Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
, Denmark [map ] Subject Areas: Astrophysics / Theoretical Astrophysics Cosmology/Particle Astrophysics Condensed Matter Physics / Computational Physics , Condensed Matter Theory Planetary Sciences
-
of topology in non-Hermitian settings, under time-periodic driving (space-time symmetry), under magnetic symmetry, or even in non-crystalline settings. The program aims to advance the frontiers of theoretical
-
theoretical and computational work in topological photonics and nanophotonics. Day-to-day project activities will include numerical computation and theoretical analysis of the photonic properties of candidate
-
The Centre for Quantum Mathematics (QM) at the Department of Mathematics and Computer Science, University of Southern Denmark (SDU) seeks outstanding candidates to fill a number of 3-year Assistant
-
to nanoseconds) to obtain novel insights into the fundamental physics and chemistry of processes in materials. You will work with ultrafast X-ray experiments using synchrotrons and XFELs, with a focus on charge
-
Centre for Quantum Mathematics (QM) at Department of Mathematics and Computer Science (IMADA), University of Southern Denmark (SDU) invites applications for several 3-year PhD positions in quantum
-
(femtoseconds to nanoseconds) to obtain novel insights into the fundamental physics and chemistry of processes in materials. You will work with ultrafast X-ray experiments using synchrotrons and XFELs, with a
-
The Centre for Quantum Mathematics at the Department of Mathematics and Computer Science, University of Southern Denmark (SDU) invites applications for a number of positions as Associate Professor
-
an exciting, emerging topic. The position will focus on integration and device fabrication based on combinations of 2D materials and freestanding complex oxides, aiming at discovering, engineering and unlocking
-
qualifications As our new colleague in our research team your job will be to develop novel computational frameworks for machine learning. In particular, you will push the boundaries of Scalability, drawing upon