Junior Electronics Engineer

Bournemouth
9 months ago
Applications closed

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Junior Electronics Engineer - £35k – Bournemouth

Hexwired Recruitment has partnered with a well established Electronics manufacturer in Bournemouth now seeking a Junior Electronics Engineer with good experience working on PCB Design and General Electronics.

The company are rapidly expanding due to new product development. The company are working in a well established and continuously growing industry. They also have an extensive range of products in the market.

As a Junior Electronics Engineer, you will be designing General Electronics for a range of low power sensors.

Key Skills:

  • Degree in Embedded systems, Computer Science or similar

  • 1+ years commercial Hardware Design

  • Previous experience working on PCB Design

  • Good Serial Comms experience (SPI, I2C etc)

  • Exposure to Embedded C is advantageous but not essential

    The company are rapidly expanding and are at the forefront of their industry. They are looking to pay circa £35k dependent on experience along with an excellent benefits package. If you’re interested in this Junior Electronics role, please apply.

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

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