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Proteus: A Self-Designing Range Filter

Eric Knorr, Baptiste Lemaire, Andrew Lim, Siqiang Luo, Huanchen Zhang, Stratos Idreos, Michael Mitzenmacher

2022Proceedings of the 2022 International Conference on Management of Data28 citationsDOIOpen Access PDF

Abstract

We introduce Proteus, a novel self-designing approximate range filter, which configures itself based on sampled data in order to optimize its false positive rate (FPR) for a given space requirement. Proteus unifies the probabilistic and deterministic design spaces of state-of-the-art range filters to achieve robust performance across a larger variety of use cases. At the core of Proteus lies our Contextual Prefix FPR (CPFPR) model - a formal framework for the FPR of prefix-based filters across their design spaces. We empirically demonstrate the accuracy of our model and Proteus' ability to optimize over both synthetic workloads and real-world datasets. We further evaluate Proteus in RocksDB and show that it is able to improve end-to-end performance by as much as 5.3x over more brittle state-of-the-art methods such as SuRF and Rosetta. Our experiments also indicate that the cost of modeling is not significant compared to the end-to-end performance gains and that Proteus is robust to workload shifts.

Topics & Concepts

ProteusComputer scienceRange (aeronautics)WorkloadFilter (signal processing)Real-time computingComputer visionEngineeringGeneEscherichia coliChemistryBiochemistryOperating systemAerospace engineeringCloud Computing and Resource ManagementData Stream Mining TechniquesAdvanced Data Storage Technologies
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