Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Chalmers University of Technology
- Umeå University
- Swedish University of Agricultural Sciences
- Lulea University of Technology
- SciLifeLab
- Linköping University
- Jönköping University
- Nature Careers
- Linnaeus University
- Mälardalen University
- Sveriges lantbruksuniversitet
- University of Lund
- Lunds universitet
- Mid Sweden University
- Uppsala universitet
- 5 more »
- « less
-
Field
-
Advance Fall Risk Prediction and Rehabilitation with Cutting-Edge Sensing Technologies! Are you passionate about research that makes a real difference in people’s lives and society? Do you thrive
-
position is located in the Pancreatology Research Group at the Department of Surgery, Lund University. The focus is on pancreatic cancer, one of the most aggressive forms of human tumors. Pancreatic cancer
-
Umeå University is one of Sweden’s largest higher education institutions with over 37,000 students and about 4,700 employees. The University offers a diversity of high-quality education and world
-
’ ecological interactions. The unit holds a long and internationally well-reputed history of performing research on ecology and evolution of plant-insect interactions. Read more about our benefits and what it is
-
the position to five years. What we offer The PhD position is fully funded from start As a PhD student at Chalmers, you are an employee and enjoy all employee benefits. Read more about working at Chalmers and
-
effort at the intersection of machine learning and applied mechanics. The focus of this position is on extracting information about what a neural network has learnt in a symbolic and (human) interpretable
-
to participate in relevant research projects and prepare for an international research career. Read more about the research at The Department of Chemistry – BMC at our website . Project description This project
-
pancreatic cancer, one of the most aggressive forms of human tumors. Pancreatic cancer is usually detected too late and lacks effective treatment. Our strategy combines clinical patient material and advanced
-
gathering knowledge about the diverse physical and geometric properties of objects and dynamic changes in the environment. This involves leveraging rich sensory data—such as vision and touch—encoding
-
of scientific data, e.g. from image acquisition modalities or scientific simulations. Efficient algorithms are at the core of most of these data analysis and visualization applications. The focus of this Ph.D