25 distributed-computing-"Prof" research jobs at King Abdullah University of Science and Technology
Sort by
Refine Your Search
-
Prof. Suzana Nunes at KAUST has open positions for highly qualified postdoc candidates to work in polymeric membrane development from lab to semi-technical scale to start in April 2021. Information
-
to Single Cell Analytics. The Living Systems Laboratory (livingsystems.kaust.edu.sa) offers an excellent interdisciplinary environment where experimentalists work closely with computational experts utilizing
-
cooperation with major industrial partners. This ensures a high level of applied research based on advanced theoretical concepts. Prof. Gilles Lubineau Principal Investigator of Mechanics of Composites
-
research based on advanced theoretical concepts. Prof. Gilles Lubineau Principal Investigator of Mechanics of Composites for Energy and Mobility Professor of Mechanical Engineering About King Abdullah
-
of bioinformaticians, computer scientists, biotechnologists, biologists, and biochemists. The successful candidate will also enjoy an environment aimed to facilitate progress in the research career: networking, student
-
Applicants must have a PhD in Computer Engineering, Computer Science, or Electrical and Computer Engineering, and have published their research in prestigious conferences and journals in related
-
/Online. A project at the Composites Lab is characterized by the amalgamation of experimental and computational/modeling mechanics and encompasses people with very different backgrounds to ensure we capture
-
generous funding for research, a cutting-edge genomics facility, and top-tier high-performance computing infrastructure, fostering an excellent environment for genomics-based research. The position is fully
-
computational resources. It is the leading university in citation per faculty according to the QS Rankings. Further information can be found at www.kaust.edu.sa .
-
containment. The prohibitively high computational cost of such simulations necessitates the development of efficient and robust surrogate models for general GCS modeling tasks, especially when inverse modeling