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to the development and characterization of advanced human stem cell-derived models, including organoids and Forebrain Chimeroids, as well as the analysis of endogenous prenatal human tissue. In parallel, you will
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postdoc to study how supply chains can stay resilient and meet regulatory demands, using system modeling and scenario analysis. Job description Supply chains are increasingly exposed to complex and
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Vacancies Postdoctoral Researcher: High-Fidelity LES & Atmospheric Boundary Layer Modeling Key takeaways About the Project The ECOWIND project focuses on an integrated strategy to extend
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for a truly circular wind energy sector. A key component of this mission is developing predictive "look-ahead" control capabilities based on LiDAR technology. Your Mission: Advanced LES & Research
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. In this project, we aim to prove the concept of hard/soft concrete composites. The research will include: Computational modelling and optimization of concrete architectures Experimental testing and
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an essential process for life. When a cell is at a diseased state, the interaction landscape can drastically change. We develop chemical tools to investigate these interactions to understand health and
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system-wide manner. Your job Molecules in our body constantly make interactions. This is an essential process for life. When a cell is at a diseased state, the interaction landscape can drastically change
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to design these agents and AI techniques to analyze text entries (and text entries obtained from the audio) obtained from human-agent and human-human interactions to construct the domain models and
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. The postdoc will actively explore how reinforcement learning techniques can be applied across a range of complex operational domains, such as energy systems, health care, and scheduling and planning. A strong
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remains poorly understood how such systems learn and what signatures learning leaves in their physical structure and energy landscape. This project aims to build the theoretical foundations of physical