An Adaptive Column Compression Family for Self-Driving Databases

Marcell Fehér, Daniel Enrique Lucani Rötter, Ioannis Chatzigeorgiou

Publikation: KonferencebidragPaperForskningpeer review

Abstract

Modern in-memory databases are typically used for high-performance workloads, therefore they have to be optimized for small memory footprint and high query speed at the same time. Data compression has the potential to reduce memory requirements but often reduces query speed too. In this paper we propose a novel, adaptive compres- sor that offers a new trade-off point of these dimensions, achieving better compression than LZ4 while reaching query speeds close to the fastest existing segment encoders. We evaluate our compressor both with synthetic data in isolation and on the TPC-H and Join Order Benchmarks, integrated into a modern relational column store, Hyrise.

Workshop

WorkshopThirteenth International Workshop on Accelerating Analytics and Data Management Systems Using Modern Processor and Storage Architectures
Land/OmrådeAustralien
BySydney
Periode05/09/202205/09/2022
Internetadresse

Fingeraftryk

Dyk ned i forskningsemnerne om 'An Adaptive Column Compression Family for Self-Driving Databases'. Sammen danner de et unikt fingeraftryk.

Citationsformater