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A Multimodal Deep Learning-Based Distributed Network Latency Measurement System

机译:基于多模式深度学习的分布式网络延迟测量系统

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摘要

Network latency plays an important role in the server-selection process as well as real-time applications. Depending on the network system size, network latency can be either explicitly measured or predicted. While for small-scale systems explicit delay measurements can be performed between any pair of network nodes, this method is not feasible for large-scale networks due to the tremendous traffic and processing overhead. As a result, networking companies as well as researchers use the estimation methods for round-trip time (RTT) in large-scale networks. In such methods, network latency estimation is based on performing a small set of actual RTT measurements and predicting the rest of latencies among all network nodes. However, they suffer from several drawbacks such as poor performance, long convergence duration, or lack of convergence. In this article, we present a novel method of large-scale network latency estimation using artificial intelligence (AI). Our system uses a multimodal deep learning algorithm for high accuracy and computing speed. The proposed AI-based system is trained and evaluated using the well-known KING data set derived from the measurements of a real large-scale network. Performance evaluations show that our proposed approach significantly outperform existing techniques, achieving the 90th percentile relative error of 0.25 and an average accuracy of 96.1 & x0025;, and 76.4 & x0025; of the measurements are within 20 & x0025; estimation error.
机译:网络延迟在服务器选择过程中扮演一个重要的作用以及实时应用程序。根据网络系统大小,可以明确测量或预测网络延迟。虽然对于小规模的系统,可以在任何一对网络节点之间执行显式延迟测量,但由于巨大的流量和处理开销,这种方法对于大规模网络来说是不可行的。因此,网络公司以及研究人员使用大型网络中的往返时间(RTT)的估计方法。在这种方法中,网络延迟估计是基于执行一小一组实际的RTT测量并预测所有网络节点之间的其余延迟。然而,它们遭受了几种缺点,例如性能差,收敛持续时间差,或缺乏会聚。在本文中,我们使用人工智能(AI)提出了一种大规模网络延迟估计的新方法。我们的系统使用多模态深度学习算法,以实现高精度和计算速度。使用从真正大规模网络的测量结果导出的众所周知的国王数据集进行训练和评估所提出的基于AI的系统。性能评估表明,我们的提出方法显着优于现有技术,实现了90百分位的相对误差0.25,平均准确性为96.1&x0025;,76.4&x0025;测量值在20&x0025之内;估计错误。

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