Senior Data Engineer - DV Clearance

Peaple Talent
Gloucester
1 day ago
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Senior Data Engineer | Gloucestershire | DV Clearance | £60,000-£80,000


Remote working: Onsite

Working Pattern: Full-time or 4 day working week available

Security Clearance: UK DV


The Opportunity

A leading UK organisation operating at the forefront of cyber security and data engineering is seeking a Senior Data Engineer to join a specialist data practice supporting defence, government, and critical national infrastructure programmes.


This is a hands-on role working with secure, large-scale data platforms in highly regulated environments.


What You’ll Do

  • Design and build secure, scalable data pipelines using Elastic Stack (ELK) and Apache NiFi
  • Manage real-time data ingestion, transformation, and integration
  • Monitor and optimise large-scale data flows for performance and reliability
  • Work closely with data and security teams to meet governance and compliance requirements
  • Support high availability, resilience, and disaster recovery


What We’re Looking For

  • UK DV Clearance or eligibility to obtain it
  • 3+ years’ experience as a Data Engineer in secure or regulated environments
  • Strong ELK Stack and Apache NiFi experience
  • Knowledge of secure data handling and governance
  • Scripting skills (e.g. Python, Bash)
  • Cloud platform experience (AWS, Azure, or GCP)

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