Data Quality Checks
WanjohiChristopher

WanjohiChristopher @wanjohichristopher

About: Data Engineer

Location:
Remote Engineer
Joined:
Jan 29, 2020

Data Quality Checks

Publish Date: Jun 21 '23
1 0

Dataquality checks you need to keep in mind while validating your data, ensuring it is reliable, and can be trusted before reporting or performing analysis:

  1. Data Completeness - check whether the data has all required data fields and check missing values.
  2. Data Consistency - make sure data is uniform across different sources
  3. Data Accuracy - compare the correctness of the data with already known or expected values.
  4. Data Timelines - check whether the data is up-to-date within expected timelines.
  5. Data Relevance - is the data relevant to the business or its requirements and does it meet its purpose.
  6. Data Integrity - is the data logically consistent and adhering to the defined business rules in place. #data #dataengineering #dataanalytics #dataintegrity #datascience #dataengineers #datascientists #dataanalysts

Image description

Comments 0 total

    Add comment