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for 1 year(s); continuation past 1 year(s) will be based on university need, performance, and/or availability of funding. POSITION SPECIFICS The College of Education seeks an Education Program
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are searching for a motivated and talented Computer Science and Software Engineer to join our Applied Communications team of the Applied Research Laboratory (ARL) at Penn State. This is a software engineering
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collaborate closely with CCMA faculty on cutting-edge research projects involving design, analysis and implementation of advanced numerical methods and algorithms in interdisciplinary applications. The position
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or analytical methods, data types, compute environments, and operating systems familiarity. A CV BACKGROUND CHECKS/CLEARANCES Employment with the University will require successful completion of background check
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., graduate and undergraduate students) as the need arises. Required Qualifications: Experience with critically applying computational methods to the process of collecting, refining, analyzing, and interpreting
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master’s, PhD, or MD/PhD program in computer science, data science, biomedical informatics, engineering, biostatistics, or a related field Experience with Python and machine learning methods Interest in AI
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in Applied Mathematics, Computer Science, Electrical Engineering, or Engineering Physics Related software experience Algorithm design, numerical analysis, software optimization, software validation
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will: Create basic solid models, detail drawings, assembly drawings, bills of materials, and other documentation using accepted methods and techniques Support basic research engineering programs
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collecting Windsond observations on selected days, downloading and analyzing observational field program data from NCAR and the DOE ARM program, working with WSR-88D observations to calculate quasi-vertical
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apply advanced computational and statistical methods to analyze complex biological datasets Perform integrative multi-omics analyses (e.g., genomics, transcriptomics, single-cell RNA-seq, proteomics