Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
. The project has access to the national computing infrustracture, TU/e HPC cluster SPIKE-1 , ASML HPC cluster, ASML datasets, and potentially custom data through collaboration with e.g. IMEC. Where to apply
-
publications at top-tier venues such as CVPR, ICCV, ECCV, NeurIPS or ICRA. You will have access to extensive compute resources at TU Delft, ranging from local GPU servers to large-scale HPC infrastructure
-
; additional experience in one or more of the following areas is highly desirable: stochastic simulations quantitative genetics breeding programs working with Linux and HPC systems For this position your command
-
is highly desirable: big data analytics quantitative genetics variance component estimation working with Linux and HPC systems For this position your command of the English language is expected to be
-
, project-based innovation, and specialist support come together. Among other things, the teams offer access to HPC and HTC environments, storage, processing and analysis capacity for large-scale datasets
-
the digital research infrastructure in the social sciences. The data infrastructure is internationally unique, including state-of-the-art supercomputer and HPC facilities, data collection, and support for
-
workflows. Familiarity with Linux/HPC environments (for the modeling position). Experience with data visualization or handling large datasets. Demonstrated interest in climate physics and/or cross
-
to the definition of the future Copernicus Sentinels missions EO data architecture and managing the associated procurement activities for their cloud- or HPC-based implementation; contributing to the definition and
-
extensive experience with performing phylo- and metagenomic analyses; Has extensive programming skills (e.g. Python, R, bash) and experience with HPC; Is able to work in a structured and organized way; Has
-
observational, simulated, or laboratory data sets Efficient use of high-performance computing (HPC) and cloud-based platforms (Near) real-time analysis of large or streaming data Data management, archiving, and