Data Mining - Analysis White Papers

IBM Data Studio Administrator Effective change management for dynamic application and database environments

Overview Making changes to database schemas can often be complex and error prone. Changes impact dependent objects and sometimes even the underlying data, and the stakes are high. Even with careful attention, schema changes can impact application systems, producing unexpected results, costly errors and business disruptions. By minimizing or eliminating manual tasks and automating the change management process, organizations can implement schema updates with ease and accuracy.

This solution brief explains the value of IBM Data Studio Administrator. This powerful and flexible tool simplifies the process of identifying, analyzing and implementing database schema changes for IBM DB2 for Linux, UNIX and Microsoft Windows. Data Studio capabilities exploit modern development tools and techniques to provide for fast and efficient development and support a scalable infrastructure.

Further White Paper Details
PublisherIBM File FormatPDF
Date PublishedJanuary 2009
FormatWhite Papers   
Topics

3 Strategies for Reducing IT Support Costs

As companies brace for more bumps in the economic downturn, many organisations are indiscriminately cutting costs. To ensure a seamless transition into the post-recession market, however, slashing and burning is...

Forrester Strategies for Assessing IT Business Satisfaction

If you aren't assessing customer satisfaction you are overlooking a potential goldmine. This valuable data is crucial to creating a successful IT strategy. But where do you start? This new...

MSC Industrial Direct- customer case study

"Following a company merger, MSC Industrial Direct Co. found that duplicate customer records were disrupting the business workflow and causing sales compensation issues. MSC Industrial Direct Co. implemented the Pitney Bowes Business...

Customer Data Quality Platform from Pitney Bowes Business Insight - a Butler Group Technology Audit report

Pitney Bowes Customer Data Quality Platform (CDQP) is a domain-specific customer data quality management system that enables tasks such as integration, cleansing, matching, profiling, monitoring, and enriching the data with...

Data Quality Considerations for a Master Data Management Structure

Companies acquiring companies. Human Resources sharing information with Finance. Businesses spanning multiple countries. What do all of these scenarios have in common? The sharing of data. What is the critical...


Quick Sitemap Links: