Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
. Personal Development: Access to courses run by our Organisational Development & Professional Learning team. Access to on-site childcare, shopping discounts and travel schemes are also available. And much
-
proactive, self-motivated individual to join the central Equality & Inclusion Unit (EIU). The University of Leeds is developing the approach to supporting disabled employees through the creation of a central
-
monitoring support, you will also be involved in developing reporting procedures, finding innovative solutions and improved ways of working. In this role you will report directly to the Senior Finance Business
-
dissertation supervision at undergraduate or MSc level. There are also opportunities to take on other responsibilities, such as research and development projects relating to student education, under the aegis
-
: Discounted staff membership options at The Edge, our state-of-the-art Campus gym, with a pool, sauna, climbing wall, cycle circuit, and sports halls. • Personal Development: Access to courses run by our
-
geophysicist looking for an innovative research challenge? Would you like to apply seismic expertise to the exploration and development of urban geothermal resources? This could be the research position for you
-
Organisation Development and Professional Learning Department, supports and guides colleagues in how to use people-centred design and co-creation methods with students to create exceptional learning experiences
-
with the knowledge and skills to assess and initiate management of a number of common psychiatric conditions. It aims to develop students to recognise the importance of mental health throughout medicine
-
-of-the-art Campus gym, with a pool, sauna, climbing wall, cycle circuit, and sports halls. • Personal Development: Access to courses run by our Organisational Development & Professional Learning team, and self
-
international specialists. Within Cumulus, you will lead the development of “downscaling” methods for sub-seasonal (2-4 week) forecasts. Our priority will be to implement deep-learning based methods, to turn