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uptake. This research opportunity will focus on a targeted gene design, bioinformatics approach, to develop coding and noncoding sequence elements for stabilizing mRNAs for in vivo delivery. These mRNAs
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mission support personnel to learn the full OHS surveying process, gaining experience with equipment calibration, field study and collection, analysis requisitions, and report writing. You will participate
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with digital PCR, multiplex PCR, and microbial community analysis required. Participant will also learn about statistical analysis of data in consultation with ARS colleagues. Participant will be a part
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capable of long term high temperature operation in a vacuum or inert atmosphere environment (at least 17 years). This would represent a “factor of 3“ improvement over current proven heritage technology [1
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Project: Under the guidance of a mentor, the participant will conduct research on targeted and non-targeted analysis of per- and polyfluoroalkyl substances (PFAS) in food and food contact materials
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about: NGS library construction for genome and transcriptome sequencing. Marker-trait association analysis to identify genetic variations associated with important traits such as disease resistance and
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analysis, and delivery/discussion of results. In addition, you will have opportunities for authorship of research efforts in antimicrobial drug discovery, as well as presentations at scientific conferences
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scientists and communicate findings through manuscripts and newsletters. Learning Objectives: The candidate will have an opportunity to gain experience in plant genetic analysis, pipeline development, trait
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. To fulfill one component of FFR's mission requires using techniques in analytical and natural products chemistry. Under the guidance of a mentor, the participant will have access to liquid chromatography
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improve federal transit operations and oversight. Projects may include: Performing exploratory data analysis across diverse FTA datasets. Building and evaluating statistical and machine learning models