Roadmap for edge AI: A Dagstuhl Perspective

Research output: Contribution to journalArticleResearchpeer review

Authors

  • Aaron Yi Ding
  • Ella Peltonen
  • Tobias Meuser
  • Atakan Aral
  • Christian Becker
  • Schahram Dustdar
  • Thomas Hiessl
  • Dieter Kranzlmüller
  • Madhusanka Liyanage
  • Setareh Maghsudi
  • Nitinder Mohan
  • Jörg Ott
  • Jan S. Rellermeyer
  • Stefan Schulte
  • Henning Schulzrinne
  • Gürkan Solmaz
  • Sasu Tarkoma
  • Blesson Varghese
  • Lars Wolf

External Research Organisations

  • Delft University of Technology
  • University of Oulu
  • Technische Universität Darmstadt
  • University of Vienna
  • University of Mannheim
  • TU Wien (TUW)
  • Ludwig-Maximilians-Universität München (LMU)
  • University College Dublin
  • University of Tübingen
  • Technical University of Munich (TUM)
  • Hamburg University of Technology (TUHH)
  • Columbia University
  • NEC Corporation
  • University of Helsinki
  • University of St. Andrews
  • Technische Universität Braunschweig
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Details

Original languageEnglish
Pages (from-to)28-33
Number of pages6
JournalComputer communication review
Volume52
Issue number1
Publication statusPublished - 1 Mar 2022

Abstract

Based on the collective input of Dagstuhl Seminar (21342), this paper presents a comprehensive discussion on AI methods and capabilities in the context of edge computing, referred as Edge AI. In a nutshell, we envision Edge AI to provide adaptation for data-driven applications, enhance network and radio access, and allow the creation, optimisation, and deployment of distributed AI/ML pipelines with given quality of experience, trust, security and privacy targets. The Edge AI community investigates novel ML methods for the edge computing environment, spanning multiple sub-fields of computer science, engineering and ICT. The goal is to share an envisioned roadmap that can bring together key actors and enablers to further advance the domain of Edge AI.

Keywords

    5G Beyond, Edge AI, Edge Computing, Future Cloud, Roadmap

ASJC Scopus subject areas

Cite this

Roadmap for edge AI: A Dagstuhl Perspective. / Ding, Aaron Yi; Peltonen, Ella; Meuser, Tobias et al.
In: Computer communication review, Vol. 52, No. 1, 01.03.2022, p. 28-33.

Research output: Contribution to journalArticleResearchpeer review

Ding, AY, Peltonen, E, Meuser, T, Aral, A, Becker, C, Dustdar, S, Hiessl, T, Kranzlmüller, D, Liyanage, M, Maghsudi, S, Mohan, N, Ott, J, Rellermeyer, JS, Schulte, S, Schulzrinne, H, Solmaz, G, Tarkoma, S, Varghese, B & Wolf, L 2022, 'Roadmap for edge AI: A Dagstuhl Perspective', Computer communication review, vol. 52, no. 1, pp. 28-33. https://doi.org/10.1145/3523230.3523235
Ding, A. Y., Peltonen, E., Meuser, T., Aral, A., Becker, C., Dustdar, S., Hiessl, T., Kranzlmüller, D., Liyanage, M., Maghsudi, S., Mohan, N., Ott, J., Rellermeyer, J. S., Schulte, S., Schulzrinne, H., Solmaz, G., Tarkoma, S., Varghese, B., & Wolf, L. (2022). Roadmap for edge AI: A Dagstuhl Perspective. Computer communication review, 52(1), 28-33. https://doi.org/10.1145/3523230.3523235
Ding AY, Peltonen E, Meuser T, Aral A, Becker C, Dustdar S et al. Roadmap for edge AI: A Dagstuhl Perspective. Computer communication review. 2022 Mar 1;52(1):28-33. doi: 10.1145/3523230.3523235
Ding, Aaron Yi ; Peltonen, Ella ; Meuser, Tobias et al. / Roadmap for edge AI : A Dagstuhl Perspective. In: Computer communication review. 2022 ; Vol. 52, No. 1. pp. 28-33.
Download
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