人工智能时代办公室接待工作精细化管理实践

IF 3.1 Q1 Mathematics Applied Mathematics and Nonlinear Sciences Pub Date : 2024-01-01 DOI:10.2478/amns-2024-0406
Yuefang Zhang
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引用次数: 0

摘要

本文在论述办公室接待工作重要性的同时,强调了精细化管理在提高工作效率和服务质量方面的关键作用。在人工智能时代背景下,文章利用最前沿的 React 和 Express 技术,成功构建了办公室接待工作管理系统框架。该系统不仅基于功能需求进行了细致的模块设计,还提出了集群和协同过滤于一体的个性化推荐算法,通过优化用户特征和物品属性的相似度进行联合过滤推荐,实现更加人性化的接待服务。为了验证系统的有效性,本研究以大学 Q 为案例进行了应用分析。分析结果显示,从 2008 年到 2022 年,接待准备、接待工作知识、人员配备、接待人员业务技能、工作态度、工作细节控制等指数均有明显提升,提升幅度从 32.0761 到 37.1677,表明办公室接待工作管理水平不断优化,呈现快速增长态势。这一创新的办公室接待工作管理系统不仅实现了精细化管理,还全面提升了服务效率和综合管理水平,为同类工作的管理提供了有价值的参考。
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The Practice of Refined Management of Office Reception Work in the Era of Artificial Intelligence
While discussing the importance of office reception work, this article emphasizes the key role of fine management in improving work efficiency and service quality. Against the background of the artificial intelligence era, the article successfully constructs a framework for an office reception work management system by utilizing cutting-edge React and Express technologies. The system not only carries out meticulous module design based on functional requirements, but also proposes a personalized recommendation algorithm integrating clustering and collaborative filtering by optimizing the Similarity of user characteristics and item attributes for joint filtering recommendation to achieve more humanized reception services. To verify the system's effectiveness, this study conducted an application analysis using University Q as a case study. The analysis results show that from 2008 to 2022, the indices of reception preparation, knowledge of reception work, staffing, business skills of reception staff, work attitude and work detail control have been significantly improved, with an increase ranging from 32.0761 to 37.1677, indicating that the management level of office reception work is constantly optimized and shows a rapid growth. This innovative office reception work management system not only realizes refined management, but also comprehensively improves the service efficiency and comprehensive management level, which provides a valuable reference for the management of similar work.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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