Sometimes, a tester will run into repetitive and time-consuming test scenarios when they need to run the same tests on multiple data sets. In such cases, to make this process less monotonous and time-consuming, testers implement various application testing processes. However, not all of them require the same effort for creating and maintaining a test. If the same tests need to be conducted with different parameter values, then it can be done through data-driven testing, which allows testers to execute tests for a bunch of provided data with a single test script.
Significantly data-driven testing can be performed using Selenium Python to enhance the application testing and ensure that the test cases cover a wide range of test scenarios making the test more reusable and easy to maintain.
In this article, we’ll explain the in-depth concept of data-driven testing using Selenium with Python as well as the strategies to leverage them together. While discussing that we will cover what data-driver testing is and what are its benefits of using Selenium Python.
What is Data-driven Testing?
Data-driven testing (sometimes abbreviated to DDT) is a method where the same test scenarios can be executed across a wide range of data input. Instead of creating test scripts separately for each input data, DDT allows testers and developers to reuse the test code. One of the main features of DDT is to validate the application behavior under a wide range of input conditions and to focus on executing the same test logic using numerous data sets, it will ensure that the application behaves accurately in different scenarios.
The goal of data-driven testing is to separate test logic from test data and create reusable tests where testers can perform the same test with numerous data sets, to improve test coverage and reduce maintenance.
The benefit of data-driven testing
Data-driven testing can execute the same test with different data combinations and generate tests at a scale that can be maintained easily. This comes with several benefits:
Efficiency: Rather than writing new test scripts from the beginning, data-driven testing significantly eases the efforts which are required to maintain and develop test suites by systematically adding new cases and updating the data source
Reusability: Testers and developers are allowed to reuse the same test scripts with various sets of test data during regression testing by isolating data from tests, This means they do not have to create separate scripts for each test case, which helps reduce the time and effort spent on maintenance.
Maintenance: Test data can be updated without modifying the tests, since test data is stored externally, any changes to test data can be made without changing the test script. This simply makes maintenance simpler and less error-prone when making updates.
Scalability: Data-driven testing helps in testing multiple scenarios in one test. As the application grows and more test data are required, testers can simply add more test data to their external sources without modifying the test script. This makes it easier to scale tests.
Enhanced test coverage: It becomes possible with automated data-driven testing to test more scenarios in less time, allowing QA teams to cover more test scenarios, including edge cases and boundary conditions with each release, helping in improving the overall test coverage.
Consistency and accuracy: Manual testers can make typing errors while handling large volumes of data and repetitive tasks. These errors can be eliminated by using precise data values from the data source in automated data-driven testing.
Selenium with Python: Overview
Selenium is commonly used for test automation because Selenium is a flexible automation testing framework. It provides support in various programming languages including Python, a high-level object-oriented programming language that is commonly used for scripting. Selenium and Python smoothly integrate with other test automation tools for test case management and test report generation.
Even though Selenium supports almost all programming languages, the reason why testers and QA teams prefer to use it with Python for automation testing include-
- Python is quite simple and easy to understand and has less syntax compared to other programming languages.
- It is open-source.
- It is less complicated and can be easily understood by the developers,
- It comes with broad and active community support.
- Comes with various test automation frameworks available in Python.
- To complete any task requires less test code.
- Parallel testing can be easily performed with Python.
Data-driven Testing Framework in Selenium with Python
Selenium can be used with Python to create a data-driven testing framework. Leveraging both can form the backbone for efficient and scalable data-driven testing, enabling QA and testers to seamlessly manage test data, and enhancing automated tests’ reliability and maintainability. Some of the components of this framework are-
Test script: The core of the automation process is test scripts which should be designed in a way that it can be reused and independent of specific data values. Generally, these scripts are of the Selenium WebDriver that interacts with the web application under test.
Test data: Test data contains the input values, expected reports, and any other data required for test performance. This is the dynamic element of the testing and can be stored in different formats, which include CSV files, Excel, spreadsheets, or databases. Each of them represents a unique set of inputs for the test script.
Parameterization: Test data is provided in the test script as parameters. The main work of these parameters is to replace the hard-coded values in the script, which then allows it to adapt to different scenarios. For example, while testing a login page, parameters could include usernames and passwords.
Reporting and logging: Comprehensive logging and reporting mechanisms are required to monitor and report the test execution, which will help to track test execution, identify failures, and generate meaningful reports for analysis.
Overall, data-driven testing enhances test automation. Whether it is web testing applications, APIs, or mobile apps, mastering data-driven testing will elevate the Selenium test automation process.
Why do developers utilize Selenium with Python for data-driven testing?
In the agile environment, developers need to run relevant data-driven tests to push any front-end changes quickly. While small projects can be run by using manual testing larger projects need automation. The combination of Selenium with Python delivers multiple benefits for developers to perform web automation testing.Selenium is one of the most popular open-source web automation testing tools available today, Python on the other hand has been highly favored since the last decade among testers for automation testing. Below are some of the key reasons why developers utilize Selenium with Python.
Easy to understand and operate: Python is famous for its simplicity and readability. It contains intuitive syntax and English-like keywords making it easier for beginners to learn the language and write automation scripts. The straightforward nature of Python allows testers and developers to learn quickly and to start using Selenium for web automation without facing abrupt learning curves.
Community support: Python contains a large and vibrant community of developers. The active community constantly contributes to the development of libraries, frameworks, and resources specially tailored for Selenium automation. This abundance of active community support ensures that there are plenty of resources available to resolve problems.
Wide range of libraries and frameworks: For automation testing, Python has an extensive environment of libraries and frameworks that can be utilized with Selenium. These libraries and frameworks help in providing additional functionalities, such as generating test reports, handling database connections, performing data manipulation, and interacting with APIs. Additionally, Python can effortlessly integrate with other tools and technologies into the automation workflow to enhance the capabilities of testing and streamline the testing process.
Cross-platform compatibility: Selenium with Python can be easily compatible with various operating systems, such as Windows, Linux, and macOS. This cross-platform compatibility helps in writing automation scripts on one platform and uninterruptedly executing them on different operating systems without the need for any major modifications. As a result, this flexibility saves time and effort and testers can perform test web and applications across various environments to ensure their compatibility with diverse user setups.
Integration capabilities: In data-driven testing, the versatility of Python extends beyond Selenium. This means it can be easily integrated with other tools, technologies, and frameworks that are commonly used in the application development and testing landscape. For instance, Python can be integrated with test management systems, logging frameworks, continuous integration tools, and reporting tools to enhance the automation workflow. The capability of this integration enables testers and QA teams to build a comprehensive and customized automation ecosystem designed to the specific project requirements.
Strategies for data-driven testing using Selenium with Python
Below is a checklist of strategies that should be implemented to make data-driven testing as efficient as it can get.
Testing with both Positive and Negative Data: In general every tester does tests for positives, but testing the negatives is also equally important. The performance of the system is determined by its ability to handle exceptions. At some point, these exceptions may arise because of a worst-case scenario that was reproduced in the system. A system needs to be designed to efficiently handle these exceptions well.
Conducting dynamic assertions: Conducting dynamic assertions to build up the pre-test scenarios into the most recent ones is necessary. During code revisions and new releases doing verifications often gets critical. At this time, it is essential to have automated scripts to boost these dynamic assertions, that is, including what was tested previously into the present test lines.
Reducing manual effort: QA Teams often still depend on manual interference which should be minimized to start an automated workflow. For a workflow with multiple navigational or re-directional paths, the best thing is to write a test script that can accommodate all of this because a manual effort is never an efficient way to test. Therefore, it is always a good decision to have the test-flow navigation coded inside the test script itself.
The perspective of the test cases: Perspective is a necessity to be considered in data-driven testing. While checking the workflow, testers generally run basic tests to avoid a break or an exception that is anticipated somewhere in the process. However having the same tests extended for additional capabilities, such as performance and security, will help in providing fool-proof coverage into the current network, such as the performance can be tested of the same workflow by introducing data that meets the maximum limits of a product
Utilizing LambdaTest for data-driven testing
LambdaTest is a cloud-based AI-powered test execution platform to run manual and automated testing of web and mobile applications at scale. Using this platform testers can perform automation testing in real-time across more than 3000 environments and real mobile devices.
Selecting LambdaTest for data-driven testing provides various advantages to automate the testing of web applications and ensure their functionality across different browsers and platforms, primarily due to its user-friendly platform.
The drag-and-drop interface of LambdaTest simplifies test creation and management, which makes it accessible to users without technical backgrounds. It supports various data sources such as Excel, database, and CSV which allows to perform integration easily of existing data. As a result, the flexibility to reuse the test components will enhance efficiency and reduce redundancy in data-driven testing.
Conclusion
In conclusion, data-driven testing is an excellent way to improve the efficiency of repetitive test scenarios in automation testing. It is a powerful approach that can be used with Selenium and Python to efficiently run a large number of repetitive test scenarios with different inputs and expected outputs. This combination helps testers execute data-driven testing and achieve comprehensive test coverage easily.
Building data-driven testing by using Selenium with Python is highly personalized as testers can go with an automated testing tool that comes with a prebuilt data-driven testing framework that they can use.