DLA: Detecting and Localizing Anomalies in Containerized Microservice Architectures Using Markov Models

Areeg Samir, C. Pahl
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引用次数: 20

Abstract

Container-based microservice architectures are emerging as a new approach for building distributed applications as a collection of independent services that works together. As a result, with microservices, we are able to scale and update their applications based on the load attributed to each service. Monitoring and managing the load in a distributed system is a complex task as the degradation of performance within a single service will cascade reducing the performance of other dependent services. Such performance degradations may result in anomalous behaviour observed for instance for the response time of a service. This paper presents a Detection and Localization system for Anomalies (DLA) that monitors and analyzes performance-related anomalies in container-based microservice architectures. To evaluate the DLA, an experiment is done using R, Docker and Kubernetes, and different performance metrics are considered. The results show that DLA is able to accurately detect and localize anomalous behaviour.
使用马尔可夫模型检测和定位容器化微服务体系结构中的异常
基于容器的微服务体系结构正在成为一种新的方法,用于将分布式应用程序构建为协同工作的独立服务的集合。因此,使用微服务,我们可以根据每个服务的负载来扩展和更新它们的应用程序。监视和管理分布式系统中的负载是一项复杂的任务,因为单个服务的性能下降将级联地降低其他依赖服务的性能。这种性能下降可能导致观察到的异常行为,例如服务的响应时间。本文提出了一种异常检测和定位系统(DLA),用于监控和分析基于容器的微服务架构中与性能相关的异常。为了评估DLA,我们使用R、Docker和Kubernetes进行了实验,并考虑了不同的性能指标。结果表明,DLA能够准确地检测和定位异常行为。
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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