Making Data Governance Work

Original price was: $49.95.Current price is: $44.95.
$49.95

Making Data Governance Work, by Yvette M Desmarais

Unlock the power of practical, risk-aware, and value-driven data governance to transform your organization’s data chaos into strategic clarity. 

Topics

Part I: The Data Environment


Chapter 1: Data Set Inventory


Chapter 2: Data Governance Risk Categories

Business Value

Business Priorities

Data Privacy and Sensitivity

External Presentation

Complexity

Data Quality Issue Volume

Lack of Knowledge

Purchased Data

Shared Data

AI/ML Use

Organization-Specific Risks and Opportunities


Chapter 3: DG Functionality Requirements

Data Stewardship

Master Data Management

Data Quality

Data Cataloging and Metadata

Data Privacy

Entitlements and Access

Privacy Data Classification

Data Products

Other Considerations


Chapter 4: Data Governance Challenges

People

Time and Complexity

Project Variety


Chapter 5: Creating the Roadmap

Recommended Approach


Part II: Data Governance Functions


Chapter 6: Data Governance Organization

Data Governance Steering Committee

Data Governance Council

Data Governance Office

Data Stewardship Teams

Other Roles


Chapter 7: Data Quality

Approach

Data Profiling

Data Quality Standards

Data Quality Improvement

Monitoring Data Quality Improvements

Evaluate Results and Select Data Quality Targets


Chaper 8: Data Stewardship

Discover Data

Describe Data

Manage Data

Democratizing Data


Chapter 9: Data Catalog

Business Metadata

Technical Metadata

Governance Metadata

Process Metadata – Data Lineage

Process Metadata – Data Observability


Chapter 10: Master Data Management

Data Synchronization

Key MDM Capabilities

Planning for MDM Implementation


Chapter 11: Data Lineage/Data Flows


Chapter 12: Purchased Data


Chapter 13: Externally Shared Data


Chapter 14: AI and Machine Learning

Types of AI/ML Models

Governing AI/ML

Inventory AI/ML Models within the Organization

Risk Management for Artificial Intelligence

Cataloging AI/Models

Challenges of Governing AI/ML

Measuring Data Quality for AI/ML

Data Governance and Artificial Intelligence


Chapter 15: Regulatory Data Governance


Chapter 16: Privacy, Access, Identity Management

Data Access Risks

Sensitive Data Discovery

Data Access Control Models

Data Anonymization

Data Access Monitoring and Reporting


Part III: Ongoing Activities


Chapter 17: Evangelize


Chapter 18: Monitor, Report, and Evaluate

Changing Course

Next Steps

Making Data Governance Work is your hands-on guide to mastering the complexities of modern data environments. Whether you’re launching a new data governance initiative or reviving one that’s lost steam, this book equips you with actionable strategies to prioritize, organize, and implement effective governance programs that actually stick. Designed for professionals from diverse backgrounds—project managers, data analysts, compliance officers, engineers—this book meets you where you are and helps you turn theory into measurable impact.

You’ll learn how to build a data governance roadmap grounded in risk assessment, business value, and organizational priorities. Discover how to analyze your data environment, identify your highest-risk data sets, and map them to the governance functions most urgently needed. If you’ve ever asked, “Where do we even start with data governance?”, this book has the answer—backed by proven frameworks, templates, and real-world advice.

Inside, you’ll find comprehensive coverage of all the major data governance functions—data quality, data stewardship, metadata management, master data management (MDM), regulatory compliance, privacy, entitlements, AI/ML governance, and more. You’ll also gain insight into how governance roles are structured across Data Governance Offices, Steering Committees, and Stewardship Teams, helping you clarify responsibilities and build collaboration across your enterprise.

This is not another theoretical overview. It’s a tactical toolkit for real-world implementation. Through carefully crafted checklists and matrices, you’ll learn how to evaluate systems, inventory data sets, classify risks and sensitivities (e.g., PII, PHI, GDPR, HIPAA), and assign the right governance practices to the right places—without boiling the ocean or reinventing the wheel.

For organizations adopting emerging technologies, this book also dives deep into data governance for artificial intelligence and machine learning. You’ll learn how to catalog and monitor AI/ML models, manage training data risk, and maintain transparency in automated decision-making—all while aligning with current regulations like CCPA, CPRA, and FERPA.

With dedicated chapters on data observability, privacy classification, data lineage, and access control, this guide helps you build a sustainable governance program that adapts as your business evolves. You’ll also get expert guidance on handling shared data, purchased data, and complex, integrated data repositories, so you’re prepared for today’s hybrid, multi-source data realities.

One of the greatest strengths of this book is its prioritization matrix approach, helping you focus on high-value, high-risk areas while leveraging existing assets. Instead of starting from scratch, you’ll learn how to build on what your organization already knows and owns—saving time, reducing duplication, and driving adoption.

Whether you’re in healthcare, finance, tech, education, or government, Making Data Governance Work gives you the tools to succeed. It acknowledges the frustration, the scope creep, and the political navigation—and still delivers a clear path forward, rooted in experience and practicality.

If you’re looking for a field guide to enterprise data governance—a resource filled with insights on data catalogs, business glossaries, data standards, and building a data-driven culture—this book will become your go-to reference for years to come.

About Yvette

Yvette M. Desmarais is a seasoned data professional with a 40-year career spanning diverse roles across the data landscape. She has worked with organizations such as CVS Health, Hewlett-Packard, Quest Diagnostics, and State Street Corporation, bringing deep expertise in management accounting, data repository implementations, project and program management, business analysis, and reporting. For the past decade, she has focused on data governance, championing best practices and practical solutions to help organizations unlock the true value of their data. Making Data Governance Work draws on her rich experience to provide real-world insights into building effective, sustainable data governance programs.  

Bestsellers

Faculty may request complimentary digital desk copies

Please complete all fields.