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  • Home
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  • Things to do
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The Consortium on AI and Large Flexible Load (CALL) Workshop

The Consortium on AI and Large Flexible Load (CALL) is a partnership between a team of researchers at Texas A&M University and industry collaborators. CALL serves as a multidisciplinary platform connecting academia and industry to advance knowledge and development at the intersection of artificial intelligence (AI), electric energy systems, and large loads, especially crypto-mining facilities and AI data centers. 


Our mission is to accelerate research, innovation, and practical solutions that enable intelligent, flexible, and sustainable integration of these emerging large loads into the power grid.  


Register here for our upcoming workshop RSVP for a deep-dive tutorial on dynamic modeling, validation, and grid integration of large loads (especially data centers) and a panel discussion with industry experts. 


Date

November 13, 2025

Venue

Room: 236C, Wisenbaker Engineering Building , TAMU, College Station, TX

 

Who Should Attend

Researchers in power systems and AI; utility, ISO/RTO, and transmission planning/operations staff; data-center and large-load engineers; manufacturers and vendors; consultants; and industry partners interested in dynamic modeling, validation, testings, and and grid integration of large loads (e.g., data centers). 

What to Expect

Talks, keynotes, case studies, and interactive panels on dynamic/EMT modeling, low-voltage ride-through, and operational challenges of large loads (e.g., data centers), lab tours, plus demos of AI applications on grid operation and analysis workflows. 

Texas A&M University
188 Bizzell St WEB 301HCollege Station, TX 77843



Point of Contact
Dr. Prasad Enjeti(enjeti@tamu.edu)
Dr. Xin Chen(xin_chen@tamu.edu)
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