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首页> 外文期刊>IEEE Transactions on Parallel and Distributed Systems >BLOT: Bandit Learning-Based Offloading of Tasks in Fog-Enabled Networks
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BLOT: Bandit Learning-Based Offloading of Tasks in Fog-Enabled Networks

机译:墨迹:启用雾的网络中基于强盗学习的任务分担

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摘要

Task offloading is a promising technology to exploit the available computational resources in spatially distributed fog nodes efficiently in the era of fog computing. In this paper, we look for an online task offloading strategy to minimize the long-term cost, which factors in the latency, the energy consumption, and the switching cost. To this end, we formulate a stochastic programming problem and the expectations of the system parameters are allowed to change abruptly at unknown time instants. Meanwhile, we consider the fact that the queried nodes can only feed back the processing results after finishing the tasks. Then we put forth an effective bandit learning algorithm, i.e., the BLOT, to solve this challenging stochastic programming under the non-stationary bandit model. We also demonstrate that our proposed BLOT algorithm is asymptotically optimal in a non-stationary fog-enabled network. Numerical experiments further verify the superb performance of BLOT.
机译:任务卸载是一种有前途的技术,可以在雾计算时代有效地利用空间分布的雾节点中的可用计算资源。在本文中,我们寻找一种在线任务卸载策略,以最大程度地减少长期成本,该因素会影响延迟,能耗和交换成本。为此,我们提出了一个随机编程问题,并且允许系统参数的期望值在未知时刻突然改变。同时,我们认为被查询的节点只能在完成任务后反馈处理结果。然后,我们提出了一种有效的匪徒学习算法,即BLOT,以解决非平稳匪徒模型下具有挑战性的随机编程问题。我们还证明了我们提出的BLOT算法在非平稳雾启用网络中是渐近最优的。数值实验进一步验证了BLOT的卓越性能。

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