10 Principles of Data Governance According To Rob Brennan
What do you think?
Dr. Rob Brennan's research and expertise, the core principles of data governance encompass several key areas:
1. Data Quality Management: This is a fundamental aspect of data governance, focusing on ensuring the accuracy, completeness, and reliability of data. Brennan emphasizes the importance of maintaining high-quality data throughout its lifecycle[1][2].
2. Data Privacy and Security: Protecting sensitive information and ensuring compliance with data protection regulations is a critical principle. Brennan's work highlights the need for robust security measures and privacy-preserving techniques in data governance frameworks[1][3].
3. Regulatory Compliance: Adhering to relevant laws and regulations is a core principle of data governance. Brennan's research addresses the challenges of maintaining compliance in various sectors, including healthcare[1][4].
4. Data Value and Risk Management: Brennan's work emphasizes the importance of understanding and maximizing the value of data while managing associated risks. This includes developing methodologies for data valuation and risk assessment[3][5].
5. AI Governance: As an emerging area of focus, Brennan incorporates AI governance into data governance principles, addressing the ethical and practical challenges of managing AI systems and their data[1][6].
6. Knowledge Graphs: Brennan's research highlights the use of knowledge graphs as a tool for enhancing data governance, particularly in organizing and linking complex data structures[3][6].
7. Transparency and Accountability: Establishing clear roles, responsibilities, and processes for data management is a key principle in Brennan's approach to data governance[2][3].
8. Interoperability and Standards: Brennan's work, including his contributions to international standards, underscores the importance of interoperability and standardization in effective data governance[3][7].
9. Holistic Approach: Brennan advocates for a comprehensive view of data governance that integrates strategies, policies, structures, and practices across an organization[2][3].
10. Continuous Improvement: The principle of ongoing assessment and refinement of data governance practices is evident in Brennan's research on capability maturity models for data value management[7].
These principles reflect Brennan's multifaceted approach to data governance, which combines technical expertise with a deep understanding of organizational and ethical considerations. His work at the University College Dublin and involvement in various research projects have contributed significantly to shaping these core principles in the field of data governance[1][3][4].
4
1 comment
Samuel Williams
5
10 Principles of Data Governance According To Rob Brennan
Data Innovators Exchange
skool.com/data-innovators-exchange
Your source for Data Management Professionals in the age of AI and Big Data. Comprehensive Data Engineering reviews, resources, frameworks & news.
Leaderboard (30-day)
powered by