Power Electronics Engineer

iO Associates - UK/EU
Glasgow
1 month ago
Applications closed

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Electronic Engineer - Power Conversion Products
Location:Glasgow, Scotland

Are you an experiencedElectronic Engineerwith a passion forpower conversion technology? We have an exciting opportunity to join aglobal leaderin power management solutions, working on cutting-edgebattery chargersfor industrial automation, material handling, and electrification applications.

About the Role:

As anElectronic Engineer, you will play a key role in thedesign, development, and optimizationof power electronics solutions. You'll have the chance to take products fromconcept to mass production, collaborating withsystem architects, mechanical engineers, control specialists, and PCB designersto drive innovation in the field.

What You'll Do:

  • Improve and develop power conversion products for industrial applications
    Simulate switching converters using tools likeMathcad, Simplis, SPICE, and MATLAB/Simulink
  • Design and review schematics, magnetic designs, power loss calculations, and parts lists
  • Work withLLC, phase shift converters, and active PFC
    Ensure compliance withEMC/EMI/shieldingrequirements

What We're Looking For:

  • Degree inElectronic Engineeringor related field
  • Experience withACDC and DCDC converters
  • Strong knowledge ofpower electronics design, semiconductors, magnetics, and control theory
  • Hands-on experience withoscilloscopes, dataloggers, AC/DC sources, and electronic load
  • Ability to collaborate with cross-functional teams and work in a structureddesign process

Why Join?

  • Work on cutting-edgeelectrification and automationprojects
  • Be part of aninnovative, global teamdriving sustainability in power solutions
  • Enjoy acompetitive salary and benefits package
  • Opportunities forinternational collaboration and travel

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