-
Marketplace
-
Channel Resources
Articles from this Site
IBM Introduces New Versions of Two Software Products
Experian QAS Selected by Two State Unemployment Insurance Programs
Emerson Network Power Selects Silver Creek Systems
Talend Announces First Open Source Data Profiler
Equinox Pumps Up Data Quality with DataFlux
White Papers
Data Warehousing Ensuring Data Integrity
Making Data Work: Addressing Data Quality at the Enterprise Level
Can your SharePoint Backup Harm Your Business?
The Value Behind Integrity
Building Profitable Customer Relationships and Personalized Retention Strategies
Web Seminars
Master Data Management: Best Practices for Success
Getting In Synch: Creative Ways to Reconcile Data Between Apps
Closing the Loop: Real-Time Event Detection and Response
Books
Corporate Information Factory, 2nd Edition
The Data Warehouse Challenge: Taming Data Chaos
Data Quality for the Information Age
Improving Data Warehouse and Business Information Quality: Methods for Reducing Costs and Increasing Profits
Metadata Management for Information Control and Business Success
DataFlux Releases Version 8.1 of its Data Quality Integration Platform
June 18, 2008 - DataFlux released version 8.1 of its core data quality integration platform, designed to allow companies to analyze, improve and control the quality of their data.
Among its enhancements, version 8.1 provides technology that enhances a users ability to automatically evaluate the semantics within the data and use the knowledge to build detailed data quality routines to manage data in the future.
Early adopters of the version 8.1 platform noted a 25 to 40 percent reduction in the time required to improve the quality of complex data, including data on products, chemicals and pharmaceutical compounds, according to DataFlux.
Companies have often turned to the DataFlux platform for the improvement of data domains outside of the traditional customer data realm, said Scott Gidley, co-founder and CTO of DataFlux. With the version 8.1 platform, we make that process even easier, by providing an automated way to infer commonalities within the data and decrease the time required to realize value from a data quality effort.
This piece is brought to you by the DM Review editorial staff.
For more information on related topics, visit the following channels:


