Data-driven scalable pipeline using national agent-based models for real-time pandemic response and decision support
Parantapa Bhattacharya(Biocom), Madhav Marathe(Virginia Tech), Benjamin Hurt(Biocom), Andrew Warren(Biocom), Przemyslaw Porebski(Biocom), Abhijin Adiga(Biocom), Brian Klahn(Biocom), Joseph Outten(Biocom), Stephen Eubank(Biocom), Aniruddha Adiga(Biocom), Young Yun Baek(Biocom), Achla Marathe(Virginia Tech), Anil Vullikanti(Virginia Tech), Srinivasan Venkatramanan(Biocom), Jiangzhuo Chen(Biocom), Bryan Lewis(Biocom), Mandy Wilson(Biocom), Henning Mortveit(Engineering Systems (United States)), Stefan Hoops(Biocom), Samarth Swarup, Dustin Machi(Biocom), Christopher L. Barrett(Cornell University), Dawen Xie(Virginia Tech)
The International Journal of High Performance Computing Applications
October 20, 2022
Cited by 21
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