Ga4 Bigquery Schema
Skill Verified ActiveGA4 BigQuery Export Schema Reference — complete field reference, nested structures, query patterns, and performance tips
To serve as a comprehensive, expert guide for users needing to understand and query Google Analytics 4 data exported to BigQuery.
Features
- Complete GA4 BigQuery schema reference
- Detailed explanations of nested fields (event_params, user_properties, etc.)
- Ready-to-use BigQuery SQL query examples for common use cases
- Guidance on performance best practices for BigQuery
- Data quality checks for GA4 exports
Use Cases
- Understanding the structure of GA4 BigQuery export tables
- Writing custom SQL queries for GA4 data analysis
- Troubleshooting data discrepancies in GA4 reports
- Optimizing BigQuery performance for GA4 data
Non-Goals
- Directly connecting to Google Analytics or BigQuery APIs
- Executing queries on behalf of the user
- Providing real-time analytics dashboards
Installation
npx skills add cognyai/claude-code-marketing-skillsRuns the Vercel skills CLI (skills.sh) via npx — needs Node.js locally and at least one installed skills-compatible agent (Claude Code, Cursor, Codex, …). Assumes the repo follows the agentskills.io format.
Quality Score
VerifiedTrust Signals
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