It is a package that makes it trivial to create complex ML pipeline structures using simple expressions. It leverages on the built-in macro programming features of Julia to symbolically process, manipulate pipeline expressions, and automatically discover optimal structures for machine learning prediction and classification. | Debug your machine learning models in realtime with powerful, interactive visualizations. Quickly log charts from your Python script, visualize your model development in live dashboards, and share interactive plots with your team, in just 2 minutes. |
Pipeline API that allows high-level description of processing workflow;
Common API wrappers for ML libs including Scikitlearn, DecisionTree, etc;
Symbolic pipeline parsing for easy expression of complexed pipeline structures;
Easily extensible architecture by overloading just two main interfaces: fit! and transform!;
Meta-ensembles that allow composition of ensembles of ensembles (recursively if needed) for robust prediction routines;
Categorical and numerical feature selectors for specialized preprocessing routines based on types | Powerful, interactive visualizations; Quickly log charts; Visualize your model development in live dashboards;
Share interactive plots with your team |
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