Contact person
Olof Mogren
Senior Researcher
Contact OlofHow do we work with the science of AI? The Center for Applied AI at RISE is pushing the research frontier and ensuring scientific excellence along a select number of research directions.
In the middle of one of Sweden’s largest research organizations, the center coordinates applied AI research with applications in many research fields. Collaborating with partners on a national and international scale, we are committed to addressing the most pressing contemporary challenges through our research endeavors.
The goal is to contribute to the international development of knowledge and the research frontier in AI. We do this through scientific publications, postgraduate education and teaching offers. These activities are an important part of ensuring our competence at the international top level.
Even though the focus areas highlight approaches and their applicability to specific tasks and applications, the reality of our research is in most cases driven by the application and the need in each use-case. Solutions are often hybrid solutions that take expertise and techniques from several focus areas at the same time. In our research, both the impact from the application and the scientific impact is equally prioritized, and this can be seen in our showcased projects and scientific publications.
Read more by clicking on +
This project will create a simple and user-friendly service where visitors everywhere can upload images of Rörstrand's porcelain artefacts and get instant answers. Through advanced image analysis, which recognises patterns and objects that have shown impressive accuracy in other applications, each uploaded image will open a portal to information and insights into the artistic heritage.
Read more
In this research project, we have developed an efficient machine learning-based solution for detecting coffee berry disease (CBD) in images of coffee plants. The project aims to provide a cheap, scalable and accurate tool for farmers to monitor their coffee plants and take appropriate measures to prevent or treat CBD.
Read more
The project shows the potential of using Machine Learning (ML) for the prediction of water flow intensity, which can provide valuable information for climate adaptation and water management.
Read more