Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Employer
- MACQUARIE UNIVERSITY - SYDNEY AUSTRALIA
- University of Oslo
- Nature Careers
- SINGAPORE INSTITUTE OF TECHNOLOGY (SIT)
- Villanova University
- Macquarie University
- University of Bergen
- Barcelona Beta Brain Research Center
- CSIRO
- Instituto de Investigação e Inovação em Saúde da Universidade do Porto (i3S)
- MOHAMMED VI POLYTECHNIC UNIVERSITY
- Manchester Metropolitan University
- Nanyang Technological University
- National University of Singapore
- Princeton University
- Stanford University
- UCL;
- UiT The Arctic University of Norway
- University of Agder
- University of Agder (UiA)
- University of Colorado
- University of Otago
- University of Oxford
- University of Portsmouth;
- University of Texas at Austin
- Université Gustave Eiffel
- 16 more »
- « less
-
Field
-
professionals across clinical operations, scientific coordination, facilities, and research management. In parallel, the FPM professionals provide management and administrative support, ensuring a strong
-
in AI to study natural and artificial minds in parallel, creating the opportunity to make discoveries about ourselves and to find new ways to understand and improve AI systems. Appointments will be
-
involve working closely with teams conducting parallel work with preschool children and adolescents within the ‘All About Me’ project. What We Offer As an employer, we genuinely care about our employees
-
will play a key role in building a parallelized, agent-driven exploration system and integrating a multimodal detection pipeline, ensuring real-time performance, scalability, and deployment readiness in
-
metabolites in embryo culture media, with a particular focus on nutrient and metabolite uptake by developing embryos. In parallel, the project will apply our previously developed low-input detection methods
-
algorithms for parallel/distributed AI/ML Hardware-aware and resource-efficient partitioning for parallel/distributed AI/ML Optimization of process-to-process communication in parallel/distributed AI/ML
-
learning frameworks (e.g. PyTorch, TensorFlow) and relevant libraries. Practical experience inscalable data processing, including the use of parallel computing, cloud platforms,and distributed systems
-
(HPC/parallel environments), and open/reproducible release of data and analysis scripts under FAIR principles. Dissemination through high-impact journal publications and conference presentations in solar
-
on the production and in vitro characterization of several enzymes in parallel (proteases and hydrolases). This research programme is part of an international effort to answer the call for the development of new
-
, with a particular focus on nutrient and metabolite uptake by developing embryos. In parallel, the project will apply our previously developed low-input detection methods to characterize intracellular