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with small animal husbandry and use in experimentation Ability to effectively utilize a computer and applicable software to create databases, perform statistical analyses Ability to communicate
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: Use Excel and jamovi to perform data analysis and statistical analysis of research experiments and results. Why Texas A&M University? We are a prestigious university with strong traditions, Core Values
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and/or technical equipment. Ability to effectively utilize a computer and applicable software to create databases, perform statistical analyses, present data and perform other computer related tasks
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for computer models and manages databases relating to statistical and related software. Maintains expertise with the latest hardware and software technologies for statistical and numerical data analyses
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& Reporting Navigates complex and intricate office program coordination, health and safety, and risk compliance matters with multiple deadlines involved. Performs data collection, compilation, and statistical
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and interpretation of data and Manuscript writing: Analyzes and interprets data with appropriate statistical analysis, prepares data and figures and writes manuscripts for publication in peer-reviewed
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Job Title Postdoctoral Research Associate Agency Texas A&M University Department Department Of Statistics Proposed Minimum Salary Commensurate Job Location College Station, Texas Job Type Staff Job
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researcher Preferred Knowledge, Skills, and Abilities: Good computer literacy, statistical analysis. Bioinformatics analysis is a plus. Experience working with varied individuals and communities Job
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statistics, mathematics, computer science or business analytics) or equivalent combination of education and experience. 2 years of related experience in data analysis. Proficiency in recognizing
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by querying an object-relational database management system (ORDBMS) to support ad-hoc report requirements and analysis. Works to assess and devise statistical methods for identifying data patterns