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AppealNet: An Efficient and Highly-Accurate Edge/Cloud Collaborative Architecture for DNN Inference

Min Li, Yu Li, Ye Tian, Li Jiang, Qiang Xu

202131 citationsDOI

Abstract

This paper presents AppealNet, a novel edge/cloud collaborative architecture that runs deep learning (DL) tasks more efficiently than state-of-the-art solutions. For a given input, AppealNet accurately predicts on-the-fly whether it can be successfully processed by the DL model deployed on the resource-constrained edge device, and if not, appeals to the more powerful DL model deployed at the cloud. This is achieved by employing a two-head neural network architecture that explicitly takes inference difficulty into consideration and optimizes the tradeoff between accuracy and computation/communication cost of the edge/cloud collaborative architecture. Experimental results on several image classification datasets show up to more than 40% energy savings compared to existing techniques without sacrificing accuracy.

Topics & Concepts

Cloud computingComputer scienceInferenceEnhanced Data Rates for GSM EvolutionArchitectureComputationEdge deviceArtificial intelligenceEdge computingMachine learningDeep learningState (computer science)Artificial neural networkResource (disambiguation)Distributed computingComputer engineeringAlgorithmComputer networkOperating systemVisual artsArtAdvanced Neural Network ApplicationsBrain Tumor Detection and ClassificationIoT and Edge/Fog Computing