Scientific Discovery through Advanced Computing: Scientific Machine Learning and Artificial Intelligence for Fusion Energy Sciences

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Funding Opportunity ID: 325051
Opportunity Number: DE-FOA-0002224
Opportunity Title: Scientific Discovery through Advanced Computing: Scientific Machine Learning and Artificial Intelligence for Fusion Energy Sciences
Opportunity Category: Discretionary
Opportunity Category Explanation:
Funding Instrument Type: Cooperative Agreement
Grant
Category of Funding Activity: Science and Technology and other Research and Development
Category Explanation:
CFDA Number(s): 81.049
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 domestic applicants are eligible to apply, except Federally Funded Research and Development Center (FFRDC) Contractors, and nonprofit organizations described in section 501(c)(4) of the Internal Revenue Code of 1986 that engaged in lobbying activities after December 31, 1995. DOE/NNSA National Laboratories are directed to submit applications in response to LAB 20-2224 in the PAMS website at https://pamspublic.science.energy.gov.
Agency Code: PAMS-SC
Agency Name: Department of Energy – Office of Science
Office of Science
Posted Date: Mar 04, 2020
Close Date: Apr 30, 2020
Last Updated Date: Mar 03, 2020
Award Ceiling: $3,000,000
Award Floor: $50,000
Estimated Total Program Funding: $21,000,000
Expected Number of Awards: 7
Description: The DOE SC programs in Fusion Energy Sciences (FES) and Advanced Scientific Computing Research (ASCR) invite applications under the Scientific Discovery through Advanced Computing (SciDAC) program in the area of Scientific Machine Learning and Artificial Intelligence (ML/AI) for Fusion Energy Science. The goal of this FOA is to support research aiming to sustain and enhance the leadership position of the United States in Artificial Intelligence (AI) while addressing high-priority research opportunities identified in recent fusion community studies. More specific information about the targeted research areas and allowable collaborations between multiple institutions is included in the SUPPLEMENTARY INFORMATION section below.A companion Program Announcement to the DOE National Laboratories (LAB 20-2224) will be posted on the SC Grants and Contracts web site at: https://science.osti.gov/grants/lab-announcements/open
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