With the wide application of time series databases (TSDBs) in big data fields like cluster monitoring and industrial IoT, there have been developed a number of TSDBs for time series data management. Different TSDBs have test reports comparing themselves with other databases to show their advantages, but the comparisons are typically based on their own tools without using a common well-recognized test framework. To the best of our knowledge, there is no mature TSDB benchmark either. With the goal of establishing a standard of evaluating TSDB systems, we present the IoTDB-Benchmark framework, specifically designed for TSDB and IoT application scenarios. We pay close attention to some special data ingestion scenarios and summarize 10 basic queries types. We use this benchmark to compare four TSDB systems: InfluxDB, OpenTSDB, KairosDB and TimescaleDB. Our benchmark framework/tool not only measures performance metrics but also takes system resource consumption into consideration.
[1]
Oliver Kopp,et al.
Survey and Comparison of Open Source Time Series Databases
,
2017,
BTW.
[2]
Bilişim.
Run-Length Encoding
,
2010
.
[3]
Hamid Pirahesh,et al.
ARIES: a transaction recovery method supporting fine-granularity locking and partial rollbacks using write-ahead logging
,
1998
.
[4]
Patrick E. O'Neil,et al.
The log-structured merge-tree (LSM-tree)
,
1996,
Acta Informatica.
[5]
Jie Huang,et al.
The HiBench benchmark suite: Characterization of the MapReduce-based data analysis
,
2010,
2010 IEEE 26th International Conference on Data Engineering Workshops (ICDEW 2010).
[6]
Holger Ziekow,et al.
Towards a Big Data Analytics Framework for IoT and Smart City Applications
,
2015
.
[7]
Adam Silberstein,et al.
Benchmarking cloud serving systems with YCSB
,
2010,
SoCC '10.
[8]
Deepak Vohra.
Using PostgreSQL Database
,
2016
.
[9]
Tilmann Rabl,et al.
A BigBench Implementation in the Hadoop Ecosystem
,
2013,
WBDB.