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sampling methods (e.g., electrofishing gear, traps, nets, and seines) • Proficiency with large-scale database organization and management and using statistical software R programming Pay Band 4 Overtime
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trends. Experience with statistical computing programs including R, python, stata, or similar program. Experience with GIS and VamaNet or similar program. Pay Band {lPayScaleID} Overtime Status Exempt: Not
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• Bachelor’s degree in Mechanical Engineering, Engineering Technology, or a closely related field. • Direct experience in a university research facility or a similar multi-user Research and Development (R&D
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Development (R&D) lab on equipment maintenance and repair; Previous experience working with faculty or professionals from different disciplines; Continuous improvement mindset and a willingness to continue
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quantitative research experience in ecosystem modeling, environmental forecasting, and/or computational ecology, demonstrated by publications and/or software development -Significant experience working in the R
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household consumption datasets. • Experience using analytical software packages such as Stata, R, SAS, nGene, SPSS, IMPLAN, or similar. Overtime Status Exempt: Not eligible for overtime Appointment Type
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skills and attention to detail • Demonstrated ability and desire to succeed in a fast-paced research environment with multiple concurrent duties • Proficiency with data analysis and visualization in R and
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. Questions regarding the position should be directed to Dr. Ali R. Butt at facdev@cs.vt.edu. Required Qualifications - An earned doctoral degree in Computer Science or closely related field at the time of
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, computer programming, GIS, and/or watershed modeling. Ability to navigate through rough terrain unassisted, good computer skills (MSOffice, MATLAB, R or similar software). Ability to work outside, regardless
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calling methods, proximal sensing, significant programing proficiency in a suitable scientific language (Python, Julia, R, C, C++, Fortran, etc.), machine learning, and knowledge or familiarity of crop