Certified Data Professional Management CDMP

RegisterInquiry
Certified Data Professional Management CDMP
Loading...

M2619

Kigali (Rwanda)

04 May 2026 -08 May 2026

6000

Overview

Introduction:

Data management represents a core institutional discipline governing how information assets are structured, governed, protected, and utilized within modern organizations. It defines the foundations of data quality, integration, security, and lifecycle control across operational and strategic environments. This training program presents formal frameworks, governance models, architectural structures, and management methodologies used to regulate enterprise data ecosystems. It provides an organizational perspective on how systematic data management supports decision integrity, regulatory alignment, and long term digital sustainability.

Program Objectives:

By the end of this program, participants will be able to:

  • Analyze enterprise data management frameworks and organizational data architectures.

  • Classify data domains, lifecycle stages, and ownership structures within institutional environments.

  • Evaluate governance, quality, and metadata management models.

  • Assess data security, privacy, and regulatory compliance structures.

  • Examine performance measurement and maturity assessment systems for data management functions.

Target Audience:

  • Data managers and information governance officers.

  • Business intelligence and analytics professionals.

  • IT and digital transformation specialists.

  • Risk, compliance, and data protection officers.

  • Enterprise architects and system integration professionals.

Program Outline:

Unit 1:

Foundations of Enterprise Data Management

  • Institutional role of data as a strategic organizational asset.

  • Data domain classification models and ownership structures.

  • Enterprise data architecture layers and interaction logic.

  • Data lifecycle governance stages.

  • Organizational responsibilities within data management functions.

Unit 2:

Data Governance and Policy Frameworks

  • Governance operating models for enterprise data environments.

  • Data stewardship structures and accountability matrices.

  • Policy formulation frameworks for data usage and control.

  • Decision authority distribution in data governance systems.

  • Alignment between governance models and organizational strategy.

Unit 3:

Data Quality and Metadata Management Structures

  • Data quality dimensions and institutional measurement frameworks.

  • Data profiling and validation architecture models.

  • Metadata classification systems and repositories.

  • Master data and reference data governance structures.

  • Integration steps between data quality controls and business processes.

Unit 4:

Data Security, Privacy, and Regulatory Alignment

  • Information security architecture for data environments.

  • Privacy classification models and personal data governance.

  • Regulatory compliance structures affecting data management.

  • Risk exposure mapping structures related to data misuse and breaches.

  • Institutional audit and monitoring systems for data controls.

Unit 5:

Data Management Performance and Maturity Models

  • Data management capability maturity frameworks.

  • Performance indicators for data governance effectiveness.

  • Organizational benchmarking models for data operations.

  • Investment evaluation structures for data infrastructure initiatives.

  • Continuous improvement architectures for enterprise data ecosystems.