OneTrust and Databricks Partner for Real-Time Data Policy Enforcement
OneTrust has announced a partnership with Databricks to introduce a new Data Policy Enforcement product integration. Announced in a press release, this integration automates data policy enforcement within the Databricks Data Intelligence Platform, allowing organizations to maintain compliance without slowing down AI and data initiatives.
The integration leverages Databricks' Unity Catalog to automate governance processes, ensuring that data policy enforcement keeps pace with the rapid processing capabilities of AI systems. This includes features like consent-based row filtering and column masking, which automatically apply data controls based on user roles and consent status.
The new product integration is designed to provide consistent, programmatic control of data, enabling organizations to predefine conditions and policies for AI-ready datasets. This ensures that sensitive data attributes are protected and regulatory risks are mitigated before any potential violations occur. The integration is now available in preview, offering organizations a seamless way to enforce data policies across their data architecture.
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