Field Application Engineer

Solutions Driven
Glasgow
1 month ago
Applications closed

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Solutions Driven is looking for an experienced Field Application Engineer to support our growing client...



As a Field Application Engineer specializing in motor control and electric vehicle systems. You will play a crucial role in delivering cutting-edge power electronics solutions for motor drive and power inverter applications. Your expertise will bridge technical project requirements with customer relationship activities, ensuring seamless delivery of tailored solutions. Stay connected at the forefront of industry advancements by maintaining a strong understanding of power electronics, AI/ML technologies, and their applications


.

Key Responsibilities:-

  • Interpret customer technical needs to develop innovative motor control and power inverter application
  • Become an authority on our company’s pioneering technologies, advising both customers and internal team
  • Develop a high-level understanding of AI/ML concepts for model deployment in a digital twin environment
  • Utilize advanced monitoring tools for real-time performance tracking and predictive analytics within power electronics solution
  • Serve as the primary technical resource for onsite deployments at customer site



Qualifications:

  • The ideal candidate will have significant experience (5-10 years) in a customer-facing technical role, preferably in the power electronics, industrial automation, or automotive industry.
  • Ideal candidate should have a deep understanding of power electronics, including motor drives, power inverters, and semiconductor compone
  • Proficiency in system monitoring & predictive analysis
  • Excellent problem-solving skills applicable to real-world scenarios
  • Consultative approach with strong customer interaction skills
  • Existing industry contacts are advantageous but not required
  • Ability to interpret PCB schematics
  • Experience with MATLAB is desirable



This role requires both domestically and internationally, to meet with customers and provide on-site support.


This role offers you the opportunity to work on challenging projects while enjoying flexibility, competitive compensation, and participation in an employee incentive scheme. If you're passionate about advancing technology through innovative solutions, we invite you to apply!

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