Opportunity ID: 320753

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 19
Posted Date: Sep 19, 2019
Last Updated Date: Feb 28, 2025
Original Closing Date for Applications: Jan 15, 2020
Current Closing Date for Applications: Aug 06, 2025
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

Version History

Version Modification Description Updated Date
. Feb 28, 2025
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
. Sep 19, 2019
Sep 19, 2019

DISPLAYING: Synopsis 19

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 19
Posted Date: Sep 19, 2019
Last Updated Date: Feb 28, 2025
Original Closing Date for Applications: Jan 15, 2020
Current Closing Date for Applications: Aug 06, 2025
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 18

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 18
Posted Date: Sep 19, 2019
Last Updated Date: Aug 23, 2024
Original Closing Date for Applications:
Current Closing Date for Applications: Feb 12, 2025
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 17

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 17
Posted Date: Sep 19, 2019
Last Updated Date: Mar 01, 2024
Original Closing Date for Applications:
Current Closing Date for Applications: Aug 07, 2024
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 16

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 16
Posted Date: Sep 19, 2019
Last Updated Date: Aug 18, 2023
Original Closing Date for Applications:
Current Closing Date for Applications: Feb 14, 2024
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 15

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 15
Posted Date: Sep 19, 2019
Last Updated Date: May 20, 2023
Original Closing Date for Applications:
Current Closing Date for Applications: Aug 02, 2023
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 14

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 14
Posted Date: Sep 19, 2019
Last Updated Date: Mar 21, 2023
Original Closing Date for Applications:
Current Closing Date for Applications: Aug 02, 2023
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 13

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 13
Posted Date: Sep 19, 2019
Last Updated Date: Jan 28, 2023
Original Closing Date for Applications:
Current Closing Date for Applications: Feb 08, 2023
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 12

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 12
Posted Date: Sep 19, 2019
Last Updated Date: Oct 01, 2022
Original Closing Date for Applications:
Current Closing Date for Applications: Feb 08, 2023
Archive Date: Sep 02, 2033
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence — how human cognitive function can be augmented through interactions with others or with technology, or through variations in context.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis, including molecular and cellular mechanisms; brain systems; cognitive, affective and behavioral processes; and social and cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others or through the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have the capacity to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and intelligence that are supported by the unprecedented speed and scale of technological connectivity.This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches, including experiments, field studies, surveys, computational modeling, and artificial intelligence or machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 11

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 11
Posted Date: Sep 19, 2019
Last Updated Date: Aug 02, 2022
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 18, 2023
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 10

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 10
Posted Date: Sep 19, 2019
Last Updated Date: Jul 29, 2022
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 18, 2023
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 9

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 9
Posted Date: Sep 19, 2019
Last Updated Date: Feb 04, 2022
Original Closing Date for Applications:
Current Closing Date for Applications: Jul 13, 2022
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 8

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 8
Posted Date: Sep 19, 2019
Last Updated Date: Jul 30, 2021
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 19, 2022
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 7

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 7
Posted Date: Sep 19, 2019
Last Updated Date: Feb 05, 2021
Original Closing Date for Applications:
Current Closing Date for Applications: Jul 14, 2021
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 6

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 6
Posted Date: Sep 19, 2019
Last Updated Date: Sep 17, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 20, 2021
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: Science of Learning and Augmented Intelligence (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of Science of Learning and Augmented Intelligence (SL)include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 5

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: Science of Learning and Augmented Intelligence (SL)
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 5
Posted Date: Sep 19, 2019
Last Updated Date: Sep 17, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 20, 2021
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: The Science of Learning and Augmented Intelligence Program (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.Examples of general research questions within scope of the Science of Learning and Augmented Intelligence program include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 4

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: The Science of Learning and Augmented Intelligence Program
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 4
Posted Date: Sep 19, 2019
Last Updated Date: Jul 24, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 20, 2021
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: The Science of Learning and Augmented Intelligence Program (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of the Science of Learning and Augmented Intelligence program include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 3

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: The Science of Learning and Augmented Intelligence Program
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 3
Posted Date: Sep 19, 2019
Last Updated Date: Jan 31, 2020
Original Closing Date for Applications:
Current Closing Date for Applications: Jul 08, 2020
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: The Science of Learning and Augmented Intelligence Program (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of the Science of Learning and Augmented Intelligence program include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 2

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: The Science of Learning and Augmented Intelligence Program
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 2
Posted Date: Sep 19, 2019
Last Updated Date: Oct 01, 2019
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 15, 2020
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: The Science of Learning and Augmented Intelligence Program (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of the Science of Learning and Augmented Intelligence program include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

DISPLAYING: Synopsis 1

General Information

Document Type: Grants Notice
Funding Opportunity Number: PD-19-127Y
Funding Opportunity Title: The Science of Learning and Augmented Intelligence Program
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
Expected Number of Awards:
Assistance Listings: 47.075 — Social, Behavioral, and Economic Sciences
Cost Sharing or Matching Requirement: No
Version: Synopsis 1
Posted Date: Sep 19, 2019
Last Updated Date: Sep 19, 2019
Original Closing Date for Applications:
Current Closing Date for Applications: Jan 15, 2020
Archive Date: Aug 09, 2024
Estimated Total Program Funding:
Award Ceiling:
Award Floor: $550

Eligibility

Eligible Applicants: Unrestricted (i.e., open to any type of entity above), subject to any clarification in text field entitled “Additional Information on Eligibility”
Additional Information on Eligibility:

Additional Information

Agency Name: U.S. National Science Foundation
Description: The Science of Learning and Augmented Intelligence Program (SL) supports potentially transformative research that develops basic theoretical insights and fundamental knowledge about principles, processes and mechanisms of learning, and about augmented intelligence – how human cognitive function can be augmented through interactions with others, contextual variations, and technological advances.

The program supportsresearch addressing learning in individuals and in groups, across a wide range of domains at one or more levels of analysis including: molecular/cellular mechanisms; brain systems; cognitive, affective, and behavioral processes; and social/cultural influences.

The program also supports research on augmented intelligence that clearly articulates principled ways in which human approaches to learning and related processes, such as in design, complex decision-making and problem-solving, can be improved through interactions with others, and/or the use of artificial intelligence in technology. These could include ways of using knowledge about human functioning to improve the design of collaborative technologies that have capabilities to learn to adapt to humans.

For both aspects of the program, there is special interest in collaborative and collective models of learning and/or intelligence that are supported by the unprecedented speed and scale of technological connectivity. This includes emphasis on how people and technology working together in new ways and at scale can achieve more than either can attain alone. The program also seeks explanations for how the emergent intelligence of groups, organizations, and networks intersects with processes of learning, behavior and cognition in individuals.

Projects that are convergent and/or interdisciplinary may be especially valuable in advancing basic understanding of these areas, but research within a single discipline or methodology is also appropriate.Connections between proposed research and specific technological, educational, and workforce applications will be considered as valuable broader impacts but are not necessarily central to the intellectual merit of proposed research. The program supports a variety of approaches including: experiments, field studies, surveys, computational modeling, and artificial intelligence/machine learning methods.

Examples of general research questions within scope of the Science of Learning and Augmented Intelligence program include:

  • 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/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 theoretic 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?
Link to Additional Information: NSF Program Desccription PD-19-127Y
Grantor Contact Information: If you have difficulty accessing the full announcement electronically, please contact:

NSF grants.gov support
grantsgovsupport@nsf.gov
Email:grantsgovsupport@nsf.gov

Related Documents

Packages

Agency Contact Information: NSF grants.gov support
grantsgovsupport@nsf.gov
Email: grantsgovsupport@nsf.gov
Who Can Apply: Organization Applicants

Assistance Listing Number Competition ID Competition Title Opportunity Package ID Opening Date Closing Date Actions
PKG00255108 Sep 19, 2019 Aug 06, 2025 View

Package 1

Mandatory forms

320753 RR_SF424_5_0-5.0.pdf

320753 NSF_CoverPage_2_3-2.3.pdf

320753 NSF_KeyPersonExpanded_3_3-3.3.pdf

320753 RR_Budget_3_0-3.0.pdf

320753 PerformanceSite_4_0-4.0.pdf

320753 RR_OtherProjectInfo_1_4-1.4.pdf

Optional forms

320753 NSF_DeviationAuthorization-1.1.pdf

320753 NSF_SuggestedReviewers-1.1.pdf

320753 RR_SubawardBudget_3_0-3.0.pdf

2025-07-09T09:18:55-05:00

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