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Effective Scheduling Function Design in SDN through Deep Reinforcement Learning

conference contribution
posted on 2024-11-03, 14:51 authored by Victoria Huang, Gang Chen, Qiang FuQiang Fu
Recent research on Software-Defined Networking (SDN) strongly promotes the adoption of distributed controller architectures. To achieve high network performance, designing a scheduling function (SF) to properly dispatch requests from each switch to suitable controllers becomes critical. However, existing literature tends to design the SF targeted at specific network settings. In this paper, a reinforcement-learning-based (RL) approach is proposed with the aim to automatically learn a general, effective, and efficient SF. In particular, a new dispatching system is introduced in which the SF is represented as a neural network that determines the priority of each controller. Based on the priorities, a controller is selected using our proposed probability selection scheme to balance the trade-off between exploration and exploitation during learning. In order to train a general SF, we first formulate the scheduling function design problem as an RL problem. Then a new training approach is developed based on a state-of-the-art deep RI algorithm. Our simulation results show that our RL approach can rapidly design (or learn) SFs with optimal performance. Apart from that, the trained SF can generalize well and outperforms commonly used scheduling heuristics under various network settings.

History

Related Materials

  1. 1.
    DOI - Is published in 10.1109/ICC.2019.8761938
  2. 2.
    ISBN - Is published in 9781538680896 (urn:isbn:9781538680896)

Start page

2271

End page

2277

Total pages

7

Outlet

Proceedings of 55th IEEE International Conference on Communications (ICC 2019)

Name of conference

ICC 2019: Empowering Intelligent Communications

Publisher

IEEE

Place published

United States

Start date

2019-05-20

End date

2019-05-24

Language

English

Copyright

© 2019 IEEE

Former Identifier

2006110915

Esploro creation date

2021-12-13

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