How does understanding the data model impact test requirement analysis in ETL?
- It helps in identifying data quality issues
- It helps in identifying test scenarios and data dependencies
- It is irrelevant to test requirement analysis
- It only impacts data extraction
Understanding the data model is crucial for test requirement analysis as it aids in identifying test scenarios, dependencies, and the overall structure of data, ensuring comprehensive testing coverage.
Loading...
Related Quiz
- In the context of ETL, which testing approach is better suited for complex data validation, automated or manual?
- ________ transformation is used to aggregate data from multiple rows into a single row.
- How does stream processing impact the testing strategy in real-time data integration?
- In ETL testing, comparing record counts and key aggregates between source and target is known as ________.
- In BI integration, what role does data cleansing play?