Sort by
Refine Your Search
-
of Information & Computer Sciences About UMass Amherst The flagship of the Commonwealth, the University of Massachusetts Amherst is a nationally ranked public land-grant research university that seeks to expand
-
Apply now Job no:525134 Work type:Post Doc (Amherst Only) Location:UMass Amherst Department: Elect & Computer Engineering Union: Post Doc Categories:Postdoctoral Research Associate, College
-
Information Salary is commensurate with experience; for 0-2 years’ post-PhD experience annual salary starts at $62,838 plus benefits. Special Instructions to Applicants Along with the application, please submit
-
. Specific activities will include protein purification and preparation, fluorescence microscopy and data collection and analysis of data from the single molecule laser trap and in vitro motility assay
-
resources and warming climate. The ideal candidate will have highly developed skills in any of the following areas: hydrologic and/or water resources modeling, data science and machine learning with strong
-
of Natural Sciences. Minimum Qualifications (Knowledge, Skills, Abilities, Education, Experience, Certifications, Licensure) A PhD in organismal physiology or related field. Have experience with any
-
of GPS-derived movement data and historical demographic data collected at breeding colonies over the past few decades. Help lead stakeholder engagement efforts. Lead and contribute to publications and
-
research design. This position assists CBIKS thematic research groups in conducting “science of science” research within the CBIKS network. The eight research theme areas at CBIKS are: ethics, data
-
containing updated data and calculations pertaining to the GHG inventory implications of the land uses and practices analyzed over the course of the project, as well as relevant recommendations that can
-
research focused on LGBTQIA+ youth mental health. The Postdoctoral Research Associate responsibilities will include assisting Dr. Goff and the research team in quantitative and qualitative data collection