11 machine-learning-"https:"-"https:"-"https:"-"https:" research jobs at University of Nottingham
Sort by
Refine Your Search
-
Listed
-
Program
-
Field
-
About the Role A fantastic opportunity has arisen for a Senior Research Fellow to join the Power Electronics, Machines and Drives Research Institute (PEMC) at the University of Nottingham and become
-
unit and individual and collaborative research in the area of Power Electronic, Machine and Control. The role holder will be expected to conduct and lead high-caliber, impactful research at the forefront
-
About the role – In this post, you will join a collaborative BBSRC-funded project focused on using metabolomics and machine learning to predict lameness outcomes in dairy cows. A typical day may
-
We are looking for a researcher, whose expertise lies in machine learning or uncertainty quantification, to work with Professor Richard Wilkinson on an EPSRC-funded project entitled “Scaling Cardiac
-
this information-gathering process. The successful applicant will have strong expertise in programming, and in particular developing AI-based computer vision methods. Ideally, they will have experience
-
computers”(under the UKRI Guarantee scheme). Topics include: - Quantum many-body dynamics - Quantum algorithms - Quantum-enhanced numerical methods - Quantum machine learning - Tensor Networks - Topological
-
focuses on developing cutting-edge statistical/machine learning methods for fitting complex, multi-institutional network models to partially observed hospital infection data. This research will directly
-
synthesis) • Have excellent organisational, communication and team working skills, willingness to secure external funding through competitive applications and ability to learn new skills and instrumentation
-
periods. Excellent oral and written communication skills and be competent with Microsoft Office applications including Word, Excel, GIS. You will be willing to acquire or develop competence in XML. We
-
interviews and the development of a Reuseable Learning Object (Ethics Training Module). The projects represent 50%:50% split across this role. This role provides an exciting opportunity to work with