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learning, physics-informed neural networks, graph neural networks, transformers, convolutional defiltering methods, etc.) for the integration in multi-physics simulation codes You will develop code for and
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Experience in conducting complex laboratory experiments and test series, with experimental design and measurement data handling Good programming skills in Python Experience with hardware-related programming is
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implement computational frameworks for processing, integrating, and analyzing large-scale phosphoproteomics patient data, supporting the discovery of signaling networks and actionable therapeutic targets in
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particle physics. In all of these areas, methodological development through machine learning is taking place — for example, in predicting the evolution of complex molecular systems over long timescales
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such as 3D tissue imaging, molecular profiling are combined with AI tools to decode the complexity of tissues and shed light into cancer biology. Our interdisciplinary team — comprising biologists
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' to develop neural networks with remarkable information content: flies, which we use as a model, have brains that compute flying in 3D, navigation, metabolism and advanced learning and memory capabilities - all
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profile in current areas of systems neuroscience, for example, the investigation of sensory and neural networks that underlie complex behaviours, and preferably work with an invertebrate model. Candidates
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-reviewed computer science publications, international visibility and a research focus in quantum information theory, preferably with an emphasis on quantum algorithms or quantum complexity theory
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sorting and viewing of large data sets - include peak identification and fitting capabilities - implement metadata handling in data acquisition and leverage the metadata to automate the analysis of complex
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capabilities implement metadata handling in data acquisition and leverage the metadata to automate the analysis of complex multi-dimensional data sets discuss and document requirements for the software together