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EvalML is an AutoML library which builds, optimizes, and evaluates machine learning pipelines using domain-specific objective functions.
Key Functionality
Automation - Makes machine learning easier. Avoid training and tuning models by hand. Includes data quality checks, cross-validation and more.
Data Checks - Catches and warns of problems with your data and problem setup before modeling.
End-to-end - Constructs and optimizes pipelines that include state-of-the-art preprocessing, feature engineering, feature selection, and a variety of modeling techniques.
Model Understanding - Provides tools to understand and introspect on models, to learn how they'll behave in your problem domain.
Domain-specific - Includes repository of domain-specific objective functions and an interface to define your own.
EvalML is an open source project built by Alteryx. To see the other open source projects we’re working on visit Alteryx Open Source. If building impactful data science pipelines is important to you or your business, please get in touch.