Senior/Principal/Lead Systems Engineer, Rochester

TN United Kingdom
Rochester
1 month ago
Applications closed

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Job Reference:

f99eb224419e

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3

Posted:

10.03.2025

Expiry Date:

24.04.2025

Job Description:

Job Summary

We are looking for an experienced and talented Senior/Principal/Lead Systems Engineer to join us in the creation and support of a wide range of state-of-the-art products whilst developing themselves and others to become subject matter experts and leaders in the systems engineering community.

Your Role Will Involve:

  • Understanding operational scenarios and complex customers' needs to specify and manage requirements at multiple levels.
  • Maintaining and supporting existing in-service products.
  • Steering improved design changes to address obsolescence and REACH impacts.
  • Supporting enhanced fault investigation activities.
  • Leading root cause analysis, making use of best practice systems lifecycle processes alongside techniques such as Learn First and Agile. Providing a role model to others with clear technical and strategic guidance, coaching, and nurturing talent in other engineers.

Your Skills and Qualifications:

  • Significant proven experience developing and delivering systems in relevant product markets and/or domains, such as optical display units (Helmets/HUD's etc.), safety critical control systems, real-time displays or other safety-related systems, containing multiple technical disciplines such as electronics, mechanics, optics and/or software.
  • Proven experience in requirements management, design analyses, modelling and simulation, using tools such as DOORS and/or Siemens Polarion.
  • Proven experience in integration, test and verification of real-time and/or safety-related systems, with understanding of safety assessment and/or flight clearance processes including how these processes influence the product architecture and design.
  • Proven ability to connect and maintain effective interpersonal networks internally and across the community including significant customer and/or supplier liaison experience for technical aspects, verifying and obtaining agreement that customer needs are satisfied.
  • Proven ability to work with minimal guidance and make sound strategic decisions whilst collaborating to ensure the team understands, cooperates, and supports those decisions, taking responsibility for interdependent technical work package execution and associated outcomes.
  • A degree or equivalent qualification in a relevant Scientific/Engineering subject (e.g. Systems Engineering, Electronic Engineering, Physics or Mathematics).

It Would Be Beneficial To Have:

  • Familiarisation with Civil or Military Aviation design and safety standards.
  • Model Based Systems Engineering experience with tools such as Cameo, MATLAB and/or Simulink and design methodologies such as SysML.
  • An understanding of information assurance, cyber security and/or environmental impact aspects relating to real-time embedded engineering products.

Matchtech is a STEM Recruitment Specialist, with over 35 years’ experience.

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