Hardware Engineer

Premier Group
Cambridge
10 months ago
Applications closed

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An established company specialising in Embedded & Hardware solutions are looking for a Hardware Engineer to join their R&D team designing leading products for a wide range of applications including video capture, encoding, streaming, AI & machine learning.


Responsibilities:

  • Developing hardware for new, state-of-the-art products
  • Crafting schematic circuit designs using platforms such as Cadence, Orcad, or Altium
  • Conducting thorough reviews of PCB layouts
  • Producing comprehensive design documentation


Key Skills/Experience:

  • Degree in Electronics/Electrical Engineering or another relevant discipline
  • PCB design & layout
  • Schematic capture
  • High Speed Circuits & interfaces (PCIe, USB, Ethernet)
  • Microcontrollers & Peripherals (UART, I2C etc.)
  • FPGA design or implementation experience is beneficial


If you are interested in the position and think you have the skills required as a Hardware Engineer, please don’t hesitate to apply.


Any questions, contact Oliver Bainbridge at or call 01189 028 800.

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