Assessment framework · Data & AI
Data management maturity assessment (DAMA-DMBOK)
The DAMA-DMBOK (Data Management Body of Knowledge) defines the knowledge areas of enterprise data management — governance, quality, architecture, modelling, storage, security, integration and more.
Score the data discipline against the DAMA-DMBOK knowledge areas — governance, quality, architecture and operations.
What it covers
Inside a Data Management Maturity assessment.
Celeredge scores the data discipline against the DAMA-DMBOK knowledge areas and ranks the foundational gaps in governance, quality and architecture.
- Scored on Data Management Maturity's own scale — not a generic rubric
- Every score traceable to the client's own evidence
- Gaps ranked by severity, ready to become the plan
- A board-ready slide deck and detailed report, generated automatically

How it works
From the client's documents to a board-ready deck.
1 · Evidence in
Upload the client's documents — policies, reports, data. An AI interviewer asks targeted follow-ups to fill anything missing.
2 · Scored on the standard
Every dimension is scored on the framework's own scale, with each score traceable to the evidence behind it — gaps ranked by severity.
3 · Board-ready out
A board-ready slide deck and HTML report are generated automatically — executive summary, maturity landscape and a sequenced plan.
Questions
Data Management Maturity assessment — FAQ
What is Data Management Maturity?
The DAMA-DMBOK (Data Management Body of Knowledge) defines the knowledge areas of enterprise data management — governance, quality, architecture, modelling, storage, security, integration and more.
What does a Celeredge Data Management Maturity assessment deliver?
An evidence-based maturity or readiness assessment scored on Data Management Maturity's own scale, with gaps ranked by severity and an auto-generated, board-ready slide deck and detailed report — every score traceable to the evidence behind it.
How does the Data Management Maturity assessment work?
Clients upload their own evidence — policies, reports and data. An AI interviewer asks targeted follow-ups to fill anything missing, the platform scores against the framework, ranks the gaps, and generates the deliverables.
More Data & AI frameworks
Related assessments
ISO/IEC 42001 AI Management System
Assess AI management-system readiness against ISO 42001 before certification.
NIST AI Risk Management Framework
Score AI risk practice across the NIST AI RMF Govern, Map, Measure and Manage functions.
EU AI Act Readiness
Classify AI systems by risk tier and assess obligations under the EU AI Act.
AI Governance & Responsible AI Maturity
Measure responsible-AI maturity across governance, risk, transparency and oversight.
UK AI Regulation (DSIT Principles & Assurance)
Check alignment to the UK's five AI-regulation principles and assurance expectations.
UK GDPR & Data Protection / ICO Accountability
Assess UK GDPR accountability against the ICO's accountability framework.
DCAM Data Management Capability
Benchmark capability against the EDM Council DCAM model — the data-governance standard favored in financial services.
MLOps & Model Operations Maturity
Assess the maturity of model deployment, monitoring and lifecycle operations.
Analytics & BI Maturity
Measure analytics and BI maturity from reporting to embedded decision intelligence.
See a Data Management Maturity assessment on real data.
We'll run Data Management Maturity live and score it from a client's own documents.