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on reinforcement learning to optimize cooling and trapping parameters using real-time feedback for the Rydberg atom experimental platform. Enhance holographic methods for optical tweezers with generative models and
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molecular dynamics simulations across multiple resolutions, most likely from the atomistic to the coarse grained level, using a variety of force fields and computational methods. Run large-scale simulations
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multi-city analyses (quantitative and/or mixed-methods) to identify mechanisms, profile typologies and factors that trigger or moderate opposition and backlash over time. • Coordinating with the project
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privacy constraints. About the Project The central aim of this project is to pioneer statistical methods for high-dimensional diffusion processes under privacy constraints. While stochastic differential
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photosynthetic membranes. Specifically, pump-probe ultrafast nanoscopy of transport in model OPVs and light-harvesting complexes. Specifically, advance structured excitation methods for low light level exciton
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processing. In addition, the postdoctoral researcher will be responsible for processing and analysing complex fNIRS data, as well as related behavioural and observational data, and developing methods to model
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and biophysics. Develop computational pipelines integrating ASR, structure prediction, and energetic analysis. Apply and/or develop ML/AI methods for protein design and evolutionary inference. Analyze
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characterization techniques. · Knowledge: Deep expertise in electron microscopy, particularly STEM and FIB methods. Proven experience in designing and conducting in-situ TEM experiments. Familiarity with energy
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broad experience in the development of electronic structure methods and their application in order to perform atomistic simulations of molecules and materials. These include (but are not restricted
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effects) and metagenomics (microbiome profiling using deep shotgun sequencing data, detecting horizontal transmission). We are mostly computational but have a small lab component and work in close