How Stagwell built privacy-safe ID matching on Databricks
Summary
Stagwell built a privacy-safe ID matching solution on Databricks, leveraging Databricks Clean Rooms and Marketplace apps to securely match first-party data with identity graphs. This enables brands to create actionable audiences without exposing sensitive information or raw records.
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