MARLIN: Soft Actor-Critic based Reinforcement Learning for Congestion
Control in Real Networks
- URL: http://arxiv.org/abs/2302.01301v1
- Date: Thu, 2 Feb 2023 18:27:20 GMT
- Title: MARLIN: Soft Actor-Critic based Reinforcement Learning for Congestion
Control in Real Networks
- Authors: Raffaele Galliera, Alessandro Morelli, Roberto Fronteddu, Niranjan
Suri
- Abstract summary: We propose a novel Reinforcement Learning (RL) approach to design generic Congestion Control (CC) algorithms.
Our solution, MARLIN, uses the Soft Actor-Critic algorithm to maximize both entropy and return.
We trained MARLIN on a real network with varying background traffic patterns to overcome the sim-to-real mismatch.
- Score: 63.24965775030673
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fast and efficient transport protocols are the foundation of an increasingly
distributed world. The burden of continuously delivering improved communication
performance to support next-generation applications and services, combined with
the increasing heterogeneity of systems and network technologies, has promoted
the design of Congestion Control (CC) algorithms that perform well under
specific environments. The challenge of designing a generic CC algorithm that
can adapt to a broad range of scenarios is still an open research question. To
tackle this challenge, we propose to apply a novel Reinforcement Learning (RL)
approach. Our solution, MARLIN, uses the Soft Actor-Critic algorithm to
maximize both entropy and return and models the learning process as an
infinite-horizon task. We trained MARLIN on a real network with varying
background traffic patterns to overcome the sim-to-real mismatch that
researchers have encountered when applying RL to CC. We evaluated our solution
on the task of file transfer and compared it to TCP Cubic. While further
research is required, results have shown that MARLIN can achieve comparable
results to TCP with little hyperparameter tuning, in a task significantly
different from its training setting. Therefore, we believe that our work
represents a promising first step toward building CC algorithms based on the
maximum entropy RL framework.
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