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-treatment, operational modes, and gas variability on final CO2 purity and process stability. Collaborate with process modelers and experimentalists to align capture conditions with system design and operation
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of textile-based feedstocks, monitoring process conditions, and collecting and interpreting data. The position also includes performing chemical analyses and characterizations of both feedstocks and reaction
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on understanding and controlling the structure of the casein micelle (CM), a key component in dairy systems, under various simulated processing conditions. The project will be caried out in close collaboration with
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of textile-based feedstocks, monitoring process conditions, and collecting and interpreting data. The position also includes performing chemical analyses and characterizations of both feedstocks and reaction
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computational models to map co-expression networks and predict systemic disease transitions. Characterise intestinal microbiome changes and their correlation with inflammatory diseases. Computational modelling
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computational models to map co-expression networks and predict systemic disease transitions. Characterise intestinal microbiome changes and their correlation with inflammatory diseases. Computational modelling
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weathering and erosion to sediment transport and landscape evolution. Depending on your background and expertise, your research will focus on one or more of the following areas: Confocal microscopy of point
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processes — from weathering and erosion to sediment transport and landscape evolution. Depending on your background and expertise, your research will focus on one or more of the following areas: Confocal
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), quantitative sensory testing (QST) as well as research based on animal models (e.g. rodents and pigs). CNAP is a dynamic and international research environment: approximately 60% of our staff is international
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approach will create a unique foundation for advanced data analysis, including AI, machine learning, and statistical modeling, aimed at uncover the key traits that define successful microbial biofertilizers