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international culture. Strong support of training and career development towards an outstanding profile as data scientist in synthetic biology research. Flexible working hours and mobile working opportunity. A
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Institution: German Institute for Global and Area Studies (GIGA) / Leibniz-Institut für Globale und Regionale Studien, in a joint appointment with the Faculty of Business, Economics and Social
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On-going master studies in Data Science, Database Systems and Information Management, Computer Science, Physics or Applied Mathematics Knowledge of signal processing, Data analysis and Data handling Interest
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- Integrating exudation into the root economics space to better understand carbon and nutrient cycling in managed grasslands” is part of the DFG Priority Program 1374 “Biodiversity Exploratories”. The project
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. Your Qualifications / Experience: completed university degree (bachelor’s or higher) in informatics, mathematics, physics, geosciences or a related field with preferably good results strong interest in
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based on machine learning. Reference number 05/25 Your tasks Assessment of GaN technology in possible novel integrated GaN RF front-end configurations - Full duplex in-band transceivers - Integrated down
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. The project will finally lead to new strategic plans for global observations of the relevant species. Your Qualifications / Experience: A master's degree in physics, engineering, environmental sciences, or a
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The Leibniz-Forschungsinstitut für Molekulare Pharmakologie (FMP) belongs to the „Forschungsverbund Berlin e. V. (FVB)“. The FVB is an institution of seven natural sciences research institutes in
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, informatics, physics or a related field strong expertise in machine learning strong interest in high performance computing on CPUs and GPUs proficiency in Fortran, Python, shell scripting proficiency with Linux
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infrastructure research programme distributed across several institutes and universities in Germany. The programme aims at innovating the data landscape available for social science research by improving