Deep Learning for Multi-Messenger Astrophysics: A Gateway for Discovery in the Big Data Era
Jan 1, 2019·
,,,,,,,,,,,,,,,,,,,,,,,,,,
,,,,,,,,,,,,,,,,,,,,·
1 min read
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
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
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.
Type
Add the full text or supplementary notes for the publication here using Markdown formatting.
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors

Authors
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.
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors