Revisiting Edge AI: Opportunities and Challenges

Open Access
Authors
  • T. Meuser
  • L. Lovén
  • M. Bhuyan
  • S.G. Patil
  • S. Dustdar
  • A. Aral
  • S. Bayhan
  • C. Becker
  • E. de Lara
  • A.Y. Ding
  • J. Edinger
  • J. Gross
  • N. Mohan
  • A.D. Pimentel ORCID logo
  • E. Rivière
  • H. Schulzrinne
  • P. Simoens
  • G. Solmaz
  • M. Welzl
Publication date 2024
Journal IEEE Internet Computing
Volume | Issue number 28 | 4
Pages (from-to) 49-59
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Edge artificial intelligence (AI) is an innovative computing paradigm that aims to shift the training and inference of machine learning models to the edge of the network. This paradigm offers the opportunity to significantly impact our everyday lives with new services such as autonomous driving and ubiquitous personalized health care. Nevertheless, bringing intelligence to the edge involves several major challenges, which include the need to constrain model architecture designs, the secure distribution and execution of the trained models, and the substantial network load required to distribute the models and data collected for training. In this article, we highlight key aspects in the development of edge AI in the past and connect them to current challenges. This article aims to identify research opportunities for edge AI, relevant to bring together the research in the fields of artificial intelligence and edge computing.
Document type Article
Language English
Published at https://doi.org/10.1109/MIC.2024.3383758
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Revisiting Edge AI (Final published version)
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