Data Architect - NHS Foundry - Contract

London
23 hours ago
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Data Architect – NHS Foundry  - Contract 
Contract | £550 per day | Hybrid (UK-based)

Morela is supporting one of the UK’s fastest-growing data consultancies, delivering high-impact transformation projects across the public sector.

We are looking for a Data Architect with NHS Foundry experience to join on a contract basis, working on complex, large-scale healthcare data programmes.

The Role

Design and architect scalable, end-to-end data solutions

Lead on data integration, modelling, and platform design using Palantir Foundry (NHS Foundry)

Work closely with stakeholders to translate business challenges into technical solutions

Provide architectural guidance across data platforms, pipelines, and workflows

Support delivery teams to ensure best practice and high-quality outcomes

What We’re Looking For

Proven experience as a Data Architect within complex environments

Strong exposure to NHS Foundry / Palantir Foundry

Deep understanding of data architecture, integration, and transformation

Experience working with large, multi-source datasets (ideally within healthcare)

Ability to engage and influence both technical and non-technical stakeholders

Why Apply?

£450 per day contract

Hybrid working

Opportunity to work on impactful NHS data programmes

Exposure to Palantir Foundry, AIP, and Gotham

Join a rapidly scaling, high-performing consultancy

Please email your CV to  for immediate consideration

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