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proposed in 1955 is for superiority tests with normally distributed data. There are statistical concerns about generalizing the procedure to equivalence testing and with other variables such as lognormal and
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-on analysis of clinical trial data from FDA submissions in ophthalmology, focusing on wAMD and DME indications. You will collaborate with experienced FDA statisticians to learn advanced statistical methods
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approaches rely on expert-driven statistical comparisons or limited multivariate analysis. However, the increasing dimensionality and complexity of analytical data demand AI/ML-based frameworks capable
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. Conducting descriptive and inferential statistical analyses. Contributing to publications in peer-reviewed scientific journals. Where will I be located? This opportunity is 100% remote. What is the anticipated
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datasets, investigating patterns in toxicological data using statistical methods, contributing to the development of reference compound libraries for predictive model validation, and developing AI
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implementing and evaluating precision technologies. Experience in the use of scripting languages (e.g. python, R, etc.) Experience performing multivariate statistical analyses and using statistical analyses
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, statistics, and field-lab approaches. Learning Objectives: The participant will receive training in plant molecular biology, genetics, and genomics. This research is expected to result in increased learning
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learn and apply methods in computational biology, genetics, and artificial intelligence, including statistical methods of marker-trait association, methods for determining syntenic relationships and for
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statistical software such as SAS or R. Experience in preparation of manuscripts for publication in peer-reviewed journals. Team player, with the ability to collaborate effectively in a multi-cultural, multi
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analysis of large, diverse datasets including field experimental data, geospatial data, and time series data. Experience with machine learning and statistical learning. Familiarity with various management