Senior/Principal Software Engineer

iO Associates - UK/EU
Nuneaton
1 week ago
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Job title: Principal Software Engineer
Salary: Competitive
Location: Nuneaton


My client is on the lookout for aPrincipal Software Engineerto work on their groundbreaking fully active suspension system. Combining software and hardware to ensure a great vehicle handling and the smoothest ride of any vehicle on the roads today.


Going into production on their first purchase order this year, this is the most exciting time to join this fast paced, growing business.


Responsibilities:

  • Lead Software Activities to deliver ASPICE & ISO26262 compliant software component for the newest product iteration.
  • Define, design and deliver software products including requirements, interface specifications and software components
  • Work cross-functionally to design and deliver software components
  • Work closely with the software project manager to ensure all work processes are aligned
  • Authoring and integration of AUTOSAR components

Key skills and experience:

  • Minimum 5 years Automotive Tier 1 / Tier 2 / OEM experience in embedded system development.
  • Experience with MATLAB scripting and Simulink.
  • Delivering software to safety critical standards (ISO 26262, DO178c)
  • Strong understanding of software development standards and cycle (V-model)
  • 5 years in Automotive embedded system development

*enquire for a full JD


The successful candidate will be working on breakthroughactive suspensions systemsfor the automotive industry. Developing and maintaining the build automation environment, designing and developing software for the system.
The perfect role for a passionate, confident, organised and a driven team player. Someone who is constantly looking to improve and grow within their organisation.


If you want acompetitive salary, amazing benefitsand to work for an organisation that will help bring your engineering career into the future then reach out to learn more and I can share a full job description

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