Krzysztof Rusek, Paul Almasan, José Suárez-Varela, P. Chołda, P. Barlet-Ros, A. Cabellos-Aparicio
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引用次数: 2
摘要
新兴的应用,如元宇宙、远程手术或云计算,对网络的操作要求越来越复杂(例如,超可靠的低延迟)。同样,越来越快的流量动态将要求网络控制机制能够在短时间尺度(例如,分分钟)内运行。在这种情况下,流量工程(TE)是根据某些性能目标(例如,最小化网络拥塞)有效控制网络流量的关键组件。本文提出了一种基于图神经网络(GNN)和可微规划的路由回溯算法(Routing By Backprop, RBB)。由于其内部GNN模型,RBB构建了目标TE问题(MinMaxLoad)的端到端可微函数。这可以通过梯度下降实现快速TE优化。在我们的评估中,我们展示了RBB优化基于OSPF路由的潜力(相对于缺省OSPF配置的改进≈25%)。此外,我们测试了RBB作为计算密集型TE求解器的初始化器的潜力。实验结果表明,该算法在加速求解和实现高效在线TE优化方面具有广阔的应用前景。
Fast Traffic Engineering by Gradient Descent with Learned Differentiable Routing
Emerging applications such as the metaverse, telesurgery or cloud computing require increasingly complex operational demands on networks (e.g., ultra-reliable low latency). Likewise, the ever-faster traffic dynamics will demand network control mechanisms that can operate at short timescales (e.g., sub-minute). In this context, Traffic Engineering (TE) is a key component to efficiently control network traffic according to some performance goals (e.g., minimize network congestion).This paper presents Routing By Backprop (RBB), a novel TE method based on Graph Neural Networks (GNN) and differentiable programming. Thanks to its internal GNN model, RBB builds an end-to-end differentiable function of the target TE problem (MinMaxLoad). This enables fast TE optimization via gradient descent. In our evaluation, we show the potential of RBB to optimize OSPF-based routing (≈25% of improvement with respect to default OSPF configurations). Moreover, we test the potential of RBB as an initializer of computationally-intensive TE solvers. The experimental results show promising prospects for accelerating this type of solvers and achieving efficient online TE optimization.