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समाप्त होता है 5 June 2026

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Testing Machine Learning Models

Explore techniques for testing ML/AI models beyond metrics, focusing on behaviors, usability, and fairness. Learn to identify risks, biases, and apply user-centric testing strategies.
PyCon US via YouTube

PyCon US

6076 कोर्स


31 minutes

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Conference Talk

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Explore techniques for testing ML/AI models beyond metrics, focusing on behaviors, usability, and fairness. Learn to identify risks, biases, and apply user-centric testing strategies.

पाठ्यक्रम

  • Introduction to Testing Machine Learning Models
  • Overview of common ML testing metrics
    Importance of testing beyond metrics
  • Understanding Model Behaviors
  • Analyzing model predictions
    Identifying unexpected behaviors
    Case studies of behavioral failures in ML
  • Usability Testing for Machine Learning Models
  • User experience and interaction with ML systems
    Techniques for user-centric assessment
    Designing effective usability tests
  • Bias and Fairness in Machine Learning
  • Types of biases in ML models
    Tools and techniques for bias detection
    Methods to ensure fairness
  • Risk Identification and Mitigation
  • Common risks in ML models
    Assessing and prioritizing risks
    Strategies for risk mitigation
  • User-Centric Testing Strategies
  • Incorporating user feedback into testing
    Developing user personas for testing
    Cross-disciplinary testing approaches
  • Evaluation Frameworks and Case Studies
  • Review of existing evaluation frameworks
    Analyzing real-world examples
    Lessons learned from case studies
  • Practical Tools and Techniques
  • Overview of testing tools for ML
    Hands-on practice with selected tools
    Best practices for testing implementation
  • Capstone Project
  • Design a comprehensive testing plan for a given ML model
    Apply learned techniques to assess behaviors, usability, and fairness
    Present findings and improvement suggestions
  • Wrap-up and Course Evaluation
  • Recap of key learnings
    Open discussion on emerging challenges in ML testing
    Feedback and course reflection

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