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Senior Software Engineer - Aerodynamics

Copello Careers
Preston
10 months ago
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Senior Software Engineer - Aerodynamics

Copello are working with an International defence client who are growing their Aerodynamics team. Primary responsibility involves coordinating and advancing engineering toolsets and models specific to aerodynamics. The focus is on developing MATLAB/Simulink-based toolsets within established governance frameworks and best practices.

This role is instrumental in supporting Aerodynamics Discipline engineering analyses and future activities across all projects, including both future and in-service aircraft. This role is not only about toolset development but also about contributing to the strategic advancement and innovation within the realm of aerodynamics engineering.

Location:Warton 3 days pw on site. 2 days home working

What youll be doing:

  • Co-ordinate and manage the development of new Aerodynamics Engineering toolsets. Including the planning and reporting on progress of new toolset releases.
  • Liaising and working with Aerodynamic Discipline Teams and Projects to collate and harmonise requirements and future developments to provide a common engineering toolset.
  • Develop future initiatives to align with Digital Engineering framework and ...

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