308 algorithm-development-"Prof"-"Washington-University-in-St"-"Prof" Fellowship positions in Singapore
Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
questions to understand lymphoma biology and develop novel therapeutic strategies. The lab, located in the Clinical Sciences Building (CSB) Novena campus, fosters reciprocal interactions among the research
-
Responsibilities: Develop new methods for power systems control. Develop data-driven methods for application in power & energy systems Assist in preparation of teaching materials for electric power related courses
-
Materials, Bioinspired Materials and Sustainable Materials. For more details, please view https://www.ntu.edu.sg/mse/research . The job is in the area of development of high efficient thermoelectric materials
-
, regardless of age, race, gender, religion, marital status and family responsibilities, or disability. MSE seeks to aggressively develop and commercialize adhesive and resin technologies based on NRF/CRP
-
of faculty, students and alumni who are shaping the future of AI, Data Science and Computing. This lab is focusing on research and development of exploring visual signal representation towards machine uses. We
-
level students in their research projects. - Contribute to curriculum design, teaching, and student engagement in AI-for-Science courses and seminars. - Support the development and deployment of AI-driven
-
epidemiology to identify needs and develop strategies to enhance the experience of ageing in Singapore. CARE thrives on creating a collaborative and interdisciplinary space among research staff as
-
develop their experience in AI-enhanced learning environments and educational psychology within a dynamic, interdisciplinary team. The candidate will be expected to: Conduct literature reviews on Gen-AI in
-
peptides, antimicrobial assays development, and electrochemical studies efforts led by the other partners in the consortia. The candidate shall work under the supervision of the Principal Investigator, who
-
modelling Reconstructing the temporal evolution of magma reservoir properties at one of more potential caldera systems. Petrological timescales will be determined via diffusion chronometry and/or