GPU-based Classification for Wireless Intrusion Detection

A. Lazar, A. Sim, Kesheng Wu
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引用次数: 3

Abstract

Automated network intrusion detection systems (NIDS) continuously monitor the network traffic to detect attacks or/and anomalies. These systems need to be able to detect attacks and alert network engineers in real-time. Therefore, modern NIDS are built using complex machine learning algorithms that require large training datasets and are time-consuming to train. The proposed work shows that machine learning algorithms from the RAPIDS cuML library on Graphics Processing Units (GPUs) can speed-up the training process on large scale datasets. This approach is able to reduce the training time while providing high accuracy and performance. We demonstrate the proposed approach on a large subset of data extracted from the Aegean Wi-Fi Intrusion Dataset (AWID). Multiple classification experiments were performed on both CPU and GPU. We achieve up to 65x acceleration of training several machine learning methods by moving most of the pipeline computations to the GPU and leveraging the new cuML library as well as the GPU version of the CatBoost library.
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基于gpu的无线入侵检测分类
自动化网络入侵检测系统(NIDS)持续监控网络流量,以检测攻击或/或异常。这些系统需要能够检测攻击并实时提醒网络工程师。因此,现代NIDS是使用复杂的机器学习算法构建的,这些算法需要大量的训练数据集,并且训练起来很耗时。提出的工作表明,图形处理单元(gpu)上RAPIDS cuML库的机器学习算法可以加速大规模数据集的训练过程。这种方法能够在提供高精度和高性能的同时减少训练时间。我们在爱琴海Wi-Fi入侵数据集(AWID)中提取的大量数据上演示了所提出的方法。在CPU和GPU上分别进行了多次分类实验。通过将大部分管道计算移到GPU并利用新的cuML库以及GPU版本的CatBoost库,我们实现了几种机器学习方法的训练高达65倍的加速。
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