Experience-driven Networking: A Deep Reinforcement Learning based Approach
Zhiyuan Xu, Jian Tang, Jingsong Meng, Weiyi Zhang, Yanzhi Wang, Chi, Harold Liu, Dejun Yang

TL;DR
This paper introduces a novel deep reinforcement learning framework, DRL-TE, for traffic engineering in communication networks, enabling model-free control that adapts to network dynamics and improves performance over traditional methods.
Contribution
It is the first to leverage deep reinforcement learning for model-free control in communication networks, specifically applying it to traffic engineering with novel techniques for optimization.
Findings
DRL-TE significantly reduces end-to-end delay.
It improves network utility and maintains throughput.
It outperforms existing DRL methods like DDPG.
Abstract
Modern communication networks have become very complicated and highly dynamic, which makes them hard to model, predict and control. In this paper, we develop a novel experience-driven approach that can learn to well control a communication network from its own experience rather than an accurate mathematical model, just as a human learns a new skill (such as driving, swimming, etc). Specifically, we, for the first time, propose to leverage emerging Deep Reinforcement Learning (DRL) for enabling model-free control in communication networks; and present a novel and highly effective DRL-based control framework, DRL-TE, for a fundamental networking problem: Traffic Engineering (TE). The proposed framework maximizes a widely-used utility function by jointly learning network environment and its dynamics, and making decisions under the guidance of powerful Deep Neural Networks (DNNs). We…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Age of Information Optimization · Traffic control and management
