软件化网络数据动物园

Manuel Peuster, Stefan Schneider, H. Karl
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引用次数: 15

摘要

越来越多的(软件)网络管理和编排方法基于机器学习范例和解决方案。这些方法不仅依赖于它们的程序代码来正常运行,而且还需要足够的输入数据来训练它们的内部模型。然而,这样的训练数据几乎无法用于软件网络领域,并且大多数提出的解决方案依赖于他们自己的,有时甚至没有发布的数据集。这使得复制和比较许多现有解决方案变得困难,甚至不可行。因此,它最终会减缓机器学习方法在软件化网络中的采用。为此,我们引入了“软件化网络数据动物园”(SNDZoo),这是一个开放的软件网络数据集集合,旨在简化和简化软件网络领域的机器学习研究。我们提出了一种通用的方法来收集、存档和发布这些数据集,以供其他研究人员使用,例如,八个初始数据集,重点关注虚拟化网络功能的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Softwarised Network Data Zoo
More and more management and orchestration approaches for (software) networks are based on machine learning paradigms and solutions. These approaches depend not only on their program code to operate properly, but also require enough input data to train their internal models. However, such training data is barely available for the software networking domain and most presented solutions rely on their own, sometimes not even published, data sets. This makes it hard, or even infeasible, to reproduce and compare many of the existing solutions. As a result, it ultimately slows down the adoption of machine learning approaches in softwarised networks.To this end, we introduce the “softwarised network data zoo” (SNDZoo), an open collection of software networking data sets aiming to streamline and ease machine learning research in the software networking domain. We present a general methodology to collect, archive, and publish those data sets for use by other researchers and, as an example, eight initial data sets, focusing on the performance of virtualised network functions.
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