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AIGrammar Python package

Project description

AIGrammar

About

AIGrammar is all in one and easy to use package for model diagnostic and vulnerability checks. It enable with a simple line of code to check model metrics and prediction generalizability, feature contribution, and model vulnerability against adversarial attacks.

Data

  • Multicollinearity
  • Data drift

Model

  • Metric metric comparison
    • roc_auc vs average precision
  • Optimal threshold vs 50% threshold

Feature importance

  • Too high importance
  • 0 impact
  • Negative influence (FLOFO)
  • Causes of overfitting

Adversarial Attack

  • Model vulnerability identification based on one feature minimal change for getting opposite outcome.

Usage Python 3.7+ required. Installation: pip install AIGrammar

Find an example notebook here.

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