Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
ecological modeling. Learning Objectives: Through this fellowship, the successful applicant will gain valuable hands-on experience and develop expertise in laboratory and cold chain research. The participant
-
areas. These include, but are not limited to: Applying machine learning algorithms to solve real-world problems. Creating and structuring databases for storage, retrieval, and image analysis. Determining
-
. Learning Objectives: The participant will learn skills in the Protein Function and Phenotype Prediction SCINet group. They will learn to develop and deploy AI-based protein structure prediction tools
-
flood-induced resistance. Learning Objectives: The participant will expand their skills in plant metabolite analysis, plant genetics, and plant stress biology. They will also receive mentoring in writing
-
Organization DEVCOM Army Research Laboratory Reference Code ARL-C-CISD-300144 Description About the Research Current approaches optimize machine learning training largely by exploiting Deep Neural
-
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
-
electrical penetration graph (EPG) technology. The candidate will perform laboratory, greenhouse, and field studies, and to establish experiments to test different pest management strategies. Learning
-
learn how phenotypic datasets are integrated with genomic data for association analyses, genomic selection, and AI-driven methods, including machine learning and deep learning, to enhance germplasm
-
-derived data sets, crop growth modeling, deep learning, and other statistical methods. The participant will learn through collaboration with a multi-disciplinary team of researchers to solve challenges
-
power. Primarily supported by the Director of National Intelligence (DNI), the IC Postdoc Program bridges the research community and the IC by mobilizing top-tier researchers to tackle challenges crucial