Elastic Network Cache Control Using Deep Reinforcement Learning

Chunglae Cho, Seungjae Shin, H. Jeon, Seunghyun Yoon
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引用次数: 0

Abstract

Thanks to the development of virtualization technology, content service providers can flexibly lease virtualized resources from infrastructure service providers when they deploy the cache nodes in edge networks. As a result, they have two orthogonal objectives: to maximize the caching utility on the one hand and minimize the cost of leasing the cache storage on the other hand. This paper presents a caching algorithm using deep reinforcement learning (DRL) that controls the caching policy with the content time-to-live (TTL) values and elastically adjusts the cache size according to a dynamically changing environment to maximize the utility-minus-cost objective. We show that, under non-stationary traffic scenarios, our DRL-based approach outperforms the conventional algorithms known to be optimal under stationary traffic scenarios.
基于深度强化学习的弹性网络缓存控制
随着虚拟化技术的发展,内容服务提供商在边缘网络中部署缓存节点时,可以灵活地向基础设施服务提供商租用虚拟化资源。因此,它们有两个相互正交的目标:一方面最大化缓存效用,另一方面最小化租用缓存存储的成本。本文提出了一种使用深度强化学习(DRL)的缓存算法,该算法通过内容生存时间(TTL)值控制缓存策略,并根据动态变化的环境弹性调整缓存大小,以最大化效用-成本目标。我们表明,在非平稳交通场景下,我们基于drl的方法优于已知的在平稳交通场景下最优的传统算法。
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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