455 computer-programmer-"Multiple"-"O.P"-"Humboldt-Stiftung-Foundation"-"U"-"U.S" positions at University of Sheffield
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, adaptation, and genomics. We currently offer multiple project options for prospective PhD students: 1. The Evolutionary Consequences of Lateral Gene Transfer in Grasses Lateral gene transfer (LGT) is not just
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; computer vision; and machine learning. Ability to initiate, plan, organise, implement and deliver programmes of work to deadlines. Ability to work with people from different backgrounds and in team across
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2025 Details Most stars form in binary or multiple systems, and furthermore, they form in clusters with tens, to thousands of other stars. The most populous clusters contain massive stars (which also
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/MSc or equivalent in Computer Science or Software Engineering (assessed at: application/interview). A track record in software testing, testing for autonomous systems, or autonomous driving system
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of novel therapeutics. The tetraspanins, a superfamily of human cell membrane proteins, associate with multiple human proteins to form dynamic structured islands, or tetraspanin-enriched microdomains (TEMs
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(PPPA) group at the University of Sheffield, in collaboration with other institutions and industrial partners, pursues a wide programme related to these muon applications. This PhD project is
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report to line manager(s) on a regular basis. Work with industry partners in the programme to define the basic component requirements as well as manufacturability metrics required for viability
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programme This University of Sheffield PhD project is part of the EPSRC Centre for Doctoral Training in Sustainable Sound Futures programme. Further details about the CDT and the programme can be found
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relevant Cluster Lead a 1-page expression of interest indicating the type of long-term fellowship they would like to apply to; how their research programme would enhance the activities in the School
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”. This exciting opportunity involves leading the development of advanced data-driven mathematical and computational models to suppress turbulence in pipe flows, contributing to pressing engineering efforts toward