On the Design of Resource Allocation Algorithms for Low-Latency Video Analytics

Abstract In this paper, we study how to design resource allocation algorithms for data analytics services that are com- putationally intensive and have low-latency requirements. As a paradigm application, we consider a video surveillance service where video streams are analyzed in the cloud with deep-learning algorithms (i.e., object detection and image classification). We present a network model that allows data analytics tasks to be processed in multiple stages, and propose an algorithm that provides low congestion when the arrival rate is constant over time. The algorithm also allows other types of data analytics to be carried out in the cloud in order to maximize resource utilization. The performance of the proposed algorithm is evaluated using simulation, and our results show that it is possible to obtain low-delay while maximizing the use of network resources.
Authors
  • Victor Valls (Yale)
  • Heesung Kwon (ARL)
  • Tom La Porta (PSU)
  • Sebastian Stein (Southampton)
  • Leandros Tassiulas (Yale)
Date Sep-2018
Venue 2nd Annual Fall Meeting of the DAIS ITA, 2018
Variants