Sort by
Refine Your Search
-
of interest to its faculty. Domains of interest include nonlinear partial differential equations, computational fluid dynamics, material science, dynamical systems, numerical analysis, stochastic analysis
-
satisfactory performance and continued funding. This project is funded by the NSF award "Non-local magneto-curvature instabilities and their associated nonlinear transport in astrophysical disks". Applicants
-
with measurement electronics for data acquisition, etc. Experience in the following areas is beneficial but not required: nonlinear optics (e.g. optical parametric amplifiers), electrical switching, high
-
pending satisfactory performance and continued funding. This project is funded by the NSF award "Non-local magneto-curvature instabilities and their associated nonlinear transport in astrophysical disks
-
materials, extensive ex situ (and some in situ) characterization of synthesized materials by materials evaluation tools, and guiding the development and testing of new materials. The work will involve reactor
-
. Researchers will join the Zero-carbon Energy systems Research and Optimization Laboratory (ZERO Lab) run by assistant professor Jesse D. Jenkins jointly appointed with the Andlinger Center and Department
-
development and data analysis. A successful candidate will work closely in different aspects of the quality assurance and data engineering pipeline, developing usable and innovative solutions to build a
-
materials, extensive ex situ (and some in situ) characterization of synthesized materials by materials evaluation tools, and guiding the development and testing of new materials. The work will involve reactor
-
Poland, and additional NZx studies are under discussion. Initially, the applicant's work will be primarily with the Net-Zero Brazil collaboration. Individuals with a passion for interdisciplinary energy
-
, optimize network performance, and enhance resilience. As part of our team, you will engage in a multidisciplinary research area that intersects network science, spatial data analysis, uncertainty