Software Integration Engineer

Langham Recruitment
Wymondham
1 year ago
Applications closed

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Software Integration Engineer | Automotive Technology | NorfolkOur client, who is based on the outskirts of Norwich, is an established automotive company with a global client base. They are recruiting for an integration Engineer focusing on real-time applications using tools such as dSpace HIL and MATLAB.As an Integration Engineer, you will play an important role in designing, developing, and maintaining software solutions. Your focus will be on optimising performance through the use of physics modelling at the core of the application.Job Responsibilities:Responsible for the integration of various complex real-time systems involving software and hardware using tools such as Concurrent RT, Adams RT, and dSPACE HIL.Work collaboratively with a multi-functional team to outline software requirements and specifications.Work to specific specification documents to ensure all projects are completed to customer requirements.Identify faults within systems and implement software-driven process improvements.   Skills:Experience working with MATLAB and SimulinkExperience working with real-time applications and tools such as Concurrent RT, Adams RT, and dSPACE HILExperience working on complex systems involving both software and hardware components. Why Join:Full benefits package including holiday and pensionFantastic facilitiesCompetitive salary

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