Sort by
Refine Your Search
-
, thoroughness and consistency. COMPUTER SKILLS: Proficient with computer applications and programs associated with the position (i.e. Microsoft Office suite). Proficiency with database development and maintenance
-
. SQL programming experience required. Experience working with data utilizing R, Python, Excel, Power BI or other data processing tools. Knowledge, Skills and Abilities ANALYTICAL AND PRESENTATION SKILLS
-
to enhance and streamline admissions processes in support of prioritizing the student experience. The Associate Director, Admissions and Community Success Initiatives will partner with colleagues
-
literacy: strong knowledge of Microsoft Office programs and Banner preferred. Ability to use judgement when dealing with confidential information. Applications must include 1) complete vita or resume, 2
-
program. Oversee program budget, monitor and approve expenses, process student stipends. Establish tracking system for metrics required for NIH reporting and department use. Generate reports and analyze
-
the budget preparation process, long and short-term planning, cost projections, and budget estimates. Supervise full-time and part-time support personnel. Hire, manage, evaluate, and provide training
-
quantitative reasoning skills. Preferred qualifications: Prior experience working with animals (ideally zebrafish) desirable but not required (you will be trained). Experience and/or interest in computer coding
-
, IRB processes, coding, statistical analysis (SPSS, R), formal clinical training (e.g., MS in clinical psychology), experiment software, fMRI analysis, publications, or phlebotomy. Must be fully
-
and translational research in gastric cancers, especially relating to pancreatic ductal adenocarcinoma. Perform advanced lab techniques including: Cell-based in vitro assays and sample processing PCR
-
of biochemical, cell biological and molecular biological techniques. Experience in small animal handling and surgery is preferred. The fellow is expected to conduct statistical analysis of experimental data