SC Cleared Business Data Analyst

IO Associates
London
2 months ago
Applications closed

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SC Cleared Business Data Analyst
Predominantly Remote (with occasional client meeting in Coventry)
£425 per day Outside IR35
Initial contract runs till end of March 2026
We're supporting a Data Management & Data Governance transformation programme with a major UK Government department and are looking for an SC Cleared Business Analyst with a strong background in data analysis.
This isn't a standard BA role, there's no process mapping or requirement gathering. You'll be acting as a Business Analyst focused on analysing, understanding and identifying data across a large division.

What you'll be doing

Identifying and analysing data across a major government division
Exploring metadata, ownership, lineage and structure of data
Helping stakeholders understand their data landscape
Collaborating with Data Analysts & Enterprise Architects

What we're looking for

Active SC Clearance (essential)
Proven BA experience with a strong data analysis skillset
Comfortable working autonomously and driving deliverables
Experience or interest in data mapping/data modelling

TPBN1_UKTJ

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