Bamboo: Boosting Training Efficiency for Real-Time Video Streaming via Online Grouped Federated Transfer Learning

Qian-Zhen Zheng, Hao Chen, Zhanghui Ma
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Abstract

Most of the learning-based algorithms for bitrate adaptation are limited to offline learning, which inevitably suffers from the simulation-to-reality gap. Online learning can better adapt to dynamic real-time communication scenes but still face the challenge of lengthy training convergence time. In this paper, we propose a novel online grouped federated transfer learning framework named Bamboo to accelerate training efficiency. The preliminary experiments validate that our method remarkably improves online training efficiency by up to 302% compared to other reinforcement learning algorithms in various network conditions while ensuring the quality of experience (QoE) of real-time video communication.
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Bamboo:通过在线分组联邦迁移学习提高实时视频流的训练效率
大多数基于学习的比特率自适应算法都局限于离线学习,不可避免地存在模拟与现实的差距。在线学习可以更好地适应动态实时通信场景,但仍然面临训练收敛时间过长的挑战。为了提高训练效率,本文提出了一种新的在线分组联邦迁移学习框架Bamboo。初步实验验证了我们的方法在保证实时视频通信的体验质量(QoE)的同时,在各种网络条件下,与其他强化学习算法相比,在线训练效率显著提高了302%。
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