Feature engineering is a process of applying transformations on raw data that a machine learning (ML) model can use. As an organization scales, this process is typically repeated by multiple teams that use the same features for different ML solutions. Because of this, organizations are forced to develop their own feature management system.
Additionally, you can also have a non-negotiable Java compatibility requirement due to existing data pipelines developed in Java, supporting services that can only be integrated with Java, or in-house applications that only expose Java APIs. Creating and maintaining such a feature management system can be expensive and …
Use Amazon SageMaker Feature Store in a Java environment
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