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1.
Server Consolidation is one of the foremost concerns associated with the effective management of a Cloud Data Center as it has the potential to accomplish significant reduction in the overall cost and energy consumption. Most of the existing works on Server Consolidation have focused only on reducing the number of active physical servers (PMs) using Virtual Machine (VM) Live Migration. But, along with reducing the number of active PMs, if a consolidation approach reduces residual resource fragmentation, the residual resources can be efficiently used for new VM allocations, or VM reallocations, and some future migrations can also be reduced. None of the existing works have explicitly focused on reducing residual resource fragmentation along with reducing the number of active PMs to the best of our knowledge. We propose RFAware Server Consolidation, a heuristics based server consolidation approach which performs residual resource defragmentation along with reducing the number of active PMs in cloud data centers.  相似文献   

2.
Energy consumption has become a critical issue for data centers due to energy-associated costs and environmental effects. In this paper, we propose a new algorithm based on Ant Colony System to solve Virtual Machine Consolidation problem aims to save the energy consumption of cloud data centers. We consider the energy consumption during VMs migration as one of the primary factors which have not considered in the similar conventional algorithms. It significantly reduces the number of migrations and the active physical machines that result in the reduction of total energy consumption of data centers. The simulation results on the random workload in different scenarios demonstrate that the proposed algorithm outperforms the state-of-the-art VM Consolidation algorithm with regards to the number of migrations, number of sleeping PMs, number of SLA Violations, and energy consumption.  相似文献   

3.
At the virtualized data centers, services are presented by active virtual machines (VMs) in physical machines (PMs). The manner in which VMs are mapped to PMs affects the performance of data centers and the energy efficiency. By employing the server consolidation technique, it is possible to configure the VMs on a smaller number of PMs, while the quality of service is guaranteed. In this way, the rate of active PM utilization increases and fewer active PMs would be required. Moreover, the server consolidation technique reacts to the management of underloaded and overloaded PMs by using the VM migration technology. Considering the capabilities of the server consolidation technique and its role in developing the cloud computing infrastructure, many researches have been conducted in this context. Still, a comprehensive and systematic study has not yet been performed on various consolidation techniques to check the capabilities, advantages, and disadvantages of current approaches. In this paper, a systematic study is conducted on a number of credible researches related to server consolidation techniques. In order to do so and by studying the selected works, proposed solutions are categorized based on the type of decision for running the consolidation algorithm in 4 groups of static method, dynamic method, prediction‐based dynamic method, and hybrid method. Thereafter, the advantages and disadvantages of suggested approaches are studied and compared in each research by specifying the technique and idea applied therein. In addition, by categorizing aims of researches and specifying assessment parameters, optimization approaches and type of architecture, a possibility has been provided to get familiarized with the views of the researchers.  相似文献   

4.
提出了一种新的蚁群算法优化的虚拟机放置策略ACA-VMP (Ant Colony Algorithm based virtual machine placement);ACA-VMP以云数据中心的总体能量消耗降低、服务质量最佳及减少虚拟机迁移次数为目标函数;根据蚁群优化算法,ACA-VMP采用了全局最优解和局部最优解信息素强度更新规则;全局最优解经过多次迭代后,蚂蚁路径的多次寻优,保证这个虚拟机放置优化策略的完成;局部信息素强度参数更新可以补充蚂蚁其他局部最优路径的寻找,这样也可以使得ACA-VMP虚拟机放置优化算法更快的接近全局最优解;仿真结果表明:ACA-VMP策略使得云数据中心的各类性能指标都可以改善,该实验结果对于其他企业构造节能云数据中心有很好的参考价值.  相似文献   

5.
张奕  程小辉  陈柳华 《计算机应用》2017,37(10):2754-2759
目前以虚拟云服务平台作为强大计算平台的虚拟云环境下,许多现存调度方法致力于合并虚拟机以减少物理机数目,从而达到减少能源消耗的目的,但会引入高额虚拟机迁移成本;此外,现存方法也没有考虑导致用户高额支付成本的成本因子影响。以减少云服务提供者能源消耗和云服务终端用户支付成本为目标,同时保障用户任务的时限要求,提出一种能源与时限可感知的非迁移调度(EDA-NMS)算法。EDA-NMS利用任务时限的松弛度,延迟宽松时限任务的执行从而无需唤醒新的物理机,更无需引入虚拟机动态迁移成本,以达到减少能源消耗的目的。多重扩展实验结果表明,EDA-NMS采用成本和能耗有效的虚拟机实例类型组合方案,与主动及响应式调度(PRS)算法相比,在减少静态能耗的同时,能更有效地满足用户关键任务的敏感时限并确保用户支付成本最低。  相似文献   

6.
Reducing energy consumption has become an important task in cloud datacenters. Many existing scheduling approaches in cloud datacenters try to consolidate virtual machines (VMs) to the minimum number of physical hosts and hence minimize the energy consumption. VM live migration technique is used to dynamically consolidate VMs to as few PMs as possible; however, it introduces high migration overhead. Furthermore, the cost factor is usually not taken into account by existing approaches, which will lead to high payment cost for cloud users. In this paper, we aim to achieve energy reduction for cloud providers and payment saving for cloud users, and at the same time, without introducing VM migration overhead and without compromising deadline guarantees for user tasks. Motivated by the fact that some of the tasks have relatively loose deadlines, we can further reduce energy consumption by proactively postponing the tasks without waking up new physical machines (PMs). A heuristic task scheduling algorithm called Energy and Deadline Aware with Non-Migration Scheduling (EDA-NMS) algorithm is proposed, which exploits the looseness of task deadlines and tries to postpone the execution of the tasks that have loose deadlines in order to avoid waking up new PMs. When determining the VM instant types, EDA-NMS selects the instant types that are just sufficient to guarantee task deadline to reduce user payment cost. The results of extensive experiments show that our algorithm performs better than other existing algorithms on achieving energy efficiency without introducing VM migration overhead and without compromising deadline guarantees.  相似文献   

7.
Due to the increasing sizes of cloud data centers, the number of virtual machines (VMs) and applications rises quickly. The rapid growth of large scale Internet services results in unbalanced load of network resource. The bandwidth utilization rate of some physical hosts is too high, and this causes network congestion. This paper presents a layered VM migration algorithm (LVMM). At first, the algorithm will divide the cloud data center into several regions according to the bandwidth utilization rate of the hosts. Then we balance the load of network resource of each region by VM migrations, and ultimately achieve the load balance of network resource in the cloud data center. Through simulation experiments in different environments, it is proved that the LVMMalgorithm can effectively balance the load of network resource in cloud computing.  相似文献   

8.
Since service level agreement(SLA)is essentially used to maintain reliable quality of service between cloud providers and clients in cloud environment,there has been a growing effort in reducing power consumption while complying with the SLA by maximizing physical machine(PM)-level utilization and load balancing techniques in infrastructure as a service.However,with the recent introduction of container as a service by cloud providers,containers are increasingly popular and will become the major deployment model in the cloud environment and specifically in platform as a service.Therefore,reducing power consumption while complying with the SLA at virtual machine(VM)-level becomes essential.In this context,we exploit a container consolidation scheme with usage prediction to achieve the above objectives.To obtain a reliable characterization of overutilized and underutilized PMs,our scheme jointly exploits the current and predicted CPU utilization based on local history of the considered PMs in the process of the container consolidation.We demonstrate our solution through simulations on real workloads.The experimental results show that the container consolidation scheme with usage prediction reduces the power consumption,number of container migrations,and average number of active VMs while complying with the SLA.  相似文献   

9.
闫成雨  李志华  喻新荣 《计算机应用》2016,36(10):2698-2703
针对云环境下动态工作负载的不确定性,提出了基于自适应过载阈值选择的虚拟机动态整合方法。为了权衡数据中心能源有效性与服务质量间的关系,将自适应过载阈值的选择问题建模为马尔可夫决策过程,计算过载阈值的最优选择策略,并根据系统能效和服务质量调整阈值。通过过载阈值检测过载物理主机,然后根据最小迁移时间原则以及最小能耗增加放置原则确定虚拟机的迁移策略,最后切换轻负载物理主机至休眠状态完成虚拟机整合。仿真实验结果表明,所提出的方法在减少虚拟机迁移次数方面效果显著,在节约数据中心能源开销与保证服务质量方面表现良好,在能源的有效性与云服务质量二者之间取得了比较理想的平衡。  相似文献   

10.
在云数据中心网络内,虚拟机(Virtual machine, VM)被动态创建和下线,这就导致资源碎片不被后续VM请求所利用。为解决上述问题,以最小化使用服务器数 量为目标的服务器整合技术被提出。虽然这种方法可以在某一时间段内减少资源碎片,但却付出了较大的VM迁移代价。因此本文提出了一种基于预测的先应式碎片 整理算法,在减少无效VM迁移的同时,将资源碎片重新整合为可用的连续资源,从而最大化VM收益。文中对此问题进行了数学定义,随后设计了启发式方法获取近似最优解。仿真结果表明,所提算法能够获取最大收益,并能够大幅度降低VM迁移成本。  相似文献   

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