
JIET OPEN ACCESS
Journal of Intelligence and Engineering Technology
ISSN:Pending (print) | ISSN:Pending (online) | Publication Frequency: Quarterly
Dynamic Task Prioritization for Edge AI in Smart Cities: Balancing Latency and Energy Efficiency
* Corresponding Author1: Zihe Hao, E-Mail: zhihehao123@gmail.com
Publication
Accepted 2026 March 20 ; Published 2026 March 20
Journal of Intelligence and Engineering Technology, 2026, 1(1), Pending.
Abstract
The growth of latency sensitive smart city applications is rapid nowadays. Therefore deploying microservice architecture in the heterogeneous edge cloud continuum has become a mainstream choice. However a structural challenge arises in orchestrating these coupled services modeled as Directed Acyclic Graphs. Exact algorithms like Branch and Bound struggle with computation in high concurrency scenarios. Meanwhile Deep Reinforcement Learning methods face the challenges of excessive training overhead and a lack of zero shot adaptation capability for topology changes. Recently popular quantum inspired algorithms often fail to satisfy strict predecessor constraints. This makes them unsuitable for use in dependent workflows. To alleviate this dilemma this paper proposes a Dependency Aware Quantum Inspired Scheduler. This framework utilizes a topological quantum coding scheme and dynamic dependency masks to integrate DAG constraints into the quantum search process. It also introduces an entropy weighted evolutionary rotation mechanism to accelerate the convergence of critical paths. After conducting extensive simulation experiments in city level environments we found that the scheduling success rate of DAQ Scheduler is 100% while the success rate of standard quantum inspired algorithms is only 58.1%. Compared with leading multi objective DRL baselines this method reduces the average makespan by 9.9%. This method provides near optimal scheduling solutions with millisecond level inference latency. It builds an efficient and lightweight paradigm for real time edge intelligence and balances theoretical optimality with engineering feasibility.
Keywords
Edge Computing , Microservice Orchestration , Quantum Inspired Algorithms , Directed Acyclic Graph Scheduling , Latency Energy Balance .
Metadata
Pages: 60-69
References: 22
Disciplines: Intelligent Systems
Subjects: Other
Cite This Article
APA Style
Hao, Z. (2026). Dynamic task prioritization for edge ai in smart cities: balancing latency and energy efficiency. Journal of Intelligence and Engineering Technology, 1(1), 60-69. https://doi.org/10.70393/6a696574.343034
Acknowledgments
Not Applicable.
FUNDING
Not Applicable.
INSTITUTIONAL REVIEW BOARD STATEMENT
Not Applicable.
DATA AVAILABILITY STATEMENT
Not Applicable.
INFORMED CONSENT STATEMENT
Not Applicable.
CONFLICT OF INTEREST
Not Applicable.
AUTHOR CONTRIBUTIONS
Not application.
References
PUBLISHER'S NOTE
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Copyright © 2025 The Author(s). Published by Southern United Academy of Sciences.This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Persistent Identifiers





Abstracting and Indexing




Quality Assurance


Archiving Services
t



