Work place: Department of Electronics and Computer Engineering Basaveshwar Engineering College Bagalkote 587102, Karnataka, India
E-mail: chayalakshmi.cl@gmail.com
Website: https://orcid.org/0000-0003-0489-100X
Research Interests:
Biography
Dr. Chayalakshmi C. L. is working as an Associate Professor of Electronics and Computer Engineering at
Basaveshwar Engineering College, Bagalkote, Karnataka, India. She completed her ph. D. from Visvesvaraya
Technological University (VTU), Belagavi, Karnataka, India. She has 27 years of experience in teaching and
research. Her research interests include embedded systems, internet of things, and wireless networks. She has
published 05 book chapters and many national/international journal and conference papers.
By Chayalakshmi C. L. Sadashiv R. Badiger
DOI: https://doi.org/10.5815/ijeme.2026.02.03, Pub. Date: 8 Apr. 2026
Edge computing has emerged as a critical paradigm for enabling low-latency, bandwidth-efficient, and scalable data processing in distributed IoT environments. However, its effectiveness fundamentally depends on how data is cached, stored, aggregated, and fused across heterogeneous and resource-constrained edge nodes. To address this, the present survey conducts a comprehensive and methodologically rigorous examination of data-management techniques in edge computing. An initial corpus of 150 publications was collected from major scientific databases and processed through the PRISMA framework, resulting in 25 high-quality surveys that revealed data management as the most fragmented and underdeveloped component of the edge ecosystem. Building on these insights, we performed an in-depth analysis of 75 state-of-the-art research papers published between 2018 and 2025, covering four core data-management pillars: data caching, data storage, data aggregation, data validation and data fusion. For each area, we synthesize current design strategies, highlight measurable performance outcomes, and critically evaluate architectural, algorithmic, and system-level limitations. A unified cross-technique analysis further reveals unresolved challenges in scalable data placement, coded storage, privacy-preserving aggregation, multi-modal fusion, and the absence of integrated data pipelines. The survey concludes by outlining open research directions and proposing a consolidated roadmap toward intelligent, interoperable, and workload-aware data-management frameworks for next-generation edge computing systems.
[...] Read more.Subscribe to receive issue release notifications and newsletters from MECS Press journals