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of Empirical Innovation Economics. Participating in the structured doctoral program of the Munich Graduate School of Economics (MGSE) at LMU. Contributing to exciting and highly relevant policy projects
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. The position is part of the research group Quality.2 (Phytonutrient Management) in the programme area ‘Plant Quality and Food Security’ (QUALITY). The aim of the research project ‘GluAmin’ is therefore
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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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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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skills work together, in order to learn from one another and generate new knowledge and new methods to create a better quality of life in our world. DWI offers you a wide range of possibilities to develop
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to improve existing methods for the detection, prevention and treatment of lung diseases and to develop new, innovative therapeutic approaches. Job description We are seeking a motivated PhD candidate
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costs. As the semiconductor device structures continue to decrease in size (from Nano to Angstrom scale), new fabrication methods and processes are necessary to meet the challenges of device fabrication
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semiconductor device structures continue to decrease in size (from Nano to Angstrom scale), new fabrication methods and processes are necessary to meet the challenges of device fabrication and new chemical
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research and scientific methods relevant for research in behavior and ecology. The unique opportunity to gain field experience in a West African national park, train with experienced behavioral biologists
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Leibniz Institute of Plant Biochemistry (IPB) in Halle (Saale), Germany, where we are offering a fully-funded PhD position within the DFG Priority Programme SPP2363: “Molecular Machine Learning”. About the