The Ultimate Guide to Model Performance

ML models naturally degrade in performance over time. To catch and correct performance issues, teams must monitor model performance throughout the ML lifecycle.

Learn how to measure performance for different types of ML models, the unique challenges of Natural Language Processing and Computer Vision models, and why model monitoring matters, including:

  • Differences between model performance metrics
  • How to detect and measure drift in model performance
  • The impact of class imbalance on performance measurement

The Ultimate Guide to Model Performance

ML models naturally degrade in performance over time. To catch and correct performance issues, teams must monitor model performance throughout the ML lifecycle.

Learn how to measure performance for different types of ML models, the unique challenges of Natural Language Processing and Computer Vision models, and why model monitoring matters, including:

  • Differences between model performance metrics
  • How to detect and measure drift in model performance
  • The impact of class imbalance on performance measurement