During a monthly review, a team discovers that several records fail to meet established data standards. Which approach helps resolve this non-conformity while keeping the integrity of the dataset?
Remove the problematic rows from the dataset
Replace the invalid fields with standard placeholders
Implement an automated process to tag and restructure the records
Sign off on the existing data without correcting the records
Applying an automated process to designate and fix data that fails to meet the standards preserves accuracy and completeness. Removing them causes data loss. Authorizing them in their current state leaves inaccuracies. Replacing them with defaults diminishes the quality of the stored information.
Ask Bash
Bash is our AI bot, trained to help you pass your exam. AI Generated Content may display inaccurate information, always double-check anything important.
What types of automated processes can be used to tag and restructure records?
Open an interactive chat with Bash
Why is it important to maintain the integrity of the dataset when correcting non-conformities?
Open an interactive chat with Bash
What are the consequences of not addressing non-conformities in data records?