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Position: Lecturer/Associate Professor in Quantitative Neuroradiology
Institution: University College London
Department: Computer Science
Location: London, United Kingdom
Duties: This is a joint academic appointment between the UCL Centre for Medical Image Computing (CMIC) within the Department of Computer Science and the Department of Neuroradiology within the National Hospital for Neurology and Neurosurgery (NHNN) UCLH NHS Foundation Trust to facilitate and promote research innovation in neuroimage analysis with immediate application to clinical neuroradiology. The postholder will support the translation of innovative research in neuroimage analysis solutions
Requirements: The post-holder will have substantial expertise and track record in medical image computing and clinical applications. They will have the skills to work collaboratively across disciplines, pull together multi-disciplinary teams, and facilitate interactions between technical and clinical researchers. They will have excellent written and verbal communication skills for outstanding teaching, scientific communication, and attracting research funding from multiple sources
   
Text: Lecturer/Associate Professor in Quantitative Neuroradiology, - Ref:1785402 Click here to go back to search results Apply Now UCL Department / Division Computer Science Location of position London Grades 8-9 Hours Full Time Salary (inclusive of London allowance) ?43,884 to ?51,769 per annum or ?56,266 to ?61,181 per annum Duties and Responsibilities This is a joint academic appointment between the UCL Centre for Medical Image Computing (CMIC) within the Department of Computer Science and the Department of Neuroradiology within the National Hospital for Neurology and Neurosurgery (NHNN) UCLH NHS Foundation Trust to facilitate and promote research innovation in neuroimage analysis with immediate application to clinical neuroradiology. The postholder will support the translation of innovative research in neuroimage analysis solutions. They will spend 50% of their time embedded in the Neuroradiology Clinical Science team, working closely with the Queen Square Neuroimaging Initiative, and 50% at CMIC. Key Requirements The post-holder will have substantial expertise and track record in medical image computing and clinical applications. They will have the skills to work collaboratively across disciplines, pull together multi-disciplinary teams, and facilitate interactions between technical and clinical researchers. They will have excellent written and verbal communication skills for outstanding teaching, scientific communication, and attracting research funding from multiple sources. Appointment at grade 8 or 9 will be determined by depth of experience and track record. For grade 9, the appointee would be expected to demonstrate sustained excellence in all aspects of academic life and clinical translation of engineering advances. Further Details A job description and person specification can be accessed at the bottom of this page. To apply for the vacancy please click on the ?Apply Now? button below. If you have any queries regarding the vacancy or the application process, please contact Daniel Alexander at d.alexander@ucl.ac.uk. We particularly welcome female applicants and those from an ethnic minority, as they are under-represented within UCL at this level. UCL Taking Action for Equality We will consider applications to work on a part-time, flexible and job share basis wherever possible. Closing Date 22 May 2019 Latest time for the submission of applications 23:59 Interview date TBC Our department holds an Athena SWAN Silver award, in recognition of our commitment and demonstrable impact in advancing gender equality. This appointment is subject to UCL Terms and Conditions of Service for Academic Staff. Please use these links to find out more about UCL working life including the benefits we offer and UCL Terms and Conditions related to this job. Job Description & Person Specification Apply Now
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