255 parallel-computing-numerical-methods positions at University of Manchester in United Kingdom
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viral (AAV) vectors. We propose to compare the capabilities of this instrument with that of commercially available mass spectrometry platforms and other methods. As part of this exciting and truly
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This post creates an opportunity to further your career in big data analysis and complex cardiovascular diseases! We are looking for a holder of university degree in computational biology
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employee health and wellbeing services including an Employee Assistance Programme Exceptional starting annual leave entitlement, plus bank holidays Additional paid closure over the Christmas period Local and
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, refreshing the computers and monitors, as well as building new and dismantling old clusters. To provide such a comprehensive service to the University, we will need End-User Compute Technicians who are able
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are recruiting an enthusiastic and collaborative post-doctoral research associate with expertise in formal methods, machine learning, control theory, numerical analysis, or a related discipline, with a strong
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programme Current first-year PGRs are eligible to apply for the general CSC scholarship scheme, though not the joint scheme. If you would like to apply for the general scheme, please contact CSC directly. The
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. This role will support the Edge Compute and Satellite Storage Service, within the Research Platforms Team, within RIT. It is primary focusing on supporting the National X-Ray Computed Tomography (NXCT
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testing, numerical modelling, and machine learning (ML) aided design approach will be adopted, utilising the respective expertise in Brazil (testing and wind tower design experience) and the UK (modelling
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with membrane proteins. Extensive experience in working with membrane proteins and developing related methods Working with other laboratory members to develop methods and contribute in maintaining
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materials systems with a range of TEM techniques complemented by novel device fabrication methods. This project will utilise advances in fabrication of TEM samples containing chemically sensitive 2D materials