Course Description
This 4-day DAMA training addresses all of the Data Management disciplines as defined in the industry standard, DAMA International Data Management Body of Knowledge (DMBOK v2). Taught by a certified instructor, this DAMA course provides a solid foundation of the different disciplines across the complete Data Management spectrum. It also helps prepare attendees to take the Certified Data Management Professional (CDMP) Data Management Fundamentals exam. The Data Management Fundamentals exam is required for all CDMP Levels: Associate, Practitioner and Master.
Students will gain an excellent understanding of a wide range of concepts and be able to explain the practical application of them throughout various industry examples. In our four day Data Management Fundamentals course, students will get to practice for the exam by discussing sample questions in each section.
Course Aim
To explain and analyse the complete set of Data Management Knowledge areas to enable a person to confidently pass the DAMA International Certified Data Management Professional CDMP exam knowing that the entire DAMA–DMBOK has been covered.
Course Outcomes
At the end of the course, learners will be able to:
- Recognise and know where to find all details of the knowledge areas in the DMBOK
- Be comfortable with the exam format and technique
- Understand all elements of the DMBOK knowledge areas
- Students are expected to take and pass the official DAMA International Certified Data Management Professional (CDMP) exam within 7-days of finishing our training
Course Summary
Next Public Course Dates | |
Prerequisites |
|
Duration |
|
Available Formats |
|
Audience | It is appropriate for executives, departmental and/or project managers, data and enterprise architects, consultants, data modelers, BI and data warehouse developers, data and business analysts, DBAs, technical staff, and anyone else interested and involved in data |
Included Material |
|
Course Modules
- Introduction to DAMA Data Management Fundamentals and CDMP Certification
- Chapter 1: Data Governance
- Chapter 2: Data Quality Management