Enabling real-time multi-messenger astrophysics discoveries with deep learning

Multi-messenger astrophysics is a fast-growing, interdisciplinary field that combines data, which vary in volume and speed of data processing, from many different instruments that probe the Universe using different cosmic messengers: electromagnetic waves, cosmic rays, gravitational waves and neutri...

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Veröffentlicht in:arXiv.org 2019-11
Hauptverfasser: Huerta, E A, Allen, Gabrielle, Andreoni, Igor, Antelis, Javier M, Bachelet, Etienne, Berriman, Bruce, Bianco, Federica, Biswas, Rahul, Carrasco, Matias, Chard, Kyle, Cho, Minsik, Cowperthwaite, Philip S, Etienne, Zachariah B, Fishbach, Maya, ster, Francisco, George, Daniel, Gibbs, Tom, Graham, Matthew, Gropp, William, Gruendl, Robert, Gupta, Anushri, Haas, Roland, Habib, Sarah, Jennings, Elise, Johnson, Margaret W G, Katsavounidis, Erik, Katz, Daniel S, Khan, Asad, Kindratenko, Volodymyr, Kramer, William T C, Liu, Xin, Mahabal, Ashish, Marka, Zsuzsa, McHenry, Kenton, Miller, Jonah, Moreno, Claudia, Neubauer, Mark, Oberlin, Steve, Olivas, Alexander R, Petravick, Donald, Rebei, Adam, Rosofsky, Shawn, Ruiz, Milton, Saxton, Aaron, Schutz, Bernard F, Schwing, Alex, Seidel, Ed, Shapiro, Stuart L, Shen, Hongyu, Shen, Yue, Singer, Leo, Sipőcz, Brigitta M, Sun, Lunan, Towns, John, Tsokaros, Antonios, Wei, Wei, Wells, Jack, Williams, Timothy J, Xiong, Jinjun, Zhao, Zhizhen
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creator Huerta, E A
Allen, Gabrielle
Andreoni, Igor
Antelis, Javier M
Bachelet, Etienne
Berriman, Bruce
Bianco, Federica
Biswas, Rahul
Carrasco, Matias
Chard, Kyle
Cho, Minsik
Cowperthwaite, Philip S
Etienne, Zachariah B
Fishbach, Maya
ster, Francisco
George, Daniel
Gibbs, Tom
Graham, Matthew
Gropp, William
Gruendl, Robert
Gupta, Anushri
Haas, Roland
Habib, Sarah
Jennings, Elise
Johnson, Margaret W G
Katsavounidis, Erik
Katz, Daniel S
Khan, Asad
Kindratenko, Volodymyr
Kramer, William T C
Liu, Xin
Mahabal, Ashish
Marka, Zsuzsa
McHenry, Kenton
Miller, Jonah
Moreno, Claudia
Neubauer, Mark
Oberlin, Steve
Olivas, Alexander R
Petravick, Donald
Rebei, Adam
Rosofsky, Shawn
Ruiz, Milton
Saxton, Aaron
Schutz, Bernard F
Schwing, Alex
Seidel, Ed
Shapiro, Stuart L
Shen, Hongyu
Shen, Yue
Singer, Leo
Sipőcz, Brigitta M
Sun, Lunan
Towns, John
Tsokaros, Antonios
Wei, Wei
Wells, Jack
Williams, Timothy J
Xiong, Jinjun
Zhao, Zhizhen
description Multi-messenger astrophysics is a fast-growing, interdisciplinary field that combines data, which vary in volume and speed of data processing, from many different instruments that probe the Universe using different cosmic messengers: electromagnetic waves, cosmic rays, gravitational waves and neutrinos. In this Expert Recommendation, we review the key challenges of real-time observations of gravitational wave sources and their electromagnetic and astroparticle counterparts, and make a number of recommendations to maximize their potential for scientific discovery. These recommendations refer to the design of scalable and computationally efficient machine learning algorithms; the cyber-infrastructure to numerically simulate astrophysical sources, and to process and interpret multi-messenger astrophysics data; the management of gravitational wave detections to trigger real-time alerts for electromagnetic and astroparticle follow-ups; a vision to harness future developments of machine learning and cyber-infrastructure resources to cope with the big-data requirements; and the need to build a community of experts to realize the goals of multi-messenger astrophysics.
doi_str_mv 10.48550/arxiv.1911.11779
format Article
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Allen, Gabrielle ; Andreoni, Igor ; Antelis, Javier M ; Bachelet, Etienne ; Berriman, Bruce ; Bianco, Federica ; Biswas, Rahul ; Carrasco, Matias ; Chard, Kyle ; Cho, Minsik ; Cowperthwaite, Philip S ; Etienne, Zachariah B ; Fishbach, Maya ; ster, Francisco ; George, Daniel ; Gibbs, Tom ; Graham, Matthew ; Gropp, William ; Gruendl, Robert ; Gupta, Anushri ; Haas, Roland ; Habib, Sarah ; Jennings, Elise ; Johnson, Margaret W G ; Katsavounidis, Erik ; Katz, Daniel S ; Khan, Asad ; Kindratenko, Volodymyr ; Kramer, William T C ; Liu, Xin ; Mahabal, Ashish ; Marka, Zsuzsa ; McHenry, Kenton ; Miller, Jonah ; Moreno, Claudia ; Neubauer, Mark ; Oberlin, Steve ; Olivas, Alexander R ; Petravick, Donald ; Rebei, Adam ; Rosofsky, Shawn ; Ruiz, Milton ; Saxton, Aaron ; Schutz, Bernard F ; Schwing, Alex ; Seidel, Ed ; Shapiro, Stuart L ; Shen, Hongyu ; Shen, Yue ; Singer, Leo ; Sipőcz, Brigitta M ; Sun, Lunan ; Towns, John ; Tsokaros, Antonios ; Wei, Wei ; Wells, Jack ; Williams, Timothy J ; Xiong, Jinjun ; 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Engineering Collection</collection><collection>ProQuest Central (Alumni Edition)</collection><collection>ProQuest Central UK/Ireland</collection><collection>ProQuest Central Essentials</collection><collection>ProQuest Central</collection><collection>Technology Collection</collection><collection>ProQuest One Community College</collection><collection>ProQuest Central Korea</collection><collection>SciTech Premium Collection</collection><collection>ProQuest Engineering Collection</collection><collection>Engineering Database</collection><collection>Publicly Available Content Database</collection><collection>ProQuest One Academic Eastern Edition (DO NOT USE)</collection><collection>ProQuest One Academic</collection><collection>ProQuest One Academic UKI Edition</collection><collection>ProQuest Central China</collection><collection>Engineering Collection</collection><collection>arXiv Computer Science</collection><collection>arXiv.org</collection><jtitle>arXiv.org</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Huerta, E A</au><au>Allen, Gabrielle</au><au>Andreoni, Igor</au><au>Antelis, Javier M</au><au>Bachelet, Etienne</au><au>Berriman, Bruce</au><au>Bianco, Federica</au><au>Biswas, Rahul</au><au>Carrasco, Matias</au><au>Chard, Kyle</au><au>Cho, Minsik</au><au>Cowperthwaite, Philip S</au><au>Etienne, Zachariah B</au><au>Fishbach, Maya</au><au>ster, Francisco</au><au>George, Daniel</au><au>Gibbs, Tom</au><au>Graham, Matthew</au><au>Gropp, William</au><au>Gruendl, Robert</au><au>Gupta, Anushri</au><au>Haas, Roland</au><au>Habib, Sarah</au><au>Jennings, Elise</au><au>Johnson, Margaret W G</au><au>Katsavounidis, Erik</au><au>Katz, Daniel S</au><au>Khan, Asad</au><au>Kindratenko, Volodymyr</au><au>Kramer, William T C</au><au>Liu, Xin</au><au>Mahabal, Ashish</au><au>Marka, Zsuzsa</au><au>McHenry, Kenton</au><au>Miller, Jonah</au><au>Moreno, Claudia</au><au>Neubauer, Mark</au><au>Oberlin, Steve</au><au>Olivas, Alexander R</au><au>Petravick, Donald</au><au>Rebei, Adam</au><au>Rosofsky, Shawn</au><au>Ruiz, Milton</au><au>Saxton, Aaron</au><au>Schutz, Bernard F</au><au>Schwing, Alex</au><au>Seidel, Ed</au><au>Shapiro, Stuart L</au><au>Shen, Hongyu</au><au>Shen, Yue</au><au>Singer, Leo</au><au>Sipőcz, Brigitta M</au><au>Sun, Lunan</au><au>Towns, John</au><au>Tsokaros, Antonios</au><au>Wei, Wei</au><au>Wells, Jack</au><au>Williams, Timothy J</au><au>Xiong, Jinjun</au><au>Zhao, Zhizhen</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Enabling real-time multi-messenger astrophysics discoveries with deep learning</atitle><jtitle>arXiv.org</jtitle><date>2019-11-26</date><risdate>2019</risdate><eissn>2331-8422</eissn><abstract>Multi-messenger astrophysics is a fast-growing, interdisciplinary field that combines data, which vary in volume and speed of data processing, from many different instruments that probe the Universe using different cosmic messengers: electromagnetic waves, cosmic rays, gravitational waves and neutrinos. In this Expert Recommendation, we review the key challenges of real-time observations of gravitational wave sources and their electromagnetic and astroparticle counterparts, and make a number of recommendations to maximize their potential for scientific discovery. These recommendations refer to the design of scalable and computationally efficient machine learning algorithms; the cyber-infrastructure to numerically simulate astrophysical sources, and to process and interpret multi-messenger astrophysics data; the management of gravitational wave detections to trigger real-time alerts for electromagnetic and astroparticle follow-ups; a vision to harness future developments of machine learning and cyber-infrastructure resources to cope with the big-data requirements; and the need to build a community of experts to realize the goals of multi-messenger astrophysics.</abstract><cop>Ithaca</cop><pub>Cornell University Library, arXiv.org</pub><doi>10.48550/arxiv.1911.11779</doi><oa>free_for_read</oa></addata></record>
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subjects Algorithms
Artificial intelligence
Astrophysics
Computer Science - Learning
Computer simulation
Cosmic rays
Data management
Data processing
Deep learning
Electromagnetic radiation
Gravitation
Gravitational waves
Infrastructure
Machine learning
Neutrinos
Physics - General Relativity and Quantum Cosmology
Physics - High Energy Astrophysical Phenomena
Physics - Instrumentation and Methods for Astrophysics
Real time
title Enabling real-time multi-messenger astrophysics discoveries with deep learning
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