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contribute to innovative research projects aimed at unraveling cellular interactions and immune mechanisms in liver disease. The following responsibities (not limited) are expected: Develop, optimize, and
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, for their analysis and optimization, we use tools such as artificial intelligence/machine learning, graph theory and graph-signal processing, and convex/non-convex optimization. Furthermore, our activities
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research methods, ideally in numerical optimization and simulation models Proficiency in one of the major programming languages, such as Python Commitment to participate in the design and implementation
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, for their analysis and optimization, we use tools such as artificial intelligence/machine learning, graph theory and graph-signal processing, and convex/non-convex optimization. Furthermore, our activities
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researcher in the context of a multidisciplinary project to classify materials in waste streams, including using X-rays. The goal is to optimally use the spectral capacities of a new generation of X-ray
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for internal and external projects, bringing it up to industry standards. You will Develop and optimize the specificity assay for biologics, with technical support. Identify and assess innovative applications
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, yeast and mammalian cells including primary cells from affected CDG patients.•The generation of cellular models using CRISPR/Cas9 gene-editing and other techniques.•Development and optimization
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. Involvement in combining Techno-Economic Assessment (TEA) and Real Options Analysis (ROA) to address different types of market uncertainty, such as price fluctuations and determine optimal investment timing
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performance and/or prior publications Solid knowledge of wireless communication systems Background in optimization and information theory is desirable Interest or prior exposure to positioning technologies
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methods (e.g., PCA, PLS-DA, clustering, neural networks) to enable automated, polymer-specific classification. Optimize workflows for high-throughput imaging and real-world sample variability, minimizing