Sort by
Refine Your Search
-
. For questions about the application process, please contact Yelena Markazyan, Academic Recruiter at ym3mm@virginia.edu For more information about UVA and the Charlottesville community please visit UVA
-
· Effective written and verbal communication skills. · PhD degree in computer science, data science, or related fields, to be completed by the start date of the appointment. · Strong software
-
Associates are expected to participate in (and possibly lead) College Fellows sponsored events such as lectures for the University community, symposia, and seminars regarding the Liberal Arts & Sciences at UVA
-
disorders. Communicate findings to the scientific community through conference presentations and publications. Preferred Qualifications: PhD in Computational Biology, Bioinformatics, Genetics, or a related
-
to track research progress Communications and manuscript development Generating reports for funders and research partners Developing manuscripts Interfacing with other research team members and study
-
community, please see http://www.virginia.edu/life/charlottesville and https://embarkcva.com/ . Physical demands: This is primarily a sedentary job involving extensive use of desktop computers. The job does
-
labeling is required. Strong verbal and written communication skills are essential for contributing to the preparation of research proposals and manuscripts. The position will remain open until filled
-
, Recruiter, at jf2sw@virginia.edu . For more information about UVA and the Charlottesville community please see http://www.virginia.edu/life/charlottesville and https://embarkcva.com/. The University
-
full consideration. For questions about the application process, please contact Yelena Markazyan, Academic Recruiter at ym3mm@virginia.edu For more information about UVA and the Charlottesville community
-
. The lab also investigates this molecular coordination in drug resistance and immune cell-cancer cell communications within the tumor microenvironment. The aims are to provide critical mechanistic insights