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loading histories in Francis turbine runners, including start–stop cycles, rapid load changes, dwell periods and mixed high–low stress sequences. Such loading conditions influence fatigue damage development
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-macrophages Perform flow cytometry and/or cell sorting and characterization using different experimental approaches including sequencing and RT-qPCR experiments Perform in situ hybridization and other
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administrative tasks at the Department. About the project/work tasks: The PhD project will focus on the ethical aspects of Natural Language Processing (NLP), addressing challenges such as bias, fairness, alignment
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-based methods for discrete sequences (e.g., DNA, RNA, amino acid, and crystals) remain fundamentally underdeveloped. Existing approaches rely on ad hoc corruption mechanisms that lack theoretical
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representations of time‑dependent data through sequences of iterated integrals and have recently gained significant attention in machine learning and data science. The project will investigate how
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of time‑dependent data through sequences of iterated integrals and have recently gained significant attention in machine learning and data science. The project will investigate how these representations can
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Science. More about the position Modern diffusion models underpin state-of-the-art generative AI for images and continuous data, yet principled diffusion-based methods for discrete sequences (e.g., DNA, RNA
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— systems. It targets pioneering an architecture optimized for bilateral sensor processing. By fusing multiple data streams, VEST-CHIP aims to improve health tracking accuracy and unlock capabilities such as
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density of Li- and Na-ion batteries. Furthermore, SSEs can be stacked in multiple layers to enhance energy density further, making them promising candidates for the next generation of electrolyte materials
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-based bridge assessment and maintenance prioritization that integrates multiple types of inspection and monitoring data into a consistent workflow for decision support. The project is anchored in SmartMet