From dbt Metrics to Snowflake AI: Building a Trusted Semantic Layer for Natural Language A
In this session, we’ll share how we used dbt to define and govern our metric source of truth using scalable, metadata-driven models (YAML-based definitions, testing, and documentation). We’ll walk through how those curated models power Snowflake Semantic Views, Snowflake Intelligence and Coco, enabling business users to ask trusted, governed questions in natural language.
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- Hands-on lab
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Governed & scalable AI-assisted analytics with dbt
Jessica Stayton / dbt LabsRaini Laughlin / dbt LabsView session
