22 genetic-algorithm-computer-"UCL" Postdoctoral research jobs at University of South Carolina
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scale. Test methods for calibration corrections and noise reduction in retrieved data. Test algorithms for retrieval of sea surface temperatures from infrared radiances. Test algorithms for cloud masking
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and mentor. Knowledge of Neuroscience & Neurodevelopmental Disorders, Genetics & Environmental Influences. Skilled in Data Analysis. Knowledge/Skills/Abilities Excellent communication skills, ability
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Computer literacy with knowledge of at least one statistical software package (e.g., R, Mplus, Stata, SAS) Working collaboratively and effectively with colleagues and/or external stakeholders. Knowledge
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Fellow Campus Columbia Work County Richland College/Division College of Engineering and Computing Department CEC Chemical Engineering Advertised Salary Range Commensurate with qualifications Location
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Fellow Campus Columbia Work County Richland College/Division College of Engineering and Computing Department CEC Chemical Engineering Advertised Salary Range Salary commensurate with qualifications
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combination of genetic, cell biological, and molecular tools to manipulate gene expression in adipocytes and various ovarian cell types, assessing the impacts on fat and ovarian biology. Significant experience
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combination of genetic, cell biological, and molecular tools to manipulate gene expression in adipocytes and various ovarian cell types, assessing the impacts on fat and ovarian biology. Significant experience
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will carry out studies to examine population genetic processes responsible for evolution by natural selection using genomic data. The research activities are outlined in funded NSF and NIH proposals
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within the research team, ensure accurate interpretation of results, and support the effective communication of scientific findings. Providing guidance on statistical and computational tools, reviewing
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computing and version control (e.g., GitHub). History of working in cross-disciplinary teams and engaging non-scientists stakeholders. Knowledge/Skills/Abilities Knowledge: A strong working knowledge of