Bridging the machine learning deployment gap in gravitational wave physics
ORAL
Abstract
Deep learning algorithms have achieved state-of-the-art performance across a wide array of settings in recent years, and with this success has come an abundance of papers applying these methods to gravitational wave physics problems. Despite this, there are still comparatively few deep learning models planned for online deployment during the O4 data collection run of the LIGO-Virgo-KAGRA collaboration. One reason for this disparity is a lack of standardized software tooling adequate to quickly implement and iterate upon novel ideas and validate them on sufficiently large volumes of data to achieve confidence in production performance. In this work, we describe a suite of libraries intended to bridge this gap, ml4gw and hermes, and outline how their use in two specific applications has led to increases in efficiency and model robustness.
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Presenters
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Alec M Gunny
Massachusetts Institute of Technology
Authors
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Alec M Gunny
Massachusetts Institute of Technology
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Ethan J Marx
Massachusetts Institute of Technology
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William Benoit
University of Minnesota
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Deep Chatterjee
Massachusetts Institute of Technology, MIT
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Michael W Coughlin
University of Minnesota
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Erik Katsavounidis
Massachusetts Institute of Technology, MIT, LIGO Lab, MIT
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Muhammed Saleem
University of Minnesota
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Eric Moreno
Massachusetts Institute of Technology, MIT
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Philip C Harris
Massachusetts Institute of Technology, MIT
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Dylan S Rankin
Massachusetts Institute of Technology, University of Pennsylvania, MIT
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Ryan J Raikman
Carnegie Mellon University