Sort by
Refine Your Search
-
international research networks. The Division of Materials and Manufacture , part of the Department of Industrial and Materials Science, focuses on the full value chain—from materials design processing and
-
We are searching for a doctoral candidate eager to take part in crossdisciplinarity work within battery technology for a sustainable future. This work will compose both theoretical and experimental
-
degradation to the molecular characterization of biomass polymers and their conversion into functional materials. As part of your role, you will also contribute to a Horizon Europe project focused
-
—critical capabilities enabling a wide range of robotic applications. As a PhD student, you will receive academic and pedagogical training and become part of a dynamic, international research community and
-
into the WISE programme will be a part of the WISE Research School Who we are looking for The following requirements are mandatory: To qualify as a PhD student, you must have a Master's degree (masterexamen) of
-
the experimental groups at Chalmers, as well as with international collaborators The project will be carried at the division Applied Quantum Physics at Chalmers, and as a part of the Wallenberg Centre for Quantum
-
Environment Technology (WET), Department of Architecture and Civil Engineering As a PhD student, you will be part of the research group in Wastewater Management and Environmental Biotechnology Our research
-
wastewater systems. Research environment The project is based at the Division of Water Environment Technology (WET), within the Department of Architecture and Civil Engineering. You will be part of
-
of Microtechnology and Nanoscience , you will be part of a unique and collaborative research environment in micro- and nanotechnology, housing over 250 researchers and PhD students. The main research activities
-
This multidisciplinary position is part of a WASP NEST (Novelty, Excellence, Synergy, Teams) project focused on advancing generative models and perceptual understanding in computer vision. The