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Cost-Aware Edge Resource Probing for Infrastructure-Free Edge Computing: From Optimal Stopping to Layered Learning

机译:用于无基础架构的边缘计算的可感知成本的边缘资源探测:从最佳停止到分层学习

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To meet the stringent requirement of artificial intelligence applications, such as face recognition and video streaming analytics, a resource-constrained device can offload its task to nearby resource-rich devices in edge computing. Resource awareness, as a prime prerequisite for offloading decision-making, is critical for achieving efficient collaborative computation performance. In this paper, we consider cost-aware edge resource probing (CERP) framework design for infrastructure-free edge computing wherein a task device self-organizes its resource probing for informed computation offloading. We first propose a multi-stage optimal stopping formulation for the problem, and derive the optimal probing strategy which reveals a nice multi-threshold structure. Accordingly, we then devise a data-driven layered learning mechanism for more practical and complicated application environments. Layered learning enables the task device to adaptively learn the optimal probing sequence and decision thresholds at runtime, aiming at deriving a good balance between the gain of choosing the best edge device and the accumulated cost of deep resource probing. We further conduct thorough performance evaluation of the proposed CERP schemes using both extensive numerical simulations and realistic system prototype implementation, which demonstrate the superior performance of CERP in the diverse application scenarios.
机译:为了满足诸如面部识别和视频流分析之类的人工智能应用的严格要求,资源受限的设备可以将其任务转移到边缘计算中的附近资源丰富的设备中。资源意识是卸载决策的首要前提,对于实现高效的协作计算性能至关重要。在本文中,我们考虑了用于无基础架构的边缘计算的成本感知边缘资源探测(CERP)框架设计,其中任务设备自组织其资源探测以进行知情的计算卸载。我们首先提出了针对该问题的多阶段最优停止公式,并推导了揭示出良好的多阈值结构的最优探测策略。因此,我们然后针对更实际和更复杂的应用程序环境设计了一种数据驱动的分层学习机制。分层学习使任务设备可以在运行时自适应地学习最佳探测序列和决策阈值,旨在在选择最佳边缘设备的收益与深度资源探测的累积成本之间取得良好的平衡。我们使用广泛的数值模拟和现实的系统原型实施,进一步对所提出的CERP方案进行全面的性能评估,这证明了CERP在各种应用场景中的优越性能。

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