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. The project will involve: • Synthesis and characterization of proton-conducting ceramic materials and composite electrodes. • Development and optimization of acid-base infiltration protocols for surface
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rechargeable batteries. In this context, one of the challenges involves optimizing the electrolyte, which determines the stability of the metallic anode, the electrochemical window, and interfacial processes
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of these tools and will be expected to introduce their own modifications in order to adapt and optimize the analysis for the study at hand. Other tasks include: * Optimizing the experimental setup (4D observations
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Research Framework Programme? Horizon Europe Reference Number 2026-R0011 Is the Job related to staff position within a Research Infrastructure? No Offer Description - work environment: The position is hosted
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-doctoral fellow will work within the framework of the project with the aim of both (1) performing Monte Carlo simulations (with established codes such as GEANT4, MCNP, FLUKA, or others) in order to project
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- Solid knowledge of existing literature in optimization and/or symbolic computation - Strong skills in programming with scientific and/or symbolic computing tools Website for additional job details https
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Department (DRIS), you will participate in research activities on the optimization of non-Newtonian fluid injection for the decontamination of polluted soils. Tests will be conducted, in 1D columns, in 2D
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various techniques such as powder and single-crystal X-ray diffraction, NMR, UV-Vis, and IR spectroscopy. Their photophysical properties will be studied in the solid state as a function of temperature
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— an essential step for effective regeneration (Schaeffer et al., Neuron, 2023). A key aspect of our work is to understand how neurons regulate gene expression locally within axons through local ribosome supply
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experimental parameters (time, temperature). To optimize these parameters, active learning techniques based on Bayesian optimization will be applied. In situ or ex situ characterizations (FTIR, ¹¹B/¹H NMR, HP