Learning for Smart Edge: Cognitive Learning-Based Computation Offloading

With the development of intelligent applications, more and more intelligent applications are computation intensive, data intensive and delay sensitive. Compared with traditional cloud computing, edge computing can reduce communication delay by offloading computing tasks to edge cloud. Furthermore, with the complexity of computing scenarios in edge cloud, deep learning based on computation offloading scheme has attracted wide attention. However, all the learning-based offloading scheme does not consider the where and how to run the offloading scheme itself. Thus, in this paper, we consider the problem of running the learning-based computation offloading scheme for the first time and propose the learning for smart edge architecture. Then, we give the computation offloading optimization problem of mobile devices under multi-user and multi edge cloud scenarios. Furthermore, we propose cognitive learning-based computation offloading (CLCO) scheme for this problem. Finally, experimental results show that compared with other offloading schemes, the CLCO scheme has lower task duration and energy consumption.

[1]  John Thompson,et al.  Joint Optimization of Computation and Communication Power in Multi-User Massive MIMO Systems , 2018, IEEE Transactions on Wireless Communications.

[2]  Joel R. Bock,et al.  A Deep Learning Model of Perception in Color-Letter Synesthesia , 2018, Big Data Cogn. Comput..

[3]  Bin Wang,et al.  Real-Time Information Derivation from Big Sensor Data via Edge Computing , 2017, Big Data Cogn. Comput..

[4]  Min Chen,et al.  Green and Mobility-Aware Caching in 5G Networks , 2017, IEEE Transactions on Wireless Communications.

[5]  Alexander Lazovik,et al.  Adaptive Provisioning of Heterogeneous Cloud Resources for Big Data Processing , 2018, Big Data Cogn. Comput..

[6]  Min Chen,et al.  Task Offloading for Mobile Edge Computing in Software Defined Ultra-Dense Network , 2018, IEEE Journal on Selected Areas in Communications.

[7]  Min Chen,et al.  On the computation offloading at ad hoc cloudlet: architecture and service modes , 2015, IEEE Communications Magazine.

[8]  Jie Wu,et al.  Toward QoI and Energy Efficiency in Participatory Crowdsourcing , 2015, IEEE Transactions on Vehicular Technology.

[9]  Huimin Lu,et al.  PEA: Parallel electrocardiogram-based authentication for smart healthcare systems , 2018, J. Netw. Comput. Appl..

[10]  Huimin Lu,et al.  Energy Harvesting Based Body Area Networks for Smart Health , 2017, Sensors.

[11]  Hongbo Jiang,et al.  Adaptive Wireless Video Streaming Based on Edge Computing: Opportunities and Approaches , 2019, IEEE Transactions on Services Computing.

[12]  M. Shamim Hossain,et al.  Edge-CoCaCo: Toward Joint Optimization of Computation, Caching, and Communication on Edge Cloud , 2018, IEEE Wireless Communications.

[13]  Chao Cai,et al.  Smart Home Based on WiFi Sensing: A Survey , 2018, IEEE Access.

[14]  Sokol Kosta,et al.  To offload or not to offload? The bandwidth and energy costs of mobile cloud computing , 2013, 2013 Proceedings IEEE INFOCOM.

[15]  Min Chen,et al.  Mobility-Aware Caching and Computation Offloading in 5G Ultra-Dense Cellular Networks , 2016, Sensors.

[16]  Wenye Wang,et al.  Can mobile cloudlets support mobile applications? , 2014, IEEE INFOCOM 2014 - IEEE Conference on Computer Communications.

[17]  Huimin Lu,et al.  Brain Intelligence: Go beyond Artificial Intelligence , 2017, Mobile Networks and Applications.

[18]  Min Chen,et al.  Narrow Band Internet of Things , 2017, IEEE Access.

[19]  Liang Tong,et al.  A hierarchical edge cloud architecture for mobile computing , 2016, IEEE INFOCOM 2016 - The 35th Annual IEEE International Conference on Computer Communications.

[20]  Kin K. Leung,et al.  Energy-Aware Participant Selection for Smartphone-Enabled Mobile Crowd Sensing , 2017, IEEE Systems Journal.

[21]  Xu Chen,et al.  Exploiting Massive D2D Collaboration for Energy-Efficient Mobile Edge Computing , 2017, IEEE Wireless Communications.

[22]  Min Chen,et al.  Data-Driven Computing and Caching in 5G Networks: Architecture and Delay Analysis , 2018, IEEE Wireless Communications.

[23]  Byung-Gon Chun,et al.  CloneCloud: elastic execution between mobile device and cloud , 2011, EuroSys '11.

[24]  Zhengguo Sheng,et al.  An Adaptive Fusion Strategy for Distributed Information Estimation Over Cooperative Multi-Agent Networks , 2017, IEEE Transactions on Information Theory.

[25]  Cheng-Xiang Wang,et al.  Spatial Spectrum and Energy Efficiency of Random Cellular Networks , 2015, IEEE Transactions on Communications.

[26]  Qiang Li,et al.  Multipath Cooperative Communications Networks for Augmented and Virtual Reality Transmission , 2017, IEEE Transactions on Multimedia.

[27]  Kaoru Sezaki,et al.  Per-Flow Throughput Fairness in Ring Aggregation Network with Multiple Edge Routers , 2018, Big Data Cogn. Comput..

[28]  Kin K. Leung,et al.  Energy-Efficient Event Detection by Participatory Sensing Under Budget Constraints , 2017, IEEE Systems Journal.

[29]  Depeng Jin,et al.  Mobility-Assisted Opportunistic Computation Offloading , 2014, IEEE Communications Letters.

[30]  Wenzhong Li,et al.  Efficient Multi-User Computation Offloading for Mobile-Edge Cloud Computing , 2015, IEEE/ACM Transactions on Networking.

[31]  Jie Xu,et al.  EMM: Energy-Aware Mobility Management for Mobile Edge Computing in Ultra Dense Networks , 2017, IEEE Journal on Selected Areas in Communications.

[32]  Ben Kei Daniel,et al.  Reimaging Research Methodology as Data Science , 2018, Big Data Cogn. Comput..

[33]  Robert John Walters,et al.  Fog Computing and the Internet of Things: A Review , 2018, Big Data Cogn. Comput..