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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
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Data Quality Channel
Channel Sponsored by

Companies often cannot rely on the information that serves as the very foundation of their primary business applications. Inaccurate or inconsistent data can hinder your company's ability to understand its current - and future - business problems. This leads to poor decisions that can cause a host of negative results, including lost profits, operational delays, customer dissatisfaction and much more.
An effective data quality strategy can help you better understand your business environment, allowing you to maximize profitability and reduce costly operational inefficiencies.
Data quality technology allows companies to analyze, improve and control enterprise data, providing the infrastructure to enable data governance by transforming raw data into consistent, accurate and reliable corporate information. The building blocks of enterprise data quality methodology are:
- Data Profiling - Inspect data for errors, inconsistencies, redundancies and incomplete information
- Data Quality - Correct, standardize and verify data
- Data Integration - Match, merge or link data from a variety of disparate sources
- Data Enrichment- Enhance data using information from internal and external data sources
- Data Monitoring - Check and control data integrity over time
This resource channel is brought to you by DataFlux and DM Review. As leaders in the industry, DataFlux and DM Review continually provide this Web site with continually updated, accurate and targeted information.
Articles
Do You Know If Your Data Is Accurate?
While compliance isnt dominating the news as it did a few years ago, it is still an issue that organizations struggle with on a daily basis
The Ins and Outs of Imperfect Data
Corporate data is inherently imperfect.
Fighting Improper Payments with Master Data Management
Improper payments from government agencies have been a long-standing and significant problem.
Diagnosing an Effective Data Quality Initiative
Before undertaking any data-driven effort, it is essential to have a clear understanding of the integrity of your current data.
The Invisible Risk of Poor Data Quality on Change Management
Change management causes IT processes to be slower, clumsier or less effective, with devastating impact on the profitability of the business. Why?
Columns
Transparency of Data Management
Transparency is the degree to which your organization communicates to your producers and consumers of data management information.
Data Warehouse Quality Assurance Best Practices
ITIL and Data Quality: A Familiar Partnership
Data Quality: The Price of Entry
The Role of the Data Model in Quality Management
Ask the Experts
How do you measure/calculate information quality quotient for a particular data set?
How much time is needed to clean the master data and get it on track?
How can one measure the quality of data - both on master data and transactional data?
What are some best practices for customer data matching, cleansing and integration when your customers are public and private institutions in a variety of industries?
What standard/guidelines should be implemented in the transactional systems to make the data business intelligence ready?
White Papers
Data Warehousing Ensuring Data Integrity
By Cindy Maurer
Making Data Work: Addressing Data Quality at the Enterprise Level
By Informatica
Can your SharePoint Backup Harm Your Business?
By AvePoint
The Value Behind Integrity
By by ETNA Software
Building Profitable Customer Relationships and Personalized Retention Strategies
Books
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Corporate Information Factory, 2nd EditionBy William H. Inmon, Claudia Imhoff, Ryan Sousa |
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The Data Warehouse Challenge: Taming Data ChaosBy Michael H. Brackett |
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Data Quality for the Information AgeBy Thomas C. Redman |






