Skip to main content
Article
A Parallel Framework for Efficiently Updating Graph Properties in Large Dynamic Networks
ACM International Conference Proceeding Series
  • Arindam Khanda
  • Sajal K. Das, Missouri University of Science and Technology
Abstract

Graph queries on large networks leverage the stored graph properties to provide faster results. Since real-world graphs are mostly dynamic, i.e., the graph topology changes over time, the corresponding graph attributes also change over time. In certain situations, recompiling or updating earlier properties is necessary to maintain the accuracy of a response to a graph query. Here, we first propose a generic framework for developing parallel algorithms to update graph properties on large dynamic networks. We use our framework to develop algorithms for updating Single Source Shortest Path (SSSP) and Vertex Color. Then we propose applications of the developed algorithms in Unmanned Aerial Vehicle (UAV) based delivery systems under time-varying dynamics. Finally, we implement our SSSP and vertex color update algorithms for Nvidia GPU architecture and show empirically that the developed algorithms can update properties in large dynamic networks faster than the state-of-the-art techniques.

Department(s)
Computer Science
Comments
National Science Foundation, Grant OAC-2104078
Keywords and Phrases
  • Datasets,
  • Gaze Detection,
  • Neural Networks,
  • Text Tagging
International Standard Book Number (ISBN)
978-145039796-4
Document Type
Article - Conference proceedings
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2023 Association for Computing Machinery, All rights reserved.
Publication Date
1-4-2023
Publication Date
04 Jan 2023
Disciplines
Citation Information
Arindam Khanda and Sajal K. Das. "A Parallel Framework for Efficiently Updating Graph Properties in Large Dynamic Networks" ACM International Conference Proceeding Series (2023) p. 298 - 299
Available at: http://works.bepress.com/sajal-das/249/