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plan, carry out and follow up research projects. You work in a structured and thorough manner and have good collaborative skills. Furthermore, you have strong communication skills in both speech and
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structures and minimizing condensation. The process not only produces a lignin oil rich in aromatic monomers and oligomers, but also leaves behind a carbohydrate-rich pulp suitable for further conversion
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microscopy and spectroscopy to investigate their unique electronic, structural, and plasmonic properties. Project 2: Exploring the synthesis of metallene layers sandwiched between SiC and graphene
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(AIMLeNS) lab is a tight-knit team of computer scientists, chemists, physicists, and mathematicians working collaboratively. Our focus is on developing practical methods that blend traditional disciplines
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an independent and analytical researcher with a strong ability to plan, carry out and follow up research projects. You work in a structured and thorough manner and have good collaborative skills. Furthermore, you
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, we offer a dynamic, collaborative ecosystem. The AI and Machine Learning in the Natural Sciences (AIMLeNS) lab is a tight-knit team of computer scientists, chemists, physicists, and mathematicians
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protein assemblies with precise geometry, thereby creating molecular structures capable of transferring electrons and interacting with light. Such assemblies also have applications in biomedicine
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. This involves using cutting-edge microscopy and spectroscopy to investigate their unique electronic, structural, and plasmonic properties. Project 2: Exploring the synthesis of metallene layers sandwiched between
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. Motivating examples include the spatio-temporal dynamics of sweat droplets, interacting cellular or tissue shapes, and geometric structures arising in vegetation such as tree canopies. The work combines
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imaging, computer vision, and predictive modelling. The postdoc will further develop an existing rumen‑fill scoring algorithm into a functional prototype and pilot the technology for longitudinal monitoring