For decades, the lack of visibility into the health of our data has led to data downtime, periods of time when data is missing, inaccurate, or otherwise erroneous, and a leading reason why data quality initiatives fail.
This is the only guide of its kind to help data engineers and analysts understand the key factors that contribute to poor data quality and how to detect, resolve, and prevent these issues at scale.
Access your copy to learn: