Select your cookie preferences

We use essential cookies and similar tools that are necessary to provide our site and services. We use performance cookies to collect anonymous statistics, so we can understand how customers use our site and make improvements. Essential cookies cannot be deactivated, but you can choose “Customize” or “Decline” to decline performance cookies.

If you agree, AWS and approved third parties will also use cookies to provide useful site features, remember your preferences, and display relevant content, including relevant advertising. To accept or decline all non-essential cookies, choose “Accept” or “Decline.” To make more detailed choices, choose “Customize.”

Resources for using SparkML Serving with Amazon SageMaker AI

Focus mode
Resources for using SparkML Serving with Amazon SageMaker AI - Amazon SageMaker AI

The Amazon SageMaker Python SDK SparkML Serving model and predictor and the Amazon SageMaker AI open-source SparkML Serving container support deploying Apache Spark ML pipelines serialized with MLeap in SageMaker AI to get inferences. Use the following resources to learn how to use SparkML Serving with SageMaker AI.

For information about using the SparkML Serving container to deploy models to SageMaker AI, see SageMaker Spark ML Container GitHub repository. For information about the Amazon SageMaker Python SDK SparkML Serving model and predictors, see the SparkML Serving Model and Predictor API documentation.

PrivacySite termsCookie preferences
© 2025, Amazon Web Services, Inc. or its affiliates. All rights reserved.