Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
With support from its “Special Research Fund” (BOF) Ghent University grants PhD “sandwich” scholarships to promising PhD students from Global South countries who wish to carry out half of their PhD research at Ghent University ('North') and half at a university in the Global South ('South')....
-
limited to): O-RAN based architectural integration of 5G/6G Terrestrial/Non-Terrestrial and Wi-Fi, development of advanced algorithms and optimisation techniques to enhance the performance and efficiency
-
the field of analytical and/or simulation methods for composite materials. You have extensive experience with development and implementation of algorithms for modelling of composites You have experience with
-
integration of 5G/6G Terrestrial/Non-Terrestrial and Wi-Fi, development of advanced algorithms and optimisation techniques to enhance the performance and efficiency of the integrated RAN, spectrum management
-
platforms. Besides optimizing the hardware deployed in the field, the focus is on developing algorithms and associated software to efficiently generate reliable high-resolution datasets. The project focuses
-
Applications can be submitted until 18-10-2025 (DD/MM/YYYY) Your job We are offering a technical support position to help unravel the molecular-genetic mechanisms of host-symbiont interactions and develop novel
-
composite tanks, both in the vehicle itself as in refueling stations. Indeed, the success of hydrogen fuel cell vehicles depends both on the development of safe storage options in the vehicle, as well as a
-
to assess the required effort to mount reverse engineering and tampering attacks; integration of software protection techniques in industrial development life cycles. For further information on the research
-
recycling. Each DC, developing their research skills under the guidance of at least two academic supervisors and an industrial co-promoter, represents a crucial piece of the puzzle. Together, they form a
-
force measurements on actual textile manufacturing machinery in collaboration with leading industrial partners. The goal is to develop a predictive modelling framework that can serve as a digital twin of