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the programme area ‘Plant Quality and Food Security’ (QUALITY). The aim of the research project ‘PhytoM’ is has the goal to mechanistically explore the interaction of phytonutrients in the plant-environment
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the team of Prof. Dr. Loriana Pelizzon on data and methods for supervision of climate and ESG risks in Capital Markets (incl. investment funds, bonds, stocks). The role involves advising and
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programme. What will be your tasks? The position focuses on the co-design and co-development of a monitoring assessment and policy framework for mitigating changes in marine lightscapes. You will be part of a
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the International Continental Scientific Drilling Program (ICDP) and aiming to study the icehouse–hothouse transition during the Permian (299–252 million years ago) and extreme continental climate states. Key
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pension scheme Free entry to numerous museums Location: Hamburg Working hours: part time (75%) Position: temporary contract limited to 3 years Remuneration: E13 TV-H (accord. to the collective agreement
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methods, which occur with aging and lead to altered long-range and local synaptic function and subsequent aberrant network excitability along with associated memory deficits. Specifically, the candidate
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research questions a strong collaborative spirit and enjoyment working closely within a diverse research team intellectual curiosity, creativity, and an openness to exploring new methods and
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(TIB ) – Leibniz Information Centre for Science and Technology – Program Area C, Research and Development, is looking to employ a Open Source Developer for Digital Scientific Infrastructures (m/f/d
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the Research Group “Numerical Mathematics and Scientific Computing” (Head: Prof. Dr. V. John) starting November 1, 2025. We are looking for: The applicant should perform active research in numerical analysis
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is using state of the art machine learning tools to extract interpretable latent dynamics. We seek a highly motivated PhD student to develop a predictive computational model using recurrent neural