Dynamic prediction scheduling for virtual machine placement via ant colony optimization

Milad Seddigh, H. Taheri, Saeed Sharifian
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引用次数: 28

Abstract

Virtual machine (VM) scheduling with load balancing in cloud computing aims to allocate VMs to suitable physical machines (PM) and balance the resource usage among all of the PMs. Correct scheduling of cloud hosts is necessary to develop efficient scheduling strategies to appropriately allocate VMs to physical resources. In this regard the use of dynamic forecast of resource usage in each PM can improve the VM scheduling problem. This paper combines ant colony optimization (ACO) and VM dynamic forecast scheduling (VM_DFS), called virtual machine dynamic prediction scheduling via ant colony optimization (VMDPS-ACO), to solve the VM scheduling problem. In this algorithm through analysis of historical memory consumption in each PM, future memory consumption forecast of VMs on that PM and the efficient allocation of VMs on the cloud infrastructure is performed. We experimented the proposed algorithm using Matlab. The performance of the proposed algorithm is compared with VM_DFS. VM_DFS algorithm exploits first fit decreasing (FFD) scheme using corresponding types (i.e. queuing the list of VMs increasingly, decreasingly or randomly) to schedule VMs and assign them to suitable PMs. We experimented the proposed algorithm in both homogeneous and heterogeneous mode. The results indicate, VMDPS-ACO produces lower resource wastage than VM_DFS in both homogenous and heterogeneous modes and better load balancing among PMs.
基于蚁群优化的虚拟机布局动态预测调度
云计算中的虚拟机负载均衡调度的目的是将虚拟机分配到合适的物理机上,并在所有物理机上平衡资源使用。正确的云主机调度是制定有效的调度策略,合理分配虚拟机到物理资源的必要条件。在这方面,使用每个PM的资源使用动态预测可以改善虚拟机调度问题。本文将蚁群优化(ACO)与虚拟机动态预测调度(VM_DFS)相结合,称为基于蚁群优化的虚拟机动态预测调度(VMDPS-ACO)来解决虚拟机调度问题。该算法通过分析每个PM的历史内存消耗情况,预测该PM上虚拟机的未来内存消耗情况,并对云基础架构上的虚拟机进行有效分配。我们用Matlab对所提出的算法进行了实验。将该算法与VM_DFS进行了性能比较。VM_DFS算法利用首先拟合递减(FFD)方案,使用相应的类型(即对虚拟机列表进行递增、递减或随机排队)来调度虚拟机,并将其分配给合适的pm。我们在同构模式和异构模式下实验了该算法。结果表明,VMDPS-ACO在同质和异构模式下都比VM_DFS产生更低的资源浪费,并且在pm之间具有更好的负载均衡。
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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