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, there is no consensus on the adsorption mechanisms of these molecules on the metallic surfaces. In this PhD project we will use state-of-art molecular simulation methods [2,3] to clarify the adsorption and
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nanomanufacturing process to overcome the challenges of atomic sale precision, feature size and defects rates for quantum dots. In this project, molecular dynamics simulation study of light matter interaction
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(ToF-PET) provides critical functional and molecular insights to improve cancer staging but is currently limited by detector timing resolution and sensitivity. Metascintillators, an emerging family of
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Tomography (ToF-PET) offers vital functional and molecular insights for improved cancer staging, its current capabilities are often limited by the timing resolution and sensitivity of existing detector
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supportive and friendly team, you will learn how to design and perform experiments that interrogate the molecular and cellular mechanisms regulated by ADAM15 and ADAM12 in glioma, employing cellular
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? This MRC-funded PhD project will use an integrative multi-omics framework to explore the molecular landscape of cystic kidney disease to reveal unknown disease mechanisms and identify new therapeutic avenues
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of how these devices function. Electron Spin Resonance (ESR) spectroscopy allows us to selectively detect these electron spins and to characterise their molecular environment, gaining a molecular-level
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, to industrial catalysis and green energy production. The aim of this PhD project is to study hydrogen colliding with surfaces at a fundamental, molecular level to gain unprecedented insight into the role
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analysis methods. You will gain expertise in integrating experimental total scattering and high-resolution imaging data with artificial intelligence and atomistic simulation tools to overcome current
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into interfacial thermal transport. The goals are to: run ab-initio molecular simulations to sample relevant nanomaterial/liquid interfaces. construct new MLPs by using generated data from 1. and validate them. use