Proactive identification of performance problems

S. Duan, S. Babu
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引用次数: 15

Abstract

We propose to demonstrate Fa, an automated tool for timely and accurate prediction of Service-Level-Agreement (SLA) violations caused by performance problems in database systems. Fa periodically collects performance data at three levels: applications, database server, and operating system. This data is used to construct probabilistic models for predicting SLA violations. Fa currently uses graphical Bayesian network models because of their ability to support a wide range of inferences, including prediction and diagnosis, as well as their support for interactive visualization and presentation of complex system behavior in intuitive ways.
主动识别性能问题
我们建议展示Fa,一个自动化工具,用于及时准确地预测数据库系统中由性能问题引起的服务水平协议(SLA)违规。Fa定期从应用程序、数据库服务器和操作系统三个级别收集性能数据。该数据用于构建用于预测SLA违规的概率模型。Fa目前使用图形贝叶斯网络模型,因为它们能够支持广泛的推断,包括预测和诊断,以及它们支持以直观的方式交互式可视化和复杂系统行为的呈现。
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