211 parallel-computing-numerical-methods-"Simons-Foundation" positions at University of Cambridge
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and hard-working lab group, with a shared vision to improve the understanding and management of neurodegenerative disorders using big data methods and machine learning approaches. Click the 'Apply
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methods, with a breadth of conceptual knowledge in historical sociology. You will have research expertise in historical studies of empire, colonialism, and/or anti-colonialism evidenced through doctoral
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is to design and develop analytical, computational, and mathematical methods to understand the fundamental processes that govern the evolution of antigenically variable viruses. Our research is highly
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in this role, you will bring experience from a control centre or helpdesk environment and be confident using CAFM (Computer Aided Facilities Management) systems. You'll be a clear communicator with a
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the development of globally inclusive language technologies and to design transformative approaches to overcome them. Responsibilities of the post holders include the development of new methods for multilingual
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, physical scientist with a good track record at problem solving using numerical models. The successful candidate will be engaged in both the development and analysis of extended functionality to better
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pioneering programme that integrates advanced technical training with essential business acumen and ethical awareness. Our current projects focus on bridging critical industry skills gaps, fostering commercial
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developing theoretical and computational methods to investigate biological systems. Preference will be given to candidates with experience in modeling the genetic basis of phenotypic variability. The candidate
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Campus. The CMDL is a key strategic resource for the integrated cancer medicine programme aimed to translate innovative genomics methods for advanced diagnosis and clinical management of cancer
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programme involves development of high-throughput experimental capability (at Imperial College London). Our group is supporting the experimental team at Imperial College London with development of intelligent