Lead Data Engineer

Tritanium Space, Defence & Technology Ltd.
Southampton
1 month ago
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Join a cutting-edge company at the forefront of technology, where innovation isn’t just encouraged, it's part of the daily routine. We’re seeking a passionate and driven Data Engineer to amplify our client’s mission and join a thriving team.

Not only will you be contributing towards building some awesome tech, you’ll be shaping the future of robotics operations. As part of the growing team, you’ll be surrounded by visionaries, engineers, and creatives who thrive on challenge and collaboration.

As a key member of the Engineering team, you’ll be the engine behind our products. You’ll support the development and execution of projects, new products, upgrades and deployment.

Responsibilities
  • Lead Data Engineering operations
  • Evolve the first version of the Cloud Data platform using AWS or Azure
  • Build and operate data pipelines
  • Embed secure-by-design controls
  • Collaborate with wider engineering teams to help deliver company products
  • Data Architecture and Systems Design
  • Strong Python
  • Strong Cloud ecperiece (AWS or Azure)
  • Strong SQL knowledge
  • DevSecOps experience (CI/CD, infrastructure as code, automated testing, version control)
  • Ability to be SC Cleared
What You’ll Bring
  • A degree or experience in Computer Science, Engineering or a related field
  • Professional experience in Data Engineering
  • Comfortable working independently and as part of a team
  • Be part of a mission-driven company shaping the future of Technology
  • Excellent opportunity for career progression with a growing company
  • Very competitive salary and packages
  • Work with a passionate, multidisciplinary team
  • Enjoy flexible working, professional development, and a culture of innovation
  • Make your mark in one of the UK’s most exciting industries

Note: Candidates must live in the UK and have 'Right to Work'. Sponsorship is not available for this position.

For more information, please apply ASAP and contact Oli Rayner at Tritanium Space, Defence and Technology.


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