Litcius/Paper detail

G-tran

Hongzhi Chen, Changji Li, Chenguang Zheng, Chenghuan Huang, Juncheng Fang, James Cheng, Jian Zhang

2022Proceedings of the VLDB Endowment21 citationsDOI

Abstract

Graph transaction processing poses unique challenges such as random data access due to the irregularity of graph structures, low throughput and high abort rate due to the relatively large read/write sets in graph transactions. To address these challenges, we present G-Tran, a remote direct memory access (RDMA)-enabled distributed in-memory graph database with serializable and snapshot isolation support. First, we propose a graph-native data store to achieve good data locality and fast data access for transactional updates and queries. Second, G-Tran adopts a fully decentralized architecture that leverages RDMA to process distributed transactions with the massively parallel processing (MPP) model, which can achieve high performance by utilizing all computing resources. In addition, we propose a new multi-version optimistic concurrency control (MV-OCC) protocol with two optimizations to address the issue of large read/write sets in graph transactions. Extensive experiments show that G-Tran achieves competitive performance compared with other popular graph databases on benchmark workloads.

Topics & Concepts

Computer scienceSerializationRemote direct memory accessSerializabilityGraphConcurrency controlParallel computingDistributed computingTransaction processingConcurrencyDatabase transactionDistributed transactionDatabaseTheoretical computer scienceOperating systemGraph Theory and AlgorithmsDistributed systems and fault toleranceInterconnection Networks and Systems