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: Geometric Analysis Appl Deadline: 2025/04/25 11:59PM (posted 2025/04/04, listed until 2025/10/04) Position Description: Apply *** the listing date or deadline for this position has passed. *** Position
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for studying binding and dynamical structure of DNA, RNA and proteins. Scientific questions in projects can involve, for example, studying specificity in transcription factor – DNA binding, detecting protein
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well as their attitudes and preferences toward different democratic institutions. The project will employ both observational survey analysis, including analyses of existing surveys and fielding of original surveys, and
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particle physics division at Stockholm University, which currently consists of six faculty members, four researchers and postdocs and seven PhD students. The focus will be on analysis of the high energy
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materials (Metal Organic Frameworks) that will be tailored with catalytically active sites of different nature and used as heterogeneous catalysts for organic reactions. This project is highly
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analysis and requires an adaptable, self-motivated researcher who can take independent responsibility for coordinating remote collaboration, leading online meetings, and managing diverse field activities. As
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communicate outcomes to both researchers and practitioners. The role combines hands-on fieldwork with quantitative analysis and requires an adaptable, self-motivated researcher who can take independent
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also be subjected to droplet microfluidics, one of the most promising high-throughput methods for effectively processing the MIP-probe-positive individual cells for RNAseq analysis by using our standard
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emulators for accelerated forward modeling Advanced data-intensive machine learning and AI techniques for survey analysis Applications to major international surveys, including LSST (Rubin Observatory
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matter observatory. Main responsibilities The postdoctoral candidate is expected to focus on statistical data analysis including machine learning, Monte Carlo simulations, operations and calibration