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: Must have a ZAP-affiliation. Copromoters can also be guest professor or postdoctoral researcher. Third Parties (companies, university colleges, strategic research centers, foreign partners, ...) can be
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of the UNPACK team, you will be intensively working together in a team of 8 researchers and 4 professors. You will share your data and analyses with your co-researchers and supervisors, and engage in
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intensively working together in a team of 8 researchers and 4 professors. You will share your data and analyses with your co-researchers and supervisors, and engage in extensive collaborative (interdisciplinary
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program investigating the molecular mechanisms by which bacterial pathogens deploy type III secretion system (T3SS) effector proteins to manipulate host cells. In particular, this doctoral project will
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paid position in a research institution (as post-doctoral fellow, researcher, professor, for example) at the time of the planned visit. We offer facilities to conduct your research at the University
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. The Doctoral Training Program at the Faculty of Pharmaceutical sciences consist of 4 years of doctoral training. This will consist of two year research stay at JRC (Ispra, Italy), followed by a 2-year research
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. The Doctoral Training Program at the Faculty of Pharmaceutical sciences consist of 4 years of doctoral training. This will consist of two year research stay at Ghent University, followed by a 2-year research
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? Send your CV, copy of your diploma and a motivation letter to Professor Bert Devriendt (b.devriendt@ugent.be ) before the 28th of February 2026. We advise to submit your application as soon as possible
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of the UNPACK team, you will be intensively working together in a team of 8 researchers and 4 professors. You will share your data and analyses with your co-researchers and supervisors, and engage in
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European cities. The project explicitly embraces a broad AI perspective, including (but not limited to): machine learning and statistical learning computer vision and sensor-based data analysis natural