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quantify the evolution of the thermal structure of the Aquitaine Basin's crust and mantle using the geological record. Geophysical data, the subsidence history of sedimentary basins, and thermal-mechanical
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and production of software tools for in silico screening of chemical libraries and rational drug design of molecules for therapeutic purposes. - Contribute to the development of a high-throughput
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description This research topic aims to develop non-invasive, non
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Dynamics and Basin Evolution on the Exploration of Energy Resources and Geological Potential) of the PEPR “Subsurface, bien commun”, funded by the French National Research Agency (ANR). This project involves
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typically takes a step of 10 nm in about 10 ms. The spatiotemporal precision of these measurements has been recently greatly increased by developing a new two-photon microscope (the signal is no longer
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the ASTRID ProCoPe project (Collective Processes for Power Components), led by the III-V Lab, which aims to fabricate power components with diamond heat sinks, based on Gallium Nitride (GaN), and to develop
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); - Developing and characterizing the physical, chemical, and electrochemical properties of nickel-based anode nanomaterials for the oxidation of oxygenated organic compounds; - Shaping the anodes and electrolysis
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will be recruited to join the Machine Learning for Integrative genomics team at Institut Pasteur in the context of the ERC Starting Grant MULTI-viewCELL. One position will focus on the development
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for developing materials and photocatalytic conditions for selective reactions, such as green hydrogen production or demethylation reactions from biomass. Two approaches will be explored: heterogeneous
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how DNA LLM work, and develop solutions to integrate them into the neural network architectures developed by the lab. - Focus on developing new solutions for the scalability of neural networks and large