27 parallel-computing-numerical-methods-"Prof" research jobs at University of South Carolina
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Preferred Qualifications PhD in astronomy or a closely related field by the start date of employment. Knowledge/Skills/Abilities Expertise in numerical magnetohydrodynamical simulations, cosmology, and
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related field by the start date of employment. Knowledge/Skills/Abilities Expertise in numerical magnetohydrodynamical simulations, cosmology, and extragalactic astrophysics, which could have been gained
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, and Modeling: The duties will include collaboration between Prof. Tang’s lab and collaborators in other research laboratories. There will be periodic joint meetings to discuss collaborative research. It
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groups in Chemistry, Microbiology, and Modeling: The duties will include collaboration between Prof. Tang’s lab and collaborators in other research laboratories. There will be periodic joint meetings
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groups in Chemistry, Microbiology, and Modeling: The duties will include collaboration between Prof. Tang’s lab and collaborators in other research laboratories. There will be periodic joint meetings
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research groups in Chemistry and Materials Science; Science; The duties will include collaboration between Prof. Tang’s lab and collaborators in other research laboratories. There will be periodic joint
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using appropriate statistical and computational methods. Prepares detailed reports and presentations contributing to manuscript development and supporting publications. Essential Function Yes Percentage
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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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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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Statistical background to at least the intermediate level of multiple regression Computer literacy with knowledge of at least one statistical software package (e.g., R, Mplus, Stata, SAS) Working