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Applying Reinforcement Learning to Packet Scheduling in Routers

机译:在路由器的数据包调度中应用强化学习

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摘要

An important problem for the Internet is how to provide a guaranteed quality of service to users, in contrast to the current "best-effort" service. A key aspect of this problem is how routers should share network capacity between different classes of traffic. This decision needs to be made for each incoming packet, and is known as the packet scheduling problem. A major challenge in packet scheduling is that the behaviour of each traffic class may not be known in advance, and can vary dynamically. In this paper, we describe how we have modelled the packet scheduling problem as an application for reinforcement learning (RL). We demonstrate how our RL approach can learn scheduling policies that satisfy the quality of service requirements of multiple traffic classes under a variety of conditions. We also present an insight into the effectiveness of two different RL algorithms in this context. A major benefit of this approach is that we can help network providers deliver a guaranteed quality of service to customers without manual fine-tuning of the network routers.
机译:与当前的“尽力而为”服务相比,Internet的一个重要问题是如何为用户提供有保证的服务质量。此问题的关键方面是路由器应如何在不同流量类别之间共享网络容量。需要为每个传入数据包做出此决定,这被称为数据包调度问题。数据包调度中的主要挑战是,每个流量类别的行为可能不会事先知道,并且会动态变化。在本文中,我们描述了如何将数据包调度问题建模为强化学习(RL)的应用。我们展示了我们的RL方法如何学习在各种条件下满足多种流量类别的服务质量要求的调度策略。我们还介绍了在这种情况下两种不同RL算法的有效性。这种方法的主要好处是,我们可以帮助网络提供商向客户提供有保证的服务质量,而无需手动调整网络路由器。

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