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data analysis, and to establish and manage a service infrastructure within the BioMS group, enabling fee-for-service access for external collaborators. You will independently design, plan and perform
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include organic synthesis, compound characterization, biochemical assays, cell-based assays and MS-based(glyco)proteomics analysis. You will be supervised by Dr. Zeshi Li external link at the Chemical
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, from fellow academics to patients. You have experience with analysis of sensor data. You have an affinity for patient care and are able to communicate with patients. You have a good command of written
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which research focuses mainly within the research programmes (1) Algebra, Geometry and Mathematical Physics, (2) Pure, Applied and Numerical Analysis, and (3) Stochastics and (4) Discrete Mathematics and
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framework of the Postdoc position, in alignment with the broader Vidi project; conducting high-quality empirical research (archival research and cultural analysis); contributing to the development of a theory
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analysis. Technical Skills: Experience with advanced finite element software and nonlinear static and dynamic analyses. Specifically, high proficiency with both DIANA FEA and ABAQUS. Strong numerical skills
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an independent research plan based on the general framework of the Postdoc position, in alignment with the broader Vidi project; conducting high-quality empirical research (archival research and cultural analysis
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the regulatory interactions regulating suberin biosynthesis in different root cell types? And are you interested in combining gene expression analysis with developing new experimental methods, such as TurboCas
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observability, potentially integrating physics-aware constraints and generative modelling approaches. Both tracks interact closely to create a data–model feedback loop, enabling systematic analysis of how
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), and physiological parameters in the study of animal behaviour; a strong background in data analysis using R, preferably experience with Bayesian statistics and social network analysis; lab experience