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About the Project An exciting PhD project on the effects of heat transfer of transitional compressible boundary layers will be carried out under the UK Hypersonics Doctoral Network, which has been
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, under the scope of a term contract, with a termination date undetermined, overseen by Portuguese Labour Code. Job description: Contribution in WP3 Task 3.3 aiming to define compressed sensing algorithm
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% of total energy consumption, and 70% of heating is still met by Fossil Fuels . Heat pumps are a key enabling technology for decarbonization, but conventional vapor-compression systems face significant
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-power 1-micron lasers. FELLOW 3 (ITO, Stuttgart, Germany): Fabrication and characterization of pulse compression gratings using SBIL. FELLOW 4 (ORC, Southampton, England): Fabricating dielectric all
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compressible gas dynamics, heat transfer, free-surface/melt behaviour, and mass transfer driven by phase change, within a GPU-accelerated solver to reduce simulation turnaround times. You will develop and
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the Portable Document Format (.pdf). The files must be designated with the name and surname of the candidate and must not exceed 5 MB combined. These files can be compressed into .zip format. 16.7
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compressible gas dynamics, heat transfer, free-surface/melt behaviour, and mass transfer driven by phase change, within a GPU-accelerated solver to reduce simulation turnaround times. You will develop and
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on large annotated datasets. Memory-efficient deep learning: Model compression, pruning, quantisation, selective memory replay, and efficient training strategies. Energy-efficient deep learning: Methods
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design of soft scaffolds and synthesis using extrusion-based bioprinting. Experimental characterization and constitutive modeling. Compression experiments on 3D-printed scaffolds under different conditions
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energy consumption, and 70% of heating is still met by fossil fuels[[1]](#ftn1). Heat pumps are a key enabling technology for decarbonization, but conventional vapor-compression systems face significant