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Support vector machine-based proactive fault-tolerant scheduling for grid computing environment

机译:支持向量基于机器的主动容错调度,用于网格计算环境

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摘要

To classify the reliable resources accurately and perform a proactive fault tolerant scheduling in grid computing environment, a combination of support vector machine (SVM) with the quantum-behaved particle swarm optimization using Gaussian distributed local attractor point (GAQPSO) is proposed in this paper. When tuned with appropriate kernel parameters, the SVM classifier provides high accuracy in reliable resource prediction. The higher diversity of GAQPSO compared to other variants of QPSO, reduces the makespan of the schedule significantly. The performance of the SVM-GAQPSO scheduler is analysed in terms of the makespan, reliability, and accuracy. The empirical result shows that the reliability of the SVM-GAQPSO scheduler is 14% higher than the average reliability of the compared algorithms. Also, the accuracy of prediction using the SVM classifier is 92.55% and it is 37.2% high compared to classification and regression trees (CART), linear discriminant analysis (LDA), K-nearest neighbourhood (K-NN), and random forest (RF) algorithm.
机译:为了准确地对可靠的资源进行准确,并在网格计算环境中执行主动容错调度,本文提出了使用高斯分布式本地吸引力点(GAQPSO)的量子表现粒子群优化的支持向量机(SVM)的组合。当使用适当的内核参数调整时,SVM分类器在可靠的资源预测中提供了高精度。与QPSO的其他变体相比,GaQPSO的更高分集,显着降低了计划的Mapspan。根据Makespan,可靠性和准确性来分析SVM-GAQPSO调度程序的性能。经验结果表明,SVM-GAQPSO调度器的可靠性高于比较算法的平均可靠性的14%。此外,使用SVM分类器的预测精度为92.55%,与分类和回归树(推车),线性判别分析(LDA),K最近邻域(K-NN)和随机森林相比,37.2%高。 rf)算法。

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