Software Engineer

Aston Clinton
10 months ago
Applications closed

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Software Engineer

Location: Aylesbury, Buckinghamshire

Salary: £35K - £70K DOE + excellent benefits

Career Smart are working with a client that specialise in the design and development of innovative surgical devices. Located near Aylesbury, they are located in a state of the art facility.

We are seeking a Software Engineer to join a team of electronic and mechanical engineers, developing code that will be used in next generation medical devices. The projects will be developing image processing and machine learning algorithms on medical data for use in surgical applications.

You will be degree qualified in Software Engineering or Computer Science (or similar), image processing experience would be highly beneficial, and experience and knowledge in the following:

1-5 years’ commercial experience

Linux, JavaScript, C++, Python

Robotics, Computer Vision, Image Processing or Machine Learning

This Software Engineer role will attract an excellent salary and benefits, and an opportunity to join an ambitious and growing company. To find out more, please apply, and we will be in touch to discuss

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