Data Engineer - Aerospace - Manufacturing - Abingdon

Bond Williams
Abingdon
2 weeks ago
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A rapidly growing specialist manufacturing business is looking to recruit a talented Data Engineer to join their newly established product development program, based in Abingdon (OX14). This is an exceptional opportunity to be at the forefront of aerospace innovation, working with advanced materials and additive manufacturing to revolutionize jet engine performance.

Data Engineer key responsibilities:

  • Design and maintain robust data logging frameworks to capture real-time jet engine performance metrics
  • Build scalable data architectures for processing and analyzing complex experimental data
  • Create versatile sandbox environments for rapid prototyping and fast iteration
  • Own the data acquisition platforms that enable breakthrough testing capabilities
  • Collaborate directly with testing engineers to ensure experiments are feasible from an infrastructure standpoint
  • Develop automated workflows for platform-agnostic post-processing and self-service data access
  • Implement clean code practices with strict version control across code repositories
  • Build dashboards and control systems for real-time test monitoring
  • Enforce data security, privacy, and compliance standards

Key requirements for Data Engineer:

  • Minimum First Class Degree (MSc preferred) in Engineering, Computer...

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