Sort by
Refine Your Search
-
Oak Ridge Institute for Science and Education (ORISE) participant, you will join a community of scientists and researchers developing interactive, Large Language Model (LLM) / Natural
-
-relevant compounds (MRC) currently under research, development, testing, and evaluation (RDT&E). Safeguarding the health and welfare of service members, civilians, and the environment requires an assessment
-
leadership skills, as well as gain experience in developing projects, activities, and communications to show the impact of USDA science in the areas of agricultural sciences, natural resources, and science
-
that future possible. We’ve long touted our success in developing the technologies that took on acid rain in the 1970s and mercury in the early 2000s. Program Goals The Professional Internship Program is
-
systems during training and combat. Developing and drafting health hazard-related responses to requests for information and technical reports. Participating in the development of solutions for exposure data
-
of the agency is to provide global leadership in agricultural discoveries through scientific excellence. Research Project: This is an opportunity to participate in a USDA-funded project on developing a symbiont
-
summarize data taken in a production environment. To prepare samples for DNA extraction and molecular biological testing. To navigate a collaborative effort between a scientific laboratory and a field
-
Organization DEVCOM Army Research Laboratory Reference Code ARL-R-PEQS-400049-F1 Description About the Army Research Laboratory The U.S. Army Combat Capabilities Development Command Army Research
-
environment. To prepare samples for DNA extraction and molecular biological testing. To navigate a collaborative effort between a scientific laboratory and a field production facility. Mentor(s): The mentor
-
. Developing tools and visualizations to support internal decision-making. Identifying patterns, trends, and anomalies in operational data. Testing data quality and working with imperfect or incomplete data