Augmented Data Quality Solutions
Augmented data quality solutions are transforming traditional data quality processes and the market, empowered by AI/GenAI to deliver trusted AI-ready data. This research helps data and analytics leaders understand emerging technologies and the vendor landscape to make better purchasing decisions.
Market Definition
Gartner defines augmented data quality (ADQ) solutions as a set of capabilities for enhanced data quality experience aimed at improving insight discovery, next-best-action suggestions and process automation by leveraging AI/machine learning (ML) features, graph analysis and metadata analytics. Each of these technologies can work independently, or cooperatively, to create network effects that can be used to increase automation and effectiveness across abroad range of data quality use cases. These purpose-built solutions include a range of functions such as profiling and monitoring; data transformation; rule discovery and creation; matching, linking and merging; active metadata support; data remediation and role-based usability.
These packaged solutions help implement and support the practice of data quality assurance, mostly embedded as part of a broader data and analytics (D&A) strategy. Various existing and upcoming use cases include: Analytics, artificial intelligence and machine learning development, Data engineering, D&A governance, Master data management, Operational/transactional data quality
Report 2025
Here is a summary of the vendors featured in the Gartner magic quadrant 2025 report.
For the full analysis and detailed insights, you can read the report
here
and view the magic quadrant graphic
here.
| Market Status | Market Vendor |
|---|---|
Leader |
Informatica |
Leader |
Qlik |
Leader |
Ataccama |
Visionary |
DQLabs |
Niche Player |
SAS |
Niche Player |
Irion |
Niche Player |
CluedIn |
Niche Player |
Anomalo |
Challenger |
IBM |
Challenger |
Ab Initio |
Challenger |
Experian |
Challenger |
Precisely |