Electronics Engineer

Midsomer Norton
9 months ago
Applications closed

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Electronics Engineer – Midsomer Norton - £45k - £55k

Hexwired Recruitment has partnered with a multinational Electronics manufacturer with offices in Midsomer Norton who are now seeking an Electronics Engineer with solid Mixed signal and PCB design experience, to help develop their latest range of products.

The company are recognised globally, and are expanding because of a healthy order book. The company are now seeking a Senior Electronics Engineer, ideally with experience working on FPGA based products.

This is an Electronics Engineer role, primarily hands on and you will be one of the main contributor for a brand new product the company is developing. Due to the nature of the work, this will be a mostly onsite role with occasional remote working.

Key Requirements:

  • Bachelors, Masters or PhD in Electronics, Embedded Systems, Maths, Physics or similar

  • 2+ years commercial Electronics engineering background (Mixed Signal design preferred preferred)

  • Excellent PCB design experience using Altium

  • Previously experience working on ruggedised electronics is highly desirable.

    The company are looking to offer circa £55k dependent on experience. Along with an excellent benefits package. If you’re interested in this Electronics Engineer role, please apply.

    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, FPGA, Power, analogue, Electronics, Golang Development, C# .net, Mechanical Design, Machine Learning, Data Science or Simulation contact us today

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