May 2025
Introducing Conduktor Trust: in-stream data quality enforcement
Trust enforces data quality at the source, in-stream, before bad data spreads. Define rules, apply policies, block or log violations.
Bad data (missing fields, broken formats, out-of-range values) breaks downstream systems, corrupts AI outputs, and causes customer-facing issues. Traditional tools fix data after the damage. Data contracts push responsibility to producers with fragmented enforcement.
Conduktor Trust enforces data quality in-stream, before bad data reaches your pipelines.
How Trust works
- Define rules: Use CEL (Common Expression Language) to specify structure, completeness, and conformance
- Apply policies: Attach rules to specific topics and control where enforcement applies
- Act on violations: Log violations for monitoring or block bad messages instantly
- Track patterns: View violations over time to identify recurring issues
What Trust prevents
- Data quality issues reaching downstream: Catch problems at the source
- Bad data in AI models: Feed only trusted data to models and analytics
- Compliance gaps: Apply consistent quality policies across teams
- Reactive cleanup work: Fix issues before they spread
For a full list of changes, read the complete release notes.