Litcius/Paper detail

Mobility-Included DNN Partition Offloading from Mobile Devices to Edge Clouds

Xianzhong Tian, Juan Zhu, Ting Xu, Yanjun Li

2021Sensors24 citationsDOIOpen Access PDF

Abstract

The latest results in Deep Neural Networks (DNNs) have greatly improved the accuracy and performance of a variety of intelligent applications. However, running such computation-intensive DNN-based applications on resource-constrained mobile devices definitely leads to long latency and huge energy consumption. The traditional way is performing DNNs in the central cloud, but it requires significant amounts of data to be transferred to the cloud over the wireless network and also results in long latency. To solve this problem, offloading partial DNN computation to edge clouds has been proposed, to realize the collaborative execution between mobile devices and edge clouds. In addition, the mobility of mobile devices is easily to cause the computation offloading failure. In this paper, we develop a mobility-included DNN partition offloading algorithm (MDPO) to adapt to user's mobility. The objective of MDPO is minimizing the total latency of completing a DNN job when the mobile user is moving. The MDPO algorithm is suitable for both DNNs with chain topology and graphic topology. We evaluate the performance of our proposed MDPO compared to local-only execution and edge-only execution, experiments show that MDPO significantly reduces the total latency and improves the performance of DNN, and MDPO can adjust well to different network conditions.

Topics & Concepts

Computer scienceLatency (audio)Cloud computingComputation offloadingMobile deviceComputationPartition (number theory)Edge deviceEnhanced Data Rates for GSM EvolutionComputer networkMobile edge computingDistributed computingNetwork topologyEdge computingWirelessEmbedded systemArtificial intelligenceOperating systemAlgorithmCombinatoricsTelecommunicationsMathematicsIoT and Edge/Fog ComputingAdvanced Neural Network ApplicationsAge of Information Optimization