• Skip Navigation |
  • Accessibility 
IT-Director.com Logo
  • Conficker grounds police checks
  • What's wrong with \
  • What is Total Cost of Ownership, and Why Should You Care?
 

Main navigation - go to a section of this website:

  • ARCHIVE
  • PAPERS
  • EVENTS
  • NEWSWIRE
  • BLOGS

  

Member Login | Become a Member

 
 
DOMAINS
  • Enterprise
  • SME
  • Business Issues
  • Technology
    • Data Management
    • Applications
    • Infrastructure
    • Systems Mgmt
    • Security
    • Mobile
    • Storage
    • Personal Productivity
  • Services
  • Channels
FEATURED EVENTS
  • Enterprise Level Business Process Management
    22nd March - 23rd March
    London, United Kingdom
  • Handling Subject Access Requests ( SAR's )
    23rd March
    London, United Kingdom
POPULAR PAPERS
  • Enterprise Performance Management - Cycle II by Quocirca
TRANSLATE PAGE



USEFUL LINKS
  • Last 7 Days
  • Archives
  • Market Place
  • Top Articles
INTERACT
  • Advertising
  • Site Feedback
  • Newsletters
  • Contact Us
  • Registration
CONTENT FEED

Technology -> Data Management
RSS Feed:

RSS Icon

What is RSS?

RANDOM QUOTE
Observations - "Money can't buy happiness; it can however rent it." - Anonymous

ADVERTISEMENT
Analysis

The Elusive Data Quality Ideal

Andy Hayler By: Andy Hayler, CEO, The Information Difference
Published: 19th August 2008
Copyright The Information Difference © 2008
Logo for The Information Difference
Page Tools

Request Reprints
Tell A Friend
Contact Author

More from author
  • February 2010
    Onwards and Upwards
  • February 2010
    Aster Blossoms
  • February 2010
    Enterprise Business Modelling Revisited
  • February 2010
    Appliances Are Getting Cheaper
  • January 2010
    Keeping An Open Mind
  • January 2010
    Oracle sees a silver lining in product data
  • December 2009
    Bolt from the blue
Syndication
  • Delicious Icon Delicious
  • Digg Icon Digg
  • reddit Icon reddit
  • Facebook Icon Facebook
  • StumbleUpon Icon StumbleUpon

The data quality market is a surprisingly fragmented one for a market that is far from new and trendy. While there are a few leading vendors, there is no dominant one, and I have identified over 60 software vendors selling data quality software. I think there are a couple of reasons why the market has not grown more than it has. One is that many (by no means all) data quality vendors focus on providing a tool with a clever algorithm for, say, matching records or cleaning up name and address lists, yet pay little attention to supporting the governance processes that lie behind the causes of the poor data quality in the first place.

As well as measuring the state of existing data and fixing up errors, it is important to also understand the business processes that support the lifecycle of that data, from its creation, update and even retirement. The reason for poor data quality may lie in unclear roles and responsibilities, duplicate or conflicting processes in different departments. There may be a lack of understanding by one set of business users as to why certain data attributes need to be recorded (perhaps for the benefit of another part of the business). Data quality projects need to address these process issues if data quality is to be improved structurally, rather than being just a one-off fix.

Another issue is that many data quality tools specialise in dealing with very specific data to the neglect of others. The obvious example is customer name and address, but other vendors specialise in dealing with, say, product data or spares data, but little else. While there is certainly value in fixing up data of one type, the business as a whole may get more benefit from tackling a broader base of data, for example dealing not just with product data but the locations that these products are delivered to, and the customers they are supplied to. By tracing the lifecycle of data and mapping this to business processes, issues may be highlighted which cause data quality problems. In the absence of vendor attention, systems integrators are filling the void.

An example of this is Chicago-based Utopia, who, though only founded in 2002, have built up a fast growing business specialising in data lifecycle management solutions and consultancy services, especially in the process manufacturing and consumer products industries. They have combined a deep understanding of data with a vendor-agnostic approach.

The company has also created libraries of useful data-related tools, including data governance management facilities, which they use to integrate broader data lifecycle applications utilising specialised data quality and master data management products. With 160 staff and 50% revenue growth last year, Utopia is prospering in a way that few data quality vendors are. Many data quality vendors could learn some lessons from this and consider how to broaden their offerings to encompass support for a wide variety of data types, and also support the business processes that surround this data.

Reader Comments

Sorry, we are no longer accepting comments on this item. We suggest trying to contact the author directly.

  • Site Map
  • | Terms of Use
  • | Privacy

Published by: IT Analysis Communications Ltd.
T: +44 (0)1908 880760 | F: +44 (0)1908 880761