Deep Model Training and Deployment in Heterogeneous IoT Networks

Authors

  • Bowen Lu Shantou University image/svg+xml
  • Shiwei Lai Guangzhou University image/svg+xml
  • Yajuan Tang Guangzhou University image/svg+xml
  • Tao Cui Guangzhou University image/svg+xml
  • Chengyuan Fan Software Engineering Institute of Guangzhou, Guangzhou, China
  • Jianghong Ou AI Sensing Technology, Foshan, China
  • Dahua Fan AI Sensing Technology, Foshan, China

DOI:

https://doi.org/10.4108/eetmca.v7i3.2899

Keywords:

Deep learning, deep model training, deep model deployment

Abstract

As a typical form of machines learning, deep learning has attracted much attention from researchers. It can independently construct (train) basic rules according to the sample data in the learning process. Especially in the field of machine vision, neural networks are usually trained by supervised learning, that is, by example data and predefined results of example data. In this paper, we firstly overview the current research progress on the deep model training and deployment on the heterogeneous Internet of Things (IoT) networks, by taking into account both the latency and energy consumption from various devices in the system. We then summarize the existing challenges on the model training and model deployment on the heterogeneous IoT devices. We further give some feasible solutions to solve the challenges on the model training and model deployment on the heterogeneous IoT devices. The study in this paper can serve as an important reference for the development of deep model training and model deployment for heterogeneous IoT networks.

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Published

11-01-2023

How to Cite

[1]
B. Lu, “Deep Model Training and Deployment in Heterogeneous IoT Networks”, EAI Endorsed Trans Mob Com Appl, vol. 7, no. 3, p. e5, Jan. 2023.

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