Sort by
Refine Your Search
-
approach to leadership, strong experience of line management and creating high performing teams, including motivating staff, performance management and maintaining a positive, proactive culture of continual
-
the Faculty Education Services in Faculty of Life Sciences & Medicine at our London Bridge campus. About the role This highly operational role forms part of the busy Programme, Placement & Assessment Team
-
the university and the faculty. Successful candidates will have a proactive approach to leadership and line management as well as creating high performing motivated teams. They will have experience
-
write and seek to publish the developed state-of-the-art algorithms in high quality medical image computing journals and conferences. The successful candidate will work with a three-person team of
-
interpersonal and communication skills across wet-lab, computational and facility teams Familiarity with high performance computing environments and reproducible workflows Experience providing support for spatial
-
analysing biomedical datasets using Python and/or R Experience working with complex data types Demonstrated ability to develop data processing or integration pipelines Familiarity with high-performance
-
• An Employee Assistance Programme which provides free, confidential advice on both home and work concerns • 30 days annual leave (or pro-rata for part time) plus UK bank holidays and four additional
-
medical professional. This is achieved through campus-based sessions throughout the medical degree programme and working in conjunction with sites across primary, secondary and mental health care settings
-
. About the role: The Project Controls Coordinator plays a vital role in supporting the successful delivery of King’s College London’s capital investment programme. Based within the Estates Planning
-
, bioinformatics or related discipline Strong computational skills, with expertise in scripting in BASH and either R or Python Experience with analysing complex datasets on high-performance compute clusters A track