Python scripts for a generic performance testing infrastructure using Locust.

Related tags

TestingLocust_Scripts
Overview

TODOs

  • Reference to published paper or online version of it
  • loadtest_plotter.py: Cleanup and reading data from files
  • ARS_simulation.py: Cleanup, documentation and control workloads and parameters of the simulation model through CLI
  • locust-parameter-variation.py: Cleanup and Documentation
  • Move the files into subfolders (Executors, Load Testers, Evaluators, Systems under Test)

Locust Performance Testing Infrastructure

In [1] we introduced a generic performance testing infrastructure and used it in an industrial case study. Our idea is to have decoupled components, Python scripts in our case, that together allow to:

  1. reproducible execute a load testing tool with a set of parameters for a particular experiment,
  2. evaluate the performance measurements assisted by visualizations or automatic evaluators.

Generally, we have four types of components in our infrastructure:

  • Executors: execute a particular Load Tester as long as the Load Tester provides a CLI or an API;
  • Load Testers: execute the load test, parametrized with values given by an Executor. Have to output a logfile containing the response times;
  • Evaluators: postprocess the logfile and for example plot the response times;
  • Systems under Test (SUTs): Target systems we want to test. Usually, the target systems will be external systems, e.g., web servers. In our case, we build software that simulates the behavior of a real system, in order to provide the means for others to roughly reproduce our experiments.

More details about our generic performance testing infrastructure can be found in our paper [1].

This repository contains the aforementioned Python scripts:

  • Executors:
    • executor.py: executes Locust with a set of parameters;
    • locust-parameter-variation.py: executes Locust and keeps increasing the load. This is similar to Locust's Step Load Mode, however, our approach increases the number of clients for as long as the ARS complies with real-time requirements in order to find the saturation point of the ARS.
  • Load Testers:
    • locust_tester.py: contains specific code for Locust to perform the actual performance test. For demonstration purposes, this script tests ARS_simulation.py. Outputs a locust_log.log;
    • locust_multiple_requests: an enhanced version of locust_tester that sends additional requests to generate more load.
    • locust_teastore.py: performs load testing against TeaStore, or our simulated TeaStore.
  • Evaluators:
    • loadtest_plotter.py: reads the locust_log.log, plots response times, and additional metrics to better visualize, if the real-time requirements of the EN 50136 are met.
  • SUTs
    • Alarm Receiving Software Simulation (ARS_simulation.py): simulates an industrial ARS based on data measured in the production environment of the GS company group.
    • TeaStore (teastore_simulation.py): simulates TeaStore based on a predictive model generated in a lab environment.

Instructions to reproduce results in our paper

Quick start

  • Clone the repository;
  • run pip3 install -r requirements.txt;
  • In the file ARS_simulation.py make sure that the constant MASCOTS2020 is set to True.
  • open two terminal shells:
    1. run python3 ARS_simulation.py in one of them;
    2. run python3 executor.py. in the other.
  • to stop the test, terminate the executor.py script;
  • run python3 loadtest_plotter.py, pass the locust_log.log and see the results. :)

Details

Using the performance testing infrastructure available in this repository, we conducted performance tests in a real-world alarm system provided by the GS company. To provide a way to reproduce our results without the particular alarm system, we build a software simulating the Alarm Receiving Software. The simulation model uses variables, we identified as relevant and also performed some measurements in the production environment, to initialize the variables correctly.

To reproduce our results, follow the steps in the Section "Quick start". The scripts are already preconfigured, to simulate a realistic workload, inject faults, and automatically recover from them. The recovery is performed after the time, the real fault management mechanism requires.

If you follow the steps and, for example, let the test run for about an hour, you will get similar results to the ones you can find in the Folder "Tests under Fault".

Results after running our scripts for about an hour:

Results


Keep in mind that we use a simulated ARS here; in our paper we present measurements performed with a real system, thus the results reproduced with the code here are slightly different.

Nonetheless, the overall observations we made in our paper, are in fact reproducible.


Instructions on how to adapt our performance testing infrastructure to other uses

After cloning the repository, take a look at the locust_tester.py. This is, basically, an ordinary Locust script that sends request to the target system and measures the response time, when the response arrives. Our locust_tester.py is special, because:

  • we implemented a custom client instead of using the default;
  • we additionally log the response times to a logfile instead of using the .csv files Locust provides.

So, write a performance test using Locust, following the instructions of the Locust developers on how to write a Locust script. The only thing to keep in mind is, that your Locust script has to output the measured response times to a logfile in the same way our script does it. Use logger.info("Response time %s ms", total_time) to log the response times.

When you have your Locust script ready, execute it with python3 executor.py, pass the path to your script as argument, and when you want to finish the load test, terminate it with Ctrl + C.

Use python3 executor.py --help to get additional information.

Example call:

% python3 executor.py locust_scripts/locust_tester.py

After that, plot your results:

% python3 loadtest_plotter.py
Path to the logfile: locust_log.log
Owner
Juri Tomak
Juri Tomak
Generic automation framework for acceptance testing and RPA

Robot Framework Introduction Installation Example Usage Documentation Support and contact Contributing License Introduction Robot Framework is a gener

Robot Framework 7.7k Jan 07, 2023
A simple asynchronous TCP/IP Connect Port Scanner in Python 3

Python 3 Asynchronous TCP/IP Connect Port Scanner A simple pure-Python TCP Connect port scanner. This application leverages the use of Python's Standa

70 Jan 03, 2023
AllPairs is an open source test combinations generator written in Python

AllPairs is an open source test combinations generator written in Python

Robson Agapito Correa 5 Mar 05, 2022
Tools for test driven data-wrangling and data validation.

datatest: Test driven data-wrangling and data validation Datatest helps to speed up and formalize data-wrangling and data validation tasks. It impleme

269 Dec 16, 2022
Fidelipy - Semi-automated trading on fidelity.com

fidelipy fidelipy is a simple Python 3.7+ library for semi-automated trading on fidelity.com. The scope is limited to the Trade Stocks/ETFs simplified

Darik Harter 8 May 10, 2022
Flexible test automation for Python

Nox - Flexible test automation for Python nox is a command-line tool that automates testing in multiple Python environments, similar to tox. Unlike to

Stargirl Flowers 941 Jan 03, 2023
A suite of benchmarks for CPU and GPU performance of the most popular high-performance libraries for Python :rocket:

A suite of benchmarks for CPU and GPU performance of the most popular high-performance libraries for Python :rocket:

Dion Häfner 255 Jan 04, 2023
Selenium Page Object Model with Python

Page-object-model (POM) is a pattern that you can apply it to develop efficient automation framework.

Mohammad Ifran Uddin 1 Nov 29, 2021
Command line driven CI frontend and development task automation tool.

tox automation project Command line driven CI frontend and development task automation tool At its core tox provides a convenient way to run arbitrary

tox development team 3.1k Jan 04, 2023
Python selenium script to bypass simaster.ugm.ac.id weak captcha.

Python selenium script to bypass simaster.ugm.ac.id weak "captcha".

Hafidh R K 1 Feb 01, 2022
Just a small test with lists in cython

Test for lists in cython Algorithm create a list of 10^4 lists each with 10^4 floats values (namely: 0.1) - 2 nested for iterate each list and compute

Federico Simonetta 32 Jul 23, 2022
Kent - Fake Sentry server for local development, debugging, and integration testing

Kent is a service for debugging and integration testing Sentry.

Will Kahn-Greene 100 Dec 15, 2022
Tattoo - System for automating the Gentoo arch testing process

Naming origin Well, naming things is very hard. Thankfully we have an excellent

Arthur Zamarin 4 Nov 07, 2022
Pytest support for asyncio.

pytest-asyncio: pytest support for asyncio pytest-asyncio is an Apache2 licensed library, written in Python, for testing asyncio code with pytest. asy

pytest-dev 1.1k Jan 02, 2023
To automate the generation and validation tests of COSE/CBOR Codes and it's base45/2D Code representations

To automate the generation and validation tests of COSE/CBOR Codes and it's base45/2D Code representations, a lot of data has to be collected to ensure the variance of the tests. This respository was

160 Jul 25, 2022
Data App Performance Tests

Data App Performance Tests My hypothesis is that The different architectures of

Marc Skov Madsen 6 Dec 14, 2022
Test scripts etc. for experimental rollup testing

rollup node experiments Test scripts etc. for experimental rollup testing. untested, work in progress python -m venv venv source venv/bin/activate #

Diederik Loerakker 14 Jan 25, 2022
Compiles python selenium script to be a Window's executable

Problem Statement Setting up a Python project can be frustrating for non-developers. From downloading the right version of python, setting up virtual

Jerry Ng 8 Jan 09, 2023
WrightEagle AutoTest (Has been updated by Cyrus team members)

Autotest2d WrightEagle AutoTest (Has been updated by Cyrus team members) Thanks go to WrightEagle Members. Steps 1- prepare start_team file. In this s

Cyrus Soccer Simulation 2D Team 3 Sep 01, 2022
A complete test automation tool

Golem - Test Automation Golem is a test framework and a complete tool for browser automation. Tests can be written with code in Python, codeless using

486 Dec 30, 2022