Compares reward shaping, observation augmentation, and loss-sensitivity tuning as post-hoc fairness fixes for Aurora RL congestion control, finding modest reward shaping best preserves throughput while improving fairness in multi-flow settings.
Internet Congestion Control via Deep Reinforcement Learning
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abstract
We present and investigate a novel and timely application domain for deep reinforcement learning (RL): Internet congestion control. Congestion control is the core networking task of modulating traffic sources' data-transmission rates to efficiently utilize network capacity, and is the subject of extensive attention in light of the advent of Internet services such as live video, virtual reality, Internet-of-Things, and more. We show that casting congestion control as RL enables training deep network policies that capture intricate patterns in data traffic and network conditions, and leverage this to outperform the state-of-the-art. We also highlight significant challenges facing real-world adoption of RL-based congestion control, including fairness, safety, and generalization, which are not trivial to address within conventional RL formalism. To facilitate further research and reproducibility of our results, we present a test suite for RL-guided congestion control based on the OpenAI Gym interface.
fields
cs.NI 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Fair-Aurora: Comparing Fairness Strategies for Reinforcement Learning-Based Congestion Control in Multi-Flow Environments
Compares reward shaping, observation augmentation, and loss-sensitivity tuning as post-hoc fairness fixes for Aurora RL congestion control, finding modest reward shaping best preserves throughput while improving fairness in multi-flow settings.