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. Read more about working at Chalmers and our benefits for employees. The duration of the position is four years, with the possibility to teach up to 20%, which extends the position to five years. A
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synthesis, transition metal catalysis and green chemistry. You will learn to design, prepare and analyze organic molecules using modern synthetic techniques and analytical methods such as 1D and 2D nuclear
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for materials synthesis and characterizations, and ability to produce new knowledge of your expertise. Teach at Chalmers' undergraduate level. Synthesize and characterize new framework materials with targeted
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employee benefits. Read more about working at Chalmers and our benefits for employees. The position is limited to four years, with the possibility to teach up to 20%, which extends the position to five
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transferable skills. Optionally contributing to undergraduate teaching or performing other duties, up to 20% of your working hours. Learn more about doctoral studies at Chalmers here . Qualifications Required
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interaction combined with extensive field measurements. A digital twin of the detector will be created to train a machine learning model for predicting dynamic wheel loads. The overarching aim is to enhance
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and enjoy all employee benefits. Read more about working at Chalmers and our benefits for employees. The position is limited to four years, with the possibility to teach up to 20%, which extends
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years, with the possibility to teach up to 20%, which extends the position to five years. A dynamic and inspiring working environment in the coastal city of Gothenburg . A starting salary of 34,550 SEK
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methodologies, ranging from material characterization, via machine-learning and high-throughput methods, to ab initio calculation of electrochemical reaction kinetics. The position is part of the Chalmers Area of
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these systems operate in, ACPS increasingly rely on data-driven learning-enabled components to perform a variety of challenging decision-making tasks. While indispensable for autonomy, learning-enabled components