Heuristic-based Approach for Dynamic Consolidation of Software Licenses in Cloud Data Centers

Leila Helali, Mohamed Nazih Omri
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引用次数: 2

Abstract

Since its emergence, cloud computing has continued to evolve thanks to its ability to present computing as consumable services paid by use, and the possibilities of resource scaling that it offers according to client’s needs. Models and appropriate schemes for resource scaling through consolidation service have been considerably investigated,mainly, at the infrastructure level to optimize costs and energy consumption. Consolidation efforts at the SaaS level remain very restrained mostly when proprietary software are in hand. In order to fill this gap and provide software licenses elastically regarding the economic and energy-aware considerations in the context of distributed cloud computing systems, this work deals with dynamic software consolidation in commercial cloud data centers 𝑫𝑺𝟑𝑪. Our solution is based on heuristic algorithms and allows reallocating software licenses at runtime by determining the optimal amount of resources required for their execution and freed unused machines. Simulation results showed the efficiency of our solution in terms of energy by 68.85% savings and costs by 80.01% savings. It allowed to free up to 75% physical machines and 76.5% virtual machines and proved its scalability in terms of average execution time while varying the number of software and the number of licenses alternately.
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基于启发式的云数据中心软件许可动态整合方法
自出现以来,云计算一直在不断发展,这要归功于它将计算呈现为按使用付费的可消费服务的能力,以及它根据客户需求提供的资源扩展的可能性。通过整合服务进行资源扩展的模型和适当的方案已经进行了相当大的研究,主要是在基础设施级别上优化成本和能源消耗。SaaS级别的整合工作仍然非常有限,尤其是在拥有专有软件的情况下。为了填补这一空白,并在分布式云计算系统的背景下,根据经济和能源意识的考虑,弹性地提供软件许可,本工作涉及商业云数据中心中的动态软件整合𝑺𝑪。我们的解决方案基于启发式算法,并允许在运行时通过确定执行所需的最优资源量和释放未使用的机器来重新分配软件许可证。仿真结果表明,该方案在节能方面节省了68.85%,在成本方面节省了80.01%。它允许释放多达75%的物理机和76.5%的虚拟机,并且在交替改变软件数量和许可证数量的情况下,证明了其在平均执行时间方面的可伸缩性。
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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