In data transformation, what is the significance of schema evolution?
- Accommodating changes in data structure over time
- Ensuring data consistency and integrity
- Implementing data compression algorithms
- Optimizing data storage and retrieval
Schema evolution in data transformation refers to the ability to accommodate changes in the structure of data over time without disrupting the data processing pipeline. It ensures flexibility and adaptability.
Loading...
Related Quiz
- What is a common optimization approach for transforming large datasets in ETL pipelines?
- What role do DAGs (Directed Acyclic Graphs) play in workflow orchestration tools?
- Data cleansing is a critical step in ensuring the ________ of data.
- Which of the following is NOT a commonly used data extraction technique?
- What strategies can be employed to ensure scalability in data modeling projects?