Application Engineer - Northern Ireland

Manpower
1 month ago
Applications closed

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Job Opportunity: Application Engineer - Electric Drivetrains

Are you ready to drive innovation in the automotive industry? Manpower are working with a specialist in intelligent drive technology and systems organisation to recruit a dynamic and skilledApplication Engineerto join their team. Based in Ireland but predominantly home and customer site-based, this is an exciting opportunity to work on cutting-edge projects.

About the company: They offer high-efficiency, reliable solutions to industries such as oil and gas, energy, mining, ship technology, rail, and commercial vehicles. Our work spans developing new build solutions with OEMs to providing full aftermarket support, including spare parts, repairs, and overhaul services.



The Role

As anApplication Engineer, you will:

  • Collaborate with Customers and OEMs to understand their needs and develop tailored solutions.

  • Support joint development projects, offering technical advice, troubleshooting, and quality assurance.

  • Plan and execute electric drivetrain projects, conducting feasibility studies and analysing vehicle data.

  • Test and commission prototype and new vehicles.

  • Ensure products meet industry standards and regulations, providing consistent customer service.

  • Assist with preparing technical documentation, including user manuals and specifications.

  • Participate in technical service meetings, both on-site and online.

  • Act as the first point of contact for customer queries and complaints.

  • Contribute to internal planning and training initiatives to support future projects.



What We're Looking For

We're seeking adaptable, forward-thinking professionals with:

  • Education: Bachelor's degree inMechanical EngineeringorElectrical Engineering.

  • Experience: Background in field services or theautomotive industry, with expertise in commercial automotive systems.

  • Technical Skills:

    • Knowledge ofelectric drivetrainsand electrical engineering.

    • Proficiency inMatlab/Simulink/StateflowandC/C++ programming.

    • Experience using tools such asVector CANalyzerand theVector Toolchain.

  • Soft Skills: Exceptional problem-solving, communication, and project management abilities.

  • A proactive mindset and ability to thrive in challenging environments.




What We Offer

  • Salary: £50,000 - £60,000 (depending on experience) +annual bonus.

  • Work Schedule: 36.5 hours/week (Monday - Friday, with an early Friday finish).

  • Benefits:

    • Company vehicle for travel.

    • 25 days holiday (plus pro rata for new joiners).

    • Pension (3% employee, 6% employer).

    • Private healthcare and dental coverage.

    • Life assurance, cycle-to-work scheme, and salary sacrifice options.




Why Join Us?

  • Work on innovative projects that shape the future of commercial automotive technology.

  • Be part of a collaborative team that values professional growth and customer excellence.

  • Enjoy a role that offers variety, from hands-on technical work to project planning and customer engagement.


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