# Model Task Examples

Each of the following guides demonstrates a functional `package.py` wrapper script to use as a pattern to follow when uploading your own [model artifacts](/developers/client-library-reference/explainability/uploading-model-artifacts.md) using these common ML task types.

* [Binary Classification](/developers/client-library-reference/explainability/model-task-examples/binary-classification.md)
* [Multiclass Classification](/developers/client-library-reference/explainability/model-task-examples/multiclass-classification.md)
* [Regression](/developers/client-library-reference/explainability/model-task-examples/regression.md)
* [Uploading A Ranking Model Artifact](/developers/client-library-reference/explainability/model-task-examples/uploading-a-ranking-model-artifact.md)


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