Back to Search Start Over

BestConfig: Tapping the Performance Potential of Systems via Automatic Configuration Tuning

Authors :
Zhu, Yuqing
Liu, Jianxun
Guo, Mengying
Bao, Yungang
Ma, Wenlong
Liu, Zhuoyue
Song, Kunpeng
Yang, Yingchun
Source :
ACM SoCC 2017
Publication Year :
2017

Abstract

An ever increasing number of configuration parameters are provided to system users. But many users have used one configuration setting across different workloads, leaving untapped the performance potential of systems. A good configuration setting can greatly improve the performance of a deployed system under certain workloads. But with tens or hundreds of parameters, it becomes a highly costly task to decide which configuration setting leads to the best performance. While such task requires the strong expertise in both the system and the application, users commonly lack such expertise. To help users tap the performance potential of systems, we present BestConfig, a system for automatically finding a best configuration setting within a resource limit for a deployed system under a given application workload. BestConfig is designed with an extensible architecture to automate the configuration tuning for general systems. To tune system configurations within a resource limit, we propose the divide-and-diverge sampling method and the recursive bound-and-search algorithm. BestConfig can improve the throughput of Tomcat by 75%, that of Cassandra by 63%, that of MySQL by 430%, and reduce the running time of Hive join job by about 50% and that of Spark join job by about 80%, solely by configuration adjustment.

Details

Database :
arXiv
Journal :
ACM SoCC 2017
Publication Type :
Report
Accession number :
edsarx.1710.03439
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3127479.3128605