Sort by
Refine Your Search
-
productivity, performance, and overall fit. The postdoctoral program enables associates to build a high caliber scholarly portfolio in social-structural determinants of health, intersectionality, and community
-
building a research program at the intersection of these areas. While the research focus is flexible, the Postdoctoral Associate is expected to collaborate with the PI and team to design, conduct, and
-
experiences and individual differences, as well as cognitive modeling of decision-making in both lab and realworld settings. Successful candidates will be supported in building a research program at the
-
for Regulatory Science, the Center of Excellence for Rapid Surveillance of Tobacco, the Tobacco Dependence Program, a Tobacco Industry Marketing Program, and a Tobacco Control Law & Policy Resource
-
for assigned projects: Manages various data projects (including data validation, cleaning, and transforming program administrative data), and collecting and analyzing publicly available data. Conducts
-
. This postdoctoral associate position will be housed in the Department of Plant Biology at Rutgers University, New Jersey in Vaccinium breeding program of Dr. Gina Sideli. This position will also work with Rutgers and
-
discipline expertise and computational areas, such as data science, artificial intelligence (AI), machine learning (ML), generative AI and other technology innovations. Key details of this position include
-
study the role of mTOR kinase in growth control and anticancer mechanisms. In addition to this focus, the Postdoctoral Associate is expected to establish an innovative, collaborative research program
-
research program addressing important and fundamental questions. To support this effort, interdisciplinary and translational approaches are encouraged. Qualified candidates must be a recent recipient of a
-
of areas including strongly correlated fermion materials, high-temperature superconductivity, topological electronic states of matter, developments and applications of computational methods