Sort by
Refine Your Search
-
Listed
-
Employer
- University of Birmingham
- ;
- Nature Careers
- University of Nottingham
- UNIVERSITY OF SOUTHAMPTON
- KINGS COLLEGE LONDON
- The University of Southampton
- CRANFIELD UNIVERSITY
- King's College London
- UNIVERSITY OF MELBOURNE
- University of Glasgow
- Cardiff University
- Cranfield University
- Imperial College London
- QUEENS UNIVERSITY BELFAST
- Queen's University Belfast
- Technical University of Denmark
- UNIVERSITY OF SURREY
- University of Cambridge;
- University of Exeter;
- University of Leeds
- University of Liverpool
- University of London
- University of Newcastle
- University of Oxford
- University of Sheffield
- University of Stirling
- 17 more »
- « less
-
Field
-
and values diversity acting as a role model and fostering an inclusive working culture Person Specification Essential: PhD (or near completion) in Computer Science, Data Science, AI, or a related field
-
Position Details School of Health Sciences Location: University of Birmingham, Edgbaston, Birmingham UK Full time starting salary is normally in the range £36,130 to £45,413 with potential
-
quality modelling approaches to analyse the flow interactions between sewer discharge of surface runoff, as well as the dynamics of pollutants and pathogen propagations associated with water movements. The
-
leveraged to accelerate learning from both classical and quantum data. The project will develop rigorous theoretical frameworks to understand key properties of quantum machine learning models—expressivity
-
pioneering, cross-disciplinary research that integrates AI, energy systems and advanced mathematics. This position aims to advance the next generation of battery modelling and control strategies by combining
-
students on research related work and provide guidance to PhD students where appropriate to the discipline Contribute to developing new models, techniques and methods Undertake management/administration
-
statistical models, with the support of project supervisors. Support writing of research outputs for academic and lay audiences, and contribute to the development and running of stakeholder engagement
-
challenge due to limited patient data—especially at the single-cell level—making traditional modelling approaches difficult. This project tackles that challenge by integrating multi-omics and clinical data
-
for publication, research seminars etc Supervise students on research related work and provide guidance to PhD students where appropriate to the discipline Contribute to developing new models, techniques and
-
guidance to PhD students where appropriate to the discipline Contribute to developing new models, techniques and methods Undertake management/administration arising from research Contribute to Departmental