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Experimental Data Engineer

Hays
Kidlington
5 days ago
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Your New CompanyJoin a cutting-edge engineering organisation at the forefront of advanced manufacturing and propulsion technologies. With a global footprint and a strong UK base, this venture-backed company is pioneering the development of high-performance microturbine engines using proprietary materials and additive manufacturing techniques. You'll be part of a multidisciplinary team of engineers, scientists, and software developers working on next-generation solutions for jet propulsion.Your New RoleAs an Experimental Data Engineer, you'll play a key role in building, maintaining, and optimising engine test rigs and data acquisition systems. Reporting to the Testing Lead, you'll collaborate closely with design and experimental teams to validate new components and control systems. Your work will directly influence the performance and scalability of innovative propulsion technologies.You'll be primarily based at the company's manufacturing site in Yarnton, with occasional travel to nearby testing facilities. A competitive salary and equity incentives are offered.Key Responsibilities:Develop and maintain LabVIEW-based data acquisition systems using NI DAQ hardwareSupport data post-processing and analysis (e.g. Python)Investigate and implement new sensor technologiesAutomate workflows for data capture and processingMaintain clean code practices and version control in collaborative environmentsWork cross-functionally to ensure experimental feasibility and infrastructure readinessWhat You'll Need to SucceedEssential:1-3 years of industry experience in experimental data capture, or equivalent PhD experienceProficiency in LabVIEW or similar data acquisition platformsStrong understanding of hardware/software integration for high-speed, high-temperature systemsDegree in mechanical, aeronautical, or related engineering/STEM disciplineExperience with collaborative coding (e.g. Python, C, Git)Excellent problem-solving, communication, and organisational skillsDesirable:Full LabVIEW system design experience (front-end and back-end)Basic electrical and electronics knowledge, including circuit designExperience with embedded electronics (e.g. Arduino, STM32)UX design for control systems and data visualisationWhat you need to do now If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now.If this job isn't quite right for you, but you are looking for a new position, please contact us for a confidential discussion about your career.Hays Specialist Recruitment Limited acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers. By applying for this job you accept the T&C's, Privacy Policy and Disclaimers which can be found at hays.co.ukTPBN1_UKTJ

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