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New Directions in Distributed Deep Learning: Bringing the Network at Forefront of IoT Design (2008.10805v1)

Published 25 Aug 2020 in stat.ML, cs.CV, cs.LG, and eess.SP

Abstract: In this paper, we first highlight three major challenges to large-scale adoption of deep learning at the edge: (i) Hardware-constrained IoT devices, (ii) Data security and privacy in the IoT era, and (iii) Lack of network-aware deep learning algorithms for distributed inference across multiple IoT devices. We then provide a unified view targeting three research directions that naturally emerge from the above challenges: (1) Federated learning for training deep networks, (2) Data-independent deployment of learning algorithms, and (3) Communication-aware distributed inference. We believe that the above research directions need a network-centric approach to enable the edge intelligence and, therefore, fully exploit the true potential of IoT.

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Authors (3)
  1. Kartikeya Bhardwaj (21 papers)
  2. Wei Chen (1293 papers)
  3. Radu Marculescu (49 papers)
Citations (6)

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