Deep Learning for Multi-Messenger Astrophysics: A Gateway for Discovery in the Big Data Era

Jan 1, 2019·
Gabrielle Allen
,
Igor Andreoni
,
Etienne Bachelet
,
G. Bruce Berriman
,
Federica B. Bianco
,
Rahul Biswas
,
Matias Carrasco Kind
,
Kyle Chard
,
Minsik Cho
,
Philip S. Cowperthwaite
,
Zachariah B. Etienne
,
Daniel George
,
Tom Gibbs
,
Matthew Graham
,
William Gropp
,
Anushri Gupta
,
Roland Haas
,
E. A. Huerta
,
Elise Jennings
,
Daniel S. Katz
,
Asad Khan
,
Volodymyr Kindratenko
,
William T. C. Kramer
,
Xin Liu
,
Ashish Mahabal
,
Kenton Mchenry
,
J. M. Miller
Mark Neubauer
Mark Neubauer
,
Steve Oberlin
,
Alexander R. Olivas Jr
,
Shawn Rosofsky
,
Milton Ruiz
,
Aaron Saxton
,
Bernard Schutz
,
Alex Schwing
,
Ed Seidel
,
Stuart L. Shapiro
,
Hongyu Shen
,
Yue Shen
,
Brigitta M. Sipocz
,
Lunan Sun
,
John Towns
,
Antonios Tsokaros
,
Wei Wei
,
Jack Wells
,
Timothy J. Williams
,
Jinjun Xiong
,
Zhizhen Zhao
· 1 min read
Abstract
This report provides an overview of recent work that harnesses the Big Data Revolution and Large Scale Computing to address grand computational challenges in Multi-Messenger Astrophysics, with a particular emphasis on real-time discovery campaigns. Acknowledging the transdisciplinary nature of Multi-Messenger Astrophysics, this document has been prepared by members of the physics, astronomy, computer science, data science, software and cyberinfrastructure communities who attended the NSF-, DOE- and NVIDIA-funded “Deep Learning for Multi-Messenger Astrophysics: Real-time Discovery at Scale” workshop, hosted at the National Center for Supercomputing Applications, October 17-19, 2018. Highlights of this report include unanimous agreement that it is critical to accelerate the development and deployment of novel, signal-processing algorithms that use the synergy between artificial intelligence (AI) and high performance computing to maximize the potential for scientific discovery with Multi-Messenger Astrophysics. We discuss key aspects to realize this endeavor, namely (i) the design and exploitation of scalable and computationally efficient AI algorithms for Multi-Messenger Astrophysics; (ii) cyberinfrastructure requirements to numerically simulate astrophysical sources, and to process and interpret Multi-Messenger Astrophysics data; (iii) management of gravitational wave detections and triggers to enable electromagnetic and astro-particle follow-ups; (iv) a vision to harness future developments of machine and deep learning and cyberinfrastructure resources to cope with the scale of discovery in the Big Data Era; (v) and the need to build a community that brings domain experts together with data scientists on equal footing to maximize and accelerate discovery in the nascent field of Multi-Messenger Astrophysics.
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Mark Neubauer
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University of Illinois at Urbana-Champaign
I am a professor at the University of Illinois. My research is highly interdisciplinary at the intersection of particle physics, AI/ML, and quantum, aiming to understand the universe at its fundamental level and to accelerate scientific discovery through innovation.
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