On the use of machine learning and network tomography for network slices monitoring

Anouar Rkhami, Y. H. Aoul, G. Rubino, A. Outtagarts
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引用次数: 2

Abstract

Network Slicing (NS) is a key technology that enables network operators to accommodate different types of services with varying needs on a single physical infrastructure. Despite the advantages it brings, NS raises some technical challenges, mainly ensuring the Service Level Agreements (SLA) for each slice. Hence, monitoring the state of these slices will be a priority for ISPs. However, due to the high measurements overhead, it is generally forbidden to directly measure the performance of all of these slices. To overcome this limitation, network tomography is a promising solution, consisting of a set of methods of inferring unmeasured network metrics using end-to-end measurements between monitors. In this work, we focus on inferring the additive metrics of slices such as delays or logarithms of loss rates. We model the inference task as a regression problem that we solve using neural networks. In our approach, we train the model on an artificial dataset. This not only avoids the costly process of collecting a large set of labeled data but has also a nice covering property useful for the procedure’s accuracy. Moreover, to handle a change on the topology or the slices we monitor, we propose a solution based on transfer learning in order to find a trade-off between the quality of the solution and the cost to get it. Simulation results with both, emulated and simulated traffic show the efficiency of our method compared to existing ones in terms of both accuracy and computation time.
关于使用机器学习和网络断层扫描进行网络切片监测
网络切片(NS)是一项关键技术,它使网络运营商能够在单个物理基础设施上容纳不同类型的不同需求的服务。NS在带来优势的同时也带来了一些技术挑战,主要是保证每个分片的服务水平协议(Service Level Agreements, SLA)。因此,监视这些片的状态将是isp的优先事项。然而,由于测量开销很大,通常禁止直接测量所有这些片的性能。为了克服这一限制,网络断层扫描是一种很有前途的解决方案,它包括一组使用监视器之间的端到端测量来推断未测量的网络度量的方法。在这项工作中,我们专注于推断切片的附加度量,如延迟或损失率的对数。我们将推理任务建模为使用神经网络解决的回归问题。在我们的方法中,我们在一个人工数据集上训练模型。这不仅避免了收集大量标记数据的昂贵过程,而且还具有良好的覆盖特性,有助于提高过程的准确性。此外,为了处理拓扑或我们监控的切片的变化,我们提出了一种基于迁移学习的解决方案,以便在解决方案的质量和获得它的成本之间找到权衡。仿真结果表明,该方法在精度和计算时间上均优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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