Sort by
Refine Your Search
-
Listed
-
Employer
- Institute of Photonic Sciences
- CRAG-Centre de Recerca Agrigenòmica
- Institut de Físiques d'Altes Energies (IFAE)
- Universitat de Barcelona
- BARCELONA SUPERCOMPUTING CENTER
- Catalan Institute for Water Research (ICRA)
- Consejo Superior de Investigaciones Científicas
- Fundació Hospital Universitari Vall d'Hebron- Institut de recerca
- Institut de Robòtica e Informàtica Industrial CSIC-UPC
- Universidad Politecnica de Cartagena
- Universitat Politècnica de Catalunya (UPC)- BarcelonaTECH
- 1 more »
- « less
-
Field
-
and Astroparticle Physics and Cosmology groups (https://www.ifae.es/groups/theory/ ). These include physics beyond the Standard Model, formal aspects of quantum field theories, gravitation, cosmology
-
at CRAG (from basic science to applied research using plant experimental model systems, crops and farm animals) make extensive use of genomic technologies and large sets of genetic and genomic data (https
-
of Robotics and Industrial Informatics (CSIC-UPC) offer a position to work on World Models for Human Behaviour Anticipation https://ramonllull-aira.eu/archivos/theme_field/world-models-for-human-behaviour
-
hydraulic conductivity and increased susceptibility to waterlogging or drought stress, depending on environmental conditions. Moreover, compaction can persist for years, hindering soil recovery and requiring
-
quantum simulator. The goal is to construct a new experimental tool based on a graphene superlattice to not only measuring macroscopic observables, such as electrical resistivity and magnetization, but also
-
. · Extending current methodologies (e.g., FrustraEvo, Potts models, structure prediction pipelines) to large-scale protein datasets. Key Duties Conduct independent and collaborative research on protein evolution
-
), Claudio Gatti (LNF, Italy), and Matthias Schott (U. Bonn, Germany; leading PI). The successful candidates will join the GravNet-IFAE group, in charge of developing and optimizing all theoretical aspects
-
today. Their convergence has the potential to redefine how we simulate, optimize, and understand complex physical systems. Integrating AI into quantum computers and simulators can help overcome current