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Graph Convolutional Network based Scheduler for Distributing Computation in the Internet of Robotic Things

Graph Convolutional Network-based Scheduler for Distributing Computation in the Internet of Robotic Things

  • distributed-computing
  • artificial-intelligence
Jared Coleman, Mehrdad Kiamari, Lillian Clark, Daniel D'Souza, Bhaskar Krishnamachari
MILCOM 2023 WS-7 - Workshop On The Internet Of Things For Adversarial Environments
November 28, 2022
10.1109/MILCOM55135.2022.10017673
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Abstract

Existing solutions for scheduling arbitrarily complex distributed applications on networks of computational nodes are insufficient for scenarios where the network topology is changing rapidly. New Internet of Things (IoT) domains like the Internet of Robotic Things (IoRT) and the Internet of Battlefield Things (IoBT) demand solutions that are robust and efficient in environments that experience constant and/or rapid change. In this paper, we demonstrate how recent advancements in machine learning (in particular, in graph convolutional neural networks) can be leveraged to solve the task scheduling problem with decent performance and in much less time than traditional algorithms.


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