Litcius/Paper detail

LiveGraph

Xiaowei Zhu, Guanyu Feng, Marco Serafini, Xiaosong Ma, Jiping Yu, Lei Xie, Ashraf Aboulnaga, Wenguang Chen

2020Proceedings of the VLDB Endowment66 citationsDOIOpen Access PDF

Abstract

The specific characteristics of graph workloads make it hard to design a one-size-fits-all graph storage system. Systems that support transactional updates use data structures with poor data locality, which limits the efficiency of analytical workloads or even simple edge scans. Other systems run graph analytics workloads efficiently, but cannot properly support transactions. This paper presents LiveGraph, a graph storage system that outperforms both the best graph transactional systems and the best solutions for real-time graph analytics on fresh data. LiveGraph achieves this by ensuring that adjacency list scans, a key operation in graph workloads, are purely sequential: they never require random accesses even in presence of concurrent transactions. Such pure-sequential operations are enabled by combining a novel graph-aware data structure, the Transactional Edge Log (TEL), with a concurrency control mechanism that leverages TEL's data layout. Our evaluation shows that LiveGraph significantly outperforms state-of-the-art (graph) database solutions on both transactional and real-time analytical workloads.

Topics & Concepts

Computer scienceConcurrency controlAdjacency listWait-for graphGraphAnalyticsConcurrencyTheoretical computer scienceTransactional leadershipDistributed computingData structureData analysisGraph databaseDependency graphGraph algorithmsSerializabilityPersistent data structureData miningBig dataRowDatabaseDirected graphTransaction dataGraph Theory and AlgorithmsAdvanced Graph Neural NetworksData Management and Algorithms