Sort by
Refine Your Search
-
Listed
-
Employer
- ;
- University of Nottingham
- UNIVERSITY OF SOUTHAMPTON
- Nature Careers
- Queen's University Belfast
- University of Birmingham
- University of Bristol
- QUEENS UNIVERSITY BELFAST
- SINGAPORE INSTITUTE OF TECHNOLOGY (SIT)
- The University of Southampton
- UNIVERSITY OF SURREY
- University of Leeds
- University of Oxford
- University of Sheffield
- Brunel University
- CRANFIELD UNIVERSITY
- City University London
- Cranfield University
- KINGS COLLEGE LONDON
- King's College London
- Lancaster University
- Manchester Metropolitan University
- St George's University of London
- Swansea University
- UNIVERSITY OF GREENWICH
- UNIVERSITY OF MELBOURNE
- University of Greenwich
- University of London
- University of Surrey
- 19 more »
- « less
-
Field
-
simulation with PSpice, LTspice, or equivalent is an advantage. Experience with developing software for instrument control and data acquisition using LabVIEW is helpful. Key Competencies Strong experimental
-
. The successful candidate will become an active member of the Energy, Power and Intelligent Control (EPIC) research centre within the School of Electronics, Electrical Engineering and Computer Science (EEECS
-
of publications in computational biology or related fields appropriate to career stage. Experience with pangenomic analysis tools and methodologies. Experience with version control systems (Git) and reproducible
-
opportunity to work in at the intersection of statistics and epidemiology, and features an exciting case study involving novel GM and gene drive interventions for control of malaria-transmitting mosquitoes
-
of publications in computational biology or related fields appropriate to career stage. Experience with pangenomic analysis tools and methodologies. Experience with version control systems (Git) and reproducible
-
reasonably be expected from similar bridges. They will also work with a population of laboratory scale bridges in a controlled laboratory environment to examine the feasibility of applying transfer learning
-
quality control protocols. Beyond identifying a scientifically optimum observational network, you will contribute to shaping an observational strategy that is not only scientifically robust and resilient
-
form part of the PHM. The research work will include the exploration of AI technologies and physics-based control techniques. To ensure impact and relevance, the work involves the measurement and
-
form part of the PHM. The research work will include the exploration of AI technologies and physics-based control techniques. To ensure impact and relevance, the work involves the measurement and
-
Assistant under the supervision of Prof. Antonio J. Gil, in order to meet the research objectives of an awarded Research Fellowship in the area of control modelling of EAP driven soft robotics. Specifically