Change a Bit to save Bytes: Compression for Floating Point Time-Series Data
March 08, 2023 Β· Declared Dead Β· π ICC 2023 - IEEE International Conference on Communications
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Authors
Francesco Taurone, Daniel E. Lucani, Marcell FehΓ©r, Qi Zhang
arXiv ID
2303.04478
Category
cs.DS: Data Structures & Algorithms
Citations
7
Venue
ICC 2023 - IEEE International Conference on Communications
Last Checked
4 months ago
Abstract
The number of IoT devices is expected to continue its dramatic growth in the coming years and, with it, a growth in the amount of data to be transmitted, processed and stored. Compression techniques that support analytics directly on the compressed data could pave the way for systems to scale efficiently to these growing demands. This paper proposes two novel methods for preprocessing a stream of floating point data to improve the compression capabilities of various IoT data compressors. In particular, these techniques are shown to be helpful with recent compressors that allow for random access and analytics while maintaining good compression. Our techniques improve compression with reductions up to 80% when allowing for at most 1% of recovery error.
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