优化云中的资源消耗

Ligang He, Deqing Zou, Zhang Zhang, Kai Yang, Hai Jin, S. Jarvis
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引用次数: 19

摘要

本文考虑的场景是,多个虚拟机集群(即,称为虚拟集群)托管在由物理节点集群组成的云系统中。多个虚拟集群(VCs)共存于物理集群中,每个VC为传入请求提供特定类型的服务。在这种情况下,虚拟机整合在节省资源消耗方面发挥了重要作用,虚拟机整合力求使用最少的节点来容纳系统中的所有虚拟机。现有文献中提出的大多数整合方法在整合过程中将vm视为“刚性”,即vm的资源容量保持不变。在VC环境中,QoS通常由VC作为单个实体提供。因此,只要整个VC仍然能够保持期望的QoS,就没有理由不能调整vm的资源容量。在整合期间将vm视为“可模塑的”可能能够进一步将vm整合到更少的节点中。本文研究了这一问题,并提出了一种遗传算法(GA)来整合可塑虚拟机。GA能够进化出优化的系统状态,该状态表示虚拟机到节点的映射和分配给每个虚拟机的资源容量。在GA计算出新的系统状态后,Cloud将从当前系统状态过渡到新的系统状态。转换时间表示开销,应该最小化。在此基础上,建立了一种成本模型来捕获迁移开销,并开发了一种重构算法,使云在低迁移开销下迁移到优化的系统状态。本文通过实验对遗传算法和重构算法的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Resource Consumptions in Clouds
This paper considers the scenario where multiple clusters of Virtual Machines (i.e., termed as Virtual Clusters) are hosted in a Cloud system consisting of a cluster of physical nodes. Multiple Virtual Clusters (VCs) cohabit in the physical cluster, with each VC offering a particular type of service for the incoming requests. In this context, VM consolidation, which strives to use a minimal number of nodes to accommodate all VMs in the system, plays an important role in saving resource consumption. Most existing consolidation methods proposed in the literature regard VMs as "rigid" during consolidation, i.e., VMs' resource capacities remain unchanged. In VC environments, QoS is usually delivered by a VC as a single entity. Therefore, there is no reason why VMs' resource capacity cannot be adjusted as long as the whole VC is still able to maintain the desired QoS. Treating VMs as being "mouldable" during consolidation may be able to further consolidate VMs into an even fewer number of nodes. This paper investigates this issue and develops a Genetic Algorithm (GA) to consolidate mouldable VMs. The GA is able to evolve an optimized system state, which represents the VM-to-node mapping and the resource capacity allocated to each VM. After the new system state is calculated by the GA, the Cloud will transit from the current system state to the new one. The transition time represents overhead and should be minimized. In this paper, a cost model is formalized to capture the transition overhead, and a reconfiguration algorithm is developed to transit the Cloud to the optimized system state at the low transition overhead. Experiments have been conducted in this paper to evaluate the performance of the GA and the reconfiguration algorithm.
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