216 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:" positions at Zintellect in United States
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scientist Dr. John Newman. Additional techniques that may be incorporated in the project include multi-color flow cytometry, RNA-sequencing, and ELISA. Learning Objectives: In this opportunity
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Transkingdom Microbial Community Assembly in the Barley Phyllosphere During Fusarium Infection.” Learning Objectives: Under the guidance of a mentor, the participant will learn how to: Perform statistical
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focus; therefore, you will learn how research is best translated into operational practice and will have the opportunity to communicate across the research-to-operations spectrum. You will gain knowledge
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signaling. Learning Objectives: The participant will gain skills in bioinformatics, genetics, data analysis, statistics, and artificial intelligence-based methods for protein modelling. The participant will
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products will be characterized by spectroscopic, rheological, thermo-oxidative techniques, and any other analytical techniques as necessary. Learning Objectives: This research will give the participant
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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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breeding. Learning Objectives: The participant will gain skills in laboratory methodologies, experimental design, horticulture, genetics, data analysis, statistics, and plant pathology. The participant will
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. Learning Objectives: The participant will gain experience in field and controlled environment research, including experimental design, breadth of data collection and analysis. They will also learn how to use
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resources to support development of rich datasets for asking complex questions and collaborate broadly across many different research communities. Learning Objectives: The participant will learn techniques