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fully funded PhD position in the area of Next Generation Enterprise Architecture Management to be filled in Q1 2024. Your responsibilities: Research & development projects in the area Next-Generation
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the S4I2T project your main responsibilities will be the following: Evaluation of the potential ISRU architectures and subsequent derivation of a holistic in-space mobility, in-orbit servicing (IOS) and
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benchmarking techniques. Development of model architectures and training concepts tailored to enhancing synthetic data generation. Rigorous evaluation and iterative optimization of the generated data models
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dynamic task are becoming more and more apparent. The main tasks for the PhD student are to work on mechatronic design of robotic joints and architecture mechanisims that improve existing manipulation
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networks self-organize their architecture. We are looking for a PhD student (m/f) to join our team at the TUM. Task Flow networks are a fundamental building block of life. Transport by flow is the main task
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methods and architectures Scientific publications. We offer: An optimal research and supervision environment for doctoral studies and academic development, excellent networking opportunities. Pleasant
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network adaptation is crucial for optimal perfusion. In living systems, network architecture constantly changes in response to environmental stimuli towards uniform flow to optimize transport. Combining
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. The Institute of Turbomachinery and Flight Propulsion is pursuing research in technologies of future aero engine architectures for the next generation of aircraft. In this context, the development
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Flight Propulsion is pursuing research in technologies of future aero engine architectures for the next generation of aircraft. In this context, the development of turbomachinery and the integration
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architectures which leverage our increasing understanding of the behaviour of neural networks trained with DP to ameliorate these trade-offs in biomedical applications. - Foundations of private machine learning