A Conferência Anual do DHIS2 realiza-se de 15 a 18 de junho de 2026!
Implementation Insights – Data Quality Workbench
Learn about the Data Quality Workbench, an external, Python-based tool that allows you to supplement the built-in data quality features within DHIS2.
Saltar para uma secção desta página
Webinar recording
Session outline
The DQ Workbench goes beyond identifying errors — it captures and stores results so you can monitor data quality trends directly within Dashboards and the Data Visualizer app.
- Outlier Monitoring — Aggregate and store outlier counts as data values, giving you a clear view of data consistency across reporting periods.
- Validation Rule Trends — Record the number of validation rule violations over time to assess whether identified data quality issues across your system are being improved over time.
- Metadata Integrity Tracking — Record and visualize metadata violations to maintain a robust, well-configured system. Monitor whether corrective actions are being taken and having an effect.
- Min/Max Generation — Generate min/max thresholds using a range of statistical methods tailored to different data distributions and use cases.
While this an external tool, it supports the functionality introduced within the broader DHIS2 data quality toolkit.