Professional Endorsement of the Conformed Dimensions of Data Quality

There are a number of professionals that have begun using the Conformed Dimensions of Data Quality. The following are a few highlights. To be a truly cross-industry standard that is used widely by organizations, consultants advising clients, and academics it requires review and endorsement. The following individuals and organizations have contributed to the creation of this standard and continue to review and provide input on changes over time.

node

Professional Profile: Danette McGilvray is president and principal of Granite Falls Consulting, a firm that helps organizations increase their success by addressing the information quality and data governance aspects of their business efforts. Focusing on bottom-line results, Granite Falls' strength is in helping clients connect their business strategy to practical steps for implementation through programs, projects, and operational processes. Granite Falls also emphasizes the inclusion of communication, change management, and other human aspects in data governance and quality work.

Danette is the author of Executing Data Quality Projects: Ten Steps to Quality Data and Trusted Information™ (Morgan Kaufmann, 2008). An internationally respected expert, her Ten Steps™ approach has been embraced as a proven method for managing data quality in the enterprise. A popular speaker, she has taught her courses in several countries. Her Ten Steps book has been translated into Chinese and is being used as a textbook in university graduate programs. In addition to project work, she helps clients establish and mature on-going data governance and data quality programs, with her approach highlighted in her chapter in the book Handbook of Data Quality: Research and Practice. Shazia Sadiq, editor (Springer, 2013).

Danette's Endorsement of the Standard: For the data industry, standardized definitions of data quality dimensions are needed, just as other professions, such as accounting have agreed-upon concepts and terms like “chart of accounts”. It is then up to each organization to gain competitive advantage by the way the dimensions are applied (through assessments, root cause analysis, improvements, metrics, etc.) to manage and increase the quality of the information and data on which the organization depends.

Professional Profile: Dr. Christiana Klingenberg brings expertise in data management, data quality, and data governance. Over numerous years, she has provided guidance to companies across diverse sectors in their data management initiatives. Collaborating closely with these organizations, she devises tailored strategies for enduring data quality management and governance, ensuring a comprehensive consideration of both technical and organizational factors throughout implementation.

Dr. Klingenberg's Endorsement of the Standard: The quality of (company) data is becoming increasingly relevant. High-quality data is required to implement the new possibilities of analytics and/or artificial intelligence among others. This is the prerequisite for trustworthy results from all kinds of data usage. With the Conformed Dimensions of Data Quality, Dan Myers has created a practicable basis for establishing data quality in companies. The concept goes far beyond the DQ dimensions. In addition, Underlying Concepts are described and named and some of the most relevant scenarios that occur in companies are described. The Conformed Dimensions thus represent a practical approach that makes dealing with data quality in companies manageable.