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An Efficient Kernel FCM and Artificial Fish Swarm Optimization-Based Optimal Resource Allocation in Cloud

机译:云中的高效内核FCM和人工鱼类群优化的最优资源分配

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Cloud computing model allows service-oriented system that fulfills the needs of the consumers. Capable resource management and task allocation are the important issues in cloud computing. Performance of the task scheduling method directly interrupts the utilization of cloud computing resources and the quality of experience of users. For that reason, reasonable virtual machine (VM) allocation and task scheduling are extremely important. In this paper, an efficient resource allocation model is proposed. Initially, the virtual machines are clustered with the help of Kernel Fuzzy C-Means Clustering (KFCM) algorithm to reduce the complexity. After the clustering process, the user tasks are allocated to the particular VM using artificial fish swarm optimization (AFSO) algorithm. A multi-objective function is designed to achieve an optimal resource allocation. The performance of the suggested technique is tested in terms of different metrics.
机译:云计算模型允许满足的服务系统,满足消费者需求。 有能力的资源管理和任务分配是云计算中的重要问题。 任务调度方法的性能直接中断云计算资源的利用以及用户的体验质量。 因此,合理的虚拟机(VM)分配和任务调度非常重要。 在本文中,提出了一种有效的资源分配模型。 最初,虚拟机借助内核模糊C-MEARELENTING(KFCM)算法群集以降低复杂性。 在聚类过程之后,使用人工鱼类群优化(AFSO)算法将用户任务分配给特定的VM。 旨在实现最佳资源分配的多目标函数。 在不同的指标方面测试了建议技术的性能。

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