22 algorithm-development-"Multiple" Postdoctoral research jobs at University of Cambridge
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to Research Associate (Grade 7) upon the award of PhD. The cellular dynamics of the plant hormones underpin all aspects of plant development and environmental responses. Targeted perturbations of phytohormones
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, at the University of Cambridge, UK. The Research Assistant will work together with a team of students and research collaborators on the development of learning-based control policies that facilitate
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A position exists for a Post Doctoral Research Associate in Department of Applied Mathematics and Theoretical Physics to work on the theory and implementation of algorithms and protocols on quantum
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evolution of a recently discovered family of clonally transmissible cancers which affect several species of marine bivalves. This new position is part of an ERC-funded project examining genome evolution in
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. A typical candidate will have at least two years of experience in the following areas: advanced AI algorithms (e.g., generative AI, diffusion models), human touch sensing and tactile sensor
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address this challenge, as part of ERC Consolidator grant, Prof. Knowles' research group developed a platform that enables high-throughput screening of peptide-based libraries against protein targets
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. Applicants should have (or be about to obtain) a PhD in chemistry with expertise in the synthesis of conjugated small molecule and/or polymers. Key skills that are required are the ability to work on multiple
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University Department of Psychiatry, clinical institutions such as Cambridgeshire and Peterborough NHS Foundation Trust, and with a secondment to industry (Akrivia Health) to advance science and develop common
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. This will require the application of a range of techniques, from in-vitro biochemistry to novel, next-generation sequencing approaches. Most skills can be acquired and developed throughout the post, offering
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in Cambridge. The mission statement of the group is "developing statistical methods to use genetic variation to answer clinically important questions about disease aetiology and prevention". The three