一种快速矢量打包算法的实现及其在服务器整合中的应用

S. Doddavula, Mudit Kaushik, Akansha Jain
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引用次数: 11

摘要

随着越来越多地采用SOA和云计算技术(其中IT包括基础设施、平台和应用程序作为服务交付),越来越多地使用共享资源模型,其中计算和IT资源在多个应用程序之间共享,因此相应地,对优化资源分配的解决方案的需求也在增加。电力、冷却和房地产是运营云计算平台的重要成本,因此需要优化所消耗资源的解决方案,以降低这些成本。其中的挑战在于将工作负载整合到最少数量的服务器上,同时考虑到跨多个维度(如计算、存储、IO、网络带宽等)的资源需求,这些需求不断变化。这被认为是一个NP困难问题,有几种基于传统装箱算法的解决方案。这些解决方案无法在足够短的时间内获得最佳解决方案,从而无法对不断变化的工作负载做出反应。我们描述了一种算法,该算法通过权衡准确性和达到最佳解决方案所需的处理,同时考虑多个资源使用维度,如CPU使用、IO使用、网络带宽使用等,以达到优化,从而达到最佳工作负载整合解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of a Fast Vector Packing Algorithm and its Application for Server Consolidation
With increasing adoption of SOA and Cloud Computing technologies where IT including infrastructure, platforms and applications are delivered as services, there is increasing use of a shared resource model where computing and IT resources are shared across multiple applications, so accordingly there is increasing need for solutions that optimize the resource allocation. Power, cooling and real estate are significant costs in operating a cloud computing platform so there is need for solutions that optimize the resources consumed in order to reduce these costs. The challenge in these is in consolidating workloads to minimal number of servers while taking into consideration the resource needs across multiple dimensions like compute, storage, IO, networking bandwidth, etc which keeps changing continuously. This is considered to be a NP hard problem for which there are several solutions based on traditional bin packing algorithms. These solutions have limitations in arriving at the optimal solution in short enough time to be able to react to changing workloads. We describe an algorithm that enables arriving at an optimal workload consolidation solution with desired accuracy by trading off the accuracy with the processing required to arrive at the optimal solution while taking into consideration multiple resource usage dimensions like CPU usage, IO usage, network bandwidth usage etc simultaneously to arrive at the optimization.
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