Sort by
Refine Your Search
-
PhD: Multilingual Adaptations in Novel Language Learning Faculty: Faculty of Humanities Department: Department of Languages, Literature and Communication Hours per week: 36 to 40 Application
-
methodologies, implementing innovative ‘omics solutions, performing data analysis, and training computer models to characterise plant-microbiome interactions. We have strong ties to the Netherlands Plant
-
construct these species-specific mechanistic network models based on both genomic comparisons and machine learning based species-specific module identification. You will integrate these network models
-
observations. Your major challenge is in model development, and there is room for you to develop machine learning applications in the field of firn modelling. If successful, your work will lay the foundation
-
, with the following qualifications: a Master's degree in Computational Biology, Applied Mathematics, Physics, Computer Science, or a related field; enthusiasm for learning the biological background and
-
. You will be working with a diverse group of stakeholders, including clinical researchers, patient representatives, cancer institutes, and others. As a PhD you will have the opportunity to acquire and
-
PhD Position in Logics for Multi-Agent Systems Faculty: Faculty of Science Department: Department of Information and Computing Sciences Hours per week: 36 to 40 Application deadline: 6 July 2025
-
challenges and to have interactions with stakeholders; excellent English oral and writing skills and willingness to learn Dutch. Our offer A position for one year, with an extension to a total of four years
-
completing); the ability and enthusiasm to learn quantitative and qualitative methods; excellent command of English (verbal, written); good scientific writing and presenting skills; the ability to work
-
health behaviour. Using a novel combination of deep learning, street view imagery, and epidemiological methods, we aim to identify the most effective urban exposure modifications. This research will