边缘微服务编排的延迟感知Kubernetes调度

C. Centofanti, Walter Tiberti, A. Marotta, F. Graziosi, D. Cassioli
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引用次数: 0

摘要

网络和计算基础设施现在面临着挑战,以满足新应用日益严格的要求。最关键的方面之一是优化访问服务的最终用户感知到的延迟。新的网络架构为微服务的高效编排提供了一个自然的框架。然而,如何将准确的延迟度量合并到编排决策中仍然是一个开放的挑战。在这项工作中,我们提出了一种在Kubernetes环境中执行调度操作的新架构方法。现有的方法是通过部署在集群中的专门构建的外部测量服务来收集网络指标,例如集群中节点之间的延迟。与其他方法相比,本文提出的方法:(1)在应用层而不是网络层收集性能指标;(ii)依赖于相关服务内部执行的延迟测量,而不是利用外部测量服务;(iii)基于有效的终端用户感知延迟而不是考虑集群节点之间的延迟做出调度决策。我们通过采用迭代发现策略来展示我们方法的有效性,该策略能够动态地确定Kubernetes pod放置的哪个节点以最低的延迟运行。
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Latency-Aware Kubernetes Scheduling for Microservices Orchestration at the Edge
Network and computing infrastructures are nowadays challenged to meet the increasingly stringent requirements of novel applications. One of the most critical aspect is optimizing the latency perceived by the end-user accessing the services. New network architectures offer a natural framework for the efficient orchestration of microservices. However, how to incorporate accurate latency metrics into orchestration decisions still represents an open challenge.In this work we propose a novel architectural approach to perform scheduling operations in Kubernetes environment. Existing approaches proposed the collection of network metrics, e.g. latency between nodes in the cluster, via purposely-built external measurement services deployed in the cluster. Compared to other approaches the proposed one: (i) collects performance metrics at the application layer instead of network layer; (ii) relies on latency measurements performed inside the service of interest instead of utilizing external measurement services; (iii) takes scheduling decisions based on effective end-user perceived latency instead of considering the latency between cluster nodes.We show the effectiveness of our approach by adopting an iterative discovery strategy able to dynamically determine which node operates with the lowest latency for the Kubernetes pod placement.
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