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, including literature review, experimental design, data analysis, collaboration, and dissemination of findings through conferences and publications. Apply for fellowships and awards, and provide mentorship
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analyzing single-cell and spatial profiling data using modern techniques. This work should have contributed to significant pre-prints or published manuscripts, where the candidate played a leading role
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motivated individual with a preferred background in RNA biology and/or immunology and wet lab experience. Successful candidates for this position must display self-initiative and motivation, teamwork
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and galaxy clustering calibration and measurement pipeline ahead of the Roman launch in late 2026, while taking advantage of early LSST data and existing Dark Energy Survey data for science analyses
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, disability, gender, gender expression, gender identity, genetic information, national origin, race, religion, sex, sexual orientation, or veteran status. Duke aspires to create a community built on
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27710, United States of America [map ] Subject Areas: Statistics / Statistics Data Science / Machine Learning Biostatistics / Biostatistics and Data Science Appl Deadline: none (posted 2025/02/12
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DESCRIPTION Duke University and North Carolina State University (NC State) invite applications for a full-time Postdoc Associate to conduct research on causal inference and analytic methods for data integration
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opportunity to develop innovative statistical methods in clinical trial design and variable selection methods in high dimensional data that will predict clinical outcomes and meta-analyses. The successful
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innovative statistical methods in clinical trial design and variable selection methods in high dimensional data that will predict clinical outcomes and meta-analyses. The successful candidate will collaborate
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Programme, and the field site in Kenya, and engage with investigators at all sites across various disciplines. The project will focus on conceptualizing, innovating, and implementing data-driven approaches