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), while training the next generation top scientists, innovators and entrepreneurs. Research at MSN is organized in different research clusters including Energy Transition, Surface Technology and Metallurgy
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of Energy Sciences. At the division, we conduct research and education on energy production, conversion, and utilization in different electro- and thermo-mechanical systems where the study of heat transfer
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international soft matter community for collaborations and networking. The project will be run in collaboration of different groups, including in particular Assoc. Prof. Felix Roosen-Runge and Prof. Anna Stradner
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of the method of ac-electrogravimetry with dissipation (ac-EQCM-D) at different harmonics. Task I: Development of model electroactive thin films with modulable mechanical properties (Prussian Blue analogues
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and entrepreneurship (in the context of Moroccan and African challenges), while training the next generation top scientists, innovators and entrepreneurs. Research at MSN is organized in different
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Chemistry, Chemical Engineering, and Environmental Engineering focusing on different research fields such as catalysis, separation, energy generation, conversion and storage, and organic optoelectronics
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of proteorhodopsin light harvesting of marine bacterioplankton in carbon cycling. Focus will be on deciphering the genetic basis for utilization of monomers and polymers of important dissolved organic matter compound
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of membrane rupture. A PEMFC is subjected to severe hygrothermal cycles during operation, leading to geometrical variations of the different components of the stack, due to their thermal expansions and to
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, conversion, and utilization in different electro- and thermo-mechanical systems where the study of heat transfer, fluid mechanics, reactive flows, as well as solid mechanics plays a central role. In particular
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-printed carbon materials, synthesis of activated carbons from different precursors (biomass, polymers, resins) and application of machine learning in materials science, in conjunction with the CeDRI team; b