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Neuro-Symbolic Methods for Explanation-Based Reasoning with Large Language Models School of Computer Science PhD Research Project Directly Funded Students Worldwide Dr Marco Valentino, Prof Nikos
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of publications. Criteria Essential or desirable Stage(s) assessed at A PhD (or close to completion of a PhD) in Machine Learning or a similar area (e.g. in Computer Science, Electrical and Electronic Engineering
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that you reference the application criteria in the application statement when you apply. Criteria Essential or desirable Stage(s) assessed at A PhD in bioinformatics, computational biology, genomics or a
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/Characterisation hardware Essential Application/ Interview A PhD in a relevant subject (or equivalent experience) Desirable Application/ Interview Knowledge of production processes such as laser welding, CNC
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PhD Studentship: Knowledge models for healthcare digital twins and improved patient care pathways School of Mechanical, Aerospace and Civil Engineering PhD Research Project Directly Funded Students
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EPSRC iCASE - Revitalizing Groundwater Risk Models: Integrating NSZD into CoronaScreen for Sustainable Solutions School of Mechanical, Aerospace and Civil Engineering PhD Research Project Directly
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Simulation of particle physics experiments on graphical processing units School of Mathematical and Physical Sciences PhD Research Project Self Funded Prof D Costanzo Application Deadline
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Overview This post is funded by the Quantum Computing Hub (QCI3) supported by the Engineering and Physical Sciences Research Council (EPSRC). The QCi3 Hub is part of Phase III of the UK’s Quantum
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. Candidates close to completing a PhD will be considered. (assessed at: application and interview) Knowledge in mathematical modelling and physics of waves. (assessed at: application and interview) Knowledge
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have an excellent PhD in biomechanics (or a related discipline), possess a solid knowledge of non-linear finite element modelling, have a strong experience in developing and validating patient-specific