Data Engineer - Central Gov - SC Cleared

London
1 day ago
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SC-Cleared Data Engineer/Architect – NoSQL/PostgreSQL (UK Government Project)
Inside IR35 | Remote with 1 Day per Month in London | Start: January 2026

We are seeking SC-cleared Data Engineers and Architects with experience across NoSQL and PostgreSQL technologies to support a major UK Government transformation programme starting in January 2026. The work will involve re-architecting a monolithic system into a microservices-based platform, contributing to data design, ownership models, and migration activity within a modern, AWS-hosted environment. Exposure to MongoDB is beneficial but not essential.

Key Experience Required

Experience as a Data Engineer or Architect in distributed/cloud-based systems
Proficiency with NoSQL databases (e.g. MongoDB, DynamoDB, Cassandra) and PostgreSQL
Data modelling and ownership design for microservices architectures
Familiarity with AWS and automation/scripting for deployment and migrations
Strong understanding of database performance, indexing, and security
Essential Requirements

Active SC Clearance
UK Government or regulated public sector experience
Remote-based, with one mandatory onsite day per month in London (non-expensable)
Start date: January 2026
May be required to complete a short technical assessmentTo register interest and join our SC-cleared talent pipeline, please submit your CV outlining your relevant experience and clearance status

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