EntroGD: Scalable Generalized Deduplication for Efficient Direct Analytics on Compressed IoT Data
Abstract
Massive data streams from IoT and cyber-physical systems must be processed under strict bandwidth, latency, and resource constraints. Generalized Deduplication (GD) is a promising lossless compression framework, as it supports random access and direct analytics on compressed data. However, existing GD algorithms exhibit quadratic complexity , which limits their scalability for high-dimensional datasets. This paper proposes \textbf{EntroGD}, an entropy-guided GD framework that decouples analytical fidelity from compression efficiency to achieve linear complexity . EntroGD adopts a two-stage design, first constructing compact condensed samples to preserve information critical for analytics, and then applying entropy-based bit selection to maximize compression. Experiments on 18 IoT datasets show that EntroGD reduces configuration time by up to compared to state-of-the-art GD compressors. Moreover, by enabling analytics with access to only of the original data volume, EntroGD accelerates clustering by up to with negligible loss in accuracy. Overall, EntroGD provides a scalable and system-efficient solution for direct analytics on compressed IoT data.
Cite
@article{arxiv.2511.04148,
title = {EntroGD: Scalable Generalized Deduplication for Efficient Direct Analytics on Compressed IoT Data},
author = {Xiaobo Zhao and Daniel E. Lucani},
journal= {arXiv preprint arXiv:2511.04148},
year = {2026}
}
Comments
6 pages, 7 figures, accepted and to be presented at the IEEE INFOCOM 2026 Workshop on Fusion of Data, Operation, Information, and Communication Technology for Industry 4.0 and Society 5.0