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of the following areas: state models, time series analysis, computational statistics, unsupervised machine learning, optimisation, model predictive control. Experience in financial mathematics. Having high integrity
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, with the goal of advancing diagnostics and therapeutic strategies. The group works closely with multidisciplinary teams, integrating biobank resources, longitudinal clinical data, and multi-omics
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evolutionary responses to experimental selection by biocontrol agents including Aureobasidium pullulans and Pythium oligandrum. You will be part of a collegial interdisciplinary team working on integrated plant
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therapeutic strategies. The group works closely with multidisciplinary teams, integrating biobank resources, longitudinal clinical data, and multi-omics technologies with innovative computational and
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upper mantle. The MT results will be integrated with new geological and other geophysical results from a dynamic team working on this multidisciplinary project. Duties The main tasks are: Review of legacy
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an integral part of KTH’s core values as a university and public authority. Learn more about our benefits and what it's like to work and grow at KTH. Trade union representatives Contact information to trade
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The Remote Sensing and AI in Hydrology research group within the Division of Water Resources Engineering pioneers the integration of diverse remote sensing data with advanced artificial intelligence to enhance
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these analysis methods to highly informative multimodal microscopy data and develop techniques to integrate correlated structural and molecular analysis into the natural 3D tissue space. This integration will
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of student projects. Your research will be integrated within international research collaborations in which you are expected to take an active role. You will contribute to the continued development of computer
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work aimed at combining imaging techniques and data analysis to provide a more integrated picture of life processes in the context of health and disease. As a postdoc fellow in the AMBER programme you