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, preferably in the field of materials science, or an equivalent qualification Knowledge and practical experience in inorganic chemistry and thermodynamics Experience in thermal analysis, especially TGA-MS
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has a strong interest in Mathematical Analysis with special backround in Partial Differential Equations and Dynamical Systems, can easily integrate into our team, independently contribute to current
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for Spatial Studies). This hub should act as a central geospatial competence center to provide targeted support for research projects to bring spatial thinking, (novel) spatial analysis, and spatial
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the field of empirical (educational) research. Strong methodological skills in quantitative research and experience with statistical analysis software (e.g., R, Mplus, JASP). Excellent German and English
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methods from the fields of differential equations and/or stochastic processes, as well as computational approaches and/or statistical methods of data analysis. You can find more information about our
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of multimedia systems, digital media technologies, semantic analysis of multimedia content, techniques for the detection of misinformation including AI methods and their application, user interface, and feedback
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interest in at least one of the following topics is desired: Parallel Computing Cloud Computing Performance Analysis and Optimization Communication Technologies for Supercomputers Workload Management and
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, and related fields. We are interested in providing computational methods to improve the representation, retrieval, integration, analysis, visualization, and communication of spatial and spatiotemporal
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and mass spectrometry to investigate small-molecule metabolites with exceptional precision. The candidate's project will focus on analytical metabolomics for (sub)cellular analysis. The method-oriented
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) and clouds You will develop novel methods and analysis tools for in-situ aerosol and cloud data using state-of-the-art techniques (e.g., image processing, machine learning) A significant fraction of the