通过创新使用合并层次深度神经网络保护关键基础设施

Lav Gupta
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引用次数: 1

摘要

多云正在成为大型和现代应用程序的核心,包括商业、工业和关键基础设施部门的应用程序。设计人员通常分层部署这些云,以获得边缘云的低延迟和核心云的高处理能力的最佳优势。流入云中进行处理和存储并移出到其他系统域以供进一步使用的数据必须跨越多个信任边界,因此面临较大的攻击面。这为恶意行为者提供了大量的机会来渗透和潜在地损害组织或破坏关键服务,从而造成广泛的中断和混乱。深度神经网络模型可以以创新的方式用于保护云中数据流的机密性和完整性。然而,深度学习的使用也带来了一些挑战。在大型多地点和多云环境中,深度学习模型的规模和复杂性快速增长,抑制了云模型的快速训练,难以保持对运动数据的已知和未知攻击检测的准确性。这阻碍了它们在关键基础设施服务中的使用。我们提出了创新的分布式分层合并模型,利用边缘和核心云的协同训练,以及数据和模型并行性的力量,实现快速、高精度的训练。本文的主要目标有两个:首先,我们展示了合并的分层深度学习模型,在多云中协同工作,显著减少了待训练的参数,并加快了核心云的训练时间。其次,在cpu和gpu上采用数据并行的分布式策略对合并核心模型进行训练,进一步显著缩短了训练时间。我们还表明,虽然比未合并的模型提高了约25%,并且在96.9-99.5%的范围内检测未知攻击的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Securing Critical Infrastructure Through Innovative Use Of Merged Hierarchical Deep Neural Networks
Multi-clouds are becoming central to large and modern applications including those in business, industry and critical infrastructure sectors. Designers usually deploy these clouds hierarchically to get the best advantage of low latency of the edge clouds and high processing capabilities of the core clouds. The data that flows into the clouds for processing and storage and moves out to other system domains for further use must cross multiple trust boundaries, and as a result, face large attack surfaces. This gives malicious actors abundant opportunity to penetrate and potentially harm organizations or bring down critical services causing widespread disruptions and mayhem. Deep neural network models can be used in innovative ways to protect the confidentiality and integrity of dataflows in the clouds. However, the use of deep learning comes with some challenges. In large multi-location and multi-cloud environments, deep learning models grow rapidly in size and complexity, inhibiting fast training of cloud models and making it difficult to maintain accuracy of detection of known and unknown attacks on the data-in-motion. This impedes their use in critical infrastructure services. We propose innovative distributed-hierarchical-merged models, which make use of cooperative training at the edge and the core clouds, and the power of data and model parallelisms, to achieve rapid training with high accuracy. Our broad objectives in this paper are twofold: Firstly, we show that merged hierarchical deep learning models, working cooperatively in the multi-cloud, significantly reduce the parameters to be trained and results in faster core cloud training time. Secondly, training the merged core model with distribute strategy for data parallelism on CPUs and GPUs further reduces the training time significantly. We also show that while achieving improvement by about 25% over unmerged models and the accuracy of detection of unknown attacks in the range 96.9-99.5%.
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