Sort by
Refine Your Search
-
project. Your profile We are looking for a highly motivated candidate with a background in machine/deep learning, and communication networks. The required qualifications include: PhD in computer engineering
-
. Supervision of research-based student projects (e.g., MSc. theses) Dissemination of research work on peer-reviewed publications and international conferences. Collaboration and management skills. Communication
-
for Molecular Medicine - performs basic and translational research in neuroscience and brain disorders. We aim at unravelling the mechanisms that explain cellular communication and computation networks in brain
-
candidate will possess proficiency in: Policy engagement, stakeholder consultation, and socio-economic analysis in an agri-food context. Advanced communication skills and the capability to interact
-
background in feed processing technologies, biochemical, and chemical evaluation methods. Proven experience in experimental design, data analysis, scientific communication and writing. Demonstrated ability
-
written and spoken English communication skills Following qualifications will be considered as an advantage: Integration of remote sensing datasets into hydrological workflows Experience working with
-
communication skills Following qualifications will be considered as an advantage: Experience with super-resolution techniques and physics-informed machine learning. Familiarity with explainable AI methods (e.g
-
OpenFoam and developing solvers therein. In addition, the selected candidate is expected to have: Good publication track record, High level of motivation and independence, Good English communication skills
-
involved in Parkinson’s Disease. This is part of a vibrant multidisciplinary network collaboration headed by Prof. Daniel Otzen, AU, and including collaborators Dr. Simon Glerup (Draupnir and AU), Prof. Mads
-
journals Experience in international research collaboration and networking Write and speak English fluently Experience in planning and conducting experiments in field-grown crop production is an advantage