Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
the delivery of a mesh generation project, funded under a recent major £7m EPSRC Programme Grant REMODEL: Advancing Parallel Mesh Generation and Geometry Representation to Enable Industrially Relevant
-
. CPUs/GPUs) and their use in high-performance computing through shared or distributed parallel programming (e.g. OpenMP, MPI). Strong programming ability in C++ or a related language. Experience in
-
architectures (e.g. CPUs/GPUs) and their use in high-performance computing through shared or distributed parallel programming (e.g. OpenMP, MPI). 3. Strong programming ability in C++ or a related language. 4
-
Vacancies Researcher (Postdoc) in Off-Road SLAM and Advanced Perception USP – Unique selling point Key takeaways Are you passionate about autonomous systems and advanced perception techniques? We
-
Vacancies Researcher (Postdoc) in Off-Road SLAM and Advanced Perception Key takeaways Are you passionate about autonomous systems and advanced perception techniques? We offer an exciting
-
of the Bachelor's or Master's degree programme (e.g., sociological research training, Bachelor's seminar). You will also be responsible for coordinating the content of specific parallel courses. The employment level
-
Position as Computational Analyst / Bioinformatician in RNA Therapeutics and Cardiometabolic Disease
! At minimum one PhD and one postdoc publication that should constitute the basis for assessment. A curriculum vitae including information on two references from your PhD/postdoc. A full list of publications
-
Max Planck Institute for Evolutionary Biology, Plön | Plon, Schleswig Holstein | Germany | 25 days ago
on several available Drosophila panels. In a parallel evolve and re-sequence (E&R) project, Drosophila populations will be experimentally evolved for larger/smaller embryo size. The postdoc will be responsible
-
algorithms in the context of sparse tensor operations and apply them to real-world datasets. Parallel Computing: Explore opportunities for parallelism in the tensor completion process to enhance computational