首页> 外文会议>International Conference on Advances in Cognitive Communication Technologies >Energy Aware Resource Efficient-(EARE) Server Consolidation Framework for Cloud Datacenter
【24h】

Energy Aware Resource Efficient-(EARE) Server Consolidation Framework for Cloud Datacenter

机译:云数据中心的能源感知资源高效(EARE)服务器整合框架

获取原文

摘要

Cloud datacenter offers economic and elastic computing benefits to the customers, where on-demand virtual machine (VM) allocation plays a significant role. Inefficient VM placement leads to resource wastage and high power consumption that raises the requirement of server consolidation. The feasibly optimal placement of VMs with the objectives of minimum power consumption and maximum resource utilization is the key to server consolidation. Though many multi-objective VM placement schemes are available in the literature, it mostly works on weighted sum approaches that transforms multi-objective problem (where some objectives maximize and others minimize) into single objective to give optimized solution. Hence, the existing approaches do not correctly justify the multi-objective VM placement problem. To provide correct solution of multi-objective and multi-constrained VM allocation problem, this work presents GA based evolutionary server consolidation framework by applying rank based non-dominated sorting for multiple objectives to generate pareto-optimal solution. It enables maximum resource utilization and minimum power consumption to accomplish effective server consolidation. The VM placement is done using genetic algorithm (GA) which encodes VM allocation information into chromosomes. The performance evaluation of the proposed work is carried out by execution of numerous experiments in simulated datacenter environment. The experimental outcome reveals that the proposed VM allocation framework improves resource utilization upto 38.54,41.67, and 44.8% and minimize power consumption upto 11.32,12, and 13.7% over random, best-fit, and first-fit heuristic-based approaches.
机译:云数据中心为客户提供经济和弹性的计算优势,按需虚拟机(VM)分配在其中发挥了重要作用。虚拟机放置效率低下会导致资源浪费和高功耗,从而提高了服务器整合的要求。以最小的功耗和最大的资源利用率为目标的可行的虚拟机最佳放置是服务器整合的关键。尽管文献中提供了许多多目标VM放置方案,但它大多适用于加权和方法,该方法将多目标问题(其中一些目标最大化而其他目标最小化)转换为单个目标,以提供优化的解决方案。因此,现有方法不能正确证明多目标VM放置问题。为了提供多目标和多约束VM分配问题的正确解决方案,这项工作提出了基于GA的进化服务器整合框架,该方法通过对多个目标应用基于等级的非支配排序来生成最优的解决方案。它可实现最大的资源利用率和最低的功耗,以实现有效的服务器整合。使用遗传算法(GA)将VM分配信息编码为染色体,从而完成VM的放置。拟议工作的性能评估是通过在模拟数据中心环境中执行大量实验来进行的。实验结果表明,与基于随机,最佳拟合和首次拟合的启发式方法相比,拟议的VM分配框架可将资源利用率提高至38.54、41.67和44.8%,并将功耗降至11.32、12和13.7%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号