Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
and Immigration website . Full-Time, Fixed-Term (24 months) Applications are invited for the post of a Data Scientist (KTP Associate) for Deep Learning and Image, Audio and Video Processing. The project
-
Date: Wednesday 30 July 2025 Reference: CSS-0115-25 We invite applications for a Lecturer in Veterinary Diagnostic Imaging in the Department of Clinical Science and Services. The service is integrated
-
experimentally validate mechanical and electronic systems for image-guided therapy 2) Integrate pioneering and proven tools for the precise control and validation of interventional device placements 3) Examine
-
keen to develop their nursing career in caring for patients overnight in the Surgery and Neurology wards in a friendly multidisciplinary referral hospital. Working as part of a team of specialist
-
the Surgery and Neurology wards in a friendly multidisciplinary referral hospital. Working as part of a team of specialist clinicians, residents, interns, RVNs and Patient Care Assistants you will be involved
-
invasive surgery. Essential skills include system integration, Image processing, data analysis, and excellent written and verbal communication. The ability to work both independently and as part of a
-
cancer in Barrett’s esophagus. Experience in analysing large datasets in R is essential but will also involve the use image analysis software such as Qpath. About You We seek an ambitious and self
-
et al, Leukemia 2018; Poynton et al, Blood Adv 2023; Coulter et al, J Mol Diagn 2024). The wet lab/computational biology postdoc will lead a project investigating residual follicular lymphoma cell
-
imaging platforms and computer programming. The successful applicant will have an MSc or postgraduate degree in a relevant topic, relevant experience in AI-based imaging platforms and computer programming
-
responsibility for implementing a deep learning work-package as part of a Cancer Research UK-funded programme, developing an image-recognition model to identify morphological features corresponding to clonal