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experiments • Handle data collection and cleaning • Perform statistical analysis and visualization, primarily in R (but we appreciate Python skills as well) Who we’re looking for: •Experience in R is required
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-cell sequencing libraries, analyzing and integrating RNA-seq, ATAC-seq, TCR-seq, and BCR-seq multi-omic datasets using R or Python. Experience with advanced statistical modeling is expected. Familiarity
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aimed at both trainees and young faculty to increase the number of investigators, including under-represented minority trainees, receiving K and R level NIH awards with a particular focus on the K to R
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systems, data tools (Excel and R), and data visualization is a plus. A bachelor’s degree and a minimum of 1 to 2 years of experience in project or research coordination, or an equivalent combination
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. Preferred: Experience working with high-dimensional biomedical datasets. Proficiency in R, Python, and command-line operations. Familiarity with version control and high-performance computing environments
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, and a results-driven self-starter. Skill with Wordpress or other content management systems, data tools (Excel and R), and data visualization is a plus. A bachelor's degree and a minimum of 1 to 2
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for the position of Research Specialist. As research programming is a significant part of this role, applicants should be familiar with programming languages such as Python and R and be willing learners of new
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-faceted R&D partnerships between Penn and the private sector that advance the translation of Penn ideas and intellectual property and attract substantial amounts of funding into the institution and/or lead
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and evaluation on large databases and large complex installations is required. Experience with SAS and R is required. This role may provide reporting and decision support systems consultation
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. Experience drafting and managing quarterly and annual performance reports, work plans, and donor deliverables. A high level of proficiency in Stata or R is required. Proficiency with electronic data collection