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Field
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semiconductor structures, exfoliation and stacking of two-dimensional materials and fabrication of vdW heterostructures, clean-room processing (reactive ion etching, optical/electron beam lithography, scanning
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-related transport phenomena all require precise knowledge of fluid flow dynamics. Advanced experimental methods such as Particle Image Velocimetry (PIV) and 3D Lagrangian Particle Tracking (LPT) provide
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of two-dimensional materials, design and handling charge-tunable semiconductor structures, exfoliation and stacking of two-dimensional materials and fabrication of vdW heterostructures, clean-room
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receptors (GPCRs) using molecular dynamics simulations. The project will involve the application of standard and enhanced sampling techniques (including coarse-grained simulations) to: Characterize GPCR
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CCS. Your main tasks will include: Processing and imaging the newly acquired high-density 3D seismic dataset and integrating vintage 3D seismic data to image and characterise the geological structures
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Chemistry » Biochemistry Chemistry » Structural chemistry Computer science » Modelling tools Neurosciences » Neuroinformatics Neurosciences » Neurobiology Mathematics » Applied mathematics Technology
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of Computational Fluid Dynamics CFD environment and simulations including: - Computation of the microwave field, Coupling of the microwave field with the plasma - Computation of elementary ionization, recombination
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-world energy applications, the project aims to better capture the dynamics of urban infrastructures across different spatial and temporal scales, from building-level energy demand to district-scale
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microorganisms can be used to produce high-performance biopolymers. The scalability and non-seasonality of this process will enable the sustainable manufacturing of biopolymer filaments, films and 3D structures
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that explicitly incorporates protein–ligand dynamics. You will be responsible for: Designing and implementing innovative deep neural network models. Integrating physical principles and molecular modeling knowledge