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responsible for following tasks: • develop a list of soil health assessment indicators, with emphasis on biological indicators • design a detailed sampling & data collection protocol to be used across all
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Job description We are hiring a doctoral fellow on the topic of building stock modelling. Starting from reviewing the existing building stock modelling approaches, you will develop a building stock
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, or SLs) to investigate their role in the defense of chicory against thrips and other insects. You will develop and optimize methods to extract, purify, characterize and structurally identify
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project on geographic patterns of crimes and their environmental determinants, developing and employing (new) GeoAI and quantitative research methods . More specifically, the candidate will focus on 1
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outcomes, including several spin-off companies. Reactor and process developments go from millilitre scale to full industrial scale YOUR JOB The development of microbial management plans for contaminants
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(ESEE) conference at the Faculty in June 2026. The specific topic for the doctoral dissertation will be co-developed during the first 6 months of the position within the research lines of the supervisors
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we focus on 1) foundations, 2) system design, and 3) applications. IDLab collaborates with many universities and research centres worldwide and jointly develops advanced technologies with industry (R&D
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collaboration with other PhD candidates and researchers with medical and engineering background, perform innovative research on the topic of surgical video analysis, with the goal of developing deep machine
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genotype–phenotype correlations, characterizing disease progression, and exploring early disease changes. This knowledge is crucial to improve prognosis, patient care guidance and support the development