Senior Machine Learning Engineer

Barrington James
London
1 week ago
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Job Description

An impressive opportunity to work as a Senior Machine Learning Engineer has arisen for an exciting start-up company and their incredible team.


This role is a marvellous opportunity to help develop machine learning models and algorithms to assist in the data analysis of medical imaging. The company are in the process of producing ground-breaking work towards their fundamental goal of diagnosing and treating cancer at its most actionable and early stages.


This role will provide the opportunity to work to work alongside experienced healthcare professionals and with clinical healthcare data. As well as, working hard with other software and training computers to recognise and understand medical imaging data and subsequently make streamlined decisions based on the data from said images.


If you have strong experience in machine learning, specifically in medical image analysis the please read below.


Responsibilities:


  • Work across different aspects of machine learning research, assisting in developing ML models and analysing medical imaging data
  • Combine divergent tooling around medical images to form united pipelines and software solutions
  • Produce algorithms for medical image analysis to detect patterns and trends in cancer growth
  • Improving the accuracy of already deployed ML models by implementing superior...

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