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-GUESS Model to the study region (testing, parameter adjustments, implementing main land uses) Combine the model with data on past dynamics (e.g. pollen and charcoal data, climate change proxies and
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optical communication networks and systems, as well as machine learning, computer vision and compressing digital videos. As part of our project with the start-up TwinCloud, we are looking for a Student
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Your Job: The CROP (Combining ROot contrasted Phenotypes for more resilient agro-ecosystem) project aims to estimate the beneficial impact of combining contrasting wheat root phenotypes in the same
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. This PhD project focuses on improving how we estimate key parameters in land-surface and ecosystem models, which are essential for understanding climate change impacts. The work involves reviewing existing
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interventions. Thus, the identification of crucial immunological parameters, such as novel biomarkers, is of great importance. The aim of the Clinical Cooperation Unit (CCU) "Applied Tumor Immunity" is the
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you join us? In the field of quantum technology, the institute is working on the realization of a quantum computer based on color centers in diamond. Here, nitrogen-vacancy (NV) centers in diamond
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generation of social, computer-based, and cyber-physical systems that make a substantial contribution to the welfare of our society, for example, via embodied intelligent systems that are tailored to users
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Optimization (DPO) and reinforcement learning from human feedback, building preference datasets together with clinicians - Build and run a Red Team process with physicians, computer scientists, and patient
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), ensuring that the desired environmental parameters of the sample are met during the whole experiment. These parameters may include magnetic field, temperature, humidity, and other relevant factors. Through
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modelling and improving Earth System Modeling by better merging of measurement data and model simulations. This PhD project focuses on improving how we estimate key parameters in land-surface and ecosystem