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://workforum.memphis.edu for consideration. Initial screening will begin immediately. Minimum Position Qualifications The successful candidate must have a PhD in Engineering or Digital Learning Technologies for STEM Special
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University of Memphis patented technologies ready for market. Fellows should hold a PhD degree in an area of science related to the technology targeted for commercialization and be able to work independently
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, FTIR, AFM Thermal analysis: DSC, DMA, TMA, TGA Electrochemical methods (e.g., Electrochemical Impedance Spectroscopy) are a strong plus 4. Conductive Polymers and Molecular Modeling Research
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apply state-of-the-art machine learning methods to multi-omics data to identify biomarkers for post-traumatic stress disorder (PTSD). The successful applicant will join the Systems Biology of PTSD
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, use of microscopes, data acquisition, inverse problems in imaging, optimization methods and image estimation and in particular knowledge in methods for super resolution structured illumination
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research and teaching facility housed in the Department of MSCM at The University of Memphis. C-NRL features a wide range of technologies and methods associated with consumer neuroscience, including: EEG
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given to applicants with a strong publication record and experience in biochemistry and molecular biology. Experience using complex analytical methods such as RNA-Seq, ChIP-Seq, and metabolomics, as
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portfolio. · Apply knowledge and experience in research design, intervention development, and analytic methods to program development. · Teach one to two public health courses each semester as per the SPH
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presentation; evaluate, install, and maintain software packages; and administer the computing infrastructure. Minimum Position Qualifications A PhD in computer science and/or cognitive science or related areas
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, please browse https://www.memphis.edu/fcbe . Minimum Position Qualifications Candidates must have a PhD or equivalent in a business or related field and experience in working with large datasets