Graduate Hardware Engineer

Gerrell & Hard Ltd.
Coventry
1 month ago
Applications closed

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Join a leading global automotive technology supplier in the UK, committed to advancing mobility through innovative solutions focused on safety and sustainability.

Role Overview:
We are seeking a motivated Graduate Engineer to support hardware for Diesel Fuel Injection Equipment (FiE), ensuring production continuity for EU and global diesel customers. Experience with base Engine / Diesel / Powertrain / Fuel Injection Systems would be advantageous.

Key relevant modules: Engineering design, Solid mechanics and dynamics, Fluid dynamics, Thermodynamics, Materials, Instrumentation and Control.

Key Responsibilities:

  • Design, test, and analyze Diesel FiE components.
  • Collaborate with manufacturing to address design challenges.
  • Conduct testing on injectors, pumps, and rails.
  • Manage tasks to meet quality standards and project goals.

Qualifications:

  • Bachelor’s degree (2:1 or higher) in Mechanical, Automotive, or Electronics Engineering.
  • Relevant experience in powertrain and diesel components.
  • Relevant Modules Studied: Engineering design, Solid mechanics and dynamics, Fluid dynamics, Thermodynamics, Materials, Instrumentation and Control
  • Proficiency in project management software (e.g., Confluence), MS Office, and Matlab/Simulink.

Personal Attributes:

  • Strong analytical and problem-solving skills.
  • Excellent communication and relationship-building abilities.
  • Proactive attitude with a focus on ownership and quality.

Excellent salary and benefits package & hybrid working.

Must be able to live and work in the UK with no restrictions to apply for this role.

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