|
|
 |
| Most Popular Data Profiling Reports
|
|
|
 |
|
 |
 |
Data quality assessment helps identify, fix data quality problems - Expert Podcast sponsored by Informatica
 | Podcast: | Posted: 26 Jun 2008
| | Premiered: | 26 Jun 2008, 09:00 EDT (13:00 GMT) | | | Speaker: |
Arkady Maydanchik, Data Quality Group co-founder
|
| |
Summary: |
In this 20-minute podcast, appropriate for both business and IT professionals, listeners will find out how to get a handle on data quality needs through a data quality assessment.
|
|
 |
|
 |
Data Profiling: Underpinning Data Quality Management sponsored by Pitney Bowes Group 1 Software
 | White Paper: | Posted: 09 May 2008
| | Published: | 01 Jan 2007 | |
Summary: |
Data Profiling delivers a deeper and broader insight in a fraction of the time required by traditional approaches to data analysis.
|
|
 |
|
 |
Assessing the Potential Business Impact of Operational Data Quality IT Briefing sponsored by Pitney Bowes Group 1 Software
 | White Paper: | Posted: 07 Apr 2008
| | Published: | 01 Apr 2008 | |
Summary: |
Explore data quality impacts, how data quality relates to business issues, and how to integrate data quality monitoring into operational systems.
|
|
 |
|
 |
Enterprise Data Quality Solution - ZERO License Cost sponsored by Infosolve Technologies, Inc.
 | Service Listing: | Posted: 28 Mar 2008
| | Published: | 01 Mar 2008 | |
Summary: |
Data corruption can occur due to a number of reasons, including integrating non-conforming, flawed data or erroneous data. Learn about the most common reasons that contribute to poor data quality and how to alleviate them.
|
|
 |
|
 |
Three Blind Men and an Elephant: The Power of Faceted Analytical Displays sponsored by Tableau Software
 | White Paper: | Posted: 20 Feb 2008
| | Published: | 01 Jan 2007 | |
Summary: |
Learn how faceted analytical displays can lead to insight that would be difficult to unearth otherwise. Faceted analytical displays are powerful and will help you discover new information that will translate into big benefits for your company.
|
|
 |
|
 |
Data Quality - The Foundation of Operational Effectiveness sponsored by Pitney Bowes Group 1 Software
 | White Paper: | Posted: 18 Sep 2007
| | Published: | 01 Jan 2006 | |
Summary: |
Operational and analytical business processes rely on a solid, high-quality data foundation, but companies often neglect data quality until a major problem occurs that could've been avoided. Learn about the benefits and importance of da...
|
|
 |
|
 |
Implementing or Upgrading SAP? Don't Forget the Data: Addressing the Challenges and Risks of Data Migration sponsored by Informatica
 | White Paper: | Posted: 19 Jul 2007
| | Published: | 01 Jan 2006 | |
Summary: |
Data migration is a critical component of an SAP implementation. Learn how to address the five most common data migration challenges associated with SAP implementations and upgrades.
|
|
 |
|
 |
Five Steps to More Valuable Enterprise Data sponsored by DataFlux Corporation
 | White Paper: | Posted: 04 Apr 2007
| | Published: | 06 Jun 2006 | |
Summary: |
This white paper explores a five-phase methodology to analyze, improve and control corporate data. Learn how to improve decision-making and gain competitive edge with five essential factors that encompass the building blocks of data quality integration.
|
|
 |
|
 |
dfPower Studio: Solutions for Business and Database Analysts sponsored by DataFlux Corporation
 | Product Overview: | Posted: 19 Aug 2004
| | Published: | 01 Jan 2004 | |
Summary: |
dfPower Studio gives you the ability to profile, cleanse, integrate, augment and monitor enterprise information quickly and easily. An innovative job flow builder helps you quickly and logically build complex data management workflows.
|
|
 |
|
 |
Data Profiling: The Foundation for Data Management sponsored by DataFlux Corporation
 | White Paper: | Posted: 29 Feb 2004
| | Published: | 28 Jun 2004 | |
Summary: |
Data profiling is the beginning of an effective data management strategy. Although profiling techniques provide an essential first step, there is much more to a complete data management strategy.
|
|
 |
|
|  |
|