342 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "Washington University in St" positions at University of Nottingham
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
. Previous experience working with computer-booking systems would be desirable. The role is key to ensuring a first class and seamless experience for our student, staff, alumni and public members. Excellent
-
. • Collaborate with a wide group of stakeholders to ensure support levels are delivered and maintained. • Provide guidance to the relevant stakeholders, calculating budgets and data entry using the Research
-
the School of English because of the potential access to sensitive and confidential information. Further information about our School and working here. If you have any informal enquiries about this post, our
-
obtained from Disclosure Scotland, or an overseas police check. Further information is available in the role profile. To apply for this vacancy please click ‘Apply Now’ to complete your details. It is a
-
classrooms and meeting rooms across our campuses to meet customer requirements. You will be the first point of contact for visitors, providing information and assistance where required and will be responsible
-
and many more. To find out more about what we can offer you, follow the link to our benefits website What next Further information is available in the role profile. To apply for this vacancy please
-
Data is more valuable than oil, so it has been said. Quantum computing offers new unusual datasets thereby presenting new opportunities for AI approaches. Quantum computing is raising the prospect
-
, self-starter, PhD student to run the follow up questionnaires and analyse the data. This offers an exceptional research opportunity to investigate the contribution of lifestyle factors, particularly
-
to sensitive and confidential information. Further information is available in the role profile. To apply for this vacancy please click ‘Apply Now’ to complete your details. Please contact Alice Flear
-
data-driven methods to develop an inverse design framework for manufacturing systems. Together, we will advance the capability to design manufacturing systems that embed reliability, resilience