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known as Team COMPAS -- includes a number of amazing undergraduate and graduate students, postdocs, alumni, and other fantastic collaborators. Please contact me if you are interested in joining our group
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achievements, list of publications, work history and references A copy of your academic transcript(s) At least one referee report with signature Enquiries Associate Professor Peter Poon, Director, Supportive and
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comparing our experimental observations to predictions made using the Standard Model of Particle Physics. I am a member of the LHCb collaboration, one of the four large experiments at the Large Hadron
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has the suitable resources and expertise to take you on as a graduate research student, you will be supplied with an Invitation to Apply. All applicants are required to upload a copy of their invitation
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you on as a graduate research student, you will be supplied with an Invitation to Apply. All applicants are required to upload a copy of their invitation to apply with their formal application
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to undertake a PhD (maximum one page) A CV including qualifications, academic achievements, list of publications, work history and references A copy of your academic transcript(s) Enquiries: For further
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Inference Tool (GAMBIT) Community to study theoretical frameworks that extend the standard models of particle physics and cosmology, with the aim of uncovering the nature of dark matter, dark forces, and dark
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organic nanomaterials for future electronics, optoelectronics and spintronics" "Light-transformed materials" "Theoretical and numerical modelling of the electronic structure of functional low-dimensional
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of mesons and baryons and their role as indirect probes for physics beyond the standard model. I also follow searches for new physics at the large hadron collider (LHC) and use them to constrain new particles
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models that can forecast the likely outcomes of current practices. The project aims to develop cutting-edge machine learning and statistical risk prediction techniques to predict each short-term, long-term