Envisioning National Resources for Artificial Intelligence Research: NSF Workshop Report
- URL: http://arxiv.org/abs/2412.10278v1
- Date: Fri, 13 Dec 2024 17:00:31 GMT
- Title: Envisioning National Resources for Artificial Intelligence Research: NSF Workshop Report
- Authors: Shantenu Jha, Yolanda Gil,
- Abstract summary: The workshop aimed to identify initial challenges and opportunities for national resources for AI research.
The report outlines significant findings and identifies needs and recommendations from the workshop.
- Score: 1.7205106391379026
- License:
- Abstract: This is a report of an NSF workshop titled "Envisioning National Resources for Artificial Intelligence Research" held in Alexandria, Virginia, in May 2024. The workshop aimed to identify initial challenges and opportunities for national resources for AI research (e.g., compute, data, models, etc.) and to facilitate planning for the envisioned National AI Research Resource. Participants included AI and cyberinfrastructure (CI) experts. The report outlines significant findings and identifies needs and recommendations from the workshop.
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