Workshop
Deep Learning for Physical Sciences
Atilim Gunes Baydin 路 Mr. Prabhat 路 Kyle Cranmer 路 Frank Wood
Fri 8 Dec, 8 a.m. PST
Physical sciences span problems and challenges at all scales in the universe: from finding exoplanets and asteroids in trillions of sky-survey pixels, to automatic tracking of extreme weather phenomena in climate datasets, to detecting anomalies in event streams from the Large Hadron Collider at CERN. Tackling a number of associated data-intensive tasks, including, but not limited to, regression, classification, clustering, dimensionality reduction, likelihood-free inference, generative models, and experimental design are critical for furthering scientific discovery. The Deep Learning for Physical Sciences (DLPS) workshop invites researchers to contribute papers that demonstrate progress in the application of machine and deep learning techniques to real-world problems in physical sciences (including the fields and subfields of astronomy, chemistry, Earth science, and physics).
We will discuss research questions, practical implementation challenges, performance / scaling, and unique aspects of processing and analyzing scientific datasets. The target audience comprises members of the machine learning community who are interested in scientific applications and researchers in the physical sciences. By bringing together these two communities, we expect to strengthen dialogue, introduce exciting new open problems to the wider NIPS community, and stimulate production of new approaches to solving science problems. Invited talks from leading individuals from both communities will cover the state-of-the-art techniques and set the stage for this workshop.
Schedule
Fri 8:50 a.m. - 9:00 a.m.
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Introduction and opening remarks
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Talk
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Fri 9:00 a.m. - 9:40 a.m.
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Invited talk 1: Deep recurrent inverse modeling for radio astronomy and fast MRI imaging
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Talk
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Max Welling 馃敆 |
Fri 9:40 a.m. - 10:00 a.m.
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Contributed talk 1: Neural Message Passing for Jet Physics
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Talk
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Isaac Henrion 馃敆 |
Fri 10:00 a.m. - 10:20 a.m.
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Contributed talk 2: A Foray into Using Neural Network Control Policies For Rapid Switching Between Beam Parameters in a Free Electron Laser
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Talk
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Auralee Edelen 馃敆 |
Fri 10:20 a.m. - 11:00 a.m.
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Poster session 1 and coffee break
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Poster Session
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25 presentersTobias Hagge 路 Sean McGregor 路 Markus Stoye 路 Trang Thi Minh Pham 路 Seungkyun Hong 路 Amir Farbin 路 Sungyong Seo 路 Susana Zoghbi 路 Daniel George 路 Stanislav Fort 路 Steven Farrell 路 Arthur Pajot 路 Kyle Pearson 路 Adam McCarthy 路 Cecile Germain 路 Dustin Anderson 路 Mario Lezcano Casado 路 Mayur Mudigonda 路 Benjamin Nachman 路 Luke de Oliveira 路 Li Jing 路 Lingge Li 路 Soo Kyung Kim 路 Timothy Gebhard 路 Tom Zahavy |
Fri 11:00 a.m. - 11:40 a.m.
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Invited talk 2: Adversarial Games for Particle Physics
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Talk
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Gilles Louppe 馃敆 |
Fri 11:40 a.m. - 12:00 p.m.
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Contributed talk 3: Implicit Causal Models for Genome-wide Association Studies
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Talk
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Dustin Tran 馃敆 |
Fri 12:00 p.m. - 12:20 p.m.
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Contributed talk 4: Graphite: Iterative Generative Modeling of Graphs
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Talk
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Aditya Grover 馃敆 |
Fri 12:20 p.m. - 12:25 p.m.
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Sponsor presentation: Intel Nervana
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Talk
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Hanlin Tang 馃敆 |
Fri 12:25 p.m. - 2:00 p.m.
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Lunch break
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Fri 2:00 p.m. - 2:40 p.m.
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Invited talk 3: Learning priors, likelihoods, or posteriors
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Talk
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Iain Murray 馃敆 |
Fri 2:40 p.m. - 3:00 p.m.
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Contributed talk 5: Deep Learning for Real-time Gravitational Wave Detection and Parameter Estimation with Real LIGO Data
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Talk
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Daniel George 馃敆 |
Fri 3:00 p.m. - 4:00 p.m.
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Poster session 2 and coffee break
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Poster Session
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25 presentersSean McGregor 路 Tobias Hagge 路 Markus Stoye 路 Trang Thi Minh Pham 路 Seungkyun Hong 路 Amir Farbin 路 Sungyong Seo 路 Susana Zoghbi 路 Daniel George 路 Stanislav Fort 路 Steven Farrell 路 Arthur Pajot 路 Kyle Pearson 路 Adam McCarthy 路 Cecile Germain 路 Dustin Anderson 路 Mario Lezcano Casado 路 Mayur Mudigonda 路 Benjamin Nachman 路 Luke de Oliveira 路 Li Jing 路 Lingge Li 路 Soo Kyung Kim 路 Timothy Gebhard 路 Tom Zahavy |
Fri 4:00 p.m. - 4:40 p.m.
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Invited talk 4: A machine learning perspective on the many-body problem in classical and quantum physics
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Talk
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Juan Carrasquilla 馃敆 |
Fri 4:40 p.m. - 5:20 p.m.
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Invited talk 5: Quantum Machine Learning
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Talk
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Anatole von Lilienfeld 馃敆 |
Fri 5:20 p.m. - 5:40 p.m.
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Contributed talk 6: Physics-guided Learning of Neural Networks: An Application in Lake Temperature Modeling
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Talk
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Anuj Karpatne 馃敆 |
Fri 5:40 p.m. - 6:40 p.m.
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Panel session
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Panel Discussion
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Iain Murray 路 Max Welling 路 Juan Carrasquilla 路 Anatole von Lilienfeld 路 Gilles Louppe 路 Kyle Cranmer 馃敆 |
Fri 6:40 p.m. - 6:45 p.m.
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Closing remarks
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Talk
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馃敆 |