-
for this industrial project is confirmed. In these activities, you will have the chance to design and build up a full experimental PEM electrolysis stack and plan experimental activities on both PEM and alkaline
-
allows the successful applicant to choose a flexible balance between advanced machine learning method development and exciting applications on molecular data, including biomedicine and drug discovery
-
machine learning principles and methods focusing on a few key topics (see “Machine learning foundations” below), often working with researchers of other fields in new exciting applications (see the other
-
for the conversion of plastic-derived monomers; (b) Characterizing these electrocatalysts using a range of techniques, including electron microscopy, diffraction, and other complementary methods; (c) Developing and
-
transport for inverse problems One of the central topics of the research projects is the further development of theory and methods for the concept of optimal transport for inverse problems. Optimal transport
-
, the project pioneers new methods for detecting and mitigating online harms. Its results aim to inform public health, policy, and technology design, promoting resilience and empowering individuals to understand
-
develop methods for the recombinant production of post-translationally modified structural proteins, investigate their effects on material assembly and properties, and design new, functional materials. In
-
methods of quantum information processing. Our goal is to achieve JoFETs by utilizing hybrid devices based on silicon and high-quality superconducting silicides. Remarkably, silicides hold promise
-
industry partners, and our research has led to several methods now used in commercial products. We are part of the Research Council of Finland Centre of Excellence in High-Speed Electromechanical Energy
-
, including architecture, computational design, computer science, or related fields, who have a proven track record of applying advanced computational methods to real-world environmental challenges. A doctoral