Joint Resource Optimization, Computation Offloading and Resource Slicing for Multi-Edge Traffic-Cognitive Networks
Xiaoyang, Ting, Zhang, Minfeng, gonglee, Shu, Zhang, Saimin Chen
–arXiv.org Artificial Intelligence
The evolving landscape of edge computing envisions platforms operating as dynamic intermediaries between application providers and edge servers (ESs), where task offloading is coupled with payments for computational services. This paper investigates a multi - agent system where both the platform and ESs are self - interested entities, addressing the joint optimization of revenue maximization, resourc e allocation, and task offloading. We propose a novel Stackelberg game - based framework to model interactions between stakeholders and solve the optimization problem using a Bayesian Optimization - based centralized algorithm. Extensive numerical evaluations demonstrate the effectiveness of t he proposed mechanisms in achieving superior performance compared to existing baselines. Keywords -- Mobile edge computing, computation offloading, resource slicing, DRL - driven traffic prediction I. Introduction In recent years, a surge of novel applications, such as augmented reality, interactive gaming, and autonomous driving, has placed unprecedented demands on computational and network resources. These applications are both resource - intensive and delay - sensitive, necessitating robust and low - latency computi ng frameworks. Multi - access edge computing (MEC), previously referred to as mobile edge computing, has emerged as a promising paradigm to address these challenges.
arXiv.org Artificial Intelligence
Nov-26-2024