Title
Generalized Deduplication: Lossless Compression for Large Amounts of Small IoT Data
Abstract
We show that a generalization of deduplication can enable compressed storage of sensor data. The method uses error-correcting codes in a non-traditional manner to identify similar elements, and then leverages this similarity for compression. Using Reed Solomon codes, our method has a theoretical potential to reduce the cost of storing chunks of 16 bytes to as much as 5 times less, and up to 65 times less for chunks of 255 bytes. We define a simple model for sensor data, and show how our approach is able to compress data from the model, realizing its compression potential with much smaller data sets than classic deduplication requires. This demonstrates that generalized deduplication can be a viable solution for practical lossless compression of small IoT data in scenarios where classic deduplication is ineffective.
Year
Venue
DocType
2019
European Wireless 2019; 25th European Wireless Conference
Conference
ISBN
Citations 
PageRank 
978-3-8007-4948-5
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
Rasmus Vestergaard113.40
Daniel E. Lucani223642.29
Qi Zhang3137.05