Data Architect

Unify Talent UK
Bexleyheath
4 days ago
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Data Architect

Data Modelling - Geospatial - BPSS

£(Apply online only) per day, Outside IR35

Initially until the end of March

Start 19th of January

Fully Remote

We're supporting one of our favorite Consulting partners source a Data Architect to join a project team delivering a high profile Government program.

You'll join a team delivering an Alpha phase comprising of 5 integrated blocks of work.

You must have / be able to obtain BPSS Clearance.

Skills/experience required:

The role requires a deep understanding of both high-level data strategy and hands-on technical implementation within the built environment:

● Data Modelling: Expertise in Jupyter Notebooks fortransparent data model presentation.
● Geospatial Strategy: Deep understanding of GIS interoperability and national spatial data standards
(UPRNs).
● Knowledge of Planning Data Platforms

Professional Capabilities:

Beyond technical skills, the Senior Data Architect must demonstrate the ability to lead digital transformation in a complex stakeholder environment:

● Strategic Data Leadership: Designing ecosystems that ensure data is FAIR (Findable, Accessible, Interoperable,
and Reusable) for both public and private sector use.
● Collaborative Problem Solving: Ability to work in multi-disciplinary agile teams, bridging the gap between
policy requirements and technical delivery.
● Governance & C...

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