26 parallel-computing-numerical-methods-"Prof" research jobs at The University of Arizona
Sort by
Refine Your Search
-
exoplanets, and interior-atmosphere interactions on rocky worlds. Candidates are encouraged to reach out to Prof. Ranjan in advance of their application to cooperatively discuss specific research topics
-
exoplanets, and interior-atmosphere interactions on rocky worlds. Candidates are encouraged to reach out to Prof. Ranjan in advance of their application to cooperatively identify specific research topics
-
of exoplanet atmospheres. As a Postdoctoral Research Associate, you will work in the research group of Prof. Daniel Apai and support an equitable scholarly environment in research, mentoring, and service. Your
-
) Number of Vacancies 3 Target Hire Date Expected End Date Contact Information for Candidates Prof. Mohammed Hassan, Assistant Professor of Physics and Optical Sciences mohammedhassan@arizona.edu Open Date 7
-
, etc.). Leveraging computational geometry methods for advanced manufacturing applications. Advancing topology optimization methods for lightweight and high-performance designs. Collaborating with faculty
-
Position Highlights We seek an early career scientist with background in ecohydrology, numerical modeling and/or remote sensing to fill a position as Postdoctoral Research Associate at the Department
-
USA Position Highlights We seek an early career scientist with background in ecohydrology, numerical modeling and/or remote sensing to fill a position as Postdoctoral Research Associate
-
. Knowledge of upstream, downstream, and centerline construction methods, and associated risks and regulatory frameworks. Proficiency in spatio-temporal modeling and geotechnical software (e.g., FLAC, GeoStudio
-
projects in AI-driven GNC for space robotics systems, leveraging both classical optimization techniques and modern machine learning methods. Lead and support research projects in AI-driven solutions for SDA
-
research projects in AI-driven GNC for space robotics systems, leveraging both classical optimization techniques and modern machine learning methods. Lead and support research projects in AI-driven solutions