Future Opportunities - Data Science

Machine Medicine Technologies
London
6 months ago
Applications closed

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About us

Machine Medicine Technologies is facilitating the next generation of neurotherapeutics by building software for the intelligent personalised optimisation of neuromodulation and other precision therapeutics. Our flagship product Kelvin is in use at multiple deep brain stimulation (DBS) sites across the globe enabling the collection of large datasets of unparalleled quality. This data is being utilised to develop a SaMD (Software as Medical Device) tool for automated clinical assessment of Parkinsons disease. The FDA awarded our technology Breakthrough Device Designation recognizing its potential to revolutionize the MedTech industry.

Culture

At Machine Medicine we are a fast-moving startup with a dynamic team that is passionate about using AI to disrupt the MedTech industry. We encourage our employees to take advantage of career development opportunities that are not typically available at larger established companies. Our offices are nestled within the vibrant cities of London and Cambridge designed to encourage face-to-face interaction. We firmly believe the best part of collaboration and synergy happens when the team works under one roof. We value work-life balance and offer a casual dress code.

Future Opportunities

Are you interested in joining the Data Science team at Machine Medicine but have not found a suitable position among our openings Share your CV with us through our online portal. We will have your information on file and will be able to consider you for potential roles where you might be a great fit. Please note that all of our jobs are on site in London.


Key Skills
Healthcare Attorney,General Insurance,Attorney At Law,Core Banking,Import & Export,Airlines
Employment Type :Full Time
Experience:years
Vacancy:1

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