Applications Engineer

Matchtech
Farnham
2 months ago
Applications closed

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Our client, a specialist in intelligent drive technology and systems in the automotive sector, is currently seeking a dedicated Application / Field Service Engineer to join their team in London. This permanent, full-time role combines home-based and customer site-based responsibilities, supporting the UK and Ireland markets.


Key Responsibilities:

  1. Work closely with Customer/OEMs to understand their specific requirements and develop solutions
  2. Maintain a deep understanding of the automotive market, trends, and technologies
  3. Engage in joint development projects with other OEMs, including problem-solving and technical advice
  4. Maintain quality control standards and ensure compliance with industry regulations
  5. Prepare technical documentation, including user manuals and specifications
  6. Provide technical support for sales and commissioning
  7. Project planning for electric drivetrains for commercial vehicles
  8. Conduct feasibility studies for vehicle design based on VEDS modular system
  9. Analyse vehicle data recordings and test prototypes
  10. Commission and accept new vehicles
  11. Ensure excellent and consistent customer service to both external and internal customers
  12. Support the implementation of standardised working practices
  13. Assist internal stakeholders in planning future projects


Job Requirements:

  1. Experience in electrical engineering and embedded C/C++
  2. Understanding of SimuLink, MATLAB
  3. Bachelor's degree in Mechanical or Electrical Engineering
  4. Experience in the automotive industry
  5. Knowledge of commercial automotive systems and components
  6. Proficiency in C/C++ programming
  7. Capable of handling Vector CANalyzer and Vector Toolchain
  8. Excellent problem-solving, communication, and project management skills
  9. Ability to work collaboratively with various departments


If you are an experienced Application / Field Service Engineer looking for a new opportunity within the automotive sector, our client would love to hear from you. Apply now to join a dynamic and innovative team in Croydon.

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