2025 : 11 : 5
Mahdi Abbasi

Mahdi Abbasi

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 54902628100
HIndex:
Faculty: Faculty of Engineering
Address:
Phone: 09183176343

Research

Title
Tiny machine learning models for autonomous workload distribution across cloud-edge computing continuum
Type
JournalPaper
Keywords
Internet of things (IoT) · Edge computing · Cloud computing · Workload distribution · Tiny models
Year
2025
Journal Cluster Computing, The Journal of Networks, Software Tools and Applications
DOI
Researchers ، Mahdi Abbasi ، Atefeh Salimi ، Erik Elmroth ، Hassan Haghighi ، Parham Moradi ، Bahman Javadi

Abstract

Resource management and task distribution in real-time have become increasingly challenging due to the growing use of latency-critical applications across dispersed edge-cloud infrastructures. Intelligent adaptable mechanisms capable of functioning effectively on resource-constrained edge devices and responding quickly to dynamic workload changes are required in these situations. In this work, we offer a learning-based system for autonomous resource allocation across the edge–cloud continuum that is both lightweight and scalable. Two models are presented: TinyDT, a small offline decision tree trained on state-action information retrieved from an adaptive baseline, and TinyXCS, an online rule-based classifier system that can adjust to runtime conditions. Both models are designed to operate on resource-constrained edge devices while minimizing memory overhead and inference latency. Our analysis demonstrates that TinyXCS and TinyDT outperform existing online and offline baselines in terms of throughput and latency, providing a reliable, power-efficient solution for next-generation edge intelligence