基于web应用的异常检测技术:实验研究

J. Magalhães, L. Silva
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引用次数: 10

摘要

基于web的应用程序暴露于可能影响其可用性和可执行性的各种因素之下。平均检测时间(MTTD)和平均修复时间(MTTR)被认为是减少故障影响的重要手段。在这种情况下,通常采用多种监视技术的组合,为IT人员提供及时检测和从故障中恢复的有用信息。本文对目前基于web的应用中使用的监控工具所提供的检测能力进行了实验研究。除了系统级、端到端和容器级监视技术之外,我们还合并了应用程序级监视技术。该技术通过在面向方面的程序收集的应用程序参数之间执行相关性分析来检测性能异常。考虑不同的异常场景,评估了检测延迟、受影响的最终用户数量、覆盖分析和每种监控技术实现的开销。尽管监控技术的互补性很重要,但应用级监控所取得的结果非常有趣:它已经检测到100%的异常场景测试,对于73%的异常,它是最快的检测技术,并且由于低检测延迟,它有助于减少终端用户遇到异常的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection Techniques for Web-Based Applications: An Experimental Study
The web-based applications are exposed to a large spectrum of factors that may affect their availability and performability. The mean-time-to-detect (MTTD) and the mean-time-to-repair (MTTR) are considered of utmost importance to reduce the failure impacts. In this context, the combination of multiple monitoring techniques is commonly adopted to provide IT staff with information useful for timely detection and recovery from the failures. In this paper we provide an experimental study about the detection abilities provided by the monitoring tools that are being used nowadays in web-based applications. Besides the system-level, end-to-end and container-level monitoring techniques we incorporate an application-level monitoring technique. This technique provides the detection of performance anomalies by performing a correlation analysis among application parameters collected by an aspect-oriented program. The detection latency, the number of end-users affected, the coverage analysis and the overhead achieved by each monitoring technique, was evaluated considering different anomaly scenarios. Despite the importance of the monitoring techniques complementarity, the results achieved by the application-level monitoring are very interesting: it has detected 100% of the anomaly scenarios tested, for 73% of the anomalies it was the fastest detection technique, and due to the low detection latency it contributes to reduce the number of end-users experiencing the anomalies.
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