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SDQ captures data-masking configurations directly from Data Hub, so the right people see the right data, every time — with no manual masking setup.
Blinded/Unblinded Integration keeps sensitive data protected throughout review. SDQ automatically captures data-masking configurations from Data Hub, ensuring secure and precise data management without manual setup.
Because masking is inherited rather than recreated, blinding is applied consistently across review activities — reducing the risk of accidental unblinding and the overhead of maintaining masking rules in more than one system.
Masking rules flow from Data Hub into SDQ with no manual re-entry.
Blinding is enforced consistently across the review process.
The right roles see the right data, every time.
Masking is defined once in Data Hub, not duplicated per system.
Masking configurations flow from Data Hub through SDQ end to end.
Data-masking configurations are set once in Data Hub.
SDQ automatically captures those configurations during data ingestion.
SDQ applies the inherited masking across all review activities based on user role and blinding status.
Native capture of masking configurations.
Blinding applied uniformly across review.
Data exposure aligned to user role and blinding status.
Inherited configuration removes duplicate work.