News

Learn the definition of data quality and discover best practices for maintaining accurate and reliable data.
Data quality is a complex and context-dependent concept often misunderstood across business, technology, process, and data science domains, with each attributing different issues to it.
Key findings show organizations averaging just 42/100 on data trust maturity, with the lowest scores in areas such as remediation workflows, policy enforcement, and reference/master data quality.
The goal of data governance is to ensure your organization’s data is business-ready: high-quality, accessible, secure, and ...
Some of the best thinking on new AI-native systems contemplates the quickness of technology generations, and what it means for design.
Poor data quality and integrity compounded with data silos, lack of integration, and a skills gap make the problem more profound.
It’s time for the music industry to shift from endless data clean-up to a strategy of quality at the source, and transform data from a liability into a reliable asset. The following comes from Natalie ...