How To Export a Scikit-learn Model#
Introduction#
In this guide you will learn how to export a Scikit-learn model and register it in the Model Registry.
Code#
Step 1: Connect to Hopsworks#
import hopsworks
project = hopsworks.login()
# get Hopsworks Model Registry handle
mr = project.get_model_registry()
Step 2: Train#
Define your Scikit-learn model and run the training loop.
# Define a model
iris_knn = KNeighborsClassifier(..)
iris_knn.fit(..)
Step 3: Export to local path#
Export the Scikit-learn model to a directory on the local filesystem.
model_file = "skl_knn.pkl"
joblib.dump(iris_knn, model_file)
Step 4: Register model in registry#
Use the ModelRegistry.sklearn.create_model(..)
function to register a model as a Scikit-learn model. Define a name, and attach optional metrics for your model, then invoke the save()
function with the parameter being the path to the local directory where the model was exported to.
# Model evaluation metrics
metrics = {'accuracy': 0.92}
skl_model = mr.sklearn.create_model("skl_model", metrics=metrics)
skl_model.save(model_file)
Conclusion#
In this guide you learned how to export a Scikit-learn model to the Model Registry. You can also try attaching an Input Example and a Model Schema to your model to document the shape and type of the data the model was trained on.