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Learn and Pick Right Nodes to Offload

机译:学习并选择合适的节点进行卸载

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Task offloading is a promising technology to exploit the benefits of fog computing. An effective task offloading strategy is needed to utilize the computational resources efficiently. In this paper, we endeavor to seek an online task offloading strategy to minimize the long-term latency. In particular, we formulate a stochastic programming problem, where the expectations of the system parameters 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. We then put forward an effective algorithm to solve this challenging stochastic programming under the non-stationary bandit model. We further prove that our proposed algorithm is asymptotically optimal in a non-stationary fog-enabled network. Numerical simulations are carried out to corroborate our designs.
机译:任务卸载是一种利用雾计算优势的有前途的技术。需要有效的任务卸载策略来有效地利用计算资源。在本文中,我们努力寻求一种在线任务卸载策略,以最大程度地减少长期等待时间。特别是,我们提出了一个随机编程问题,其中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算法来解决非平稳强盗模型下具有挑战性的随机规划问题。我们进一步证明了我们提出的算法在非平稳雾启用网络中是渐近最优的。进行了数值模拟以证实我们的设计。

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