On Non-Preemptive VM Scheduling in the Cloud

Konstantinos Psychas, Javad Ghaderi
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引用次数: 4

Abstract

We study the problem of scheduling VMs (Virtual Machines) in a distributed server platform, motivated by cloud computing applications. The VMs arrive dynamically over time to the system, and require a certain amount of resources (e.g. memory, CPU, etc) for the duration of their service. To avoid costly preemptions, we consider non-preemptive scheduling: Each VM has to be assigned to a server which has enough residual capacity to accommodate it, and once a VM is assigned to a server, its service cannot be disrupted (preempted). Prior approaches to this problem either have high complexity, require synchronization among the servers, or yield queue sizes/delays which are excessively large. We propose a non-preemptive scheduling algorithm that resolves these issues. In general, given an approximation algorithm to Knapsack with approximation ratio r , our scheduling algorithm can provide rβ fraction of the throughput region for β < r. In the special case of a greedy approximation algorithm to Knapsack, we further show that this condition can be relaxed to β<1. The parameters β and r can be tuned to provide a tradeoff between achievable throughput, delay, and computational complexity of the scheduling algorithm. Finally extensive simulation results using both synthetic and real traffic traces are presented to verify the performance of our algorithm.
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云中的虚拟机非抢占调度
在云计算应用的驱动下,我们研究了分布式服务器平台上的虚拟机调度问题。随着时间的推移,虚拟机动态到达系统,并且在其服务期间需要一定数量的资源(例如内存,CPU等)。为了避免代价高昂的抢占,我们考虑非抢占式调度:每个VM必须分配到一个有足够剩余容量来容纳它的服务器上,并且一旦VM被分配到一个服务器上,它的服务就不会被中断(抢占)。先前解决这个问题的方法要么非常复杂,需要在服务器之间进行同步,要么产生过大的队列大小/延迟。我们提出了一种非抢占式调度算法来解决这些问题。在一般情况下,给定一个近似比为r的近似算法,我们的调度算法可以在β< r时提供rβ分数的吞吐量区域。在一个贪心近似算法的特殊情况下,我们进一步证明了这个条件可以松弛到β<1。参数β和r可以调优,以提供可实现的吞吐量,延迟和调度算法的计算复杂性之间的权衡。最后给出了综合和真实流量轨迹的大量仿真结果,验证了算法的性能。
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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Session details: Networking Asymptotically Optimal Load Balancing Topologies On Resource Pooling and Separation for LRU Caching Working Set Size Estimation Techniques in Virtualized Environments: One Size Does not Fit All PreFix: Switch Failure Prediction in Datacenter Networks
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