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linear-treeA python library to build Model Trees with Linear Models at the leaves.
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stackgbm🌳 Stacked Gradient Boosting Machines
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compareBarsSimplify comparative bar charts 📊
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dflowA lightweight library for designing and executing workflows in .NET Core
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