基于sdn的边缘网络中路由的联邦学习方法

Alessio Sacco, Flavio Esposito, G. Marchetto
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引用次数: 22

摘要

边缘计算范式允许通过边缘网络将计算密集型任务从小型设备卸载到附近(更)强大的服务器上。这种边缘计算范式与机器学习(ML)之间的交集,特别是深度学习,为网络运营商带来了几个优势:从自动化管理任务,到获得对其网络的额外见解。大多数使用机器学习来驱动路由和流量控制决策的现有方法都是有价值的,但很少关注具有挑战性的网络,这些网络的特点是不断变化的网络条件和由边缘设备产生的大量流量。特别是,最近提出的基于分布式机器学习的体系结构需要很长的同步阶段或训练阶段,这对于受挑战的网络来说是不可持续的。在本文中,我们用Blaster填补了这一知识空白,Blaster是一种用于在分布式边缘网络中路由数据包的联邦架构,以提高应用程序的性能并允许数据密集型应用程序的可扩展性。我们还提出了一种新的路径选择模型,该模型使用长短期记忆(LSTM)来预测最优路径。最后,我们通过模拟和在GENI测试台上部署的原型对我们的方法进行了测试,并给出了一些初步结果。通过利用联邦学习(FL)模型,我们的方法表明我们可以优化SDN控制器之间的通信,为数据流量保留带宽。
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A Federated Learning Approach to Routing in Challenged SDN-Enabled Edge Networks
The edge computing paradigm allows computationally intensive tasks to be offloaded from small devices to nearby (more) powerful servers, via an edge network. The intersection between such edge computing paradigm and Machine Learning (ML), in general, and deep learning in particular, has brought to light several advantages for network operators: from automating management tasks, to gain additional insights on their networks. Most of the existing approaches that use ML to drive routing and traffic control decisions are valuable but rarely focus on challenged networks, that are characterized by continually varying network conditions and the high volume of traffic generated by edge devices. In particular, recently proposed distributed ML-based architectures require either a long synchronization phase or a training phase that is unsustainable for challenged networks. In this paper, we fill this knowledge gap with Blaster, a federated architecture for routing packets within a distributed edge network, to improve the application's performance and allow scalability of data-intensive applications. We also propose a novel path selection model that uses Long Short Term Memory (LSTM) to predict the optimal route. Finally, we present some initial results obtained by testing our approach via simulations and with a prototype deployed over the GENI testbed. By leveraging a Federated Learning (FL) model, our approach shows that we can optimize the communication between SDN controllers, preserving bandwidth for the data traffic.
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