loading page

Edge-assisted Adaptive Heterogeneous Resource Allocation Optimization for Large-Scale Live Video Analytics
  • +3
  • Jing Chen,
  • Jia Chen,
  • Xu Huang,
  • Qi Liu,
  • Meng Song,
  • Hongke Zhang
Jing Chen
Tsinghua University
Author Profile
Jia Chen
Beijing Jiaotong University

Corresponding Author:chenjia@bjtu.edu.cn

Author Profile
Xu Huang
Beijing Jiaotong University
Author Profile
Qi Liu
China Unicom
Author Profile
Meng Song
China Unicom
Author Profile
Hongke Zhang
Beijing Jiaotong University
Author Profile

Abstract

In this letter, we propose an Edge-assisted adaptive heterogeneous resource allocation scheme based on atomic service chain (ASC) to jointly optimize adaptability for users, flexibility for networks, and profitability for providers. Particularly, we build an Edge-AI integrated computing power paradigm that integrates awareness, forwarding, storage, computing and processing capabilities. Moreover, we formulate the heterogeneous resource allocation problem into a non-linear non-convex integer optimization problem and propose an Edge-AI integrated ASC-based resource allocation approach for large-scale live video analytics to maximize average network utility with QoS support and minimize network congestion while considering the profitability. Experimental results demonstrate that the designed Edge-assisted ASC-based adaptive heterogeneous resource allocation approach outperforms the monolithic model-based scheme.
03 Dec 2024Submitted to Electronics Letters
11 Dec 2024Submission Checks Completed
11 Dec 2024Assigned to Editor
11 Dec 2024Review(s) Completed, Editorial Evaluation Pending
19 Dec 2024Reviewer(s) Assigned