Fair Resource Allocation in Virtualized O-RAN Platforms

Fatih Aslan, G. Iosifidis, J. Ayala-Romero, Andres Garcia-Saavedra, Xavier Pérez Costa
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引用次数: 1

Abstract

O-RAN systems and their deployment in virtualized general-purpose computing platforms (O-Cloud) constitute a paradigm shift expected to bring unprecedented performance gains. However, these architectures raise new implementation challenges and threaten to worsen the already-high energy consumption of mobile networks. This paper presents first a series of experiments which assess the O-Cloud's energy costs and their dependency on the servers' hardware, capacity and data traffic properties which, typically, change over time. Next, it proposes a compute policy for assigning the base station data loads to O-Cloud servers in an energy-efficient fashion; and a radio policy that determines at near-real-time the minimum transmission block size for each user so as to avoid unnecessary energy costs. The policies balance energy savings with performance, and ensure that both of them are dispersed fairly across the servers and users, respectively. To cater for the unknown and time-varying parameters affecting the policies, we develop a novel online learning framework with fairness guarantees that apply to the entire operation horizon of the system (long-term fairness). The policies are evaluated using trace-driven simulations and are fully implemented in an O-RAN compatible system where we measure the energy costs and throughput in realistic scenarios.
虚拟化 O-RAN 平台中的公平资源分配
O-RAN 系统及其在虚拟化通用计算平台(O-Cloud)中的部署构成了一种模式转变,有望带来前所未有的性能提升。然而,这些架构带来了新的实施挑战,并有可能使移动网络本已很高的能耗进一步恶化。本文首先介绍了一系列实验,评估了 O-Cloud 的能源成本及其对服务器硬件、容量和数据流量属性的依赖性,这些属性通常会随着时间的推移而发生变化。接下来,它提出了一种计算策略,用于以节能方式将基站数据负载分配给 O-Cloud 服务器;以及一种无线电策略,用于近乎实时地确定每个用户的最小传输块大小,以避免不必要的能源成本。这些策略兼顾了节能和性能,并确保两者分别公平地分配给服务器和用户。为了应对影响策略的未知参数和时变参数,我们开发了一种新颖的在线学习框架,其公平性保证适用于系统的整个运行周期(长期公平性)。我们通过跟踪仿真对这些策略进行了评估,并在兼容 O-RAN 的系统中全面实施了这些策略,测量了现实场景中的能源成本和吞吐量。
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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