What are some common data quality metrics?

Common data quality metrics are essential for ensuring the reliability and usability of data. Here are some of the key metrics:

  1. Accuracy: Measures how closely data values match the true values
  2. Completeness: Assesses whether all required data is present
  3. Consistency: Ensures that data is uniform across different datasets and systems
  4. Timeliness: Evaluates whether data is up-to-date and available when needed.
  5. Validity: Checks if data conforms to the defined formats and standards.
  6. Uniqueness: Ensures that each record is unique and not duplicated.
  7. Duplication: Identifies and removes duplicate records to maintain data integrity.

Monitoring these metrics helps maintain high data quality, leading to more accurate analyses and better decision-making.

Are you looking to improve any specific data quality metric in your work?