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, space plasmas etc. They have recently been awarded £11m to train PhD cohorts in computation modelling. HetSys is built around a closely knit, highly collaborative team of academics from five science
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the challenges and characterise plausible transition to VCE decarbonisation, this PhD Studentship will utilise sustainable systems engineering and data science principles, within a spatial ecological-economic
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Qualification: Doctor of Philosophy in Engineering (PhD) Start date: 30th September 2024 Funding for: 3.5 years Supervisor: Dr Thomas Sykes Project Description: Droplets are ubiquitous in nature
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Professor in Computational Chemistry, Chemistry Department) Start Date: As soon as possible, by 1st September 2024 at latest Applications are invited for a 3-year funded PhD studentship, sponsored by
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this PhD project you will build on the atomic cluster expansion (ACE) approach (e.g. using the ACEpotentials.jl or MACE codes) to tackle inverse problems. This approach is attractive for inverse problems as
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awarded £11m to train PhD cohorts in computation modelling. Built around a closely knit, highly collaborative team of academics from five science departments at Warwick with a strong track record in leading
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, superalloys, smart fluids, space plasmas etc. They have recently been awarded £11m to train PhD cohorts in computation modelling. HetSys is built around a closely knit, highly collaborative team of academics
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. This PhD project will take advantage of recent developments in machine learning methods, to enable computer modelling of the mechanical behaviour of titanium alloys to produce a machine learning-based
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data-driven elements. There is potential to explore a variety of specific applications of this work throughout the PhD project which lies at the intersection of interests of enthusiastic specialists with
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world’ systems across a range of research themes such as nanoscale devices, new catalysts, superalloys, smart fluids, space plasmas etc. They have recently been awarded £11m to train PhD cohorts in