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work experience in the field of Territorial analysis: 15 points Scientific publications in the field of Spatial Analysis: 5 points Personal interview, will only be carried out for those candidates who in
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, and spatial organization, crucial especially in early developmental stages but relevant throughout life. Drawing from cellular and molecular biology, it delves into embryology, morphology, genetics
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identification, molecular validation, and the development of new diagnostic tools. Working with cell cultures and organoids. Participation in molecular and spatial data analysis in collaboration with analysts
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; Proficiency in ROS/ROS2 (Robot Operating System) and middleware for data integration; Knowledge of temporal and spatial synchronization of sensors and extrinsic/intrinsic calibration. Computer Vision and 3D
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, industry and the wider community. What we’re looking for: A PhD in geostatistics, spatial statistics, or commensurate discipline. Demonstrated ability to undertake research in spatial data analysis
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permanent staff members, plus some 15 PhD candidates and 4 post-doc researchers. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR5801-GERVIG1-053/Candidater.aspx Requirements Research
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templating of silica condensation by phase-segregated lipid bilayers and GUVs. (3) integrate biomineralization peptides into lipid systems to drive spatially controlled mineralization, and (4) extend
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, epidemiological, and environmental data Taking part in developing and validating predictive cancer‑risk models Contributing to spatial analysis and data integration in geographic information systems (GIS
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that have been made available for the project using instruments and facilities at Curtin University. Work collaboratively with researchers (including PhD students) in the asteroid sample analysis team
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for spatial proteomics and multiplexed imaging datasets. Conduct CyTOF and FCS data analysis, including data preprocessing, normalization, clustering, and visualization. Analyze medical record data, integrating