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publications, conferences, and public-facing digital platforms Contribute to the research project's open science and reproducibility efforts through documentation, GitHub repositories, and notebooks For further
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, evidenced by collaborations across the environmental and social sciences, to inform evidence-based policy and sustainable solutions. This professorship is part of LCSES's commitment to advancing socio
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of experience ? You are familiar with Quantitative modelling in energy and economics, preferably power systems ? You have a good knowledge of linear programming ; Understanding of economic theory, with a focus on
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observed in Drosophila larvae. This interdisciplinary project combines biology, neuroscience, and computational modelling to understand how the larva’s body’s physical properties influence its motor control
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We are looking for a candidate with a Master's degree, Engineer's degree or PhD in computer science, junior or senior, to join a team responsible for the packaging, deployment, and testing
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We are seeking a highly motivated postdoctoral researcher with the following qualifications: • PhD in Mathematics, Computer Science, or a related field. • Solid background in optimization and/or
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English Candidates with experience in cell culture are encouraged to apply. Experience with imaging, molecular biology, hydrogels, chemistry, microfabrication and microfluidics are highly desirable
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defense of their PhD thesis by mid-September, 2025. In addition, applicants must be fluent (reading, writing, and speaking) in English. A short list of applicants will be selected based on their CVs
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to target the mechanistic alterations at the basis of resistance to current therapeutic options. The research program will favor translational approach and the experimental design will benefit from
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, https://hal.science/hal-04930868 . [2] Peyré, G., Cuturi, M., et al. (2019). Computational optimal transport: With applications to data science. Foundations and Trends in Machine Learning, 11(5-6):355–607