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of Biomedical Informatics at Columbia University is seeking a highly motivated data science engineer to support large-scale observational research within the OHDSI (Observational Health Data Sciences and
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centres d'intérêt et l'expérience académique de la personne retenue. 1) Développer des méthodes de downscaling frugales et multi-sources. Les méthodes présentées jusqu'à présent dans la littérature font un
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as a research associate in the area of hydrogen and grid integration. Responsibilities: - Integrate advanced hydrogen infrastructure and multi-level battery storage into a full-scale local island grid
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representative microstructures or using an equivalent homogenized material model. The project therefore combines multi-scale modeling, large deformations, nonlinear viscoelasticity, and transient dynamics
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? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description The TWISTT project (who TWISTs the Tap?) will develop a novel multi-scale Earth
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industry, funding bodies and national organisations. Oversee major multi‑partner funding bids and support large‑scale collaborative initiatives. Guide strategic planning, foster a culture of innovation and
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, experiential learning, employer engagement, or equivalent student services area. Four (4) of the seven (7) years must be in a supervisory role. Experience building multi-sector partnerships and managing cross
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in scientific operations Substantial experience leading complex, multi-disciplinary scientific facilities or research infrastructure Demonstrated success in managing large-scale operations, budgets
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and modelling of omics, clinical and imaging data, development of reproducible pipelines, application of machine learning techniques, integration of multi-modal data, scientific publication and
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laboratory and will focus on macromolecular engineering, synthesis and multi-scale/physics characterizations of structure/ionic transport properties of self-healing polymer electrolytes. In close collaboration