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of peer-reviewed publications and conference presentations in traumatic stress. Advanced data anaylsis skills, including use of statistical software (e.g. SPSS, R, SAS). Prior involvement in successful
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, and programming experience in a UNIX/Linux environment using programming languages such as Python, R, and/or Perl is required. Experience in analysis of genomis /trancriptomic /epigenomic data including
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: Demonstrated thorough knowledge of statistical research methods and analysis of data using a variety of multivariate and multilevel techniques. Knowledge of Stata or R strongly preferred. Ability to effectively
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languages and data analysis tools such as Python, Matlab, and R. Proficiency in GIS software (e.g., ESRI ArcPro). Strong written, oral, and visual communication skills. Responsibilities Research- Under
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data (e.g., Python, R, or bioinformatics pipelines). Strong record of productivity as evidenced by peer-reviewed publications or preprints. Ability to work both independently and collaboratively in a
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machine learning, deep learning, data visualization, and applied analytics for multi-modal datasets. Technical proficiency with Python, R, SQL, SPSS, Tableau. Architectural and design software expertise
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papers and reports including data collection and data analysis Proficiency using SAS, SPSS, R, and/or STATA statistical software Analyzing and interpreting various forms of cross-sectional, longitudinal
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mentorship experience PREFERRED QUALIFICATIONS Programming/statistical experience using R Experience in plant-microbe interactions or fungal/microbial work Fieldwork experience in coastal marshes SALARY Up
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, population genetics, or ecological and epidemiological modeling, and 3) an interest in mosquitoes and/or mosquito-borne diseases. The candidate should have demonstrably strong programming skills in R or Python
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for simulating river network dynamics, such as R, Julia, Python, or GIS-based hydrological modeling platforms. Ability to integrate physical, chemical, and biological components into the river-lake network models