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) for engineering systems. Our research covers surrogate modeling, reliability analysis, sensitivity analysis, optimization under uncertainty, and Bayesian calibration. We are known for developing the UQLab software
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the admission requirements for a PhD at ETH Zurich Experience in machine learning, optimization, or AI-driven decision-making Preferably with knowledge of Bayesian optimization or Gaussian processes
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) for engineering systems. Our research covers surrogate modeling, reliability analysis, sensitivity analysis, optimization under uncertainty, and Bayesian calibration. We are known for developing the UQLab software
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recovery trajectories and injury patterns. Integrate personalized physiological measurements into a recovery prediction model, while adapting Bayesian Neural Networks for SCI data and analyzing the impact on
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), Multi-armed Bandits, Bayesian Optimization. Automated Model Design and Tuning: Neural Architecture Search, Hyperparameter Optimization. Computer Networking: Resource-Constrained Networking (e.g., Internet
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multiphase fluid phenomena, such as bubble and droplet dynamics and the resulting fast flows. One of our key objectives is to control bubble oscillations to exploit their energy-focusing characteristics in
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department (hr@inspire.ch ), including the following material: A short statement of research interests and objectives A CV including past research work and projects 2-3 reference letters/contacts One
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exposure, pesticides and climate change including heat waves. Internship or MSc Project (80-100%) for 4-6 months The overall objective of this internship is to contribute to the development of a Swiss 5G
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the fight against climate change. Policymakers need new tools to help balance the transition’s big-picture objectives with the systems’ impacts on people and communities. This project will contribute new
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to shape the direction of the project after the initial objectives are met. The project is funded through an ETH grant and will be supervised by Dr. Juliana Laszakovits in the group of Prof. Kristopher