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multiple affiliations. Postdoctoral Associate – Biostatistics Duke University is seeking a successful postdoctoral associate in the Department of Biostatistics and Bioinformatics (www.biostat.duke.edu). Duke
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and bioluminescent imaging, immune cellular and molecular engineering, bioinformatics (single cell and other novel omics technologies), complex tissue culture and genome editing, and clinical trial
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documentation of experiments, including raw experimental data and laboratory notebooks. The position requires a PhD in computational biology, bioinformatics, structural biology, biophysics, biochemistry, or a
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of experiments, including raw experimental data and laboratory notebooks. The position requires a PhD in computational biology, bioinformatics, structural biology, biophysics, biochemistry, or a related discipline
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modelling and mixed effect models is preferred. Knowledge in survival analysis, machine learning, and bioinformatics in omics data is desired. Consideration of applications will begin immediately, and will
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, image analysis, and FISH (Fluoroescent in situ hybridization) are preferred. Additional skills in bioinformatic analysis are highly valued. A proven ability to learn and pioneer new techniques and assay
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, image analysis, and FISH (Fluoroescent in situ hybridization) are preferred. Additional skills in bioinformatic analysis are highly valued. A proven ability to learn and pioneer new techniques and assay
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-run laboratory innovatively integrates gnotobiotic mouse models, microbiology, immunology, and bioinformatics to tackle medically relevant questions. We recently developed a novel approach of microbe
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peer-reviewed journals. · Background:Experience or motivation to conduct FACS, single cell analysis, and bioinformatics desirable. · Skills:Experience or motivation to conduct immunofluorescence
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bioinformatics area) position is open at Duke University School of Medicine in the lab of Dr. Yi Zhang starting Jan 2024 or later. The ideal candidate will develop novel statistical and machine learning methods