Performance Systems Engineer

PE Global International
Peterborough
4 months ago
Applications closed

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PE Global is recruiting a Performance Systems Engineer for our manufacturing client based in Peterborough. The role is an initial 12-month contract and the role is hybrid. The rate range for this role is £29.20 - £39.23 p/h. Diverse role where they are managing interface between engine products and machine. Scope for candidate to get involved in various parts of the process. Responsibilities of the role:• The Performance Systems Integration Engineer role will be focused on the development of our current and future products, and the successful candidate will work alongside other highly talented Engineers, utilising their problem-solving skills and technical knowledge to make data driven decisions to create new solutions, ensure product quality and emissions compliance.• The Performance Systems Integration (PSI) team are responsible for end-to-end definition of the performance system: • Requirements - System architecture, calibration requirements and control system definition • Detailed technical trade-offs and control system development, through use of simulation and analytical tools• Technical problem solving and issue resolution• Integration of our products into customer applications• Demonstrate product quality, emissions conformance, and product signoff Requirements:• Minimum 4+ years relevant experience. Control/simulation background. Technical background and understanding is a must.• Matlab/Simulink, Office 365. GT Power or Ricardo wave experience is highly desirable for transferable skills. • Technical expertise of IC engines, performance simulation tools 0D/1D and control systems• Great data analysis and problem-solving ability• Accredited Engineering/Science/Technology, Bachelor’s/Master’s degree or PhDPlease note PE Global cannot assist with sponsorship. Candidates will need the full right to live and work within the UK for at least the next 12 months. Although it is not possible for us to respond to all applications, we at PE Global will do our upmost to give you feedback on your application. You have sent your Cv into us as a company and even though you have sent your CV to a particular position, we are making the reasonable assumption that you are active on the job market and as part of our normal recruitment service we will discuss other suitable positions with you. You are free to opt out of this so please specify in your application to us if you just want to be contacted in relation to a specific vacancy. Your Cv is sent to a central recruitment inbox which a number of people in the applicable PE Global division have access to and so this means that you might not be contacted by the named person in this advert

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