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Energy-efficient resource allocation and provisioning for in-memory database clusters

机译:内存数据库集群的节能资源分配和供应

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Systems for processing large scale analytical workloads are increasingly moving from on-premise setups to on-demand configurations deployed on scalable cloud infrastructures. To reduce the cost of such infrastructures, existing research focuses on developing novel methods for workload and server consolidation. In this paper, we combine analytical modeling and non-linear optimization to help cloud providers increase the energy-efficiency of in-memory database clusters in cloud environments. We model this scenario as a multi-dimensional bin-packing problem and propose a new approach based on a hybrid genetic algorithm that efficiently handles resource allocation and server assignment for a given set of in-memory databases. Our trace-driven evaluation is based on measurements from an SAP HANA in-memory system and indicates improvements between 6% and 32% over the popular best-fit decreasing heuristic.
机译:用于处理大规模分析工作负载的系统越来越多地从本地设置转移到可伸缩云基础架构上部署的按需配置。为了降低此类基础架构的成本,现有研究重点在于开发用于工作负载和服务器整合的新颖方法。在本文中,我们将分析建模与非线性优化相结合,以帮助云提供商提高云环境中内存数据库集群的能效。我们将此场景建模为多维装箱问题,并提出了一种基于混合遗传算法的新方法,该算法可以有效处理给定内存数据库集的资源分配和服务器分配。我们的跟踪驱动评估基于SAP HANA内存系统中的测量结果,表明与流行的最佳拟合递减启发式算法相比,改进了6%至32%。

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