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Landscape Research) campus in Müncheberg, near Berlin, and is integrated into regional, national, and international (biodiversity) research networks. Your Tasks Develop and apply methods to extract
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Computer-adaptive methods and multi-stage testing Application of machine learning in psychometrics Predictive modeling of educational data Methodological challenges in cohort comparisons Advanced meta
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-line representatives (non-avian theropods) Collection and documentation of morphological, embryological, and ecological data Application and adaptation of various scientific/statistical methods (e.g
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) with at least one publication as lead author in a reputable international journal. Extensive experience in cell culture and molecular biology methods is expected. Beneficial would be experience in RNA
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institutions, and a research and development provider for numerous companies throughout the world. The INM is a member of the Leibniz Association and has about 250 employees. The INM research group
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The Leibniz-Institut für Analytische Wissenschaften - ISAS - e. V. develops efficient analytical methods for health research. Thus, it contributes to the improvement of the prevention, early
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knowledge in the application and development of NGS wet lab or computational methods for the analysis of genome data for molecular biodiversity research, have strong experience in data management and analysis
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, Physical Oceanography, and Marine Observation) cooperate within the framework of a joint research program. Project and job description Within KOFI, the long-term carbon storage of marine sediments and the
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Oceanography, Marine Observation, Marine Chemistry, Biological Oceanography and Marine Geosciences departments work together in an interdisciplinary joint research programme. What will be your tasks? Within
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-party research funding are expected. We are particularly interested in a candidate in any field of economics who leverages state-of-the-art machine learning and causal inference methods to innovative