TOM:用于覆盖网络监测的自训练断层扫描解决方案

M. Rahali, Jean-Michel Sanner, G. Rubino
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引用次数: 6

摘要

网络断层扫描是一门旨在通过在网络边缘执行的端到端相关测量来推断内部网络特征的学科。这项工作提出了一种新的断层扫描方法,用于在SDN/NFV环境中进行链路度量推断(即使它可以导出到该领域之外),我们称之为TOM(用于覆盖网络监测的断层扫描)。在这样的环境中,我们对监督网络切片特别感兴趣,这是一种最近的工具,可以在电信基础设施上为不同的应用程序和QoS约束创建多个虚拟网络。目标是从在覆盖结构中执行的测量中推断底层资源状态。我们将推理任务建模为一个回归问题,并采用神经网络方法解决。由于为训练阶段获取标记数据的成本很高,因此我们的过程为训练阶段生成人工数据。通过创建大量随机训练示例,神经网络学习在路径和链路级别上完成的度量之间的关系。这种方法利用高效的机器学习解决方案来解决经典的推理问题。与基于统计的方法相比,使用公共数据集的模拟显示出非常有希望的结果。我们主要探讨了可加性指标,如延迟或损失率日志,但该方法也可用于非可加性指标,如带宽。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TOM: a self-trained Tomography solution for Overlay networks Monitoring
Network tomography is a discipline that aims to infer the internal network characteristics from end-to-end correlated measurements performed at the network edge. This work presents a new tomography approach for link metrics inference in an SDN/NFV environment (even if it can be exported outside this field) that we called TOM (Tomography for Overlay networks Monitoring). In such an environment, we are particularly interested in supervising network slicing, a recent tool enabling to create multiple virtual networks for different applications and QoS constraints on a Telco infrastructure. The goal is to infer the underlay resources states from the measurements performed in the overlay structure. We model the inference task as a regression problem that we solve following a Neural Network approach. Since getting labeled data for the training phase can be costly, our procedure generates artificial data for the training phase. By creating a large set of random training examples, the Neural Network learns the relations between the measures done at path and link levels. This approach takes advantage of efficient Machine Learning solutions to solve a classic inference problem. Simulations with a public dataset show very promising results compared to statistical-based methods. We explored mainly additive metrics such as delays or logs of loss rates, but the approach can also be used for non-additive ones such as bandwidth.
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