82 phd-data-mining Postdoctoral positions at University of Minnesota in United-States
-
to lead a project related to the transport of bacteria in porous media and multiphase flow. A PhD degree in engineering or earth science is needed. 75% - Conduct laboratory experiments related
-
carry out experiments to understand bacterial physiology and genetics. 15% Publication and Presentation of Data The postdoctoral scholar is expected to communicate their research findings through
-
, performing, analyzing, and writing up to report for publication behavioral neuroscience experiments addressing questions of decision-making in rodents Qualifications Required Qualifications: PhD in
-
centers. Abundant opportunities to analyze existing data sets and publish in peer reviewed journals. Names, addresses and e-mail addresses of two to three individuals who will provide letters of reference
-
of hypothesis-driven research projects. 15% – Analysis & Review • Analysis and review of generated data and reviewing previously reported scientific literature. 15% – Scientific writing and presentation Work
-
analyze data for experiments evaluating vernalization requirements in different turfgrass species such as perennial ryegrass and hard fescue. Investigate the molecular regulation of vegetative-reproductive
-
in this field, as well as a PhD. Pay and Benefits Pay Range: $75,000 annually; depending on education/qualifications/experience Please visit the Benefits for Postdoctoral Candidates website for more
-
at the University of Minnesota seek a motivated scientist with applied field research experience to evaluate existing data from research trials conducted in Minnesota and establish and coordinate nitrogen fertilizer
-
agreements on a temporary or permanent basis for any reason at any time. All required qualifications must be documented on application materials. Required Qualifications: • PhD in Retinal Biology, Immunology
-
graduate and undergraduate students in the research group. 90% Research Conduct research related to specific externally-funded projects, including collecting and analyzing data, troubleshooting challenges