Sort by
Refine Your Search
-
Listed
-
Employer
- KINGS COLLEGE LONDON
- Nature Careers
- UNIVERSITY OF VIENNA
- University of Birmingham
- University of Liverpool
- University of London
- University of Oxford
- University of Oxford;
- AALTO UNIVERSITY
- Bournemouth University;
- Heriot Watt University
- John Innes Centre, Norwich;
- King's College London
- Lund University
- Queen Mary University of London;
- University of Cambridge;
- University of Liverpool;
- 7 more »
- « less
-
Field
-
(LCCS) at the University of Liverpool. You will join an ambitious EU-wide collaboration ( ARISTOTELES: Artificial intelligence to define clinical trajectories for personalised prediction and early
-
artificial intelligence is transforming welfare governance and migration management across Europe. The study spans the UK, the Netherlands and Sweden and investigates how automated decision-making systems
-
robotics, automation, artificial intelligence (AI), and data-driven technologies. This is a multidisciplinary collaborative project supervised by Dr John Ward, Professor. Andy Cooper FRS, and Dr Gabriella
-
central London. The successful applicant will work on PRECISE-AI (Probabilistic Reasoning with Circuits for Safe and Explainable Artificial Intelligence), a research project funded by the Engineering and
-
have or be close to finishing a PhD in bioinformatics, artificial intelligence, biophysics, or computational biology. The ideal candidate will have demonstrated experience in developing and applying
-
, This opportunity allows a postdoctoral researcher to work on an industrially facing project, applying artificial intelligence (AI) methods to better inform processing to obtain high-quality engineering polymers from
-
for 12 months, This opportunity allows a postdoctoral researcher to work on an industrially facing project, applying artificial intelligence (AI) methods to better inform processing to obtain high-quality
-
central London. The successful applicant will work on PRECISE-AI (Probabilistic Reasoning with Circuits for Safe and Explainable Artificial Intelligence), a research project funded by the Engineering and
-
analysis and interpretation experience that is guided by theoretical/physical understanding and not only by application of statistical methods or artificial intelligence; A good team spirit and willingness
-
robotics, automation, artificial intelligence (AI), and data-driven technologies. This is a multidisciplinary collaborative project supervised by Dr John Ward, Professor. Andy Cooper FRS, and Dr Gabriella