Senior Embedded Engineer

IC Resources
Bristol
1 year ago
Applications closed

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Brand new opportunity for 2025!  I am seeking a Senior Embedded Software Engineer to join a growing company specialising in Computer Vision / Machine Learning / AI Technologies.  Suitable Senior Embedded Software Engineers will have 3yrs  - 15 yrs expertise developing low level applications with strong embedded C/C++, python, RTOS, linux  programming skills.   The Senior Embedded Software Engineer will be focussed on developing a next generation virtual reality system. Tasks will include developing drivers and infrastructure on embedded platforms for ARM microcontrollers. Developing on pre-emptive multithreaded RTOS  or embedded linux to meet real time constraints.   You should have the ability to move projects forward, learn and work effectively in unfamiliar areas and work well under pressure.

Super opportunity to get involved with some great technology. 

Competitive salary, hybrid working, flexi time and visa support.

Send your Cv to Emma Windows at IC Resources.

 

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