IC Design Architect

Chandler's Ford
1 year ago
Applications closed

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IC Design Architect - £100k – Chandlers Ford – semi remote

Hexwired Recruitment has partnered with a pioneering electronics manufacturer who are now seeking an IC Design Architect with a solid background in Digital IC Design.

The company are established globally, operating in a lucrative industry that they have cornered. They are now seeking an IC Design Architect ideally with good experience building Digital IC Design projects from the ground up.

The engineering team is well established, you will get the chance to work with some of the best engineers in the industry. You will be working as part of a dedicated team of Engineers. As the company is constantly developing new products, you will get the chance to see products from design to manufacture.

Key Skills:

  • Bachelors, Masters or PhD in Electronics, Control systems or similar

  • Excellent background in Digital IC Design

  • Excellent communication skills

  • Good previous experience working on Architecture

  • Exposure in Analog design is highly desirable but not essential

    The company are looking to offer circa £100k along with an comprehensive benefits package and semi remote working. If you would be interested in this IC Design Architect job, please apply.

    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, Golang Development, Machine Learning, Test, Electronics, FPGA design, Data Science or Simulation contact us today

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