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Allocating resource dynamically in cloud computing

机译:在云计算中动态分配资源

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摘要

In Cloud Computing, properly utilizing resource allocation dynamically is one of the most important factors for optimization. While utilizing, the main focus is on to use maximum resources which are highly scalable so that the process is completed in a speedy manner. In today's world exploring various algorithm and developing our own more efficient algorithm is desired for the advancement of technology. Similarly, this paper focuses on analyzing two similar algorithms and thereafter proposing a new composite algorithm which focuses on maximizing the throughput of the cloud provider. This proposed algorithm is derived from teaching learning based optimization algorithm (TLBO) and grey wolves optimization algorithm (GW). This algorithm works more efficient in utilizing each of these algorithms. Moreover, it balances time and cost and also tries to avoid local optimization trap which ultimately makes the waiting time minimum. In order to justify its effectiveness we have conducted few experiments and then compared them.
机译:在云计算中,正确地动态利用资源分配是优化的最重要因素之一。在利用时,主要重点是使用具有高度可伸缩性的最大资源,以便快速完成该过程。在当今世界,探索各种算法并开发我们自己的更有效的算法对于技术的进步是人们所期望的。同样,本文着重分析两种相似的算法,然后提出一种新的复合算法,该算法着重于最大程度地提高云提供商的吞吐量。该算法是从基于教学学习的优化算法(TLBO)和灰狼优化算法(GW)衍生而来的。在利用这些算法中的每一种时,该算法的工作效率更高。此外,它平衡了时间和成本,还试图避免局部优化陷阱,这最终使等待时间最小化。为了证明其有效性,我们进行了少量实验,然后进行了比较。

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