Description
This three-year Research Experiences for Undergraduates (REU) site at the University of North Texas will support 10 students for 10 weeks each summer and train them to build artificial intelligence (AI) systems capable of sharing knowledge across domains through vector embeddings. Vector embeddings translate information (e.g., images, text or sound) into numerical data. These data are then converted into lists that allow the numbers to convey context and meaning. Current AI systems who are working in areas such as visual object recognition, speech recognition, and understanding natural language require extensive training, with much of the learned knowledge locked within the structure of the system, which is then difficult to reuse. However, students in this program will focus on creating and leveraging highly-trained AI systems to represent information in ways that preserve the nuanced understanding learned by these systems and make it accessible for other applications. This REU brings together an interdisciplinary team to support projects that showcase the benefits of AI systems that can exchange and reuse learned knowledge. Early in the program, each student will identify a project domain and a faculty advisor with whom they can work. Students will also participate in a long-standing AI summer research program integrating current university students and external REU students to facilitate collaboration across departments and student expertise. Specifically, the training in this REU will allow students to more efficiently represent and transfer the knowledge acquired by self-supervised deep learning models. Each year, students will create vector representations of entities that appear across multiple domains, apply these embeddings to improve prediction models, and systematically evaluate, document, and contribute them to a shared, reusable knowledge base. These efforts are coordinated through common documentation, evaluation, and sharing practices that enable comparison and reuse of embeddings across projects. For the first five weeks, the students will be exposed to different embedding strategies and machine learning applications that use them, then transition to developing, testing, and refining their individual research efforts in the last five weeks. This REU will help prepare a workforce of students not only adept at using deep learning models but also capable of extending their functionality through reusable and shareable representations. Additionally, this project will train a diverse range of students from college partners with limited research resources to work in interdisciplinary teams at a Carnegie R1 research institution. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria. NSF Award ID: 2548192 | Program: 01002627DB NSF RESEARCH & RELATED ACTIVIT | Principal Investigator: Ting Xiao | Institution: University of North Texas, DENTON, TX | Award Amount: $464,978 View on NSF Award Search: https://www.nsf.gov/awardsearch/show-award/?AWD_ID=2548192 View on Research.gov: https://www.research.gov/awardapi-service/v1/awards/2548192.html
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Grant Details
$464,978 - $464,978
September 30, 2029
DENTON, TX
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