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Field
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proactive and equipped with a problem-solving mindset. The ambition to conduct interdisciplinary research on the interface of toxicity, machine learning and mass spectrometry is essential. Candidates with
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this challenge head on by combining quantum-mechanical calculations with state-of-the-art machine learning (ML) methodologies to explore and optimise the compositional space of complex high-entropy metal oxides
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include manipulating the catalyst or applying external factors. Despite this, there is a lack of understanding of the complex phenomena happening at the electrochemical interface under a magnetic field. To
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AI methods to head towards a green transition. This is particularly important for environmental initiatives to achieve the targeted 2050 climate neutral goals of the EU as well as the United Nations
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Yeromonahos, Arrangement of Monofunctional Silane Molecules on Silica Surfaces: Influence of Alkyl Chain Length, Head-Group Charge, and Surface Coverage, from Molecular Dynamics Simulations, X-ray Photoelectron
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focuses on the development of secure and trustworthy AI for resource-constrained embedded systems used in power electronics and energy infrastructure. The research will investigate how machine learning
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robotic systems. The PhD project focuses on applying knowledge about real-world clinical practice in the design of interfaces between humans and robots. The project is conducted in close collaboration with
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infrastructure. The research will investigate how machine learning models can be designed and deployed efficiently on constrained hardware platforms while supporting the reliability and security requirements
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practices through interaction designs and robotic systems. The PhD project focuses on applying knowledge about real-world clinical practice in the design of interfaces between humans and robots. The project
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Your Job: Healthy brain function relies on dynamic changes at the synapse. The relevant synaptic turnover and plasticity processes span spatial scales from the molecular up to the network level, and