Selenium Internals in Python Programming - Workshop
Are you keen to know Selenium 4.x(experimental) deeper with internal architecture and workings with its dearest drivers and its API in Python programming? Are you in Selenium with other language bindings and willing to cross-skill in Python to make up for the deep learning/machine learning/data science projects?
If one of the above is yes, this workshop will get your hands dirty with practical exposure with several webdriver commands in modern applications and of course, the course is designed to assist all levels of test automation engineers experience.
In sum, all attendees of this workshop will sign off with a working selenium codebase in python with git repo and best practices to deploy using pytest framework on their projects.
Outline/Structure of the Workshop
Outline / Structure of the Workshop
In the first half of the session, we will focus on the Python WebDriver API Language Bindings.
- Selenium Internals: Language Bindings to W3C API to Chrome Driver to Chrome Browser
- Locators (including the new), Interacting with elements using Selenium Python Bindings
- Dropdown, Alert, Frame, Window Handling
- Taking ScreenShots
- AUI & Waits
- Chrome Devtools integration
In the second half, we will get the most out of pytest framework with Selenium Grid
- Basic Pytest Introduction - Parallelizing Tests
- PyTest with Selenium Integration
- The new architected Grid Implementation for distributed testing
The following will be the best-expected outcomes of this workshop:
- Know the Selenium internals and that would understand how each API handshake with browser
- How to perform selenium customizations for your project
- Basic understanding about Selenium locators including near, above, below, etc
- Webdriver API for actions and verifications on the browser
- Execute on different browsers using native drivers
- Know about Pytest framework especially about parallel executions
- Design and execute multiple nodes for selenium distributed testing using Grid 4.x
- Ready to deploy the selenium learnt code into your workplace.
- Best practices and hints to integrate with the Machine learning projects
Anyone who wants to implement/learn selenium in python.
Prerequisites for Attendees
Bring your laptop and background any programming language helps.
schedule Submitted 1 year ago
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Though Selenium taking most of the stake in the UI test automation tool market comfortably, there were always challenges that were for selenium test automation engineers are handicapped with especially when dealing with modern JS technologies. For example,
- dealing with DOM elements to solve the stale / loading / non-interactable elements,
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- Our solution can be executed as independent with chrome dev tools or with selenium. That gives the power back to the automation engineer to choose what and how to debug/run their tests.
- We used this solution for one of our largest enterprise customers and moved this solution to public repository this week (for this conference and beyond). With that said, we tested reasonably with more than 10,000+ test scripts and more than 1M tests.
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