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Objectives: The participant will learn how to apply bioinformatics software to produce a chromosome-level map of Eimeria parasites. Once this is completed, the participant will learn how to do genome-level
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Microbiology Unit at the USDA-ARS in Peoria, IL invites opportunities to apply for a Postdoctoral Research Fellow – Microbial Ecology Bioinformatics Fellowship trainee opportunity through ORISE. This fellowship
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bioinformatics. Methods used and areas of training will include manipulation of bacteriophage, DNA sequence analysis of bacteriophage and bacteria through the use of bioinformatic tools, DNA cloning, and genetic
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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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collaborate with other lab members to develop skills in PCR (to generate long (11 kb) PCR fragments), next generation sequencing and bioinformatics analysis. The results of this work will provide new insights
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doctoral degree in the one of the relevant fields (e.g. Agricultural Sciences, Agriculture, Entomology, Bioinformatics, Computational Biology, Biology, etc.). Degree must have been received within the past
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. Preferred skills: Excellent communication skills and proficiency in basic bioinformatics skills. Strong drive for lab research and some background in vaccinology and Immunology. Techniques to include, but
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) or be currently pursuing. Preferred skills: Experience in immunology, cell biology, molecular biology, animal models, virology or bioinformatics is desirable. Applicants with strong publication records
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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