and resource allocation optimization. The article analyzes implementation difficulties such as unstructured data processing, model generalization ability, and data privacy, and puts forward countermeasures such as constructing a “human-AI collaboration” management model and formulating data standards and sharing mechanisms. It also presents two major innovations: Firstly, technological integration innovation, which for the first time proposes a three - dimensional asset management model for universities that combines AIGC with digital twin technology. Secondly, management model innovation, which designs a transformation path from the “passive response” paradigm to the “active prediction” paradigm. Research shows that AIGC technology can realize intelligent asset inventory and accurately predict asset requirements. It is of great significance in reducing labor costs, optimizing resource allocation, and providing a scientific basis for decision-making. It can effectively promote the intelligent and modern process of university asset management and significantly improve the management level.

     

/

返回文章
返回