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1.10.3.1

Release Notes

  • Change Log

Introduction

  • Introduction to Driverless AI

Licensing and Version Support

  • Driverless AI License and Version Support

Installation and Upgrade

  • Driverless AI Installation and Upgrade

Configuration

  • Configuration and Authentication

Datasets

  • Datasets in Driverless AI

Data Insights

  • Automatic Visualization

Custom Recipes

  • Custom Recipe Management
  • Custom Individual Recipe

Feature Engineering

  • Automatic Feature Engineering
  • Feature Count Control

Modeling

  • Building Models in Driverless AI
    • Launching Driverless AI
    • Genetic Algorithm in Driverless AI
    • Before You Begin
      • Sampling in Driverless AI
      • Missing and Unseen Levels Handling
      • Imputation in Driverless AI
      • Driverless AI Transformations
      • Internal Validation Technique
      • Ensemble Learning in Driverless AI
      • Monotonicity Constraints
      • Variable importance in Driverless AI
      • Wide Datasets in Driverless AI
      • GPUs in Driverless AI
      • Experiment Queuing In Driverless AI
      • Time Series Best Practices
      • Tips ‘n Tricks
      • Simple Configurations
    • Experiments
    • Time Series in Driverless AI
    • NLP in Driverless AI
    • Image Processing in Driverless AI
    • Unsupervised Algorithms in Driverless AI (Experimental)
  • Automated Model Documentation (AutoDoc)

Machine Learning Interpretability

  • Machine Learning Interpretability

Scoring on New Datasets

  • Scoring on Another Dataset

Transforming Datasets

  • Transforming Another Dataset

Scoring Pipelines

  • Scoring Pipelines

Productionization

  • Deploying Driverless AI Models to Production

Clients

  • Driverless AI Clients

Monitoring and Logging

  • Monitoring and Logging

Security

  • Security

Frequently Asked Questions

  • FAQ

Appendices

  • Appendix A: Third-Party Integrations

References

  • References

Third-Party Notices

  • Third-Party Licenses

Translations

  • Go to User Guide in Chinese
  • Go to User Guide in Korean
Using Driverless AI
  • »
  • Building Models in Driverless AI »
  • Before You Begin
  • Edit on GitHub

Before You Begin¶

  • Sampling in Driverless AI
    • Data Sampling
    • Imbalanced Model Sampling Methods
  • Missing and Unseen Levels Handling
    • How Does the Algorithm Handle Missing Values During Training?
    • How Does the Algorithm Handle Missing Values During Scoring (Production)?
    • What Happens When You Try to Predict on a Categorical Level Not Seen During Training?
    • What Happens if the Response Has Missing Values?
  • Imputation in Driverless AI
    • Enabling Imputation
    • Running an Experiment with Imputation
  • Driverless AI Transformations
    • Available Transformers
    • Transformed Feature Naming Convention
    • Example Transformations
  • Internal Validation Technique
  • Ensemble Learning in Driverless AI
    • Ensemble Method
    • Ensemble Levels
  • Monotonicity Constraints
  • Variable importance in Driverless AI
    • Global Feature Importance
    • Local Feature Importance
  • Wide Datasets in Driverless AI
  • GPUs in Driverless AI
  • Experiment Queuing In Driverless AI
  • Time Series Best Practices
    • Preparing Your Data
    • Experiment Setup
    • Interpreting Models with MLI
    • Scoring
    • Other Approaches
  • Tips ‘n Tricks
    • Pipeline Tips
    • Time Series Tips
    • Scorer Tips
    • Knob Settings Tips
    • Tips for Running an Experiment
    • Expert Settings Tips
    • Checkpointing Tips
    • Text Data Tips
  • Simple Configurations
    • Get a quick Final Model: no Genetic Algorithm no Ensembling
    • Use Original Features With Genetic Algorithm
    • Build models with your choice of algorithm and parameters
    • Disable leakage checks, shift detection, mojo creation and ensembling
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