Reinforcement Learning-Based Network Slice Resource Allocation for Federated Learning Applications

Zhouxiang Wu, Genya Ishigaki, Riti Gour, Congzhou Li, J. Jue
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引用次数: 1

Abstract

This paper addresses a resource allocation strategy for network slices, where each network slice supports a different federated learning task. A slice is established when a new federated learning model needs to be trained and is released once the training is complete. The goal is to minimize the average network slice holding time while also providing fairness between slice tenants and improving network efficiency. We propose a reinforcement learning-based strategy to periodically reallocate resources according to the current state of each federated learning task. We offer two reinforcement learning models. The first model achieves more stable performance and considers correlations between tasks, while the second model utilizes fewer parameters and is more robust to varying number of tasks. Both approaches have better performance than baseline heuristic methods. We also propose a method to alleviate the effect of various resources scales to make the training stable.
基于强化学习的联邦学习应用网络片资源分配
本文讨论了网络片的资源分配策略,其中每个网络片支持不同的联邦学习任务。当需要训练新的联邦学习模型时,将建立一个切片,并在训练完成后释放该切片。目标是最小化平均网络片保持时间,同时提供片租户之间的公平性并提高网络效率。我们提出了一种基于强化学习的策略,根据每个联邦学习任务的当前状态周期性地重新分配资源。我们提供了两种强化学习模型。第一个模型实现了更稳定的性能,并考虑了任务之间的相关性,而第二个模型使用更少的参数,并且对不同数量的任务更具鲁棒性。两种方法都比基线启发式方法具有更好的性能。并提出了一种缓解各种资源规模影响的方法,使训练稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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