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Objectives: Through this fellowship, you will gain valuable hands-on experience and develop expertise in laboratory research and bioinformatics. You will have the opportunity to learn and enhance skills in
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pathogens, such as those causing wheat blast and soybean red leaf blotch. Acquire skills in collecting, processing, and analyzing whole-genome sequence data. Learn to design, develop, and optimize fungal
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sciences, chemistry, computational sciences, and pharmacology) or be currently pursuing. Preferred skills: Experience in immunology, cell biology, molecular biology, animal models, virology or bioinformatics
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application process, please email ORISE.ARS.Northeast@orau.org and include the reference code for this opportunity. Qualifications The qualified candidate should be currently pursuing or have received a
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receive training in microbiology and basic bioinformatic methods used to assess the microbiota. Mentor: The mentor for this opportunity is Paul Carlson. (Paul.Carlson@fda.hhs.gov ). If you have questions
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skills in novel bioinformatics-based tools for analyzing and interpreting genomic, metagenomic, and/or gene expression datasets from animals and microbes, particularly in response to emerging Salmonella
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: Please visit our Program Website . After reading, if you have additional questions about the application process, please email ORISE.ARS.Northeast@orau.org and include the reference code
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areas. This fellowship places a strong emphasis on the application of machine learning, artificial intelligence, and bioinformatics to solve complex biological problems. Potential research activities may
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technical processes in detailed reports and presentations. Disseminating your research through scientific research journals, presentations, and technology demonstrations. Where will I be located? San Antonio
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, genetics, analytical chemistry, geology, geophysics, statistics, and physical sciences. DNA-related STEM research focuses on developing and validating new methods, including massively parallel sequencing