178 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:" positions at Zintellect
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. Applicants may be a veteran of the United States Armed Services who has received their DD-214 no more than four years prior to the start date of the internship (to be verified with a DD Form 214 and a high
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be a veteran of the United States Armed Services who has received their DD-214 no more than four years prior to the start date of the internship (to be verified with a DD Form 214 and a high school
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using both conventional breeding methods and marker assisted breeding. Learning Objectives: The participant will partner with the mentor to learn more about: Conducting phenotype trials related to maize
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the production, value, and safety of pecan, peach, nectarine, and plum crops. The participant will learn how to develop methods to improve control of key pecan diseases. The primary disease focus is pecan scab
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adoption by professional organizations such as the AOAC or Cereals & Grains (formerly AACC) would benefit The fellow will learn how to generate an instrumental method for soluble dietary fiber analysis
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identified in this way will represent targets for future gene editing to improve the rate of genetic improvement for reduced grain protein content. Learning Objectives: The candidate will learn about genetic
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across the dairy supply chain. The participant will also learn about statistical analysis of data in consultation with ARS colleagues. Learning Objectives: Under the guidance of a mentor, the participant
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using both conventional breeding methods and marker assisted breeding. Learning Objectives: The participant will partner with the mentor to learn more about: Conducting phenotype trials related to maize
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analysis and collaboratively advance the development of standard operating procedures for advanced microscopy. Learning Objectives: Through this educational opportunity, the selected candidate will develop
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be focused on learning how to develop algorithms, performing biochar characterization tests, and characterizing microbial communities that colonize biochar in different ecosystems. Learning Objectives