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Field
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Information , Data Visualization , Deep Learning , High dimensional Data , Large Language Models , Large Scale Optimization , Machine Learning , Natural Sciences , Public Interest Tech Computational Biology
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algorithms for parallel/distributed AI/ML Hardware-aware and resource-efficient partitioning for parallel/distributed AI/ML Optimization of process-to-process communication in parallel/distributed AI/ML
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. The main focus of ’the research group’s work is the optimization of the medication use of the individual, patient living with multiple long-term conditions. This also applies to the planned project
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preeminence in creating, communicating, preserving and applying knowledge, art, and academic values, and in developing leaders and citizens who will challenge the present and enrich the future. The University
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independently on the topic. Good knowledge of force field codes (like Gromacs, Lammps, Raspa or similar) and density functional modelling with e.g. Quantum Espresso or VASP is crucial. You must have a good
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Documents” of the present document for more information. The candidate must submit a scientific and professional curriculum vitae related with work plan. Preference factors:Demonstrated knowledge and prior
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organisms (zebrafish); 2) Establish the 6-OHDA-induced Parkinson's model in Danio rerio, optimizing concentration and exposure time; 3) To evaluate the neuroprotective effect of selected marine compounds
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, and performance optimization through innovative research and product development. Progress toward these medical solutions requires that the breakthroughs and the knowledge garnered by government
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understanding of the other function's responsibilities to enable them to be an optimal collaborator and colleague. During the fellowship, the fellow will work within Regulatory Affairs to gain experience in
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that the spending is optimized and on track concerning goals set for the grant Develop ideas for application of research outcomes. Contribute to knowledge exchange activities with external partners and collaborators