Research Associate in Generative Deep Learning for Synthetising Virtual Patient Populations for In-Silico Trials

University of Manchester

Job title:

Research Associate in Generative Deep Learning for Synthetising Virtual Patient Populations for In-Silico Trials

Company

University of Manchester

Job description

We are seeking an ambitious and proactive Research Associate to be part of a multidisciplinary team, focusing on image-based multiphysics modelling of cardiovascular fluid dynamics and device-tissue interactions. The successful candidate will utilise clinical and experimental data to pioneer novel generative AI and geometric deep learning approaches to create synthetic virtual patient cohorts from multimodal data. This role involves developing advanced algorithms and high-throughput workflows for crafting virtual populations and simulation-ready computational anatomy models, integrating tissue microstructure properties where relevant. The role requires applying innovative techniques to large, real-world multimodal datasets, including clinical trials and population imaging studies.What you’ll needApplicants should have a PhD (or nearing completion) or equivalent in computational imaging and deep learning, and an understanding of applied mathematics, focusing on algorithm design and analysis. Proficiency in modern ML techniques, including geometric deep learning, diffusion models, and neural networks for multimodal image analysis will be essential, as well as expertise in Python and C/C++ for scientific computing, and in ML/DL frameworks like TensorFlow, PyTorch, Keras, and Scikit-learn. A developing publication profile will be advantageous.As this role involves research at a postgraduate level, applicants who are not an EEA national or a national of an exempt country and who will require sponsorship under the Skilled Worker route of the UK Visas and Immigration’s (UKVI) Points Based System in order to take up the role, will be required to apply for an Academic Technology Approval Scheme (ATAS) Certificate and will need to obtain this prior to making any official visa application UKVI.As an equal opportunities employer we welcome applicants from all sections of the community regardless of age, sex, gender (or gender identity), ethnicity, disability, sexual orientation and transgender status. All appointments are made on merit.Our University is positive about flexible working – you can find out moreBlended working arrangements may be consideredPlease note that we are unable to respond to enquiries, accept CVs or applications from Recruitment Agencies.Enquiries about the vacancy, shortlisting and interviews:Name: Prof Alejandro Frangi FREngEmail:General enquiries:Email:Technical support:Jobtrain: 0161 850 2004This vacancy will close for applications at midnight on the closing date.Please see the link below for the Further Particulars document which contains the person specification criteria.

Expected salary

Location

Manchester

Job date

Sat, 17 Aug 2024 01:46:17 GMT

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