What does 'timeliness' in contextual data quality imply?

Prepare for the Certified Data Management Professional Exam with flashcards and multiple-choice questions, each with hints and explanations. Ace your CDMP exam!

Multiple Choice

What does 'timeliness' in contextual data quality imply?

Explanation:
Timeliness in contextual data quality refers to the relevance of data at a specific time. This concept emphasizes the importance of having data that is not only accurate but also current and applicable to the context in which it is used. Data can become stale or less useful if it's not reflective of the current state of affairs or cannot inform decisions that are timely. For instance, in a business environment, data that was accurate a year ago may no longer hold relevance if market conditions have changed significantly since then. The focus on the situational aspect highlights how important it is for organizations to use data that align with the timeframe of the decisions they need to make. Other options, such as the speed of data retrieval, the frequency of data updates, and the accuracy of time-based data, contribute to overall data quality but do not encapsulate the core idea of timeliness, which is about ensuring that data remains relevant to the current context in which it is analyzed or used.

Timeliness in contextual data quality refers to the relevance of data at a specific time. This concept emphasizes the importance of having data that is not only accurate but also current and applicable to the context in which it is used. Data can become stale or less useful if it's not reflective of the current state of affairs or cannot inform decisions that are timely.

For instance, in a business environment, data that was accurate a year ago may no longer hold relevance if market conditions have changed significantly since then. The focus on the situational aspect highlights how important it is for organizations to use data that align with the timeframe of the decisions they need to make.

Other options, such as the speed of data retrieval, the frequency of data updates, and the accuracy of time-based data, contribute to overall data quality but do not encapsulate the core idea of timeliness, which is about ensuring that data remains relevant to the current context in which it is analyzed or used.

Subscribe

Get the latest from Examzify

You can unsubscribe at any time. Read our privacy policy