FlowDT: A Flow-Aware Digital Twin for Computer Networks

Miquel Ferriol Galmés, Xiangle Cheng, Xiang Shi, Shihan Xiao, P. Barlet-Ros, A. Cabellos-Aparicio
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Abstract

Network modeling is an essential tool for network planning and management. It allows network administrators to explore the performance of new protocols, mechanisms, or optimal configurations without the need for testing them in real production networks. Recently, Graph Neural Networks (GNNs) have emerged as a practical solution to produce network models that can learn and extract complex patterns from real data without making any assumptions. However, state-of-the-art GNN-based network models only work with traffic matrices, this is a very coarse and simplified representation of network traffic. Although this assumption has shown to work well in certain use-cases, it is a limiting factor because, in practice, networks operate with flows. In this paper, we present FlowDT a new DL-based solution designed to model computer networks at the fine-grained flow level. In our evaluation, we show how FlowDT can accurately predict relevant per-flow performance metrics with an error of 3.5%, FlowDT’s performance is also benchmarked against vanilla DL models as well as with Queuing Theory.
面向计算机网络的流感知数字孪生
网络建模是网络规划和管理的重要工具。它允许网络管理员探索新协议、机制或最佳配置的性能,而无需在实际生产网络中进行测试。最近,图神经网络(gnn)作为一种实用的解决方案出现了,它可以在不做任何假设的情况下从真实数据中学习和提取复杂模式的网络模型。然而,最先进的基于gnn的网络模型只能处理流量矩阵,这是一个非常粗糙和简化的网络流量表示。尽管这个假设在某些用例中表现得很好,但它是一个限制因素,因为在实践中,网络与流一起操作。在本文中,我们提出了FlowDT一种新的基于dl的解决方案,旨在对细粒度流级别的计算机网络进行建模。在我们的评估中,我们展示了FlowDT如何准确地预测相关的每流性能指标,误差为3.5%,FlowDT的性能也与香草DL模型以及排队理论进行了基准测试。
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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