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project, this could be your opportunity. Main Tasks and responsibilities: To develop and optimize the biosensor analytical performances. This includes design and assessment of surface chemistry and
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. Requirements: · Education: Degree in Biomedical Engineering, Electronics or Telecommunications enginering. · Knowledge or background: Background in biomedicine. Previous background in optical sensing and
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Group works in materials science and electrochemistry for energy-related applications. It leads several research projects and industrial contracts in energy storage and conversion. We design and
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works in materials science and electrochemistry for energy-related applications. It leads several research projects and industrial contracts in energy storage and conversion. We design and synthesise new
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Materials and Devices (AEMD) group focuses on the material sciences and technology aspects of novel electronic materials, with a strong emphasis on graphene as well as other 2D materials (MoS2). The group
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Chemistry Description of Group/Project: The NanoElectrocatalysis and Sustainable Chemistry Group combines electrochemistry, materials engineering and in situ characterisation at the atomic scale to elucidate
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Materials Science, Physics, Nanoscience or similar · Knowledge: Proven experience in aberration corrected TEM, atomic scale spectroscopy and monochromated EELS. Experience in 4D-STEM will be valued
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Programmable Disassembly of Reticular Materials (Clip-off Chemistry). Main Tasks and responsibilities: Synthesis and characterization of reticular materials. Clip-off synthesis of new materials/compounds using
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, training, among others.) Training activities: languages, mentoring programme, wellbeing programme. International environment Estimated Incorporation date: January 2026 How to apply: All applications must be
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internal reports and manuscripts. Requirements: PhD in Physics, Materials Science, Computational Science/Engineering, Computer Science, or related. Solid knowledge of machine learning, including graph neural