13 phd-in-architectur-and-built-environment PhD positions at Delft University of Technology (TU Delft)
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fair consideration. Challenge. Change. Impact! Faculty Architecture & the Built Environment The Faculty of Architecture and the Built Environment has a leading role in education and research worldwide
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collaboratively across disciplines and institutions. This particular position will be hosted at the Department of Management in the Built Environment (MBE), Faculty of Architecture and the Built Environment, TU
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application will receive fair consideration. Challenge. Change. Impact! Faculty Architecture & the Built Environment The Faculty of Architecture and the Built Environment has a leading role in education and
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Profile A – Comfort Wearable System Design (PhD 1) PhD1 will work on the system architecture and comfort aspects of integrating energy-harvesting modules into soldier-worn garments, examining how
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of Architecture and the Built Environment), where you will collaborate closely with a parallel PhD project within the Faculty of Aerospace Engineering focused on meshfree numerical methods. Together, you will work
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of reconstituted synapses Job description A 4-year position is available for a PhD candidate in the research group of Dimphna Meijer, Department of Bionanoscience, Delft University of Technology, the
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an end-of-year bonus of 8.3%. As a PhD candidate you will be enrolled in the TU Delft Graduate School. The TU Delft Graduate School provides an inspiring research environment with an excellent team
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of solving such systems are immense: slow or unstable convergence, lack of robustness, and scalability bottlenecks on modern parallel architectures. As a PhD researcher, you will be at the frontier of tackling
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will investigate novel frameworks to accelerate SRS in HPC environments. The PhD candidate will work at the Ship Hydrodynamics section of the Department of Maritime and Transport Technology (Faculty
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this PhD project, you will investigate the co-design between event-based learning algorithms and neuronal hardware units with multi-scale time constants. The algorithmic methodology will exploit recent