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loading conditions. By generating datasets from finite element simulations, ML models can learn the mapping between unit cell design parameters and homogenised properties. State-of-the-art approaches
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Working knowledge of quantitative analysis and statistical methods Downloading a copy of our Job Description Full details of the role and the skills, knowledge and experience required can be found in
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ultrafast laser pulses on femtosecond timescales. Combining nanofabrication, electromagnetic simulation, and pump–probe laser measurements, the project will explore how 3D geometry, and different materials
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-performance computing and simulation-based inference (e.g. neural network emulators or nested sampling) Training will be provided in all aspects of the project, including computational statistics, stellar
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, damp, ventilations). We will use these simulations to propose real-life measures to improve living and working conditions. Such measures might be recommendations on how to design or retrofit indoor
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be located in Central Cambridge, Cambridgeshire, UK. The key responsibilities and duties are to conduct direct numerical simulations of turbulent flows over rough surfaces under non-equilibrium
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or simulation skills are expected. Industrial experience is desired but not mandatory. What we can offer you The opportunity to develop your career at a world-leading institution The opportunity to engage with
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system stability analysis and operation. Good understanding of control theory, especially system identification is expected. Good experimental or simulation skills are expected. Industrial experience is
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computational fluid dynamics and numerical modelling will be used to simulate performance under varying runoff scenarios, pollution loads and climate conditions. By developing advanced road gully designs with
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versus unmodified trees. Laboratory simulations and growth experiments will explore mistletoe’s physiological responses to climate stress. Training The project provides an exceptional interdisciplinary