Systems Integration Engineer

Advanced Resource Managers
Warton
1 year ago
Applications closed

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A market leading Defence & Aerospace client of ours is currently in the market for a integration Engineer to join on a permanent basis out their Warton office.


Role responsibilities:

You will lead the integration of engineering across all aspects of Air platforms & products, covering all stages in the engineering lifecycle – from concept to delivery, managing the maturity of our engineering solutions as they develop, taking any corrective action required and ensuring high standards and good engineering governance.


Your skills and experiences:

  • Degree educated in a STEM discipline or HND/HNC with sound experience of the Engineering Lifecycle
  • You can specialise in areas such as System Architecting, System Design, Configuration Control, Requirements Management or Qualification.
  • Evidence based experience in an engineering integration environment. (Applicants encouraged from Aerospace, Automotive, Rail and Nuclear Industries)
  • Experience of Model Based Engineering approaches and the supporting methods and toolsets. (Teamcenter PLM, DOORs, CAMEO, MATLAB, ANSYS)
  • Proficient in the use of Microsoft Office Products (Word, Excel & PowerPoint)
  • Good communication skills across all levels of an organisation
  • Self-starter and pro-active but with the ability to work effectively in a team

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