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  • Predict ML

Create training models

Add a model

This article describes how to add a model, select a target attribute, an output attribute, and exclude attributes from a model.

Review your model

This article describes optional review steps and how to initiate the first training for your model.

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  • About Predict
  • Using Predict
  • Best practices
  • Prerequisites
  • Terminology
  • Decide what to predict
  • Attribute readiness
  • Prepare your data
  • Start training
  • Add a model
  • Review your model
  • Evaluate trained models
  • Strength scores
  • The Confusion Matrix
  • The ROC/AUC curve
  • Probability distribution
  • View model status
  • Retrain a model
  • Deploy a model
  • Undeploy a model
  • Deployed model health
  • Model retraining recommendations
  • Delete a model
  • Audience considerations
  • Create audiences with Predict
  • Machine learning vs. artificial intelligence
  • Machine learning concepts and technology