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plausible deployment pathways. Numerical simulations will first be conducted in isolation, focusing on OAE alone, and will then be extended (in collaboration with other PhD students and postdocs) to combined
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to monitoring scientific progress and defining short-term objectives. More informal discussions will also take place as needed, particularly during intensive phases of numerical development or data analysis
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research environment involving several PhD students and postdocs, and strong regional and international connections, with collaborations with the University of Geneva and CERN. Terms of Employment
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student will join the various regional and national scientific networks in which their supervisors are involved (ITI QMat and HiFunMat, IRN Nanoalloys, GDR Plasmonique Active, post-GDR Or-nano network), and
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. The composition of these colloidal particles will be adapted to optimize their ability to stabilize water-in-water emulsions, adopting a strategy based on well-defined structures through the use of synthetic block
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on the grading system). In the French system, this generally corresponds to an excellent Master 2 performance, ranking among the top 10% of the class. This PhD project aims to develop advanced software solutions
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parahippocampal networks containing HD cells, building on the idea that the HD system is not merely a passive responder to visuo-vestibular inputs, but also integrates information from the ideomotor system
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radical polymerisation, to form well-defined core-shell inorganic-organic particles that can be used to form artificial nacres.2 The aim of this PhD is to adjust and optimise the synthesis of the inorganic
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involved in reproduction. The objectives are to define an experimental model to identify the constraints of sexual selection and to control the parameters for optimizing insect rearing. The thesis's purpose
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photonic systems, in particular, make it possible to harness the richness of optical dynamics to perform complex operations inspired by biological neural networks. However, current approaches face