Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
be part of the wider teaching team, working with our students in small and large group settings, supporting their academic, personal and professional development. This is a fantastic opportunity to
-
the team: You will be part of the wider teaching team, working with our students in small and large group settings, supporting their academic, personal and professional development. This is a fantastic
-
experts; and develop the team. Experience leading implementation of ESE policy and plans, expertise in curriculum and student voice, as well the ability to manage complexity and problem solve
-
relying on incremental optimisation of existing materials. By developing novel multilayer dielectric materials with ultra-high breakdown strength, the research will revolutionise electrified technologies
-
one of the world’s leading centres for additive manufacturing research and development, invites applications for a fully funded PhD programme. Metal additive manufacturing is transforming how complex
-
Applications are invited for a Research Associate/Fellow position to work on a project involving the use of additive manufacturing to develop a release system for fungal biopesticides for outdoor
-
). The AI DTC is an initiative by the University of Nottingham to develop future researchers and leaders who can address key challenges of the 21st century through foundational and applied AI research
-
offers an exciting opportunity to collaborate with NTEC’s internationally recognised academic team on various projects focused on the development, design, and modeling of future paving materials
-
thorough understanding of developing and implementing effective communications and engagement activities to diverse audiences? If so, the University of Nottingham has a fantastic opportunity for you to join
-
at the tumour margin represent a key target for earlier and more effective therapeutic intervention. This PhD project will develop advanced MRI analysis methods and imaging-driven predictive models focusing