Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Field
-
) at the University of Luxembourg contributes multidisciplinary expertise in the fields of Mathematics, Physics, Engineering, Computer Science, Life Sciences and Medicine. Through its dual mission of teaching and
-
Contribution to feasibility studies in architecture and urbanism in the context of Luxembourg Teaching territorial design, urban design or architectural design as well as theory of urbanism and/or architecture
-
RIKEN’s research activities. Number of openings: Around 70 Research fields: Mathematical Sciences (pure mathematics, applied mathematics, computer science, information science, artificial intelligence, etc
-
original theories, key technologies, and next-generation medical devices to advance minimally invasive/non-invasive medicine. We have made landmark achievements, including proposing foundational concepts
-
that ingest raw on-chain data (blocks, transactions, smart-contract events) from public blockchains into research-grade databases Developing statistical, graph, and/or machine learning models to study
-
mathematics, physics, geophysics, optical engineering, electronic science and technology, chemistry, materials science, biology, bioengineering, pharmacy, basic medicine, environmental science and engineering
-
international environment, and actively shape interdisciplinary theory on sustainable transformations and well-being. The successful candidate will join the Institute for Lifespan Development, Family and Culture
-
profile PhD in Electrical Engineering, Computer Science, Applied Mathematics, or a closely related fieldStrong research track record, preferably with publications in leading AI and Computer Vision
-
contribute to the development of a proof of concept obtained at University Côte d’Azur for accessing the content of a metabolomics knowledge graph (KG) with a large language model. It is Python prototype of a
-
, providing direct feedback on theory analysis and further predictions. The goal is to develop a theoretical and computational approach that has strong predictive power for finding completely new types