Back to Search Start Over

Greenplum: A Hybrid Database for Transactional and Analytical Workloads

Authors :
Lyu, Zhenghua
Zhang, Huan Hubert
Xiong, Gang
Wang, Haozhou
Guo, Gang
Chen, Jinbao
Praveen, Asim
Yang, Yu
Gao, Xiaoming
Agrawal, Ashwin
Wang, Alexandra
Lin, Wen
Yang, Junfeng
Wu, Hao
Li, Xiaoliang
Guo, Feng
Wu, Jiang
Zhang, Jesse
Raghavan, Venkatesh
Publication Year :
2021

Abstract

Demand for enterprise data warehouse solutions to support real-time Online Transaction Processing (OLTP) queries as well as long-running Online Analytical Processing (OLAP) workloads is growing. Greenplum database is traditionally known as an OLAP data warehouse system with limited ability to process OLTP workloads. In this paper, we augment Greenplum into a hybrid system to serve both OLTP and OLAP workloads. The challenge we address here is to achieve this goal while maintaining the ACID properties with minimal performance overhead. In this effort, we identify the engineering and performance bottlenecks such as the under-performing restrictive locking and the two-phase commit protocol. Next we solve the resource contention issues between transactional and analytical queries. We propose a global deadlock detector to increase the concurrency of query processing. When transactions that update data are guaranteed to reside on exactly one segment we introduce one-phase commit to speed up query processing. Our resource group model introduces the capability to separate OLAP and OLTP workloads into more suitable query processing mode. Our experimental evaluation on the TPC-B and CH-benCHmark benchmarks demonstrates the effectiveness of our approach in boosting the OLTP performance without sacrificing the OLAP performance.

Subjects

Subjects :
Computer Science - Databases

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.11080
Document Type :
Working Paper