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analyses and document analysis. Depending on the sub-projects chosen, the research may also combine interviews with quantitative analysis. The doctoral student will become part of a leading research
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perturbation-based GRN inference for single-cell and spatial multi-omics data, to boost GRN quality and add the cell type and tissue heterogeneity dimensions to causal regulatory analysis. A deep learning
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3 Apr 2026 Job Information Organisation/Company Linköping University Research Field Chemistry » Inorganic chemistry Researcher Profile First Stage Researcher (R1) Application Deadline 30 Apr 2026
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and full-cell sodium-ion battery prototypes, data management and analysis, presenting results at international conferences and group seminars, and publishing papers in peer-reviewed journals. You may
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administrative systems. Dominant research areas are public policy and administration, institutional analysis, comparative politics, opinion studies and political theory. Project description The overall aim
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concepts Structure–property relationships in bio-based materials Advanced characterization techniques (e.g. NMR, GPC/SEC, mass spectrometry, thermal analysis, mechanical testing) Your PhD research will
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policymakers to improve access to essential medicines. Candidates for this project are expected to be interested in the collection and analysis of quantitative data, and to possess or be able to develop
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, where AI models are trained without having all data in a single computer. This makes it possible to use larger datasets for training, without sending sensitive data between hospitals. The goal is to
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of microbial communities using 16S rRNA gene sequencing, followed by bioinformatic analysis. It further includes applying hierarchical and mixed‑effects models and integrating microbiome data with environmental
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with us, you receive the benefits of support in career development, networking, administrative and technical support functions, along with good employment conditions. More information about the