Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Employer
- Forschungszentrum Jülich
- CNRS
- DAAD
- Universite de Moncton
- ; University of Southampton
- Curtin University
- Delft University of Technology (TU Delft); 16 Oct ’25 published
- Erasmus MC (University Medical Center Rotterdam); Rotterdam
- European Magnetism Association EMA
- Ghent University
- IT4Innovations National Supercomputing Center, VSB - Technical University of Ostrava
- Instituto Superior Técnico
- Instituto de Telecomunicações
- Karlsruher Institut für Technologie (KIT)
- Medizinische Universitaet Wien
- National Renewable Energy Laboratory NREL
- Nature Careers
- Radboud University
- Reykjavik University
- Technical University of Denmark
- Technical University of Munich
- The University of Manchester;
- University College Dublin
- University of Birmingham;
- University of Southern Denmark
- VU Amsterdam
- 16 more »
- « less
-
Field
-
cardiology research with cutting-edge AI methods Top-Tier Mentorship: Collaborate with leading experts in AI, visualization, and medicine Compute Power: Access state-of-the-art GPU clusters and high
-
, GPUs, AI accelerators etc.) require high power demands with optimized power distribution networks (PDNs) to improve power efficiency and preserve power integrity. Integrated voltage regulators (IVRs
-
, considering discrete modulation; Contribute to the implementation of digital signal processing algorithms in a FPGA platform; Contribute to the implementation of information reconciliation algorithms in a GPU
-
) platforms used in machine learning, big data and artificial intelligence (AI) based applications (CPUs, GPUs, AI accelerators etc.) require high power demands with optimized power distribution networks (PDNs
-
(HPC) platforms used in machine learning, big data and artificial intelligence (AI) based applications (CPUs, GPUs, AI accelerators etc.) require high power demands with optimized power distribution
-
, visiting researcher opportunities, access to modern GPU clusters for deep learning research, and strong academic-industry connections. CADIA's commitment to open science aligns perfectly with this project's
-
into high-throughput GPU/HPC workflows, contributing to data management, metadata structuring, and semantic annotation Collaborate with experimentalists and theorists to validate extracted knowledge via in
-
diffusion techniques to design materials with targeted optical properties, scaling to large systems through efficient representations and GPU parallelization. We will also create multi-fidelity predictive
-
, which has multiple test machines with GPUs and AI accelerators. The algorithms used can be bound by the available compute power or memory bandwidth in different parts of the program. This information will
-
physics, mathematics or any related field. What we offer State of the art on-site high performance/GPU compute facilities Competitive research in an inspiring, world-class environment A wide range of offers