Resource consumption prediction using neuro-fuzzy modeling

Roberto Camacho Barranco, P. Teller
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Abstract

The accurate prediction of resource consumption is important when it comes to optimally scheduling jobs in heterogeneous computer systems, e.g., cloud and grid computing infrastructures. Accordingly, different methods have been proposed to estimate the computer resource consumption of applications executed on such systems. In this paper, we use neuro-fuzzy modeling to predict the resource consumption of two bioinformatics applications, RAxML and BLAST. We experiment with different numbers and shapes of the membership functions to obtain, from a broad test set, the best initial configuration, which is tuned using neuro-adaptive learning methods. The results obtained by the neuro-fuzzy models are compared with those of five differently configured machine-learning models using the Root Relative Squared Error of a ten-fold cross validation of each model. This comparison indicates that neuro-fuzzy modeling can be used to estimate computer resource consumption and can provide more accurate or competitively accurate predictions of execution-time consumption.
基于神经模糊模型的资源消耗预测
当涉及到异构计算机系统(例如云和网格计算基础设施)的最佳调度作业时,对资源消耗的准确预测非常重要。因此,已经提出了不同的方法来估计在这种系统上执行的应用程序的计算机资源消耗。本文采用神经模糊模型对RAxML和BLAST两种生物信息学应用的资源消耗进行了预测。我们对不同数量和形状的隶属函数进行实验,以从广泛的测试集中获得最佳初始配置,该配置使用神经自适应学习方法进行调整。通过对每个模型进行十倍交叉验证的根相对平方误差,将神经模糊模型获得的结果与五种不同配置的机器学习模型的结果进行比较。这一比较表明,神经模糊建模可以用于估计计算机资源消耗,并可以提供更准确或竞争准确的执行时间消耗预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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