Dynamic Multi-time Scale User Admission and Resource Allocation for Semantic Extraction in MEC Systems
Yuanpeng Zheng, Tiankui Zhang, Jonathan Loo

TL;DR
This paper proposes a multi-time scale dynamic user admission and resource allocation algorithm for semantic extraction tasks in MEC systems, optimizing system revenue and cost amid stochastic task arrivals.
Contribution
It introduces a novel multi-time scale optimization framework using Lyapunov techniques for semantic extraction in MEC, addressing stochastic task arrivals and resource constraints.
Findings
Improves user admission and resource allocation efficiency.
Achieves a flexible trade-off between revenue and cost.
Demonstrates superior performance over benchmark algorithms.
Abstract
This paper investigates the semantic extraction task-oriented dynamic multi-time scale user admission and resourceallocation in mobile edge computing (MEC) systems. Amid prevalence artifi cial intelligence applications in various industries,the offloading of semantic extraction tasks which are mainlycomposed of convolutional neural networks of computer vision isa great challenge for communication bandwidth and computing capacity allocation in MEC systems. Considering the stochasticnature of the semantic extraction tasks, we formulate a stochastic optimization problem by modeling it as the dynamic arrival of tasks in the temporal domain. We jointly optimize the system revenue and cost which are represented as user admission in the long term and resource allocation in the short term respectively. To handle the proposed stochastic optimization problem, we decompose it into short-time-scale…
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