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Field
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to identify multiple diseases using one blood sample or medical image. These tests can find diseases early, before symptoms develop. However, they often produce false positives, indicating disease when none is
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factors, but also drivers such as land-use change, groundwater depletion, changes in exposure and social vulnerability. As a PhD candidate, your goal is to develop new modelling tools for assessing
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social prestige - asking how varying participants’ social attributes and attitudes towards each other shape their linguistic preferences, their imitation strategies, and their transmission and diffusion
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to identify multiple diseases using one blood sample or medical image. These tests can find diseases early, before symptoms develop. However, they often produce false positives, indicating disease when none is
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of aircraft with fundamentally different operational characteristics. You will simulate mixed-fleet operations in European airspace and analyze how they will impact the future air traffic system, as
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have completed (or will complete in the summer of 2026) a master's degree in pedagogy, developmental, social or family psychology, or a related discipline. You received training in quantitative research
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simulations that integrate physical and social drivers. Finally, you will evaluate financial and institutional support mechanisms and develop policy pathways to strengthen resilience to salinization. Your
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PhD position ‘Courage to Correct: Balancing Error Prevention and Learning in Strategic Crisis Teams’
consequences in controlled crisis simulations through field experiments combined with post-experimental interviews. Finally, interventions and training methods aimed at improving communication and reducing
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Foundations: Knowledge of optimization techniques (e.g., LP, CVX, etc), including for/with ML (first order methods, data-driven algorithms, etc). Data Foundations: Hands on experience in data analysis (Python
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through European scale mapping of the spatial locations of restoration and rewilding; 3) simulating scenarios of potential nature restoration locations under alternative priorities and changing land use