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02.04.2026, Academic staff The research group of Prof. Frank Ortmann at TUM is offering two PhD positions (Research Associates, f/m/d) Start: Summer 2026 (flexible) Research topics: * Optical
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Computational , Astrophysics Experiment , Astrophysics Theory , ATLAS , Atomic Molecular and Optical Physics , Atomic Physics , Atomic, Molecular, and Optical Physics , atomic-molecular-optical physics , Atomic
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remuneration cost, including full social security and health insurance), approximate amount of net salary 7 300,00 PLN/month Project leader: Brendan Kennedy, PhD Project title: Multi-parametric optical
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improvement of the current optical systems for time-resolved multi-wavelength pump‑probe experiments, especially the extension towards the UV-VUV wavelength regime Development of individual research activities
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have become a major challenge for understanding, recording, and modulating neuronal network activity, ranging from in vitro cellular models to implantable neurotechnological applications. In the long
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energy materials—and is equipped with state-of-the-art research facilities. Embedded in a dynamic network of industrial and academic collaborations, SIMaP provides an ideal environment for ambitious
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implement and train neural network architectures, including Physics-Informed Neural Networks (PINNs), in order to integrate physical constraints into the learning process and improve the identification and