May 18, 2022, 7:17 p.m. | Nikola Kuzmic

Towards Data Science - Medium towardsdatascience.com

Quick tutorial on how to expose SageMaker ML model endpoints for everyone to use

Photo by Jake Fagan on Unsplash

Creating ML model endpoints inside Amazon SageMaker is pretty awesome but unless you can enable others to use them, what’s the point? In the previous tutorial:

Train XGBoost models in Amazon SageMaker in 4 Simple Steps

we went over how to create an XGBoost Classifier that can predict a perfect puppy based on a person’s house area. That is, for …

amazon sagemaker aws aws lambda lambda sagemaker xgboost

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