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electronic engineering, physics, chemistry, materials science, nanotechnology, or closely related discipline. Good publication record. Experience in thin film or/and solar cell fabrication by solution
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: Education: PhD in Biomedical, Neuroengineering, Electronic or Electrical Engineering, Physics, Bioinformatics or related engineering fields · Advanced Python / MATLAB programming skills. · Electrophysiology
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areas of nanoscience and nanotechnology. Job title: Postdoctoral Researcher in Altermagnetic Spintronics Research area or group: Physics and Engineering of Nanodevices Description of Group/Project
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environment with chemists, electronic engineers, and domain scientists. Main Tasks and responsibilities: Develop the MMPI-BO (Multimodal Physics-Informed Bayesian Optimization) optimization engine. Implement
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presentations in workshops or conferences to showcase your research results to the scientific community. · Skills on proposal writing Requirements: Education: PhD degree in electronic engineering, physics
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+ EDX · Fully Automated FIB Helios 5UX · FEI SEM Quanta and SEM Magellan Requirements: · Education: PhD in Physics, Materials Science, Nanoscience, Computer Engineering, Data Science. · Knowledge: Deep
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on the engineering of liposome nanoparticle-based systems (LNs) for glioblastoma (GBM) therapy in collaboration with other investigators within the Nanomedicine Lab, and other collaborative labs. Investigations
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broad experience in the development of electronic structure methods and their application in order to perform atomistic simulations of molecules and materials. These include (but are not restricted
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heuristic optimisation to explore and improve materials candidates-especially 2D/vdW structures-for target electronic/spintronic properties. The postdoctoral researcher will lead the development of databases
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valued. · Knowledge of chemical reactions and how to model them through computer simulations is highly valued. · Knowledge of classical molecular dynamics, including Machine Learning Interatomic Potentials