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types will change under different climate change scenarios based climate projections. This framework will be ultimately included in a flood prediction model, which will be developed within the VIDI
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, Clin Infect Dis 58: 1424–1429. https://doi.org/10.1093/cid/ciu102 Chalghaf B, Chemkhi J, Mayala B et al. (2018). Ecological niche modeling predicting the potential distribution of Leishmania vectors in
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career-promoting work can be discussed and agreed Required selection criteria You must have strong competence in artificial intelligence, signal processing, modelling, instrumentation, or control
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hazards, enhancing asset protection, maritime security, emergency preparedness, and societal resilience. The project will leverage advanced AI and machine learning techniques to enable predictive risk
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Associação do Instituto Superior Técnico para a Investigação e Desenvolvimento _IST-ID | Portugal | 2 months ago
dataset, the scholarship will then explore and prototype models to extract insights about building operation. In particular, the work will focus on tasks such as predicting building occupancy patterns from
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pathogenesis and host-pathogen interaction assays; Biofilm models; Proteomics & LC-MS/MS. DC12: Optimizing bioreceptor function in interaction with graphene. Based on modelling/prediction of interaction
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-pathogen interaction assays; Biofilm models; Proteomics & LC-MS/MS. DC12: Optimizing bioreceptor function in interaction with graphene. Based on modelling/prediction of interaction of receptor molecules
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spark inspiration for innovation and new solutions. The Department of Ocean Operations and Civil Engineering is one of eight departments in the Faculty of Engineering. Where to apply Website https
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Fotograf Morten Hjertø 20th January 2026 Languages English English English The Department of Ocean Operations and Civil Engineering has a vacancy for a PhD Candidate in maritime AI business models
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, currents, water levels, wind, and ice. Machine learning models will be developed to forecast future variations in such dynamic conditions and to incorporate the operational state of the vessel into routing