Systems Modelling Engineer

Copello
Livingston
1 year ago
Applications closed

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Exciting Opportunity for Systems Modelling Engineers!Position: Systems Modelling EngineerLocation: Livingston or Glasgow, ScotlandSalary: £60-65kContract: Permanent, Full-time (37 hours per week)Copello have partnered with a leading company in defence and aerospace technology. They are looking for passionate, skilled Modelling Engineers to join our growing Assured Position Navigation and Timing (APNT) Engineering team.What You'll Do: * Model, simulate, and assess navigation systems during the early phases of development. * Support model-based design for system conceptualisation and prototype development. * Assist in the design of complex systems, including System-on-Chip. * Engage in hands-on laboratory work and product testing.What We Need: * Proficiency in MATLAB and Simulink. * Strong problem-solving and analytical skills. * Experience in FPGA or Embedded Software Design. * SC Security Clearance (or eligibility). * A background in Navigation, DSP, or a related field is highly desirable. * Bachelor degree or PHD in Engineering, Physics or related subject (desirable) * Knowledge of System-on-Chip (SOC) (desirable)What We Offer: * Competitive salary and 25 days holiday (+ statutory). * Generous pension contribution (up to 10.5%). * Life assurance (6x salary). * Flexible working options and enhanced family leave policies. * Career development opportunities, including professional qualifications support.Join to be part of a diverse, dynamic team that is shaping the future of defence and aerospace. Apply now to make an impact

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