Sort by
Refine Your Search
-
Listed
-
Employer
- University of Birmingham
- ;
- University of Nottingham
- Nature Careers
- UNIVERSITY OF SOUTHAMPTON
- CRANFIELD UNIVERSITY
- KINGS COLLEGE LONDON
- King's College London
- The University of Southampton
- UNIVERSITY OF MELBOURNE
- University of Glasgow
- University of Leeds
- ; University of Cambridge
- ; University of Oxford
- Cardiff University
- Cranfield University
- Imperial College London
- Oxford Brookes University
- QUEENS UNIVERSITY BELFAST
- Queen's University Belfast
- UNIVERSITY OF SURREY
- University of Liverpool
- University of London
- University of Newcastle
- University of Sheffield
- University of Stirling
- 16 more »
- « less
-
Field
-
developing new inverse modelling (‘retrieval’) methods to extract 3D information from JWST secondary eclipse observations. The models will be applied to JWST observations of giant transiting exoplanets
-
diversity acting as a role model and fostering an inclusive working culture. Person Specification PhD (or near to completion) or equivalent in microbiology or immunology First author publications in peer
-
regular team meetings Supervise students on research related work and provide guidance to PhD students where appropriate to the discipline Contribute to developing new models, techniques and methods as
-
Supervise 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
-
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
-
data. Apply knowledge in a way which develops new intellectual understanding. Contribute to developing new models, techniques and methods as required by their research project. Present research outputs
-
of High throughput Calculations Fluency in relevant models, techniques or methods and ability to contribute to developing new ones High level analytical capability Ability to communicate complex information
-
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
-
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
-
. Mentor students in research-related activities and offer guidance to PhD candidates within the discipline when necessary. Contribute to the development of novel models, techniques, and methodologies