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CPU load prediction using neuro-fuzzy and Bayesian inferences

机译:使用神经模糊和贝叶斯推理的CPU负载预测

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Ensuring adequate use of the computing resources for highly fluctuating availability in multi-user computational environments requires effective prediction models, which play a key role in achieving application performance for large-scale distributed applications. Predicting the processor availability for scheduling a new process or task in a distributed environment is a basic problem that arises in many important contexts. The present paper aims at developing a model for single-step-ahead CPU load prediction that can be used to predict the future CPU load in a dynamic environment. Our prediction model is based on the control of multiple Local Adaptive Network-based Fuzzy Inference Systems Predictors (LAPs) via the Naive Bayesian Network inference between clusters states of CPU load time points obtained by the C-means clustering process. Experimental results show that our model performs better and has less overhead than other approaches reported in the literature.
机译:在多用户计算环境中,要确保充分利用计算资源以确保可用性的高度波动,就需要有效的预测模型,该模型对于实现大规模分布式应用程序的应用程序性能起着关键作用。预测处理器可用性以在分布式环境中安排新流程或任务是许多重要情况下出现的基本问题。本文旨在开发一种用于单步前进CPU负载预测的模型,该模型可用于预测动态环境中的未来CPU负载。我们的预测模型基于通过C均值聚类过程获得的CPU负载时间点的聚类状态之间的朴素贝叶斯网络推断对多个基于本地自适应网络的模糊推断系统预测器(LAP)进行控制。实验结果表明,与文献中报道的其他方法相比,我们的模型具有更好的性能且开销更少。

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