Powertrain Project Engineer

www.fish4.co.uk - Jobboard
Coventry
2 months ago
Applications closed

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Powertrain Project Engineer

Coventry

An opportunity to work for a consultancy who are a market leader in their field, they are looking for talented and motivated Powertrain Project Engineers to become a crucial part of their team.

The company offers a range of engineering services which include vehicle integration, calibration, and homologation for advanced internal combustion engines, hybrid powertrains, and EVs. This role is based in Coventry, at a brand-new facility, offering an excellent salary with benefits and the opportunity to work on a variety of powertrain projects for clients around Europe.

As Powertrain Project Engineer, you will oversee the daily operations of Test Cells, ensuring efficient and effective management of the testing processes.

What You Will Do as Powertrain Project Engineer:

  • Communicate with customers to ensure the accuracy of the test plan
  • Write detailed test specifications
  • Develop test scripts, either from scratch or by modifying existing components
  • Support the installation of test objects into test rigs
  • Commission test objects within the Test Cells
  • Maintain engines and Test Cells
  • Program and monitor drive cycles
  • Manage hydrogen programs for internal combustion engines (ICE) and fuel cells (FC)
  • Interpret project targets and write corresponding test specifications

What You Will Bring as Powertrain Project Engineer:

  • A relevant degree with proven industry experience
  • Knowledge of internal combustion engine operating principles, ideally with hands-on experience in engine strip down, repair, and assembly
  • Understanding of fuel injection, ignition, and emission component operation
  • Knowledge of powertrain systems (e.g., fuel, ignition, and emissions)
  • Experience in test bed operation and test bed control systems
  • Proficiency in using engineering software such as Inca, UniPlot, and MatLab
  • Capability to operate and modify complex Excel files for data analysis tasks

Interested?

If you have a relevant engineering degree, hands-on engine experience, and knowledge in powertrain systems, this is the perfect opportunity to take your career to the next level, joining a leading consultancy where you play a key role managing test cells for advanced powertrain projects across Europe.

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