A Simple Non-Deterministic Approach Can Adapt to Complex Unpredictable 5G Cellular Networks
5G cellular networks are envisioned to support a wide range of emerging delay-oriented services with different delay requirements (e.g., 20ms for VR/AR, 40ms for cloud gaming, and 100ms for immersive video streaming). However, due to the highly variable and unpredictable nature of 5G access links, e...
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Zusammenfassung: | 5G cellular networks are envisioned to support a wide range of emerging
delay-oriented services with different delay requirements (e.g., 20ms for
VR/AR, 40ms for cloud gaming, and 100ms for immersive video streaming).
However, due to the highly variable and unpredictable nature of 5G access
links, existing end-to-end (e2e) congestion control (CC) schemes perform poorly
for them. In this paper, we demonstrate that properly blending
non-deterministic exploration techniques with straightforward proactive and
reactive measures is sufficient to design a simple yet effective e2e CC scheme
for 5G networks that can: (1) achieve high controllable performance, and (2)
possess provable properties. To that end, we designed Reminis and through
extensive experiments on emulated and real-world 5G networks, show the
performance benefits of it compared with different CC schemes. For instance,
averaged over 60 different 5G cellular links on the Standalone (SA) scenarios,
compared with a recent design by Google (BBR2), Reminis can achieve 2.2x lower
95th percentile delay while having the same link utilization. |
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DOI: | 10.48550/arxiv.2309.07324 |