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NSF-Simons AI Institute for Cosmic Origins
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NSF-Simons AI Institute for Cosmic Origins
About
The Institute
Internal Resources (Private)
Team
Jobs
News
Education
Programs
Graduate Certificate
Events
Get Involved
Folder: About
Back
The Institute
Internal Resources (Private)
Team
Jobs
News
Folder: Education
Back
Programs
Graduate Certificate
Events
Get Involved
  • Conference Talks,
• 5/14/25

(Machine) Learning of Dark Matter

In this talk, Dr. Necib discusses multiple different machine learning algorithms that her group has worked on to understand the structure of the Milky Way, and infer properties of the underlying Dark Matter.

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Imaging in Radio Interferometry - What do we measure, model and make decisions about?

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Exploring the LLM universe for astronomy research

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CosmicAI gratefully acknowledges funding from the National Science Foundation under Cooperative Agreement 2421782 and the Simons Foundation award MPS-AI-00010515. To learn more about the NSF AI Institutes program, including information on other AI Institutes, please visit https://aiinstitutes.org.