Analysis of Enterprise Shared Resource Invocation Scheme based on Hadoop and R

H. Xiong
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引用次数: 1

Abstract

The response rate and performance indicators of enterprise resource calls have become an important part of measuring the difference in enterprise user experience. An efficient corporate shared resource calling system can significantly improve the office efficiency of corporate users and significantly improve the fluency of corporate users' resource calling. Hadoop has powerful data integration and analysis capabilities in resource extraction, while R has excellent statistical capabilities and resource personalized decomposition and display capabilities in data calling. This article will propose an integration plan for enterprise shared resource invocation based on Hadoop and R to further improve the efficiency of enterprise users' shared resource utilization, improve the efficiency of system operation, and bring enterprise users a higher level of user experience. First, we use Hadoop to extract the corporate shared resources required by corporate users from the nearby resource storage computer room and terminal equipment to increase the call rate, and use the R function attribute to convert the user’s search results into linear correlations, according to the correlation The strong and weak principles are displayed in order to improve the corresponding speed and experience. This article proposes feasible solutions to the shortcomings in the current enterprise shared resource invocation. We can use public data sets to perform personalized regression analysis on user needs, and optimize and integrate most relevant information.
基于Hadoop和R的企业共享资源调用方案分析
企业资源呼叫的响应率和绩效指标已经成为衡量企业用户体验差异的重要组成部分。一个高效的企业共享资源呼叫系统可以显著提高企业用户的办公效率,显著提高企业用户资源呼叫的流畅性。Hadoop在资源提取方面具有强大的数据集成和分析能力,R在数据调用方面具有出色的统计能力和资源个性化分解和显示能力。本文将提出一种基于Hadoop和R的企业共享资源调用集成方案,进一步提高企业用户共享资源利用效率,提高系统运行效率,为企业用户带来更高层次的用户体验。首先,我们利用Hadoop从附近的资源存储机房和终端设备中提取企业用户所需的企业共享资源,以提高调用率,并利用R函数属性将用户的搜索结果转换成线性相关性,根据相关性的强弱原则进行显示,以提高相应的速度和体验。针对当前企业共享资源调用中存在的不足,提出了可行的解决方案。我们可以使用公共数据集对用户需求进行个性化回归分析,并优化和整合最相关的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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