JCSP:边缘计算系统的联合缓存和服务放置

Yi Gao, G. Casale
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引用次数: 1

摘要

在资源受限的情况下,在边缘缓存什么、在哪里以及如何缓存是边缘计算系统面临的关键挑战之一。缓存项不仅包括应用程序数据内容,还包括处理传入请求的边缘服务的本地缓存。然而,当前的系统将内容和服务分开,而没有考虑缓存和排队的延迟相互作用。因此,在本文中,我们提出了一类新的随机模型,可以联合优化内容缓存和服务放置决策。我们首先解释了如何将分层排队网络(LQNs)模型应用于边缘服务放置,并表明将其与遗传算法相结合可以提供比既定基线更高的资源分配精度。接下来,我们使用缓存组件扩展lqn,以建立内容缓存和服务放置(JCSP)的联合建模方法,并提供分析结果模型的分析方法。最后,我们模拟了真实的Azure轨迹来评估JCSP方法,并发现与边缘缓存资源分配的基线启发式方法相比,JCSP在响应时间上提高了35%,在内存使用上减少了500MB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
JCSP: Joint Caching and Service Placement for Edge Computing Systems
With constrained resources, what, where, and how to cache at the edge is one of the key challenges for edge computing systems. The cached items include not only the application data contents but also the local caching of edge services that handle incoming requests. However, current systems separate the contents and services without considering the latency interplay of caching and queueing. Therefore, in this paper, we propose a novel class of stochastic models that enable the optimization of content caching and service placement decisions jointly. We first explain how to apply layered queueing networks (LQNs) models for edge service placement and show that combining this with genetic algorithms provides higher accuracy in resource allocation than an established baseline. Next, we extend LQNs with caching components to establish a joint modeling method for content caching and service placement (JCSP) and present analytical methods to analyze the resulting model. Finally, we simulate real-world Azure traces to evaluate the JCSP method and find that JCSP achieves up to 35% improvement in response time and 500MB reduction in memory usage than baseline heuristics for edge caching resource allocation.
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