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Performance of Information Technology Infrastructure Prediction using Machine Learning

机译:使用机器学习的信息技术基础设施预测性能

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Resource management is always an important issue related to good governance decision making. One of the common problem faced in managing IT Infrastructure is about allocating server resources to improve the performance. In this study we use a machine learning approach to make predictions about the performance of information technology infrastructure. The experiment took data from several servers in a company to be tested. The performance measure of resources used in this study are CPU Performance, Disk performance, Memory capacity, and Network performance. Several algorithms and machine learning methods are tested, such as Linear Regression, kNN, SVR, Decision Tree and Random Forest, to find the best model fit for the servers. The comparison result shows that Linear regression and kNN perform well in predicting the network performance in those three servers.
机译:资源管理始终是与良好治理决策相关的重要问题。管理IT基础架构中面临的一个常见问题是关于分配服务器资源以提高性能。在这项研究中,我们使用机器学习方法来预测信息技术基础设施的性能。该实验从公司的几个服务器中获取数据进行测试。本研究中使用的资源的性能衡量标准是CPU性能,磁盘性能,内存容量和网络性能。测试了几种算法和机器学习方法,例如线性回归,KNN,SVR,决策树和随机林,以找到服务器的最佳型号。比较结果表明,线性回归和KNN在预测这三个服务器中的网络性能方面表现良好。

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