Data Engineer

Noir
Kidlington
2 months ago
Applications closed

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Experimental Data Engineer - Advanced Engineering Start-Up - Oxfordshire

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. This fast growing company is redefining the future of high-performance engineered systems and advanced materials, 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.

As an Experimental Data Engineer, you will design, build, and maintain advanced testing and data acquisition systems. You will configure hardware, integrate sensors, and develop software to collect, process, and visualise complex datasets, turning raw data into actionable insights that drive performance and product development. You will also automate workflows, expand experimental capabilities with new technologies, and collaborate closely with design and engineering teams to ensure all tests are feasible, accurate, and impactful.

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How Many Data Engineering Tools Do You Need to Know to Get a Data Engineering Job?

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The Skills Gap in Data Engineering Jobs: What Universities Aren’t Teaching

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