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the course of the PhD. Example directions include: Anomaly, novelty, and out-of-distribution detection in visual data Fine-grained visual understanding for distinguishing subtle irregularities Learning visual
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23 Jan 2026 Job Information Organisation/Company Leiden University Research Field Computer science » Programming Computer science » 3 D modelling Researcher Profile First Stage Researcher (R1
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literature search and preregistered meta-analysis Coordinate MRI data collection with the technical team at the Leiden University Medical Center (LUMC) Perform fMRI preprocessing and statistical analyses
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in computational analysis of omic data-ability to perform statistics, data integration and bioinformatics Candidates who are nearing completion of their PhD may apply, but confirmation on awarded PhD
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at an unprecedented scale. Building existing infrastructures from, for example ODISSEI, the project centers around the analysis of population-scale datasets with advanced computational tools. By bringing together data
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to observe and understand how societies evolve over time. One focal point of the Macroscope is language, specifically the research infrastructure needed for the annotation and analysis of textual data
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3 Apr 2026 Job Information Organisation/Company Leiden University Research Field Chemistry » Analytical chemistry Chemistry » Instrumental analysis Engineering » Biomedical engineering Engineering
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on the researcher’s background, the analysis can be either quantitative and digital – using the data collected in the PRAYER database – or qualitative, or a combination of both. Possible research angles include, but
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analysis with spatial data to assess cascading supply chain risks and other systemic effects, supported where relevant by system dynamics modelling. Second, the PhD candidate will develop models to assess
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types of data, including omics data, analytical data, imaging data and ecological data. Through this position, we aim to strengthen research and methodological innovation capacities for data analysis and