57 postdoc-in-thermal-network-of-the-physical-building PhD positions at Technical University of Munich in Germany
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, physics or related fields • Very good and fundamental knowledge in the areas of fluid mechanics and aero-thermal turbomachinery • High fascination for technical/scientific problems of numerical and
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, metabolomics, and precision health YOUR PROFILE Completed university degree (Master’s or equivalent) in a scientific or technical field such as Physics, Biotechnology, Bioinformatics, Mathematics, Statistics
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to perform team-oriented as well as independent work • Very good communication and writing skills are necessary We offer: • A modern workplace in a brand-new building, with top equipment (Cytek Aurora Spectral
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European Training Network consortium. You will benefit from a team approach, integrated international mobility, high level subject and transferable skills development oriented to your future employment in
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and simulation tools. Research topics include geometric modeling of engineering products, methods of geometric analysis, methods of Building Information Modeling, modeling and simulation of construction
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high-dimensional single-cell analysis and within the LPI network (scRNAseq, spectral flow cytometry) to translate fundamental insights into translational applications for human health and disease. We
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normal physiology and autoimmunity in collaboration with project partners • elucidate the transcriptional networks regulated by FoxP3 and c-Rel in Treg cells and screen for novel critical regulators
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29.04.2021, Wissenschaftliches Personal This PhD position is in the field of resource management for wireless network that leverage “digital twins” modeling aspects of the physical (such as user
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Application process Send your application in English by email to amx@wzw.tum.de with title “Research Associate application” at latest 01.07.2025 including • A cover letter (for example elaborating your
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to the computational complexity of climate models, these will be replaced by physics-informed deep learning surrogates in the aforementioned model coupling. The project will initially focus on one main application