Implementing Deep Learning and Inferencing on Fog and Edge Computing Systems

@article{Dey2018ImplementingDL,
  title={Implementing Deep Learning and Inferencing on Fog and Edge Computing Systems},
  author={Swarnava Dey and Arijit Mukherjee},
  journal={2018 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops)},
  year={2018},
  pages={818-823}
}
The case for leveraging the computing resources of smart devices at the edge of network was conceptualized almost nine years back. Since then several concepts like Cloudlets, Fog etc. were instrumental in realizing computing at network edge, in physical proximity to the data sources for building more responsive, scalable and available Cloud based services. An essential component in smartphone applications, Internet of Things(IoT), field robotics etc. is the ability to analyze large amount of… CONTINUE READING

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