Scikit Models
In this article
Scikit-learn provides a range of supervised and unsupervised learning algorithms via a consistent interface in Python.
The Algorithm types supported by Scikit are:
Regression
Classification
Clustering
Pipeline
Score the Model
To use a Scikit model for scoring, drag Scikit processor from analytics section onto the pipeline canvas and right-click on it for further configuration.
Scikit Model Configuration:
Field | Description |
---|---|
Algorithm | All predefined algorithms will be listed here.Select the algorithm on the basis of which prediction has to be done. |
Model Name | All the registered models of selected Algorithm will be listed here. Select the model which is to be used for prediction. |
Score the Model Using H2O
To use a H2O model for scoring, drag H2O processor from analytics section onto the pipeline canvas and right-click on it for further configurations.
H2O Model Configuration:
Field | Description |
---|---|
Algorithm | All predefined algorithms will be listed here.Select the algorithm on the basis of which prediction has to be done. |
Model Name | All the registered models of selected Algorithm will be listed here. Select the model which is to be used for prediction. |
Output Field | Variable which holds the predicted output of model. |
If you have any feedback on Gathr documentation, please email us!