Master Data Management (MDM) involves various processes and technologies to ensure that master data is accurate, consistent, and trustworthy. The most comprehensive definition of MDM captures its multi-faceted nature, encompassing governance, technology, and organizational roles.
Governed Processes:
MDM involves establishing governance processes to define policies, standards, and procedures for managing master data.
These processes ensure that data is handled consistently and according to defined rules.
Role of People and Technologies:
Effective MDM requires the involvement of people, including data stewards, data owners, and governance committees, who are responsible for overseeing and managing master data.
Technologies, such as MDM software and tools, facilitate the implementation of governance processes, data integration, data quality management, and synchronization.
Key Objectives:
Master data should be understood by stakeholders, ensuring clarity and common understanding of data definitions and attributes.
Trust in master data is achieved through rigorous data quality and governance practices.
Data should be controlled, meaning that access, usage, and changes to the data are managed and monitored.
Master data must be fit-for-purpose, meeting the specific needs and requirements of the organization’s business processes.
[Reference:, DAMA-DMBOK (Data Management Body of Knowledge) Framework, CDMP (Certified Data Management Professional) Exam Study Materials, ]
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