Litcius/Paper detail

Dash

Baotong Lu, Xiangpeng Hao, Tianzheng Wang, Eric Lo

2020Proceedings of the VLDB Endowment134 citationsDOIOpen Access PDF

Abstract

Byte-addressable persistent memory (PM) brings hash tables the potential of low latency, cheap persistence and instant recovery. The recent advent of Intel Optane DC Persistent Memory Modules (DCPMM) further accelerates this trend. Many new hash table designs have been proposed, but most of them were based on emulation and perform sub-optimally on real PM. They were also piece-wise and partial solutions that side-step many important properties, in particular good scalability, high load factor and instant recovery. We present Dash, a holistic approach to building dynamic and scalable hash tables on real PM hardware with all the aforementioned properties. Based on Dash, we adapted two popular dynamic hashing schemes (extendible hashing and linear hashing). On a 24-core machine with Intel Optane DCPMM, we show that compared to state-of-the-art, Dash-enabled hash tables can achieve up to ∼3.9× higher performance with up to over 90% load factor and an instant recovery time of 57ms regardless of data size.

Topics & Concepts

Computer scienceHash functionScalabilityEmulationHash tableFactor (programming language)Double hashingTable (database)Parallel computingInstantDynamic perfect hashingLinear hashingComputer hardwareEmbedded systemMemory managementHash chainSHA-2Advanced Data Storage TechnologiesCaching and Content DeliveryParallel Computing and Optimization Techniques
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