Research Associate: Deep Generative Modelling

Research Associate: Deep Generative Modelling

Full-Time 60000 - 80000 £ / year (est.) No working from home possible
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At a Glance

  • Tasks: Conduct innovative research in deep generative modelling for infectious diseases.
  • Company: Join the prestigious Imperial College London and collaborate with top researchers.
  • Benefits: Enjoy research freedom, professional development, and a vibrant academic environment.
  • Other info: Opportunity to work closely with renowned experts in the field.
  • Why this job: Make a real difference in public health through cutting-edge research.
  • Qualifications: Strong background in probabilistic machine learning and passion for infectious diseases.

The predicted salary is between 60000 - 80000 £ per year.

Imperial College London is seeking a Research Associate (Postdoc) in Deep Generative Modelling for Infectious Diseases. This position offers substantial research freedom in deep generative modelling and related areas. The ideal candidate will work closely with Dr. Elizaveta Semenova and renowned researchers, contributing to the analysis of infectious diseases.

A solid foundation in probabilistic machine learning and genuine interest in infectious diseases are essential for this role.

Research Associate: Deep Generative Modelling employer: ML Scientist

Imperial College London is an exceptional employer, offering a vibrant research environment that fosters innovation and collaboration in the field of deep generative modelling. With access to world-class resources and the opportunity to work alongside leading experts, employees benefit from a culture that prioritises professional growth and impactful research on infectious diseases. The institution's commitment to academic excellence and interdisciplinary collaboration makes it an ideal place for those seeking meaningful and rewarding careers in research.

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Contact Details:

ML Scientist Recruitment Team

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We think this is how you could land Research Associate: Deep Generative Modelling

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We think you need these skills to ace Research Associate: Deep Generative Modelling

Deep Generative Modelling
Probabilistic Machine Learning
Infectious Diseases Knowledge
Research Skills
Data Analysis
Collaboration
Analytical Thinking

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