112 data-"https:" "https:" "https:" "https:" "https:" positions at Chalmers University of Technology
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
materials. The first position will focus on developing novel representations for polymers, both for more data efficient polymer property prediction and polymer generation, and the second position will focus
-
. The guide provides information on how to construct, operate, and maintain the filters, as well as how to treat and reuse materials from used filters. Municipalities, authorities, and consultants may utilise
-
- integrating PET/CT images, radiology reports, and clinical data - to develop more accurate and trustworthy diagnostic tools. You will join a dynamic, interdisciplinary research group with extensive
-
the Division of Data Science and Artificial Intelligence . About the research project This PhD project explores multi-agent decision making from the perspective of Markov Decision Processes (MDPs). MDPs are a
-
geometry assurance methods that use these technologies to enable zero-defect, data-driven production. Key research directions can include: Closed-loop digital twins for geometry assurance – integrating live
-
activities. If Swedish is not your native language, Chalmers offers Swedish courses to help you settle in. Find more general information about doctoral studies at Chalmers here . Application procedure
-
findings are expected to be published in high-impact journals, and the methods and data will be made available to researchers and stakeholders through open access. We expect the applicant to be able to take
-
Initiative for gender equality and excellence . If Swedish is not your native language, Chalmers offers Swedish courses to help you settle in. Find more general information about doctoral studies at Chalmers
-
aspects of all our activities. If Swedish is not your native language, Chalmers offers Swedish courses to help you settle in. Find more general information about doctoral studies at Chalmers here
-
. The project integrates physical ship performance models with operational data and offers a unique opportunity to contribute to sustainable shipping by improving the efficiency and automation of wind-assisted