174 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:"-"UCL" positions at Zintellect in United States
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
collaboration with the mentor and other project members, to refine the focus of these activities based on the knowledge base, skill sets, and interest of the participant. Learning Objectives: The fellow will be
-
suitable micro-climate conditions. Learning Objectives: Under the guidance of one or more mentors, candidates will analyze raw acoustic data (i.e., soundscape) to identify and isolate the presence/absence
-
of insects. The current project is designed to determine the effect of insect inclusion on food safety and to capitalize on the natural bioremediation capacity of insects. Learning Objectives: The successful
-
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
-
will develop research treatments and fully collaborate on research during the course of their postdoc program. The postdoc will statistically analyze data with the guidance of his/her mentor. Learning
-
diverse research team focused on developing new oilseed crops and cropping systems. Learning Objectives: The intern will receive hands-on experience in a variety of activities that include: planting
-
markers, and determination of bacterial and virus disease titers. Learning Objectives: Learn theory, methods, and skills to propagate citrus plants, prepare plants for greenhouse and field research, and to
-
operational scales. Learning Objectives: The participant will gain hands-on experience and acquire knowledge in engineering solutions for nutrient recovery and/or removal from manure and animal wastewater, as
-
measurements of newly established assisted migration trials. Greenhouse and bare root seedling fields are also available for independent projects. Learning Objectives: Improve knowledge of science and knowledge
-
for US agriculture that are often grown in very different climates. The goal of the project is to learn about types of microbes that benefit crop yield or crop quality in the context of field agriculture