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Beginnt 4 June 2026 13:54

Endet 4 June 2026

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Driving Scalability and Accuracy in QA with AI and ML

Explore how AI and ML technologies are revolutionizing software testing, from automated test case generation to predictive analysis, addressing traditional QA challenges and enhancing scalability and accuracy.
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Conf42

6076 Kurse


38 minutes

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Übersicht

Explore how AI and ML technologies are revolutionizing software testing, from automated test case generation to predictive analysis, addressing traditional QA challenges and enhancing scalability and accuracy.

Lehrplan

  • Introduction to AI and ML in Software Testing
  • Overview of AI and ML technologies
    Transition from traditional QA to AI-driven QA
    Key benefits of AI and ML in software testing
  • Automated Test Case Generation
  • Understanding automated test case generation
    AI tools for automated testing
    Case studies of successful implementations
  • Machine Learning for Test Prediction
  • Predictive analysis in QA
    Algorithms and models used in test prediction
    Examples of predictive testing improving QA processes
  • Enhancing Scalability in QA with AI
  • Challenges in scaling traditional QA processes
    AI strategies for scalable test processes
    Tools and frameworks that enable QA scalability
  • Improving Accuracy with AI-Driven Testing
  • Reducing false positives and negatives in testing
    AI methods to enhance test accuracy
    Real-world applications in critical systems
  • Addressing Traditional QA Challenges
  • Cost and resource optimization in QA
    Reducing time-to-market with AI-driven methods
    Managing risks and biases in AI testing
  • Tools and Frameworks for AI and ML in QA
  • Review of popular tools and platforms
    Hands-on exercises with select tools
    Comparative analysis of available solutions
  • Case Studies and Industry Applications
  • Examination of AI and ML adoption in various industries
    Lessons learned and best practices
    Future trends and the evolving landscape of QA
  • Conclusion and Future Directions
  • Recap of key concepts learned
    Emerging trends and technologies in AI QA
    Opportunities for continued learning and development
  • Project and Evaluation
  • Capstone project: deploying AI/ML in a QA scenario
    Evaluation methods: quizzes, practical assessments, and peer reviews

Fachgebiete

Programming