Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
Vacancies PhD position on bridging the gap between Paper based Systems Engineering and Model Based Systems Engineering Key takeaways Model Based Systems Engineering (MBSE) has been the promise
-
nature restoration, and a good revenue model for farmers. Between now and 2030, ReGeNL will start the transition to regenerative agriculture with 1000 farmers. The aim is to make regenerative agriculture
-
transmission, outbreaks, and health system strains. Developing models for infectious disease interventions under these dynamic conditions demands innovative approaches and presents distinct challenges. We
-
). The use of artificial intelligence, and more specifically large language models, is envisaged as support for the technical management of projects in areas such as: support for project review cycles (SRR
-
will use computational models to explore the minimal functional requirements for self-replication to emerge from polymerising molecules. Instead of simulating specific chemistries in full detail, we will
-
PhD position - Modelling the emergence of information transfer in prebiotic self-replicating systems
, you will use computational models to explore the minimal functional requirements for self-replication to emerge from polymerising molecules. Instead of simulating specific chemistries in full detail, we
-
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
-
are looking for motivated candidates who can bridge system modelling, control and optimization with psychological theories and are confident with calculus, probability, statistics, control, and optimization. In
-
properties of catalysts together with statistical methods to derive predictive models for selective catalysis. In a data-driven approach, an initial set of reactions is analyzed and used to establish such a
-
Vacancies PhD Candidate Geospatial Risk Modelling for Climate Finance Key takeaways Effectively understanding and mitigating financial risks associated with climate change is important for