移动边缘计算的主动微服务放置和迁移

Kaustabha Ray, A. Banerjee, N. Narendra
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引用次数: 19

摘要

最近,移动边缘计算(MEC)已经成为一种新的范例,允许低延迟访问部署在提供计算、存储和通信设施的边缘节点上的服务。供应商将他们的服务部署在MEC服务器上,以提高性能并减轻访问云服务时经常遇到的网络延迟。服务放置策略确定将哪些服务部署在哪些MEC服务器上。文献中存在许多机制来确定考虑不同性能指标的服务的最佳放置。然而,对于设计为微服务工作流架构的应用程序,由于微服务之间存在固有的相互依赖关系,需要通过不同的视角重新检查服务放置方案。实际上,动态环境,随机用户移动和服务调用,以及大的放置配置空间使得微服务在MEC中的放置成为一项具有挑战性的任务。此外,由于用户的移动性,安置方案可能需要重新校准,从而触发服务迁移,以保持MEC提供的优势。现有的微服务放置和迁移方案考虑了按需策略。在这项工作中,我们采取了不同的路线,并提出了一种基于强化学习的微服务放置和迁移的主动机制。我们使用旧金山出租车数据集来验证我们的方法。实验结果表明,与其他先进的方法相比,我们的方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proactive Microservice Placement and Migration for Mobile Edge Computing
In recent times, Mobile Edge Computing (MEC) has emerged as a new paradigm allowing low-latency access to services deployed on edge nodes offering computation, storage and communication facilities. Vendors deploy their services on MEC servers to improve performance and mitigate network latencies often encountered in accessing cloud services. A service placement policy determines which services are deployed on which MEC servers. A number of mechanisms exist in literature to determine the optimal placement of services considering different performance metrics. However, for applications designed as microservice workflow architectures, service placement schemes need to be re-examined through a different lens owing to the inherent interdependencies which exist between microservices. Indeed, the dynamic environment, with stochastic user movement and service invocations, along with a large placement configuration space makes microservice placement in MEC a challenging task. Additionally, owing to user mobility, a placement scheme may need to be recalibrated, triggering service migrations to maintain the advantages offered by MEC. Existing microservice placement and migration schemes consider on-demand strategies. In this work, we take a different route and propose a Reinforcement Learning based proactive mechanism for microservice placement and migration. We use the San Francisco Taxi dataset to validate our approach. Experimental results show the effectiveness of our approach in comparison to other state-of-the-art methods.
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