- Accuracy
Accurate data reflects the true values it represents. Inaccurate data can lead to misguided decisions, making accuracy a non-negotiable aspect of data quality.
- Completeness
Data completeness ensures that all required data is present. Missing values can skew analysis, so striving for comprehensive datasets is crucial for reliability.
- Consistency
Consistent data is uniform across different datasets and systems. Discrepancies can arise from various sources, so maintaining consistency helps in avoiding confusion and errors.
- Timeliness
Data must be up-to-date to be relevant. Timeliness ensures that information is available when needed, allowing organizations to act swiftly based on current insights.
- Relevance
Data should be applicable to the specific context in which it is used. Irrelevant data can lead to clutter and distract from the core objectives.
- Validity
Valid data adheres to predefined formats or standards. Ensuring that data conforms to established rules enhances its reliability and usability.
- Uniqueness
Uniqueness eliminates duplicate entries, ensuring that each data point is distinct. This characteristic is vital for accurate analysis and reporting.
Investing in these characteristics of data quality not only enhances decision-making but also builds trust in your data-driven processes. Quality data leads to quality insights!
Contact US - https://www.prospecta.com/what-are-the-8-data-quality-criteria/