Kubernetes边缘集群中的分布式资源自动缩放

Dimitrios Spatharakis, Ioannis Dimolitsas, E. Vlahakis, Dimitrios Dechouniotis, N. Athanasopoulos, S. Papavassiliou
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引用次数: 2

摘要

为了使现代应用程序的性能最大化,需要对虚拟化资源进行及时的资源管理。然而,根据传入请求的动态工作负载概要,主动部署资源以满足特定的应用程序需求是极具挑战性的。为此,任务调度和资源自动伸缩的基本问题必须共同解决。本文提出了一种与Kubernetes的去中心化特性兼容的可扩展架构[1],以解决这两个问题。利用一种新颖的类似aimd的任务调度解决方案的稳定性保证,我们动态地将传入的请求重定向到容器化的应用程序。为了应对动态工作负载,预测机制允许我们估计传入请求的数量。此外,引入了一种基于机器学习的应用程序分析建模,通过将AIMD算法获得的理论计算的服务率与当前性能指标共同设计,来解决可伸缩性问题。在小边缘基础设施的实际数据集下,将所提出的解决方案与最先进的自缩放技术进行了比较,并分析了资源利用率和QoS违规之间的权衡。我们的解决方案通过减少8%的CPU内核提供了更好的资源利用率,而QoS违规的增加只是可以接受的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Resource Autoscaling in Kubernetes Edge Clusters
Maximizing the performance of modern applications requires timely resource management of the virtualized resources. However, proactively deploying resources for meeting specific application requirements subject to a dynamic workload profile of incoming requests is extremely challenging. To this end, the fundamental problems of task scheduling and resource autoscaling must be jointly addressed. This paper presents a scalable architecture compatible with the decentralized nature of Kubernetes [1], to solve both. Exploiting the stability guarantees of a novel AIMD-like task scheduling solution, we dynamically redirect the incoming requests towards the containerized application. To cope with dynamic workloads, a prediction mechanism allows us to estimate the number of incoming requests. Additionally, a Machine Learning-based (ML) Application Profiling Modeling is introduced to address the scaling, by co-designing the theoretically-computed service rates obtained from the AIMD algorithm with the current performance metrics. The proposed solution is compared with the state-of-the-art autoscaling techniques under a realistic dataset in a small edge infrastructure and the trade-off between resource utilization and QoS violations are analyzed. Our solution provides better resource utilization by reducing CPU cores by 8% with only an acceptable increase in QoS violations.
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