222 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"NOVA.id" positions at University of Nottingham
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
collating the information for the monthly news bulletins for all sent Network members. The successful candidate for this full-time post will: Possess a first-class or upper second-class honours degree
-
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
-
collating the information for the monthly news bulletins for all sent Network members. The successful candidate for this full-time post will: Possess a first-class or upper second-class honours degree in
-
Studentship Information Supervisor: Professor Ian Fisk Secondary Supervisor: Dr Vincenzo di Bari, Dr Louise Hewson, Mui Lim Subject Area: Food Science Research Title: Sodium Reduction in Coated
-
the network, and every synapse is updated, on every epoch. Recent work has begun to challenge both halves of this independently. Progressive Data Dropout has shown that progressively reducing the training set
-
resolution. This PhD offers the opportunity to conduct cutting-edge research with direct industrial impact, combining fundamental fluid mechanics with modern data-driven techniques. The successful candidate
-
colleagues Contribute to the committees supporting REF governance and support process development and improvement Is confident using data in Excel, Sharepoint and other digital tools to maintain clear records
-
information leaflet . This post is based in the School of Medicine Education Centre, within Queen’s Medical Centre (QMC) hospital, Nottingham. However, you will be asked to travel to other hospital sites in
-
. • 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
-
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