Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- ;
- University of London
- University of Exeter
- UNIVERSITY OF SOUTHAMPTON
- The University of Southampton
- University of Oxford
- King's College London
- KINGS COLLEGE LONDON
- Plymouth University
- University of Leicester
- University of Surrey
- Cranfield University
- UK Dementia Research Institute
- UNIVERSITY OF SURREY
- University of Bristol
- University of Cambridge
- University of Leeds
- University of Liverpool
- ; Technical University of Denmark
- ; University of Aarhus
- CRANFIELD UNIVERSITY
- Lancaster University
- Leverhulme Trust
- St George's University of London
- 14 more »
- « less
-
Field
-
About the role The Stoneygate Centre for Empathic Healthcare is seeking to appoint an ambitious Research Fellow specialising in medical statistics and evidence synthesis. This is an excellent
-
statistical and algorithmic foundations for systems involving multiple incentive-driven learning and decision-making agents, including uncertainty quantification at the agent’s level. The project will
-
of Masters Programmes and a substantial number of postgraduate research students. We undertake research on a wide range of issues relating to human evolution, with a fo cus on model-based statistical inference
-
professional knowledge and successful track record in securing research funding. As a member of the LRWE, you will undertake statistical analysis of cardiometabolic real-world data from classical observational
-
health and social care challenges of the 21st century. We employ traditional statistical and epidemiological methods, alongside cutting-edge artificial intelligence algorithms to gain insights into real
-
Exeter Clinical Trials Unit (ExeCTU); Faculty of Health and Life Sciences Summary of Post Exeter Clinical Trials Unit (ExeCTU) is seeking an ambitious individual to join our growing statistical
-
conducting high-quality and innovative research addressing complex health and social care challenges of the 21st century. We employ traditional statistical and epidemiological methods, alongside cutting-edge
-
multidisciplinary team conducting high quality and innovative research addressing complex health and social care challenges of the 21st century. We employ traditional statistical and epidemiological methods
-
addressing complex health and social care challenges of the 21st century. We employ traditional statistical and epidemiological methods, alongside cutting-edge artificial intelligence algorithms to gain
-
century. We employ traditional statistical and epidemiological methods, alongside cutting-edge artificial intelligence algorithms to gain insights into real-world problems. This is combined with qualitative