Science of Learning and Augmented Intelligence (SL)
Agency: U.S. National Science Foundation
Assistance Listings: 47.075 -- Social, Behavioral, and Economic Sciences
Description
- What are the underlying mechanisms that support transfer of learning from one context to another or from one domain to another?How is learning generalized from a small set of specific experiences?What is the basis for robust learning that is resilient against potential interference from new experiences?How is learning consolidated and reconsolidated from transient experience to stable memory?
- How do human interactions with technologies, imbued with artificial intelligence, provide improved human task performance?What models best describe the interplay of the individual and collaborative processes that lead to co-creation of knowledge and collective intelligence? In what ways do the capacities and constraints of human cognition inform improved methods of human-artificial intelligence collaboration?
- How can we integrate research findings and insights across levels of analysis, relating understanding of cellular and molecular mechanisms of learning in the neurons, to circuit and systems-level computations of learning in the brain, to cognitive, affective, social and behavioral processes of learning? What is the relationship between assembly of new networks (development) and learning new knowledge in a maturing or mature brain? What concepts, tools (including Big Data, machine learning, and other computational models) or questions will provide the most productive linkages across levels of analysis?
- How can insights from biological learners contribute and derive new theoretical perspectives to artificial intelligence, neuromorphic engineering, materials science and nanotechnology? How can the ability of biological systems to learn from relatively few examples improve efficiency of artificial systems?How do learning systems (biological and artificial) address complex issues of causal reasoning?How can knowledge about the ways in which humans learn help in the design of human-machine interfaces?
Eligibility
Eligible applicants
Miscellaneous
- Unrestricted
Additional information
Grantor contact information
Description
If you have any problems linking to this funding announcement, please contact the email address above.
Documents
No documents are currently available.
Link to additional information
Closing: August 6, 2025
Award
$--
Program Funding
--
Expected awards
$550
Award Minimum
$--
Award Maximum
Funding opportunity number:
PD-19-127Y
Cost sharing or matching requirement:
Funding instrument type:
Grant
Opportunity Category:
Discretionary
Opportunity Category Explanation:
Category of Funding Activity:
Science technology and other research and development
Category Explanation:
History
Version:
19
Posted date:
September 19, 2019
Archive date:
September 2, 2033