Sort by
Refine Your Search
-
using different LC/MS or GC/MS based techniques. Learning Objectives: As a result of this training, you will gain knowledge and experience in: Liquid chromatography, gas chromatography, and the hyphenated
-
: Understanding of pharmacovigilance data analysis workflows; Full-stack web-based application development; Integration of GenAI technologies into InfoViP platform. Mentor: The mentors for this opportunity
-
phenotyping using both drone-based and ground based sensing platforms. Learn artificial intelligence and machine learning techniques to analyze image and geospatial data from diverse sources for crop monitoring
-
students within the field of quantum information science and technology (QIST). By encouraging graduate student participation in QIST-based research, the LQC National Quantum Fellowship fosters the learning
-
the expression and systemic movement of products from the gall into the host plant's vascular system. This fellowship is designed to foster professional growth within a multicultural, team-based environment
-
collaborative research to develop knowledge bases of the behavior, ecology, physiology, and genetics of invasive insect pests and their natural enemies for development of effective biological control strategies
-
, ecology, behavior, and host preferences of cotton jassids. The participant will investigate the cotton jassid's chemical ecology and develop monitoring tools and attract-and-kill strategies based on its
-
mentor, the participant will: Acquire or improve their ability to predict important plant-microbe associations based on computational data and supplemental bioassays; Learn to conduct research using
-
engineering, plant tissue culture and tissue micropropagation, developmental regulator-based regeneration, genome editing and transgenic plant characterization techniques. New technologies and approaches
-
forage systems research. The Center is dedicated to providing dairy industry solutions for food security, environmental sustainability, and economic viability through science-based research initiatives