Master Data Tagging: 3 Ways to Boost Governance!
Summary
Data tagging boosts governance by identifying PII for GDPR, categorizing tables by project for discoverability, and tracking assets by cost center. A two-tier strategy combines govern tags for high-stakes compliance and cost with flexible, non-govern context tags for everyday team or project specific markers.
Summary generated by brickster.ai from the video transcript.
More from Databricks Skill Builder
NewsGenie Code Skills: Maintaining Quality at Scale
Genie Code can automatically generate a Databricks AI/BI dashboard from a simple business prompt, performing data discovery and dashboard authoring. By adding a "skill" to Genie Code, users can enforce engineering standards like bronze, silver, and gold table creation, dimensional modeling, and automated refresh jobs, making the output production-ready and repeatable.
NewsMeet Genie, Your New Decision-Making Partner
The video demonstrates a new AI coworker that understands a business's specific data and operations. It showcases the AI's ability to perform various tasks by leveraging internal company knowledge.
TutorialsNo More Manual Searching: Chat With Your SharePoint PDFs in Databricks!
The video demonstrates how to ingest, parse, enrich, and query SharePoint PDFs within Databricks using natural language. It teaches users to transform unstructured PDF data into governed, queryable data products for analytics.
TutorialsDatabricks Unity Catalog: The Safe Way to Govern AI
Databricks Unity Catalog provides a single governance layer for data and AI assets, enabling discovery, classification, protection, and certification of data. It demonstrates how to use Unity Catalog for context-aware search, automated lineage tracking, tagging sensitive data with govern and non-govern tags, and applying column masking for data protection.
NewsThe Hidden Logic: How AI Transforms Your Data 🧐
AI models implicitly convert string-based categorical data, like sentiment (positive, negative, mixed), into numerical representations. This conversion is essential for performing mathematical operations, such as calculating an average sentiment.
