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Embedded Electronics Engineer

Platform Recruitment
Reading
11 months ago
Applications closed

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Embedded Electronics Automation Engineer - £30 - 50k DOE– Reading - On-SiteMy client is a world renowned start-up in their niche providing one-of-a-kind solutions to a range of industries. Due to the start of a new innovative project, they are expanding their engineering team.Main duties:+ Combining embedded software with embedded electronics+ Developing automation software and hardware using artificial intelligence+ Programming control solutionsSkills and Experience Required:+ 2:1 degree in electronics, computer science, or relevant discipline+ Commercial experience with embedded electronics, including PCB design+ Experience coding embedded microcontrollers/IDEs/SBCs in Python/C+ Experience programming firmware in CBonus:+ Experience with AI accelerators, PyTorch, Tensorflow, OpenCV, Linux, CNNs+ Experience with gcode programmingWhat you’ll get:+ £30-50k+ Share options+ Clear progression path to a senior level in a highly anticipated start upIf you feel like you have the right skills and experience for this role, then please apply with a copy of your updated CV

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