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Computation Offloading in Multi-Access Edge Computing Networks: A Multi-Task Learning Approach

机译:多址边缘计算网络中的计算卸载:多任务学习方法

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Multi-access edge computing (MEC) has already shown the potential in enabling mobile devices to bear the computation-intensive applications by offloading some tasks to a nearby access point (AP) integrated with a MEC server (MES). However, due to the varying network conditions and limited computation resources of the MES, the offloading decisions taken by a mobile device and the computational resources allocated by the MES may not be efficiently achieved with the lowest cost. In this paper, we propose a dynamic offloading framework for the MEC network, in which the uplink non-orthogonal multiple access (NOMA) is used to enable multiple devices to upload their tasks via the same frequency band. We formulate the offloading decision problem as a multiclass classification problem and formulate the MES computational resource allocation problem as a regression problem. Then a multi-task learning based feedforward neural network (MTFNN) model is designed to jointly optimize the offloading decision and computational resource allocation. Numerical results illustrate that the proposed MTFNN outperforms the conventional optimization method in terms of inference accuracy and computation complexity.
机译:多接入边缘计算(MEC)已经示出了通过将移动设备卸载到与MEC服务器(MES)集成的附近接入点(AP)卸载某些任务来实现计算机密集型应用程序的可能性。然而,由于网络条件的不同网络条件和MES的有限计算资源,可以通过最低成本有效地实现由移动设备和由ME分配的计算资源拍摄的卸载决策。在本文中,我们向MEC网络提出了一种动态的卸载框架,其中上行链路非正交多次访问(NOMA)用于使多个设备通过相同的频带上传其任务。我们将卸载决策问题作为多级别分类问题,并将MES计算资源分配问题作为回归问题。然后,基于多任务学习的前馈神经网络(MTFNN)模型旨在共同优化卸载决策和计算资源分配。数值结果说明了所提出的MTFNN在推理精度和计算复杂性方面优于传统的优化方法。

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