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Improving accuracy of host load predictions on computational grids by artificial neural networks

机译:通过人工神经网络提高计算网格上主机负荷预测的准确性

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摘要

The capability to predict the host load of a system is significant for computational grids to make efficient use of shared resources. This work attempts to improve the accuracy of host load predictions by applying a neural network predictor to reach the goal of best performance and load balance. We describe the feasibility of the proposed predictor in a dynamic environment, and perform experimental evaluation using collected load traces. The results show that the neural network achieves consistent performance improvement with surprisingly low overhead in most cases. Compared with the best previously proposed method, our typical 20:10:1 network reduces the mean of prediction errors by approximately up to 79%. The training and testing time is extremely low, as this network needs only a couple of seconds to be trained with more than 100,000 samples, in order to make tens of thousands of accurate predictions within just a second.
机译:预测系统主机负载的能力对于计算网格有效利用共享资源非常重要。这项工作试图通过应用神经网络预测器来提高主机负载预测的准确性,以达到最佳性能和负载平衡的目标。我们描述了在动态环境中拟议的预测器的可行性,并使用收集的负载轨迹进行实验评估。结果表明,在大多数情况下,神经网络以令人惊讶的低开销实现了持续的性能改进。与以前提出的最佳方法相比,我们典型的20:10:1网络将预测误差的平均值降低了大约79%。培训和测试时间非常短,因为该网络仅需几秒钟即可对100,000多个样本进行培训,以便在一秒钟之内做出数以万计的准确预测。

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