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Field
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wide range of modelling parameters, over large spatial and temporal spaces and where inputs are stochastic in nature. This is exacerbated in industrial applications that may include metals, ceramics and
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of vibration along the track and in neighboring buildings, aimed to design vibration mitigation measures and to perform environmental impact studies. Parametric studies, design optimization, and stochastic
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surfaces. Work on cutting-edge ML methods, including generative models, stochastic sampling, and uncertainty quantification. Applying them to atomistic systems opens new possibilities of combining learned
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activity and stochasticity). For example, localized dendritic activation underlies numerous computational functions across hierarchical levels, such as denoising (filtering), increased expressivity (tunable
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probability theory, stochastic processes, and statistical physics. These models will be tested across multiple large-scale datasets, including music consumption data, social media activity, and other online
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engineering fields. Szymon Gres is a postdoctoral researcher in Automation and Control section, whose interests are on identification and detection of stochastic dynamic systems, with a particular focus on wind
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transfer modelling, stochastic prediction of fungal growth and Ochratoxin A risk, and optimisation of in situ robotic sensing technology. Through this systems-based approach, the research will generate
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, molecular dynamics, stochastic dynamics, Monte Carlo and analytical methods) and its thorough validation using advanced experimental techniques (such as mass spectrometry, electron microscopy, radiochemistry
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affected by warping, addressing both audio analysis and synthesis tasks. The methodological scope spans stochastic signal processing and machine learning, including hybrid physics‑guided and data‑driven
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, stochastic dynamics, Monte Carlo and analytical methods) and its thorough validation using advanced experimental techniques (such as mass spectrometry, electron microscopy, radiochemistry and radiobiology