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Live Prefetching for Mobile Computation Offloading

机译:实时预取以实现移动计算分流

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摘要

Mobile computation offloading refers to techniques for offloading computation intensive tasks from mobile devices to the cloud so as to lengthen the formers’ battery lives and enrich their features. The conventional designs fetch (transfer) user-specific data from mobiles to the cloud prior to computing, called offline prefetching. However, this approach can potentially result in excessive fetching of large volumes of data and cause heavy loads on radio-access networks. To solve this problem, the novel technique of live prefetching, which seamlessly integrates the task-level computation prediction and prefetching within the cloud-computing process of a large program with numerous tasks, is proposed in this paper. The technique avoids excessive fetching but retains the feature of leveraging prediction to reduce the program runtime and mobile transmission energy. By modeling the tasks in an offloaded program as a stochastic sequence, stochastic optimization is applied to design fetching policies to minimize mobile energy consumption under a deadline constraint. The policies enable real-time control of the prefetched-data sizes of candidates for future tasks. For slow fading, the optimal policy is derived and shown to have a threshold-based structure, selecting candidate tasks for prefetching and controlling their prefetched data based on their likelihoods. The result is extended to design close-to-optimal prefetching policies to fast fading channels. Compared with fetching without prediction, live prefetching is shown theoretically to always achieve reduction on mobile energy consumption.
机译:移动计算卸载是指将计算密集型任务从移动设备卸载到云,从而延长前者的电池寿命并丰富其功能的技术。常规设计在进行计算之前将特定于用户的数据从移动设备获取(传输)到云中,这称为离线预取。但是,这种方法可能会导致大量数据的过度获取,并在无线电接入网络上造成沉重的负担。为了解决这个问题,本文提出了一种实时预取的新技术,该技术将任务级计算预测和预取无缝地集成在具有众多任务的大型程序的云计算过程中。该技术避免了过多的获取,但保留了利用预测功能来减少程序运行时间和移动传输能量的功能。通过将卸载程序中的任务建模为随机序列,可以使用随机优化来设计获取策略,以在截止期限约束下将移动能耗降至最低。这些策略可以实时控制候选对象的预取数据大小,以供将来执行任务。对于慢速衰落,将推导最佳策略并显示其具有基于阈值的结构,从而选择候选任务进行预取并根据其可能性控制其预取数据。结果扩展为将最接近最佳的预取策略设计为快速衰落信道。与没有预测的获取相比,实时预取在理论上显示出始终可以降低移动能耗。

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