Nimbus: Towards Latency-Energy Efficient Task Offloading for AR Services

Vittorio Cozzolino, Leonardo Tonetto, Nitinder Mohan, Aaron Yi Ding, Jorg Ott

Research output: Contribution to journalArticleScientificpeer-review

10 Citations (Scopus)
268 Downloads (Pure)

Abstract

Widespread adoption of mobile augmented reality (AR) and virtual reality (VR) applications depends on their smoothness and immersiveness. Modern AR applications applying computationally intensive computer vision algorithms can burden today's mobile devices, and cause high energy consumption and/or poor performance. To tackle this challenge, it is possible to offload part of the computation to nearby devices at the edge. However, this calls for smart task placement strategies in order to efficiently use the resources of the edge infrastructure. In this paper, we introduce Nimbus --- a task placement and offloading solution for a multi-tier, edge-cloud infrastructure where deep learning tasks are extracted from the AR application pipeline and offloaded to nearby GPU-powered edge devices. Our aim is to minimize the latency experienced by end-users and the energy costs on mobile devices. Our multifaceted evaluation, based on benchmarked performance of AR tasks, shows the efficacy of our solution. Overall, Nimbus reduces the task latency by ~4x and the energy consumption by ~77% for real-time object detection in AR applications. We also benchmark three variants of our offloading algorithm, disclosing the trade-off of centralized versus distributed execution.
Original languageEnglish
JournalIEEE Transactions on Cloud Computing
DOIs
Publication statusPublished - 2022

Keywords

  • Cloud computing
  • Edge computing
  • Energy consumption
  • Image edge detection
  • Performance evaluation
  • Real-time systems
  • Task analysis

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