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A novel task scheduling approach based on dynamic queues and hybrid meta-heuristic algorithms for cloud computing environment

机译:一种基于动态队列和混合元启发式算法的新型任务调度方法,用于云计算环境

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摘要

Task scheduling is one of the most challenging aspects to improve the overall performance of cloud computing and optimize cloud utilization and Quality of Service (QoS). This paper focuses on Task Scheduling optimization using a novel approach based on Dynamic dispatch Queues (TSDQ) and hybrid meta-heuristic algorithms. We propose two hybrid meta-heuristic algorithms, the first one using Fuzzy Logic with Particle Swarm Optimization algorithm (TSDQ-FLPSO), the second one using Simulated Annealing with Particle Swarm Optimization algorithm (TSDQ-SAPSO). Several experiments have been carried out based on an open source simulator (CloudSim) using synthetic and real data sets from real systems. The experimental results demonstrate the effectiveness of the proposed approach and the optimal results is provided using TSDQ-FLPSO compared to TSDQ-SAPSO and other existing scheduling algorithms especially in a high dimensional problem. The TSDQ-FLPSO algorithm shows a great advantage in terms of waiting time, queue length, makespan, cost, resource utilization, degree of imbalance, and load balancing.
机译:任务调度是提高云计算的整体性能的最具挑战性的方面之一,并优化云利用率和服务质量(QoS)。本文侧重于使用基于动态调度队列(TSDQ)和混合元启发式算法的新方法的任务调度优化。我们提出了两个混合元 - 启发式算法,第一算法使用模糊逻辑与粒子群优化算法(TSDQ-FLPSO),第二个使用模拟退火与粒子群优化算法(TSDQ-SAPSO)。使用来自真实系统的合成和实际数据集的开源模拟器(CloudSim)进行了几个实验。实验结果证明了所提出的方法的有效性,与TSDQ-SAPSO和其他现有调度算法相比,使用TSDQ-FLPSOS提供最佳结果,特别是在高维问题中。 TSDQ-FLPSO算法在等待时间,队列长度,MAPESPAN,成本,资源利用,不平衡程度和负载平衡方面显示出很大的优势。

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