xgboost_bring_your_own_model.ipynb
shows how to train an Xgboost model in scikit-learn and then inject it into Amazon SageMaker's first party XGboost container for scoring. This addresses the usecase where a customer has already trained their model outside of Amazon SageMaker, but wishes to host it for predictions within Amazon SageMaker.
Files
Latest commit
This branch is 807 commits ahead of, 3988 commits behind aws/sagemaker-python-sdk:master.
xgboost_bring_your_own_model
Folders and files
Name | Name | Last commit date | ||
---|---|---|---|---|
parent directory.. | ||||