Data Engineer

Anson Mccade
Woking
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

£Up to £65,000 GBP


Hybrid WORKING


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


Type: Permanent


Must Have: Active SC Clearance


Overview

Join a world‑class organisation delivering mission‑critical data solutions for Defence, National Security, and Public Sector programmes.


Our client is a Fortune 500 Most Admired Company for eight consecutive years and the holder of the MoD Employer Recognition Scheme Gold Award, recognising excellence in supporting the Armed Forces community.


Key Responsibilities

  • Shape secure, scalable data pipelines underpinning critical national infrastructure and defence systems.
  • Collaborate with top‑tier engineers, and stakeholders to deliver robust data solutions supporting decision‑making across Defence, Government and Public Sector clients.
  • Help set technical standards and drive continuous improvement within a people‑first, innovation‑driven culture.

Qualifications

  • Active SC Clearance.
  • Strong background in data engineering, data pipelines, and cloud technologies.
  • Experience with secure, scalable data solutions for Defence or national security environments.

Benefits

People‑first culture encouraging collaboration, continuous learning and professional growth. Every idea matters.


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