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fields. You will work on the project “Geodynamic exploration of emergence and evolution of Hadean paleogeography”, one of several new projects within the PRELIFE programme. Your job The origin of life
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PhD position on Microbial Genome Evolution Faculty: Faculty of Science Department: Department of Biology Hours per week: 36 to 40 Application deadline: 29 May 2025 Apply now Join us to explore
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matter and educational experts within and outside the CPBT, you will work on the further development and realisation of our Education and Training programme. You do this in consultation with national and
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PhD Position on Modelling the Evolution of the Larsen C Ice Shelf Faculty: Faculty of Science Department: Department of Physics Hours per week: 36 to 40 Application deadline: 15 May 2025 Apply
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within and outside the CPBT, you will work on the further development and realization of our CPBT qualification and validation programme. In consultation with experts, national and international partners
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. Your project could involve: developing new differential and probabilistic programming techniques (e.g., techniques for differentiating effectful programmes such as gradient estimation of probabilistic
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. Your project could involve: developing new differential and probabilistic programming techniques (e.g., techniques for differentiating effectful programmes such as gradient estimation of probabilistic
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(UTC) Type of Contract Temporary Job Status Not Applicable Hours Per Week 40.0 Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff
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to predict, model and dissect biomolecular interactions at atomic level. It has a long history of software and web services developments, with HADDOCK as flagship software and web portal that serves a large
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. Your project could involve: developing new differential and probabilistic programming techniques (e.g., techniques for differentiating effectful programmes such as gradient estimation of probabilistic