雾计算中监控容器微服务的黑盒方法

Danang Danang, Nuris Dwi Setiawan, Indra Ava Adianta
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引用次数: 0

摘要

近年来,物联网发展非常迅速。物联网设备用于监视和控制物理对象,将物理世界转变为具有计算和通信能力的智能空间。与云计算相比,雾计算用于支持网络边缘对延迟敏感的应用程序,从而可以更快地处理客户端请求。本研究旨在提出雾计算环境下容器化黑箱微服务的监控框架,以评估CPU开销,并确定每个容器的运行状态、服务特征和依赖关系。本研究提出了一个监控框架,通过黑箱方法集成服务交互中的计算资源使用情况和运行时信息,该方法试图将服务级别信息和计算资源信息集成到同一框架中。所建议的框架仅限于在服务器接收到请求后观察信息监控。本研究使用JMeter模拟用户向服务器发送请求的操作,本研究假设用户知道服务器的IP地址。对于雾计算中的容器监测方法,都是间接监测方法。本研究的结果表明,所提出的框架可以为可视化提供操作数据,帮助系统管理员使用黑盒方法评估运行容器的状态。系统管理员不需要理解和修改目标微服务,就可以从容器化的微服务中收集服务特征。对于未来的研究,建议扩大对修改系统信息的探索,并可预演部分容器管理工具代码,使本研究提出的框架能够为负载均衡算法提供实时量化指标,帮助优化负载均衡算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BLACK BOX APPROACH TO MONITORING CONTAINER MICROSERVICES IN FOG COMPUTING
In recent years IoT has developed very rapidly. IoT devices are used to monitor and control physical objects to transform the physical world into intelligent spaces with computing and communication capabilities. Compared to cloud computing, fog computing is used to support latency-sensitive applications at the edge of the network which allows client requests to be processed faster. This study aims to propose a monitoring framework for containerized black box microservices in a fog computing environment to evaluate CPU overhead, as well as to determine the operating status, service characteristics, and dependencies of each container. This study proposes a monitoring framework to integrate computing resource usage and run-time information from service interactions using a black box approach that seeks to integrate service-level information and computing resource information into the same framework. The proposed framework is limited to observing information monitoring after the server receives a request. This study uses JMeter to simulate user actions, which send requests to the server, and this research assumes the user knows the IP address of the server. For container monitoring methods in fog computing, all are indirect monitoring methods. The results of this study indicate that the proposed framework can provide operational data for visualization that can help system administrators evaluate the status of running containers using a black box approach. System administrators do not need to understand and modify target microservices to gather service characteristics from containerized microservices. Regarding future research, it is suggested to expand the exploration of modified system information, and that part of the container management tool code can be pre-tried so that the framework proposed in this study can provide real-time quantitative indexes for the load balancing algorithm to help optimize the load balancing algorithm.
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