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It is a graph-based, functional API for building complex machine learning pipelines of objects that implement the scikit-learn API. It is mostly inspired on the excellent Keras API for Deep Learning, and borrows a few concepts from the TensorFlow framework and the (perhaps lesser known) graphkit package. It aims to provide an API that allows to build complex, non-linear machine learning pipelines. | It lets you run machine learning models with a few lines of code, without needing to understand how machine learning works. |
Build non-linear pipelines effortlessly;
Handle multiple inputs and outputs;
Add steps that operate on targets as part of the pipeline;
Nest pipelines;
Use prediction probabilities (or any other kind of output) as inputs to other steps in the pipeline;
Query intermediate outputs, easing debugging;
Freeze steps that do not require fitting;
Define and add custom steps easily;
Plot pipelines | Thousands of models, ready to use;
Automatic API;
Automatic scale;
Pay by the second |
Statistics | |
GitHub Stars 590 | GitHub Stars - |
GitHub Forks 30 | GitHub Forks - |
Stacks 4 | Stacks 53 |
Followers 11 | Followers 12 |
Votes 0 | Votes 0 |
Integrations | |

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