You can establish feature stores to provide a central repository for machine learning (ML) features that can be shared with data science teams across your organization for training, batch scoring, and real-time inference. Data science teams can reuse features stored in the central repository, avoiding the need to reengineer feature pipelines for different projects and as a result eliminating rework and duplication.
To satisfy security and compliance needs, you may need granular control over how these shared ML features are accessed. These needs often go beyond table- and column-level access control to individual row-level access control. For example, you may want to let account representatives see rows from a sales table for only their accounts and mask the prefix of sensitive data like credit card numbers. Fine-grained access controls are needed to protect feature store data and grant access based on an individual’s role. This is specifically important for customers

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