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                the "Mercury in the solar wind" ERC project at the Finnish Meteorological Institute. The PhD student will apply our global particle-based models to study the solar wind influence on Mercury and its environment 
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                . The handling of unseen languages remains without real solutions, despite the research community having made a few practical excursions, such as using trash language models or confidence thresholds 
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                is part of the newly funded Research Council of Finland project Redefining Inner Boundaries in Solar Wind Models (RIB-Wind), led by Dr. Stephan G. Heinemann. The preferred start date is October 2025 
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                of Biotechnology at the University of Helsinki. We study structural mechanisms and biological functions of mechanosensitive membrane microdomains. By using a combination of structural biology, biochemistry, in vitro 
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                economy. The group aims for analyzing the technologies within this context through experimental and systematic model-based analyses. Scientific publications by the group can be viewed in Publications and 
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                to the development of deep learning methods to predict reaction outcomes and optimal reaction conditions for organic reactions. The work will involve model development using Python and/or other programming languages 
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                large proteomics dataset, so we are working with several novel host cell targets. The work could include detailed virological, cell biological, or biochemical/structural characterization of the selected 
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                detailed virological, cell biological, or biochemical/structural characterization of the selected protein(s). We are supported by top-level local core facilities in proteomics, as well as light and electron 
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                development. The successful candidate will contribute to the development of deep learning methods to predict reaction outcomes and optimal reaction conditions for organic reactions. The work will involve model 
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                stability theory, modeling & identification, optimal control, certifiably safe & robust control, and learning for dynamics & control. The main task of the PhD student will be to develop sound data-driven