Sort by
Refine Your Search
-
Listed
-
Employer
- ;
- University of Oxford
- KINGS COLLEGE LONDON
- University of London
- AALTO UNIVERSITY
- Aston University
- Durham University
- Heriot Watt University
- University of Cambridge
- Nature Careers
- ; King's College London
- ; The University of Manchester
- ; University of Oxford
- Birmingham City University
- DURHAM UNIVERSITY
- King's College London
- MOHAMMED VI POLYTECHNIC UNIVERSITY
- Swansea University
- University of Birmingham
- University of Liverpool
- University of Manchester
- 11 more »
- « less
-
Field
-
focused on integrating synthetic biology, AI, and multi-omics technologies to decode and design gene expression regulation for human cell engineering. About the role We are looking for an ambitious and
-
focused on integrating synthetic biology, AI, and multi-omics technologies to decode and design gene expression regulation for human cell engineering. This role is based in Randall Centre for Cell
-
Oxford Materials (Professors Robert House (PI), Saiful Islam, Peter Bruce), and UCL Chemical Engineering (Dr Rhod Jervis) brings together expertise in battery materials synthesis and device fabrication
-
About the Role Barocaloric solid-state cooling is a promising new technology that has potential to dramatically reduce the carbon cost of cooling and refrigeration. In an EPSRC-funded collaboration
-
learning. The post-holder will be familiar with the use of these techniques and experience of dataset construction and data mining will be essential. The successful applicant will have completed an MPhil/PhD
-
About the role Applications are invited for a Postdoctoral Research Associate in Postdoctoral Research Associate in Mass Spectrometry and Structural Glycobiology to work under the supervision
-
. The applicant should be well versed in structured programming, in the maintenance of numerical codes and in the training of new users, such as graduate students. A proven track record of collaborative
-
structural), ECG, and genetics, to model disease trajectories and improve risk prediction in cardiomyopathies. The successful applicant will work closely with the PI to deliver research projects, supervise
-
structural), ECG, and genetics, to model disease trajectories and improve risk prediction in cardiomyopathies. The successful applicant will work closely with the PI to deliver research projects, supervise
-
learning. The post-holder will be familiar with the use of these techniques and experience of dataset construction and data mining will be essential. The successful applicant will have completed an MPhil/PhD