DBMS-Benchmarker is a Python-based application-level blackbox benchmark tool for Database Management Systems (DBMS). It aims at reproducible measuring and easy evaluation of the performance the user receives even in complex benchmark situations. It connects to a given list of DBMS (via JDBC) and runs a given list of (SQL) benchmark queries. Queries can be parametrized and randomized. Results and evaluations are available via a Python interface and can be inspected with standard Python tools like pandas DataFrames. An interactive visual dashboard assists in multi-dimensional analysis of the results.
See the homepage and the documentation.
If you encounter any issues, please report them to our Github issue tracker.
DBMS-Benchmarker
- is Python3-based
- helps to benchmark DBMS
- connects to all DBMS having a JDBC interface - including GPU-enhanced DBMS
- requires only JDBC - no vendor specific supplements are used
- benchmarks arbitrary SQL queries - in all dialects
- allows planning of complex test scenarios - to simulate realistic or revealing use cases
- allows easy repetition of benchmarks in varying settings - different hardware, DBMS, DBMS configurations, DB settings etc
- investigates a number of timing aspects - connection, execution, data transfer, in total, per session etc
- investigates a number of other aspects - received result sets, precision, number of clients
- collects hardware metrics from a Prometheus server - hardware utilization, energy consumption etc
- helps to evaluate results - by providing
- metrics that can be analyzed by aggregation in multi-dimensions, like maximum throughput per DBMS, average CPU utilization per query or geometric mean of run latency per workload
- predefined evaluations like statistics
- in standard Python data structures
- in Jupyter notebooks see rendered example
- in an interactive dashboard
For more informations, see a basic example or take a look in the documentation for a full list of options.
The code uses several Python modules, in particular jaydebeapi for handling DBMS. This module has been tested with Citus Data (Hyperscale), Clickhouse, CockroachDB, Exasol, IBM DB2, MariaDB, MariaDB Columnstore, MemSQL (SingleStore), MonetDB, MySQL, OmniSci (HEAVY.AI), Oracle DB, PostgreSQL, SQL Server, SAP HANA, TimescaleDB, and Vertica.
Run pip install dbmsbenchmarker
to install the package.
You will also need to have
- Java installed (we tested with Java 8)
JAVA_HOME
set correctly- a JDBC driver suitable for the DBMS you want to connect to (optionally located in your
CLASSPATH
)
The following very simple use case runs the query SELECT COUNT(*) FROM test
10 times against one local MySQL installation.
As a result we obtain an interactive dashboard to inspect timing aspects.
We need to provide
- a DBMS configuration file, e.g. in
./config/connections.config
[
{
'name': "MySQL",
'active': True,
'JDBC': {
'driver': "com.mysql.cj.jdbc.Driver",
'url': "jdbc:mysql://localhost:3306/database",
'auth': ["username", "password"],
'jar': "mysql-connector-java-8.0.13.jar"
}
}
]
- the required JDBC driver, e.g.
mysql-connector-java-8.0.13.jar
- a Queries configuration file, e.g. in
./config/queries.config
{
'name': 'Some simple queries',
'connectionmanagement': {
'timeout': 5 # in seconds
},
'queries':
[
{
'title': "Count all rows in test",
'query': "SELECT COUNT(*) FROM test",
'numRun': 10
}
]
}
Run the CLI command: dbmsbenchmarker run -e yes -b -f ./config
-e yes
: This will precompile some evaluations and generate the timer cube.-b
: This will suppress some output-f
: This points to a folder having the configuration files.
This is equivalent to python benchmark.py run -e yes -b -f ./config
After benchmarking has been finished we will see a message like
Experiment <code> has been finished
The script has created a result folder in the current directory containing the results. code
is the name of the folder.
Run the command: dbmsdashboard
This will start the evaluation dashboard at localhost:8050
.
Visit the address in a browser and select the experiment code
.
Alternatively you may use a Jupyter notebook, see a rendered example.
Limitations are:
- strict black box perspective - may not use all tricks available for a DBMS
- strict JDBC perspective - depends on a JVM and provided drivers
- strict user perspective - client system, network connection and other host workloads may affect performance
- not officially applicable for well known benchmark standards - partially, but not fully complying with TPC-H and TPC-DS
- hardware metrics are collected from a monitoring system - not as precise as profiling
- no GUI for configuration
- strictly Python - a very good and widely used language, but maybe not your choice
Other comparable products you might like
- Apache JMeter - Java-based performance measure tool, including a configuration GUI and reporting to HTML
- HammerDB - industry accepted benchmark tool based on Tcl, but limited to some DBMS
- Sysbench - a scriptable multi-threaded benchmark tool based on LuaJIT
- OLTPBench - Java-based performance measure tool, using JDBC and including a lot of predefined benchmarks
- BenchBase - successor of OLTPBench
If you have any question or found a bug, please report them to our Github issue tracker. In any bug report, please let us know:
- Which operating system and hardware (32 bit or 64 bit) you are using
- Python version
- DBMSBenchmarker version (or git commit/date)
- DBMS you are connecting to
- Traceback that occurs (the full error message)
We are always looking for people interested in helping with code development, documentation writing, technical administration, and whatever else comes up. If you wish to contribute, please first read the contribution section or visit the documentation.
This module can serve as the query executor [2] and evaluator [1] for distributed parallel benchmarking experiments in a Kubernetes Cloud, see the orchestrator for more details.
If you use DBMSBenchmarker in work contributing to a scientific publication, we kindly ask that you cite our application note [1] and/or [3]:
Erdelt P.K. (2021) A Framework for Supporting Repetition and Evaluation in the Process of Cloud-Based DBMS Performance Benchmarking. In: Nambiar R., Poess M. (eds) Performance Evaluation and Benchmarking. TPCTC 2020. Lecture Notes in Computer Science, vol 12752. Springer, Cham. https://doi.org/10.1007/978-3-030-84924-5_6
[2] Orchestrating DBMS Benchmarking in the Cloud with Kubernetes
Erdelt P.K. (2022) Orchestrating DBMS Benchmarking in the Cloud with Kubernetes. In: Nambiar R., Poess M. (eds) Performance Evaluation and Benchmarking. TPCTC 2021. Lecture Notes in Computer Science, vol 13169. Springer, Cham. https://doi.org/10.1007/978-3-030-94437-7_6
[3] DBMS-Benchmarker: Benchmark and Evaluate DBMS in Python
Erdelt P.K., Jestel J. (2022). DBMS-Benchmarker: Benchmark and Evaluate DBMS in Python. Journal of Open Source Software, 7(79), 4628 https://doi.org/10.21105/joss.04628