例外学习:用户需求突发的5g mec中的动态服务缓存

Zichuan Xu, Shengnan Wang, Shipei Liu, Haipeng Dai, Qiufen Xia, W. Liang, Guowei Wu
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引用次数: 13

摘要

移动边缘计算(MEC)被设想为下一代5G接入网络中极低延迟服务的使能技术。在支持5g的MEC中,计算资源附加在基站上。通过这种方式,网络服务提供商可以将其服务从远程数据中心缓存到MEC中的基站,以便在其附近为用户任务提供服务,从而减少服务延迟。但是,移动用户通常具有各种动态隐藏特性,例如他们的位置、用户组标记和移动模式。这些隐藏的特性通常会导致5g MEC的不确定性,如用户需求和处理延迟。这对支持5g的MEC中的服务缓存和任务卸载提出了重大挑战。在本文中,我们研究了具有用户需求和处理延迟不确定性的5g MEC中的动态服务缓存和任务卸载问题。本文首先利用多武装强盗(Multi-Armed Bandits, MAB)技术提出了一种针对给定用户需求问题的在线学习算法,并从理论上分析了该算法的后悔界。我们还提出了一种新的生成对抗网络(GAN)架构,以基于移动用户隐藏特征的小样本准确预测用户需求。基于所提出的GAN模型,我们设计了一种有效的启发式算法来解决同时存在用户需求和处理延迟不确定性的问题。最后,我们通过基于真实用户数据集的模拟来评估所提出算法的性能。实验结果表明,所提算法的性能比现有算法高出15%左右。
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Learning for Exception: Dynamic Service Caching in 5G-Enabled MECs with Bursty User Demands
Mobile edge computing (MEC) is envisioned as an enabling technology for extreme low-latency services in the next generation 5G access networks. In a 5G-enabled MEC, computing resources are attached to base stations. In this way, network service providers can cache their services from remote data centers to base stations in the MEC to serve user tasks in their close proximity, thereby reducing the service latency. However, mobile users usually have various dynamic hidden features, such as their locations, user group tags, and mobility patterns. Such hidden features normally lead to uncertainties of the 5G-enabled MEC, such as user demand and processing delay. This poses significant challenges for the service caching and task offloading in a 5G-enabled MEC. In this paper, we investigate the problem of dynamic service caching and task offloading in a 5G-enabled MEC with user demand and processing delay uncertainties. We first propose an online learning algorithm for the problem with given user demands by utilizing the technique of Multi-Armed Bandits (MAB), and theoretically analyze the regret bound of the algorithm. We also propose a novel architecture of Generative Adversarial Networks (GAN) to accurately predict the user demands based on small samples of hidden features of mobile users. Based on the proposed GAN model, we then devise an efficient heuristic for the problem with the uncertainties of both user demand and processing delay. We finally evaluate the performance of the proposed algorithms by simulations based on a realistic dataset of user data. Experiment results show that the performance of the proposed algorithms outperform existing algorithms by around 15%.
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