Data Architect

Anson Mccade
Woking
1 month ago
Applications closed

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£Up to £90,000 GBP


Hybrid WORKING


Location : London; Norwich; Watford; Colchester; Chelmsford; Woking; Chatham; Slough, Central London, Greater London - United Kingdom Type : Permanent


Must Have : Active SC


Join a world-class organisation building mission-critical data architectures for Defence, National Security, and Public Sector programmes. Our client is proud to be a Fortune "World's Most Admired Company" - recognised eight years in a row for innovation, integrity, and long-term excellence. Their commitment to supporting the Armed Forces community has also been honoured with the ERS Gold Award. If you're passionate about shaping secure, scalable data ecosystems that underpin national security, this is the opportunity for you.


As a Data Architect - Defence, you will lead the technical vision and design of high-impact data architectures that support critical programmes. Working directly with customers, you'll guide the design, development, assessment, and optimisation of data ecosystems across complex Defence and Public Sector environments.


You will join a culture grounded in collaboration, integrity, and continuous learning - where your expertise helps set standards, influence strategic direction, and deliver data solutions at the scale and sensitivity that matters.


You'll h...


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