Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
Loughborough’s Doctoral students, working in any discipline, to participate in a 16-week programme , which will run from w/c 9th March to w/c 29th June 2026 . Successful applicants will spend an average
-
for: The project entails the inspection and analysis of engineered porous structures via computed tomography. These engineered structures are stochastic and lattices. The materials range include polymers and metals
-
timely and accurate delivery of degree administration. They will report to the Programme Administration Manager and will work closely with Programme Directors and other academic colleagues on a day-to-day
-
outlining how you would approach the project, and an up-to-date CV. Under programme name, please select 'Architecture, Building and Civil Engineering'. Please quote reference RAINDROP-CH. Only applicants with
-
select Programme Ph.D. Sport, Exercise and Health Sciences. Please quote the advertised reference number SSEHS/LJ26 in your application. To avoid delays in processing your application, please ensure
-
two-page research proposal based on the project description outlining how you would approach the project and what methods you would use. Under programme name, please select 'Architecture, Building and
-
two-page research proposal based on the project description outlining how you would approach the project and what methods you would use. Under programme name, please select 'Architecture, Building and
-
-time teaching and scholarship role on its highly regarded undergraduate degree programme in Architecture. The programme builds on the University’s heritage in design and making, with some of its earliest
-
contribution rates. Life assurance. 30 days holiday plus bank holidays and discretionary days office closure. Employee Assistance Programme. Support for CPD and appropriate training. Please note: we do not
-
, the project accelerates trait data acquisition by applying computer vision to herbarium specimens and field photos, as well as large language models to extract complementary information from literature and