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frameworks. Potential research directions include modeling the interaction between warping and signal transformations, estimating motion parameters from audio, moving‑microphone measurements of room acoustics
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require translating high fidelity physical/physiological models into computationally efficient control oriented models, supported by online parameter estimation to ensure adaptability across greenhouse
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of the applied currents, leading to large parameter spaces for applications. To optimize tACS towards a technique of network stimulation in the human brain, we use computational modeling at the population level
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. Study the effects of processing parameters, formulations, and ingredient functionality on product quality and process efficiency. Publish research results in peer-reviewed journals and disseminate
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parameters for year-round thermal comfort. This objective focuses on developing parametric design workflows to systematically evaluate how urban form, surface materiality, and vegetation influence dynamic
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with high-dimensional, often noisy, data sets; and mathematical modelling approaches that reduce the dimensionality of parameter spaces and produce mechanistically realistic, experimentally testable
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Analyze dynamical states of spiking complex neuron networks with respect to network topology and neuron parameters Development of learning rules considering the strong non-linearities of the neurons
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vision imaging technologies and machine learning methods to estimate physiological parameters (eat-readiness, shelf-life) of fruits at industrial sorting speeds. The work will include creating an accurate
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of the position is the use and extension of the TU Delft Astrodynamics Toolbox (Tudat) open-source astrodynamics toolbox for state estimation and orbit/parameter determination, enabling rigorous fusion
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23 Jan 2026 Job Information Organisation/Company ETH Zürich Research Field Computer science » Computer architecture Computer science » Programming Computer science » Other Engineering » Biomedical