Sort by
Refine Your Search
-
Listed
-
Employer
- Institute of Photonic Sciences
- Institut de Físiques d'Altes Energies (IFAE)
- ICN2
- Universidad Politecnica de Cartagena
- Biobizkaia Health Research Institute
- Consejo Superior de Investigaciones Científicas
- FUNDACIO INSTITU DE RECERCA EN ENERGIA DE CATALUNYA
- Institut de Recerca Biomèdica de Lleida, Fundació Dr. Pifarré (IRBLleida)
- UNIVERSIDAD CATÓLICA DE MURCIA - FUNDACIÓN UNIVERSITARIA SAN ANTONIO DE MURCIA
- Universitat Autònoma de Barcelona
- Universitat Politècnica de Catalunya (UPC)- BarcelonaTECH
- 1 more »
- « less
-
Field
-
to be developed: Analyze iEEG data. Develop multimodal algorithms. Perform the characterization of the epileptogenic network. Where to apply Website https://seuelectronica.upc.edu/en/procedures/call-for
-
for industrial applications (e.g. building integration PV) and novel self-powered photovoltaic-based devices for Internet of things (IoT) applications (e.g. sensors, wearables, printed electronics). The group
-
to significant losses during processing, transport, retail and storage stages. In parallel, advances in sensor, information and communication technologies, together with increased computational capabilities, have
-
, IFAE is leading the construction of new baffles instrumented with photo sensors around the test masses. IFAE is actively participating in ET, coordinates the EU Horizon INFRA-DEV project for the ET
-
person will join the project funded by the European Commission "DistriMuSe: DISTRIBUTED MULTI-SENSOR OPGS FOR HUMAN SAFETY AND HEALTH" and will join the Health Care Research Group (GRECS) within
-
, Physics , quant-ph , Quantum Science + Quantum Information Science + Quantum Optics + Theoretical Physics , Quantum Sensors , Theoretical Particle Physics , Theoretical Physics, HEP-Phenomenology (hep-ph
-
, IFAE is leading the construction of new baffles instrumented with photo sensors around the test masses. IFAE is actively participating in ET, coordinates the EU Horizon INFRA-DEV project for the ET
-
, quantum compilation techniques, and noise-aware algorithms for Rydberg architectures. Apply quantum optimization to real-world problems such as logistics, scheduling, and portfolio allocation, comparing
-
and paleosols 3) train and test deep learning algorithms. You will be required to take responsibility for all the steps involved in the “Phytolith analysis” work package of DEMODRIVERS. This will
-
: Design, implementation and testing of new methods and algorithms so that SIESTA can harness the compute power of the latest generation of (pre-)exascale architectures and tackle novel scientific challenges