2023
DOI: 10.1155/2023/3835297
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Energy-Efficient DNN Partitioning and Offloading for Task Completion Rate Maximization in Multiuser Edge Intelligence

Abstract: Deep Neural Network (DNN) has become an essential technology for edge intelligence. Due to significant resource and energy requirements for large-scale DNNs’ inference, executing them directly on energy-constrained Internet of Things (IoT) devices is impractical. DNN partitioning provides a feasible solution for this problem by offloading some DNN layers to execute on the edge server. However, the resources of edge servers are also typically limited. An energy-constrained and resource-constrained optimization … Show more

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