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Data Engineer

Noir
Oxford
3 days ago
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Experimental Data Engineer – Advanced Engineering Start-Up – Oxfordshire - Noir

We have an incredible opportunity for an Experimental Data Engineer to join one of the UK’s most exciting venture‑backed deep‑tech start‑ups. The company is redefining the future of high‑performance engineered systems and advanced materials by combining world‑class engineering with cutting‑edge data science, proprietary software, and additive manufacturing.


Innovation here isn’t theoretical — it’s hands‑on, tested, and built into the next generation of advanced products. In this role you’ll work alongside exceptional engineers, metallurgists, and software developers at the forefront of materials design, precision manufacturing, and experimental validation. This is a chance to be part of a team where experimentation, insight, and creativity directly influence real‑world technology.


Responsibilities

  • Design, build, and maintain advanced testing and data acquisition systems.
  • Configure hardware, integrate sensors, and develop software to collect, process, and visualise complex datasets.
  • Automate workflows and expand experimental capabilities with new technologies.
  • Collaborate closely with design and engineering teams to ensure all tests are feasible, accurate, and impactful.

Qualifications

  • Strong background in data acquisition systems, preferably using LabVIEW, Python, or C.
  • Hands‑on experience in hardware integration and control systems.
  • Comfortable working with high‑speed and high‑temperature data, familiar with electronics and sensors.
  • Experience in collaborative coding using tools such as Git.
  • PhD or industry experience in Mechanical, Aerospace, Electrical, or related STEM disciplines is highly desirable.
  • Additional experience in embedded electronics, performance testing, or UX design for control and visualisation systems is a strong advantage.

Benefits

  • Competitive salary with annual performance‑based bonuses.
  • Equity options — share in the company’s long‑term success.
  • Private healthcare and comprehensive wellbeing package.
  • Dedicated R&D time to explore new technologies and research ideas.
  • Annual training & conference allowance of £5,000 for personal development.
  • Flexible and hybrid working — work where you’re most effective.
  • Opportunities for international collaboration with teams in Europe, Asia, and the US.
  • 25 days holiday plus birthday off and extra days for long service.
  • Regular team offsites, guest talks, and hack weeks to spark innovation.
  • An open, supportive culture that values curiosity, creativity, and deep technical mastery.

Additional Information

  • Seniority level: Mid‑Senior level
  • Employment type: Full‑time
  • Job function: Information Technology
  • Industries: Information Services
  • Internal code: NC/LS/EXPDE

To apply for this position, please send your CV to Lina Savjani at Noir.


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