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On Optimal and Fair Service Allocation in Mobile Cloud Computing

机译:移动云计算中的最优公平服务分配

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This paper studies the optimal and fair service allocation for a variety of mobile applications (single or group and collaborative mobile applications) in mobile cloud computing. We exploit the observation that using tiered clouds, i.e., clouds at multiple levels (local and public) can increase the performance and scalability of mobile applications. We proposed a novel framework to model mobile applications as anlocation-time workflowsn(LTW) of tasks; here users mobility patterns are translated to mobile service usage patterns. We show that an optimal mapping of LTWs to tiered cloud resources considering multiple QoS goals such application delay, device power consumption and user cost/price is an NP-hard problem for both single and group-based applications. We propose an efficient heuristic algorithm callednMuSICnthat is able to perform well (73 percent of optimal, 30 percent better than simple strategies), and scale well to a large number of users while ensuring high mobile application QoS. We evaluate MuSIC and the 2-tier mobile cloud approach via implementation (on real world clouds) and extensive simulations using rich mobile applications like intensive signal processing, video streaming and multimedia file sharing applications. We observe about 25 percent lower delays and power (under fixed price constraints) and about 35 percent decrease in price (considering fixed delay) in comparison to only using the public cloud. Our studies also show that MuSIC performs quite well under different mobility patterns, e.g., random waypoint and Manhattan models.
机译:本文研究了移动云计算中各种移动应用程序(单个或组以及协作移动应用程序)的最优和公平服务分配。我们利用了这样的观察,即使用分层云(即多层云(本地和公共)可以提高移动应用程序的性能和可伸缩性)。我们提出了一个新颖的框架,将移动应用程序建模为定位时间工作流程 n(LTW)个任务;在这里,用户移动性模式转换为移动服务使用模式。我们表明,考虑到多个QoS目标(例如应用程序延迟,设备功耗和用户成本/价格),将LTW映射到分层云资源的最佳映射对于单个应用程序和基于组的应用程序都是NP难题。我们提出了一种有效的启发式算法,称为n MuSIC具有良好的性能(最佳性能的73%,比简单策略的性能高30%),并且可以在确保高移动应用QoS的同时很好地扩展到大量用户。我们通过实施(在现实世界的云上)和使用丰富的移动应用程序(例如密集信号处理,视频流和多媒体文件共享应用程序)的广泛模拟,评估MuSIC和2层移动云方法。与仅使用公共云相比,我们观察到延迟和功耗降低了25%(在固定价格约束下),价格下降了35%(考虑固定延迟)。我们的研究还表明,MuSIC在不同的出行方式(例如随机航点和曼哈顿模型)下表现良好。

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