Executive Development Programme in AI-Driven Test Automation
-- ViewingNowThe Executive Development Programme in AI-Driven Test Automation is a certificate course that focuses on the rapidly growing field of AI and machine learning in software testing. This programme is essential for professionals seeking to stay updated with the latest industry trends and automation techniques, thereby enhancing their career prospects.
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⢠Introduction to AI-Driven Test Automation: Understanding the basics of AI and machine learning in the context of test automation; identifying key AI-driven tools and platforms.
⢠Fundamentals of Test Automation: Overview of test automation concepts, best practices, and challenges; understanding the test automation lifecycle and frameworks.
⢠AI in Test Design and Strategy: Utilizing AI to create effective test design and strategy; applying AI algorithms to identify test scenarios, prioritize test cases, and optimize test coverage.
⢠Implementing AI-Driven Test Automation Tools: Hands-on experience with popular AI-driven test automation tools like Applitools, Testim.io, and Functionize; setting up and configuring these tools for test automation.
⢠Natural Language Processing (NLP) in Test Automation: Exploring the role of NLP in test automation, including using NLP for writing test cases, generating test data, and analyzing test results.
⢠AI-Driven Test Data Management: Utilizing AI to generate, manage, and optimize test data; approaches for synthetic data generation and data masking.
⢠Continuous Testing with AI-Driven Automation: Implementing AI-driven test automation in a continuous testing environment; using AI to identify and address testing gaps, and ensure rapid feedback to developers.
⢠AI-Driven Test Automation Analytics: Leveraging AI to analyze test automation metrics and identify trends; using AI algorithms to optimize test automation performance and minimize the mean time to resolution (MTTR).
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