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.
翻译:未来几年内,IoT设备的数量预计将继续急剧增长,并随之增加传输、处理和储存的数据数量。直接支持压缩数据分析的压缩技术可以为系统有效扩大规模以适应这些不断增长的需求铺平道路。本文提出了两种新的方法,用于预处理一系列浮点数据,以提高各种IoT数据压缩机的压缩能力。特别是,这些技术对最近的压缩机很有帮助,这些压缩机允许随机访问和分析,同时保持良好的压缩。我们的技术改进压缩,在最多允许1%的回收误差时,将压缩减到80%。</s>