4.7 Article

A trusted and collaborative framework for deep learning in IoT

Journal

COMPUTER NETWORKS
Volume 193, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.comnet.2021.108055

Keywords

Collaborative framework; Trusted execution environment; Deep learning; Internet of Things

Funding

  1. National Natural Science Foundation of China [61872001, 6191101332, U1936220]
  2. Open Fund of Key Laboratory of Embedded System and Service Computing (Tongji University), Ministry of Education, China [ESSCKF201803]
  3. Open Fund for Discipline Construction, Institute of Physical Science and Information Technology, Anhui University, China
  4. Excellent Talent Project of Anhui University, China

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The article discusses the development trend of AI-enabled IoT in intelligent services, pointing out the challenges that resource-limited IoT devices face in handling large models. It proposes solutions to address data privacy and security issues by collaborating with edge nodes and using trusted execution environment technology.
More and more Internet of Things (IoT) applications provide intelligent services, with the development of artificial intelligence algorithms, such as deep reinforcement learning. However, along with the trend of utilizing a large model with high accuracy in AI-enabled IoT, resource-limited IoT devices are difficult to handle these large-scale models with high response latency. By collaborating with edge nodes, the devices could respond quickly. However, IoT applications contain a large amount of user privacy, and pushing data to others might lead to privacy leakage. Inspired by the trusted execution environment technology, we propose a framework that enables trusted collaboration for future AI-enabled IoTs, in terms of computation security and transmission security, where the data could be processed in an isolated environment, and two approaches are proposed to ensure the security in data transmission. Experimental results show that our framework provides flexible and dynamic collaboration with low overhead and can effectively support collaborative edge intelligence.

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