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Data Architect / BI Architect

SR2 | Socially Responsible Recruitment | Certified B CorporationTM
London
2 days ago
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Geospatial Data Architect (Data Modelling | EA Sparx) Outside IR35 | Remote | £500-£550

SR2 is partnered with a leading consultancy delivering a national-scale geospatial and land data ecosystem for a high-profile public sector client. We're looking for an experienced Geospatial Data Architect to define and govern the data architecture that underpins basemap development, land data modelling, and platform assessment workstreams.

This is a key role shaping how spatial data is modelled, integrated, and managed across a modern, cloud-enabled environment, ensuring data quality, consistency, and interoperability across the ecosystem.

Define and document conceptual, logical, and physical data models for geospatial and land data domains using EA Sparx
Establish data standards, attribute schemas, and metadata frameworks to drive consistency across a common spatial framework
Design data management solutions that support both batch and streaming processes, with clear handling of current and historical data
Conduct gap analysis between existing datasets and future platform requirements
Evaluate data licensing, ownership, and contractual constraints affecting reuse and publication
Assess data governance and stewardship maturity, recommending improvements where required
Support feedback and update workflows for identifying and correcting data issues
Align solutions with enterprise data architecture patterns, organisational data policies, and open data principles
Work closely with cloud and platform architects to design performant, secure data storage solutions
Produce documentation for the as-is and to-be data landscape, model definitions, and governance structures

Proven experience as a Data Architect within geospatial or land data environments (public sector preferred)
Strong knowledge of metadata standards (ISO 19115, INSPIRE, GEMINI) and data governance frameworks
Experience conducting data quality, completeness, and consistency assessments
Strong communication and collaboration skills, with the ability to bridge technical and policy domains

Remote
~ Start ASAP
~ Contract 6 months + extensions

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