基于云-露计算数据并行性的分布式混合DL网络攻击检测

M. Moussa, Lubna K. Alazzawi
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引用次数: 0

摘要

移动性是地面上无处不在的设备的同义词,与安全和分布式连接更相关。机器学习(ML)的研究已经开发出了在众多设备或计算节点上并行进行深度学习(DL)训练的技术和系统,因为最近这些领域的创新步伐加快了。随着模型结构复杂性的增加,许多系统无法在各种深度学习模型上提供整体性能。特别是,当涉及到ML扩展时,从合适的分布策略映射到模型所需的知识和时间经常被低估。更具体地说,当自动驾驶和联网车辆(cav)被用作云露水计算系统中的露水设备,并在特定道路环境中规划安全路线时。将并行训练系统应用于复杂的模型,除了模型原型之外,还会导致低于预期的性能和不平凡的开发开销。本文确定并解决了并行机器学习方法和系统实现在可用性和性能方面的研究困难,当CAV生成路径规划数据集并在cloud-dew网络上进行通信时,我们使用混合深度学习模型,该模型使用内置网络攻击检测系统的LSTM-AE。我们模拟了许多CAV的情况,使用相同的数据配置文件在相同的道路环境中进行运动规划。我们研究了采用同步数据并行的分布式架构中的配置,通过比较各种处理单元,可以实现优化的加速和改进的训练运行时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Hybrid DL Cyber-Attacks Detection using Data Parallelism in Cloud-Dew Computing
Mobility is a synonym for ubiquitous devices on the ground and is more related to secure and distributed connectivity. Research in Machine Learning (ML) has developed techniques and systems that parallelize Deep Learning (DL) training over numerous devices or compute nodes as the pace of innovation in these domains has quickened recently. Many systems have failed to deliver overall performance on a variety of DL models as the models' structural complexity increases. Particularly, the knowledge and time needed to map from a suitable distribution strategy to the model are frequently underestimated when it comes to ML scale-up. More specifically, when Autonomous and Connected Vehicles (CAVs) are used as dew devices in cloud-dew computing systems and are planning a safe route in specific road circumstances. Applying parallel training systems to complicated models leads to lower-than-expected performance and nontrivial development overheads in addition to model prototyping. This article identifies and addresses research difficulties in both usability and performance in parallel ML approaches and system implementations, when a CAV generates the dataset for path planning and communicates it on the cloud-dew network, we use a hybrid DL model that uses an LSTM-AE built-in a cyber-attacks detection system. We emulate the situation of numerous CAV s using the same data profile for motion planning on the same road environment. We examine the configuration in a distributed architecture employing synchronous data parallelism, which enables an optimized speedup and improved training runtime by comparing various processing units.
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