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Harvard University, Statistics / Pragya Sur Position ID: Harvard University-Statistics / Pragya Sur-POSTDOCTORALFELLOW [#31829] Position Title: Position Type: Postdoctoral Position Location
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Harvard University, Statistics Position ID: HarvardStats-POSTDOC [#28204] Position Title: Position Type: Postdoctoral Position Location: Cambridge, Massachusetts 02138, United States of America [map
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lab is focused on revealing the molecular and environmental rules governing cell fate decisions in development and cell differentiation. We develop technologies to generate statistical data sets
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and cell differentiation. We develop technologies to generate statistical data sets that make these problems tractable, as well as computational tools and laws governing biological system behavior. We
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opportunities for analyses led by mentees. Statistical expertise is necessary, as is familiarity with bioinformatic pipelines and approaches for working with methylation data, or a willingness/ability to learn
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across commercial, residential, transportation, and occupational settings · Collect and synthesize environmental data, contextual observations, and metadata · Perform statistical and qualitative analysis
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(longitudinal designs, moderation and mediation, causal inference), library research (Pubmed searches, systemic review methods), and statistical analysis (data visualization, descriptive analyses, time series
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: This is a 12-month, full-time position with benefits. Visas may be arranged. You can find more information on benefits for Harvard employees here: https://hr.harvard.edu/health-welfare-benefits. Basic
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. or M.D./Ph.D. in areas such as Data Science, Statistics, Computer Science, Epidemiology, Environmental Health, or a related field. Demonstrated expertise in large scale analysis and familiarity with health
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Genomics at Harvard Medical School Several positions are available in the Park Lab (https://compbio.hms.harvard.edu/ ). The aim of the laboratory is to develop and apply innovative computational methods