使用混合共享状态调度框架的Kubernetes集群优化

O. Ungureanu, C. Vladeanu, R. Kooij
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引用次数: 9

摘要

本文提出了一种在Kubernetes集群中调度工作负载的新方法,这些工作负载有时在整个环境中分布不均,或者处理资源利用率方面的波动。我们的建议着眼于一个混合共享状态调度框架模型,该模型将大部分任务委托给分布式调度代理,并具有调度校正功能,主要处理未调度和未优先级的任务。调度决策是基于整个集群状态做出的,该集群状态由主状态代理进行同步并定期更新。通过保留Kubernetes对象和概念,我们分析了不同场景下建议的调度器行为,例如,我们在部署的Kubernetes集群中测试了故障转移/恢复行为。此外,我们的研究结果表明,在搭配干扰或优先级抢占等情况下,由于计算负载扩散产生的高延迟,与Kubernetes系统集成的其他集中式调度框架可能无法相应地执行。在容器集群现有调度框架的更广泛上下文中,分布式模型在上层调度程序中缺乏可见性可能会产生冲突的工作配置。因此,我们建议的调度器包含集中式和分布式框架的功能。通过采用同步集群状态,我们确保了资源利用的最佳调度机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kubernetes cluster optimization using hybrid shared-state scheduling framework
This paper presents a novel approach for scheduling the workloads in a Kubernetes cluster, which are sometimes unequally distributed across the environment or deal with fluctuations in terms of resources utilization. Our proposal looks at a hybrid shared-state scheduling framework model that delegates most of the tasks to the distributed scheduling agents and has a scheduling correction function that mainly processes the unscheduled and unprioritized tasks. The scheduling decisions are made based on the entire cluster state which is synchronized and periodically updated by a master-state agent. By preserving the Kubernetes objects and concepts, we analyzed the proposed scheduler behavior under different scenarios, for instance we tested the failover/recovery behavior in a deployed Kubernetes cluster. Moreover, our findings show that in situations like collocation interference or priority preemption, other centralized scheduling frameworks integrated with the Kubernetes system might not perform accordingly due to high latency derived from the calculation of load spreading. In a wider context of the existing scheduling frameworks for container clusters, the distributed models lack of visibility at an upper-level scheduler might generate conflicting job placements. Therefore, our proposed scheduler encompasses the functionality of both centralized and distributed frameworks. By employing a synchronized cluster state, we ensure an optimal scheduling mechanism for the resources utilization.
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