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of funds. Minimum Education Required - Doctoral degree in Psychology, Statistics, Neuroscience or related field Required Qualifications – Research in Psychology or a related field. Desired Qualifications
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/Experience Requirements: PhD in Health Services Research, Statistics or related field required. Requires successful completion of a background check. Selected candidate may be requested to complete a pre
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teams; experience in data analysis and statistical programming; expert proficiency in STATA statistical programming This term position is available for one year with possibility of renewal based
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. Ph.D. degree in one of the following areas: Biology, Pharmacology, Bioinformatics, Computational Biology, Statistics, Biostatistics, Computer Science, Computational Mathematics, or other disciplines with
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fisheries science, limnology, ecology, or related field. Strong statistical background. Strong publication record demonstrating the ability to conduct independent research. Strong communication skills
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assessment methodologies (e.g., EMA, wearable devices), advanced statistical approaches (e.g., MLM), grant writing, and clearly articulated research and training goals are highly preferred. Additional
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, descriptive statistics, and regression), (2) writing for publication, and (3) data collection in applied settings, including child care programs, schools, and community settings. The Postdoctoral Scholar should
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health, assists in performing statistical analyses; writes and prepares manuscripts, articles, and research reports for publication and presentation; writes and submits grants applications to obtain
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implementing research statistical methodologies, developing research papers and manuscripts for publication and presentation, coordinating meetings with external collaborators, and assisting in the preparation
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) are seeking outstanding applicants for the Post Doctoral Scholar positions. Under the mentorship of Dr. Brian Searle, the Post Doctoral Scholar will develop and apply novel statistical and computational methods