Sort by
Refine Your Search
-
position within a Research Infrastructure? No Offer Description The Role Applications are invited for a Research Associate in Machine Learning and Natural Language Processing for Materials Science. The
-
The Role Applications are invited for a Research Associate in Machine Learning and Natural Language Processing for Materials Science. The project focuses on building a database and on combining
-
programming tools (e.g. OpenMP, MPI) Accelerator programming (e.g. CUDA, OpenCL, SYCL) Serial and parallel debugging and profiling Parallel numerical algorithms and libraries. System software stack
-
languages (e.g. C/Fortran) Shared and distributed memory programming tools (e.g. OpenMP, MPI) Accelerator programming (e.g. CUDA, OpenCL, SYCL) Serial and parallel debugging and profiling Parallel numerical
-
permanent members of staff, following a process of significant growth. The Department holds an Athena SWAN Bronze award. Athena SWAN is a national initiative that recognises the advancement of gender equality
-
students with the skills and confidence to succeed in the labour market by providing support through all stages of the recruitment process including applications, assessments, and interviews. This role will
-
as an integral part of the Editorial Office team, focusing on the processing of JMS submissions from initial submission through to acceptance. They will maintain an up-to-date knowledge of editorial
-
of DiRAC (www.dirac.ac.uk), a UK national facility. This role is primarily responsible for the operation and ongoing development of the COSMA High Performance Computing (HPC) system, supporting innovative
-
policy or communities beyond academia. A strong commitment to academic citizenship and EDI values is essential. Application process You will be required to upload a covering letter, CV, personal research
-
, and workshops. We aim to provide a supportive and friendly environment with a strong sense of community. The Department currently has 116 permanent members of staff, following a process of significant