Opportunity ID: 352320
General Information
Document Type: | Grants Notice |
Funding Opportunity Number: | DE-FOA-0003264 |
Funding Opportunity Title: | Advancements in Artificial Intelligence for Science |
Opportunity Category: | Discretionary |
Opportunity Category Explanation: | – |
Funding Instrument Type: | Cooperative Agreement Grant Other |
Category of Funding Activity: | Science and Technology and other Research and Development |
Category Explanation: | – |
Expected Number of Awards: | – |
Assistance Listings: | 81.049 — Office of Science Financial Assistance Program |
Cost Sharing or Matching Requirement: | No |
Version: | Synopsis 2 |
Posted Date: | Feb 13, 2024 |
Last Updated Date: | May 10, 2024 |
Original Closing Date for Applications: | May 21, 2024 |
Current Closing Date for Applications: | May 22, 2024 |
Archive Date: | Jun 20, 2024 |
Estimated Total Program Funding: | $36,000,000 |
Award Ceiling: | $7,050,000 |
Award Floor: | $750,000 |
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: | All types of applicants are eligible to apply, except nonprofit organizations described in section 501(c)(4) of the Internal Revenue Code of 1986 that engaged in lobbying activities after December 31, 1995. |
Additional Information
Agency Name: | Office of Science |
Description: |
The DOE SC program in Advanced Scientific Computing Research (ASCR) hereby announces its interest in basic computer science and applied mathematics research in the fundamentals of Artificial Intelligence (AI) for science. Specifically, advancements in this area are sought that can enable the development of: · Foundation models for computational science; · Automated scientific workflows and laboratories; · Scientific programming and scientific-knowledge-management systems; · Federated and privacy-preserving training for foundation and other AI models for science; and · Energy-efficient AI algorithms and hardware for science.
The development of new AI techniques applicable to multiple scientific domains can accelerate progress, increase transparency, and open new areas of exploration across the scientific enterprise.
SUPPLEMENTARY INFORMATION
AI is one of the most powerful technologies of our time[1] and DOE is at the forefront of research and development in AI technologies for enabling scientific discovery and innovation. Core components of the scientific method remain unchanged: Observation, Hypothesis, Experiments, and Analysis. However, DOE recognizes that abundant sources of data, high-performance computing (HPC) and networking, energy-efficient algorithms, and AI-related technologies can be harnessed to significantly accelerate and expand the impact of scientific research. The breadth of applications spans climate science, cybersecurity and electric grid resilience, biotechnology, microelectronics, disaster response, and beyond. Research to address national priorities will require advances and AI innovations in high-level capabilities such as: monitoring and predicting the onset of real-world anomalies and extreme events; adaptive strategies to control the real-time behavior of complex systems, infrastructure, and processes; approaches for the optimal development and design of physical systems; decision-support for planning, risk, and policy formulation; and tools that synthesize scientific knowledge and accelerate the design, manufacturing, testing, and optimization of new technologies. The focus of ASCR research and development investments is on the underlying approaches for AI-enhanced scientific and engineering capabilities and to significantly transform the scientific method for accelerated discovery and innovation.
Realizing the next generation of AI for science will require innovations in both hardware and algorithms. Future AI-enabled scientific workflows are expected to use Machine Learning (ML) to enhance numerical modeling and data analysis along with technologies that process natural and computer-programming languages. DOE’s exascale supercomputers[2] are some of the Nation’s most powerful systems for large-scale AI training and for tasks integrating AI, modeling, simulation, and data analysis. These exascale and future systems complement the vast array of other AI-enabled HPC and edge systems, including automated laboratories and facilities, that will significantly accelerate scientific progress in the coming decades.
DOE’s scientific community has collectively articulated important research directions toward realizing the promise of AI for science and other DOE missions in the recently-released AI For Science, Energy, and Security report [1], building on the preceding AI for Science report [2], and complementing the report on Opportunities and Challenges from Artificial Intelligence and Machine Learning for the Advancement of Science, Technology, and the Office of Science Missions [3]. The research directions highlighted in these reports, and others, appear prominently in the National Artificial Intelligence Research and Development Strategic Plan [4]. This FOA addresses a broad spectrum of research priorities described in these documents that are critical to enabling trustworthy AI for scientific applications advancing human understanding and addressing national needs. [1] For additional background on the promise and importance of AI R&D, see the OMB/OSTP Memorandum on Multi-Agency Research and Development Priorities for the FY 2025 Budget (August 2023) https://www.whitehouse.gov/wp-content/uploads/2023/08/FY2025-OMB-OSTP-RD-Budget-Priorities-Memo.pdf, and the Executive Order on the Safe, Secure, and Trustworthy Development and Use of Artificial Intelligence (October 2023) https://www.whitehouse.gov/briefing-room/presidential-actions/2023/10/30/executive-order-on-the-safe-secure-and-trustworthy-development-and-use-of-artificial-intelligence/ [2] For more information on ASCR’s exascale supercomputers, and other HPC resources, available as national user facilities, see https://science.osti.gov/ascr/Facilities/User-Facilities |
Link to Additional Information: | – |
Grantor Contact Information: | If you have difficulty accessing the full announcement electronically, please contact:
SC.GrantsandContracts@science.doe.gov
Email:SC.GrantsandContracts@science.doe.gov |
Version History
Version | Modification Description | Updated Date |
---|---|---|
Extended due date due to maintenance. | May 10, 2024 | |
Feb 13, 2024 |
DISPLAYING: Synopsis 2
General Information
Document Type: | Grants Notice |
Funding Opportunity Number: | DE-FOA-0003264 |
Funding Opportunity Title: | Advancements in Artificial Intelligence for Science |
Opportunity Category: | Discretionary |
Opportunity Category Explanation: | – |
Funding Instrument Type: | Cooperative Agreement Grant Other |
Category of Funding Activity: | Science and Technology and other Research and Development |
Category Explanation: | – |
Expected Number of Awards: | – |
Assistance Listings: | 81.049 — Office of Science Financial Assistance Program |
Cost Sharing or Matching Requirement: | No |
Version: | Synopsis 2 |
Posted Date: | Feb 13, 2024 |
Last Updated Date: | May 10, 2024 |
Original Closing Date for Applications: | May 21, 2024 |
Current Closing Date for Applications: | May 22, 2024 |
Archive Date: | Jun 20, 2024 |
Estimated Total Program Funding: | $36,000,000 |
Award Ceiling: | $7,050,000 |
Award Floor: | $750,000 |
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: | All types of applicants are eligible to apply, except nonprofit organizations described in section 501(c)(4) of the Internal Revenue Code of 1986 that engaged in lobbying activities after December 31, 1995. |
Additional Information
Agency Name: | Office of Science |
Description: |
The DOE SC program in Advanced Scientific Computing Research (ASCR) hereby announces its interest in basic computer science and applied mathematics research in the fundamentals of Artificial Intelligence (AI) for science. Specifically, advancements in this area are sought that can enable the development of: · Foundation models for computational science; · Automated scientific workflows and laboratories; · Scientific programming and scientific-knowledge-management systems; · Federated and privacy-preserving training for foundation and other AI models for science; and · Energy-efficient AI algorithms and hardware for science.
The development of new AI techniques applicable to multiple scientific domains can accelerate progress, increase transparency, and open new areas of exploration across the scientific enterprise.
SUPPLEMENTARY INFORMATION
AI is one of the most powerful technologies of our time[1] and DOE is at the forefront of research and development in AI technologies for enabling scientific discovery and innovation. Core components of the scientific method remain unchanged: Observation, Hypothesis, Experiments, and Analysis. However, DOE recognizes that abundant sources of data, high-performance computing (HPC) and networking, energy-efficient algorithms, and AI-related technologies can be harnessed to significantly accelerate and expand the impact of scientific research. The breadth of applications spans climate science, cybersecurity and electric grid resilience, biotechnology, microelectronics, disaster response, and beyond. Research to address national priorities will require advances and AI innovations in high-level capabilities such as: monitoring and predicting the onset of real-world anomalies and extreme events; adaptive strategies to control the real-time behavior of complex systems, infrastructure, and processes; approaches for the optimal development and design of physical systems; decision-support for planning, risk, and policy formulation; and tools that synthesize scientific knowledge and accelerate the design, manufacturing, testing, and optimization of new technologies. The focus of ASCR research and development investments is on the underlying approaches for AI-enhanced scientific and engineering capabilities and to significantly transform the scientific method for accelerated discovery and innovation.
Realizing the next generation of AI for science will require innovations in both hardware and algorithms. Future AI-enabled scientific workflows are expected to use Machine Learning (ML) to enhance numerical modeling and data analysis along with technologies that process natural and computer-programming languages. DOE’s exascale supercomputers[2] are some of the Nation’s most powerful systems for large-scale AI training and for tasks integrating AI, modeling, simulation, and data analysis. These exascale and future systems complement the vast array of other AI-enabled HPC and edge systems, including automated laboratories and facilities, that will significantly accelerate scientific progress in the coming decades.
DOE’s scientific community has collectively articulated important research directions toward realizing the promise of AI for science and other DOE missions in the recently-released AI For Science, Energy, and Security report [1], building on the preceding AI for Science report [2], and complementing the report on Opportunities and Challenges from Artificial Intelligence and Machine Learning for the Advancement of Science, Technology, and the Office of Science Missions [3]. The research directions highlighted in these reports, and others, appear prominently in the National Artificial Intelligence Research and Development Strategic Plan [4]. This FOA addresses a broad spectrum of research priorities described in these documents that are critical to enabling trustworthy AI for scientific applications advancing human understanding and addressing national needs. [1] For additional background on the promise and importance of AI R&D, see the OMB/OSTP Memorandum on Multi-Agency Research and Development Priorities for the FY 2025 Budget (August 2023) https://www.whitehouse.gov/wp-content/uploads/2023/08/FY2025-OMB-OSTP-RD-Budget-Priorities-Memo.pdf, and the Executive Order on the Safe, Secure, and Trustworthy Development and Use of Artificial Intelligence (October 2023) https://www.whitehouse.gov/briefing-room/presidential-actions/2023/10/30/executive-order-on-the-safe-secure-and-trustworthy-development-and-use-of-artificial-intelligence/ [2] For more information on ASCR’s exascale supercomputers, and other HPC resources, available as national user facilities, see https://science.osti.gov/ascr/Facilities/User-Facilities |
Link to Additional Information: | – |
Grantor Contact Information: | If you have difficulty accessing the full announcement electronically, please contact:
SC.GrantsandContracts@science.doe.gov
Email:SC.GrantsandContracts@science.doe.gov |
DISPLAYING: Synopsis 1
General Information
Document Type: | Grants Notice |
Funding Opportunity Number: | DE-FOA-0003264 |
Funding Opportunity Title: | Advancements in Artificial Intelligence for Science |
Opportunity Category: | Discretionary |
Opportunity Category Explanation: | – |
Funding Instrument Type: | Cooperative Agreement Grant Other |
Category of Funding Activity: | Science and Technology and other Research and Development |
Category Explanation: | – |
Expected Number of Awards: | – |
Assistance Listings: | 81.049 — Office of Science Financial Assistance Program |
Cost Sharing or Matching Requirement: | No |
Version: | Synopsis 1 |
Posted Date: | Feb 13, 2024 |
Last Updated Date: | Feb 13, 2024 |
Original Closing Date for Applications: | – |
Current Closing Date for Applications: | May 21, 2024 |
Archive Date: | Jun 20, 2024 |
Estimated Total Program Funding: | $36,000,000 |
Award Ceiling: | $7,050,000 |
Award Floor: | $750,000 |
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: | All types of applicants are eligible to apply, except nonprofit organizations described in section 501(c)(4) of the Internal Revenue Code of 1986 that engaged in lobbying activities after December 31, 1995. |
Additional Information
Agency Name: | Office of Science |
Description: |
The DOE SC program in Advanced Scientific Computing Research (ASCR) hereby announces its interest in basic computer science and applied mathematics research in the fundamentals of Artificial Intelligence (AI) for science. Specifically, advancements in this area are sought that can enable the development of: · Foundation models for computational science; · Automated scientific workflows and laboratories; · Scientific programming and scientific-knowledge-management systems; · Federated and privacy-preserving training for foundation and other AI models for science; and · Energy-efficient AI algorithms and hardware for science.
The development of new AI techniques applicable to multiple scientific domains can accelerate progress, increase transparency, and open new areas of exploration across the scientific enterprise.
SUPPLEMENTARY INFORMATION
AI is one of the most powerful technologies of our time[1] and DOE is at the forefront of research and development in AI technologies for enabling scientific discovery and innovation. Core components of the scientific method remain unchanged: Observation, Hypothesis, Experiments, and Analysis. However, DOE recognizes that abundant sources of data, high-performance computing (HPC) and networking, energy-efficient algorithms, and AI-related technologies can be harnessed to significantly accelerate and expand the impact of scientific research. The breadth of applications spans climate science, cybersecurity and electric grid resilience, biotechnology, microelectronics, disaster response, and beyond. Research to address national priorities will require advances and AI innovations in high-level capabilities such as: monitoring and predicting the onset of real-world anomalies and extreme events; adaptive strategies to control the real-time behavior of complex systems, infrastructure, and processes; approaches for the optimal development and design of physical systems; decision-support for planning, risk, and policy formulation; and tools that synthesize scientific knowledge and accelerate the design, manufacturing, testing, and optimization of new technologies. The focus of ASCR research and development investments is on the underlying approaches for AI-enhanced scientific and engineering capabilities and to significantly transform the scientific method for accelerated discovery and innovation.
Realizing the next generation of AI for science will require innovations in both hardware and algorithms. Future AI-enabled scientific workflows are expected to use Machine Learning (ML) to enhance numerical modeling and data analysis along with technologies that process natural and computer-programming languages. DOE’s exascale supercomputers[2] are some of the Nation’s most powerful systems for large-scale AI training and for tasks integrating AI, modeling, simulation, and data analysis. These exascale and future systems complement the vast array of other AI-enabled HPC and edge systems, including automated laboratories and facilities, that will significantly accelerate scientific progress in the coming decades.
DOE’s scientific community has collectively articulated important research directions toward realizing the promise of AI for science and other DOE missions in the recently-released AI For Science, Energy, and Security report [1], building on the preceding AI for Science report [2], and complementing the report on Opportunities and Challenges from Artificial Intelligence and Machine Learning for the Advancement of Science, Technology, and the Office of Science Missions [3]. The research directions highlighted in these reports, and others, appear prominently in the National Artificial Intelligence Research and Development Strategic Plan [4]. This FOA addresses a broad spectrum of research priorities described in these documents that are critical to enabling trustworthy AI for scientific applications advancing human understanding and addressing national needs. [1] For additional background on the promise and importance of AI R&D, see the OMB/OSTP Memorandum on Multi-Agency Research and Development Priorities for the FY 2025 Budget (August 2023) https://www.whitehouse.gov/wp-content/uploads/2023/08/FY2025-OMB-OSTP-RD-Budget-Priorities-Memo.pdf, and the Executive Order on the Safe, Secure, and Trustworthy Development and Use of Artificial Intelligence (October 2023) https://www.whitehouse.gov/briefing-room/presidential-actions/2023/10/30/executive-order-on-the-safe-secure-and-trustworthy-development-and-use-of-artificial-intelligence/ [2] For more information on ASCR’s exascale supercomputers, and other HPC resources, available as national user facilities, see https://science.osti.gov/ascr/Facilities/User-Facilities |
Link to Additional Information: | – |
Grantor Contact Information: | If you have difficulty accessing the full announcement electronically, please contact:
SC.GrantsandContracts@science.doe.gov
Email:SC.GrantsandContracts@science.doe.gov |
Related Documents
Packages
Agency Contact Information: | SC.GrantsandContracts@science.doe.gov Email: SC.GrantsandContracts@science.doe.gov |
Who Can Apply: | Organization Applicants |
Assistance Listing Number | Competition ID | Competition Title | Opportunity Package ID | Opening Date | Closing Date | Actions |
---|---|---|---|---|---|---|
81.049 | DE-FOA-0003264 | Advancements in Artificial Intelligence for Science | PKG00284830 | Feb 13, 2024 | May 22, 2024 | View |