DMBoK and CDMP Exam Preparation Training
| Start Date | End Date | Venue | Fees (US $) | ||
|---|---|---|---|---|---|
| DMBoK and CDMP Exam Preparation Training | 20 Sept 2026 | 24 Sept 2026 | Riyadh, KSA | $ 3,900 | Register |
| DMBoK and CDMP Exam Preparation Training | 21 Sept 2026 | 25 Sept 2026 | Cairo, Egypt | $ 3,500 | Register |
| DMBoK and CDMP Exam Preparation Training | 15 Nov 2026 | 19 Nov 2026 | Kuala Lumpur, Malaysia | $ 4,500 | Register |
| DMBoK and CDMP Exam Preparation Training | 16 Nov 2026 | 20 Nov 2026 | Kigali, Rwanda | $ 4,500 | Register |
DMBoK and CDMP Exam Preparation Training
| Start Date | End Date | Venue | Fees (US $) | |
|---|---|---|---|---|
| DMBoK and CDMP Exam Preparation Training | 20 Sept 2026 | 24 Sept 2026 | Riyadh, KSA | $ 3,900 |
| DMBoK and CDMP Exam Preparation Training | 21 Sept 2026 | 25 Sept 2026 | Cairo, Egypt | $ 3,500 |
| DMBoK and CDMP Exam Preparation Training | 15 Nov 2026 | 19 Nov 2026 | Kuala Lumpur, Malaysia | $ 4,500 |
| DMBoK and CDMP Exam Preparation Training | 16 Nov 2026 | 20 Nov 2026 | Kigali, Rwanda | $ 4,500 |
Introduction
This training course provides a comprehensive foundation in data management, focusing on the Data Management Body of Knowledge (DMBoK) and preparing participants for the Certified Data Management Professional (CDMP) certification. With data being a strategic asset, mastering its management is essential for any organization. This training course equips professionals with the knowledge and tools needed to excel in various data management disciplines and achieve industry-recognized certification. The DMBoK and CDMP Preparation: Data Management Fundamentals training course offers an in-depth review of critical data management practices, helping participants build expertise across governance, quality, integration, and more. During the sessions, participants will explore the DMBoK framework, understand core concepts, and gain insights into passing the CDMP Data Management Fundamentals examination. It covers data governance, quality, modeling, architecture, security, integration, operations, and emerging data management tools. This training course is ideal for data professionals, IT, and business leaders seeking to elevate their data management capabilities.
This training course will highlight:
- Comprehensive coverage of DMBoK framework
- CDMP exam preparation and certification guidance
- Key data governance and quality management practices
- Master and reference data management essentials
- Emerging trends in data management and analytics
Objectives
- Understand and apply key data management concepts from DMBoK framework
- Develop strategies for effective data governance and quality management
- Analyze and improve data architecture, modeling, and integration processes
- Prepare for the CDMP Data Management Fundamentals exam
- Identify emerging trends and tools in data management and analytics
At the end of this training course, you will learn to:
Training Methodology
This training course uses an interactive and practical approach, combining expert-led presentations, group discussions, and real-world case studies. Hands-on exercises and mock exam questions help reinforce key concepts and prepare participants for the CDMP certification exam. Collaborative learning and experience sharing enable participants to apply best practices in their roles. The training course also includes continuous feedback and ongoing evaluations to ensure clarity and effective knowledge transfer.
Who Should Attend?
This training course is suitable for professionals involved in data management, governance, analytics, or related fields. It will also benefit those preparing for the CDMP certification to enhance their expertise.
This training course is suitable to a wide range of professionals but will greatly benefit:
- Data managers, analysts, and professionals in IT
- Business intelligence and data governance specialists
- Data architects and database administrators
- Risk, compliance, and data security professionals
- Project managers involved in data initiatives
Course Outline
Day 1: Introduction to Data Management and Data Governance
- Overview of Data Management and its key drivers
- Understanding the DMBoK framework and its disciplines
- Introduction to DAMA CDMP certification and exam structure
- Data Governance principles and best practices
- Roles, responsibilities, and organizational models for Data Governance
- Data ethics and data sampling considerations
- Establishing and managing a Data Governance Office
Day 2: Data Quality Management and Master Data Management
- Key facets and dimensions of Data Quality
- Policies and metrics for improving Data Quality
- Tools and techniques for Data Quality Management
- Differences between master and reference data
- Master Data Management architectures and implementation strategies
- Assessing Master Data Management maturity
- Relationship between Data Governance, Data Quality, and Master Data Management
Day 3: Data Warehousing, BI, and Data Modeling
- Introduction to data warehousing and its role in organizations
- Major data warehouse architectures: Inmon vs. Kimball
- Dimensional Data Modeling concepts and practices
- Business Intelligence (BI) and analytics solutions overview
- Types of analytics and visualization techniques
- Data Modeling as a key element of Data Governance
Day 4: Metadata Management and Data Integration
- Understanding metadata and its importance
- Types, sources, and uses of metadata
- Metadata repositories and business user access
- Data integration vs. data interoperability concepts
- Business and technology issues in data integration
- Guidelines for planning and providing data integration
Day 5: Data Architecture, Lifecycle Management, and Data Security
- Types of data architecture and enterprise approaches
- Managing data across its entire lifecycle
- Differences between data lifecycle and SDLC
- Proactive data lifecycle planning and data value chain considerations
- Identifying and mitigating data risks
- Data security, privacy, and compliance frameworks
- Threat categories and defense mechanisms for data protection
- Adapting to evolving legal and regulatory requirements

