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investigating the translational potential of genetic discovery. We have access to extensive biosample collections and use advanced omics technologies and genetic-epidemiological methods on human study populations
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/RFSoC boards, generating synthetic training datasets and extracting robust features for SIGINT and spectrum‑monitoring pipelines Develop and integrate TDOA/FDOA‑based geolocation methods into RF
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uncooperative spacecraft . Develop novel methods for characterization and quantification of input-output bounds in an AI-augmented perception system: Develop novel methodologies and tools for characterizing and
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governance mechanisms and stakeholder behaviour in regional adaptation strategies using hybrid mixed-method approaches (qualitative and quantitative). Design and evaluate responsive, inclusive, and evidence
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. K. Marchal and Prof. T. Demeester. The group’ s research focus is on bioinformatics method development by combining advanced AI with biological principles http://www.ugent.be/ea/idlab/en/members
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innovative bioinformatics methods to address biological questions through the integration of molecular data You will assist in teaching activities at the Bachelor’s or Master’s level. More specifically, you
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protein engineering using a combination of computational methods (AI-based and structure-based) and experimental methods (e.g. design and construction of mutant libraries via error-prone or assembly PCR
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procedures. In a next step of the project, historians will examine to which extent the results obtained by AI challenges existing methods used in historical sciences. Five complementary techniques (µ-Raman, UV
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satellite-derived metrics. Apply downscaling methods to RCM outputs and assess model uncertainty across different climate simulations. Publish results in high-impact journals and contribute to open-source
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Actuarial Sciences (ISBA) of the UCLouvain is seeking a talented post-doctoral researcher to join us to develop methods for learning extremal dependence based on X-vines, with special attention for aspects