Lead Data Engineer / Architect (SC cleared)

Addition
Farnborough
3 days ago
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Introduction

This organisation designs and delivers secure digital solutions that sit at the heart of Defence and National Security. As a Data Architect, you’ll help shape how complex, sensitive data is structured, protected and used across multiple high-impact programmes.

Overview:

  • Location: Farnborough (hybrid working available)
  • Role: Contract (Outside IR35)
  • Industry: Defence / Secure Digital Technology (Active SC Clearance required)

What You’ll Be Doing:

  • Designing end-to-end data architectures that support secure, mission-critical systems
  • Creating data models, integration patterns and data flows that stand up in complex environments
  • Working closely with engineers, clients and stakeholders to turn business needs into practical data solutions
  • Embedding governance, security and compliance into every layer of the data stack
  • Advising on the right technologies — from cloud platforms to analytics and data lake solutions — for secure use cases
  • Supporting delivery teams with implementation across ETL, data platforms and analytics tooling
  • Producing clear, high-quality architectural documentation and contributing to internal standards
  • Mentoring junior team members and helping raise the bar across data engineering and architecture
  • Keeping an eye on emerging data technologies and bringing fresh ideas into live programmes

Main Skills Needed:

  • Proven experience as a Data Architect or senior-level Data Engineer in complex or regulated environments
  • Strong grounding in data modelling (conceptual through to physical) and data integration
  • Experience working with cloud platforms (AWS, Azure or GCP) and modern data architectures
  • Confidence working with SQL, Python or similar data-focused languages
  • Understanding of secure data handling, governance and compliance requirements
  • Clear communication skills and the ability to work comfortably with technical and non-technical stakeholders

What’s in It for You:

  • The chance to work on genuinely meaningful programmes within Defence and National Security
  • Exposure to cutting-edge, secure-by-design digital and data platforms
  • A collaborative environment made up of experienced technologists and leaders
  • Opportunities to influence strategy, not just implementation
  • Ongoing professional development and support as the organisation continues to grow
  • A culture that values innovation, pragmatism and doing things properly

Call to Action:

Big plans. Big impact. Ready to be part of it?

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