Sort by
Refine Your Search
-
Job Description Job Alerts Link Apply now Job Title: Research Fellow (Computer Science) Posting Start Date: 03/07/2025 Job Description: Job Description Research Fellow – Multimodal Time-Series
-
Job Description Job Alerts Link Apply now Job Title: Research Fellow (Computational Materials Science) Posting Start Date: 16/07/2025 Job Description: Job Description A postdoc position is available
-
) The Centre for Quantum Technologies (CQT) in Singapore brings together physicists, computer scientists and engineers to do basic research on quantum physics and to build devices based on quantum phenomena
-
science, GIS, computer science or other relevant disciplines • Good background knowledge and overall interest in design technology • Proficient in statistical and programming skills, like Python
-
focused on immuno-oncology imaging and engineering, nucleic acids nanotechnology, computational biomedical imaging. We are seeking a person with preferred experience in cancer immunology, immune engineering
-
from the Department of Civil and Environmental Engineering. This position is part of an exciting research program advancing separation technologies (i.e., membrane and electrochemical) to solve pressing
-
(SSR) at the Faculty of Arts and Social Sciences, National University of Singapore (NUS), would like to invite suitable candidates to apply for a full‐time position as Research Fellow. The appointment
-
recognition in the field. Job Requirements PhD in Computer Science, Mathematics, or a related discipline. At least two years postdoctoral experience. Extensive publication record at leading cryptography and
-
in Computer Science, Mathematics, or a related field. Strong publication record in leading cryptography and theoretical computer science conferences. Demonstrated ability to conduct independent
-
Science, Computer Science, Astronomy, Astrophysics, or a related quantitative discipline. • Skills: - Strong analytical and computational skills in data science, statistical analysis, or machine learning