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Research Topics: Please visit the ORISE ODNI Research Participation Program website to review the 2026 IC Postdoctoral Program Research Topics. When completing your application, there will be designated
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the guidance of a mentor, this opportunity will involve: developing and applying methods in computational biology and artificial intelligence to gather information about gene function in the legume family; using
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-ARS Ornamental Research Program in Miami, FL. The fellow will participate in a team effort to maintain and characterize Ornamental Genetic Resources (OGRs) by discovering molecular resources using
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initiative are encouraged, research directions will be developed in consultation with the mentor to ensure feasibility and alignment with program objectives. The successful candidate will publish research and
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affect oyster phenotypes targeted for improvement. The fellow will also gain experience using advanced computational methods to develop tools that can accurately predict desirable phenotypes. With
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. Scientists in this unit maintain an IAV research program including investigation of virulence mechanisms, vaccinology, immunology, and virus evolution. The participant will be based on the National Centers
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across many different research communities. Computational resources are available for large-scale analyses allowing for a unique opportunity for a fellow to obtain unique training and experiences to fit
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Program of the USDA ARS offers research opportunities to motivated postdoctoral fellows interested in solving agriculture-related problems at a range of spatial and temporal scales, from the genome
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and Modeling (DQMM) in the Office of Research and Standards (ORS) within the Office of Generic Drugs (OGD) provides expertise in advanced quantitative methods for the generic drug research program and
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, pharmacovigilance, pharmacoepidemiology methods development). In general you will have opportunities to learn: Understanding of pharmacovigilance workflows; GenAI based algorithm and agent development for causality