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Field
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parameters can be measured, such as thermal conductivity, density, specific heat, and dynamic viscosity. For the measurement of gas flows, (micromachined) thermal flow sensors are often used because
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breakage models, e.g. with stochastic tessellations Development and implementation of estimation methods for the model parameters, e.g. with machine learning or statistical methods Lab work and collection
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building is a critical parameter in determining energy efficiency, ventilation adequacy, and overall occupant well-being. The Pulse system—currently deployed in over 100,000 field tests—offers a rapid, non
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who would revel in pushing the boundaries of technology. Context and Challenge The airtightness of a building is a critical parameter in determining energy efficiency, ventilation adequacy, and overall
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. We would therefore strongly encourage qualified women to apply for the position. Your tasks develop surrogate models to approximate high-fidelity phase field simulations, incorporating physics-informed
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properties using advanced techniques such as UV-Vis, XRD, XPS, and electron microscopy, with support from specialized core facilities. Correlating synthesis parameters with functional properties (e.g., redox
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qualified women to apply for the position. Your tasks develop surrogate models to approximate high-fidelity phase field simulations, incorporating physics-informed loss functions to enhance model accuracy and
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Muscle Dynamics: Approximate muscles as “cables” with Hill model dynamics within the SOFA framework. Simulate muscle contraction patterns and their interaction with the larva’s environment, including
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these constraints into the training objective, complicating model training. This project aims to leverage advancements in computer vision, particularly in implicit neural representations, to embed priors in neural
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generation of social, computer-based, and cyber-physical systems that make a substantial contribution to the welfare of our society, for example, via embodied intelligent systems that are tailored to users