Predicting Nonlinear and Complex Systems with Machine Learning I
FOCUS · M09 · ID: 46518
Presentations
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A framework for seismic risk policy design and the assessment of avalanche-like event prediction in knitted fabric.
ORAL
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Presenters
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Adèle Douin
- CNRS
Authors
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Adèle Douin
- CNRS
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Frédéric Lechenault
- CNRS
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Jean-Phillipe Bruneton
- LIED
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Can graph neural network infer knot invariants?
ORAL
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Presenters
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Changyeob Baek
- Harvard University
Authors
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Changyeob Baek
- Harvard University
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Christopher H Rycroft
- Harvard University
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Building Deep Learning Architectures for Physics, Chemistry, and Biology with Geometric Algebra
ORAL
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Publication: https://arxiv.org/abs/2110.02393
Presenters
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Matthew P Spellings
- Vector Institute for Artificial Intellig
Authors
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Matthew P Spellings
- Vector Institute for Artificial Intellig
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Optimal control of quantum thermal machines using machine learning
ORAL
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Publication: https://arxiv.org/abs/2108.12441
Presenters
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Ilia Khait
- Univ of Toronto
Authors
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Ilia Khait
- Univ of Toronto
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Juan Carrasquilla
- Vector Institute for Artificial Intelligence
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Dvira Segal
- University of Toronto
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On Explaining the Surprising Success of Reservoir Computing Forecaster of Chaos? The Universal Machine Learning Dynamical System with Contrasts to VAR and DMD
ORAL · Invited
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Presenters
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Erik Bollt
- Clarkson University
Authors
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Erik Bollt
- Clarkson University
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Programming Memories and Computations in Recurrent Neural Networks Without Training
ORAL
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Publication: Kim, J. Z., Lu, Z., Nozari, E., Pappas, G. J., & Bassett, D. S. (2021). Teaching recurrent neural networks to infer global temporal structure from local examples. Nature Machine Intelligence, 3(4), 316-323.
Presenters
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Jason Z Kim
- University of Pennsylvania
Authors
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Jason Z Kim
- University of Pennsylvania
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Zhixin Lu
- University of Pennsylvania
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Danielle S Bassett
- University of Pennsylvania
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Learning the hidden rheology of complex fluids through MF-RhIGNet: Multi Fidelity Rheology-Informed Graph Neural Network
ORAL
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Publication: https://doi.org/10.1038/s41598-021-91518-3
https://doi.org/10.1122/8.0000138Presenters
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Mohammadamin Mahmoudabadbozchelou
- Northeastern University
Authors
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Mohammadamin Mahmoudabadbozchelou
- Northeastern University
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Krutarth M Kamani
- University of Illinois at Urbana-Champaign
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Simon A Rogers
- University of Illinois at Urbana-Champaign
- University of Illinois at Urbana-Champai
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Safa Jamali
- Northeastern University
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Rheology-informed neural networks for non-local granular flows
ORAL
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Presenters
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Milad Saadat
- Northeastern University
Authors
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Milad Saadat
- Northeastern University
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Mohammadamin Mahmoudabadbozchelou
- Northeastern University
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Safa Jamali
- Northeastern University
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Machine Learning for Robot Locomotion in Flowable Materials
ORAL
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Presenters
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Daniel Soto
- Georgia Institute of Technology
Authors
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Daniel Soto
- Georgia Institute of Technology
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Andras Karsai
- Georgia Institute of Technology
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Daniel I Goldman
- georgia tech
- Georgia Institute of Technology
- Georgia Institute of Technology, Atlalta, GA
- Georgia Tech
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Sehoon Ha
- Georgia Institute of Technology
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Tingnan Zhang
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Predicting a clog: finding signatures of clog formation in hopper flow using machine learning methods
ORAL
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Presenters
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Jesse M Hanlan
- University of Pennsylvania
Authors
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Jesse M Hanlan
- University of Pennsylvania
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Sam J Dillavou
- University of Pennsylvania
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Andrea J Liu
- University of Pennsylvania
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Douglas J Durian
- University of Pennsylvania
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Using analogical reasoning to build transferable models
ORAL
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Publication: C. Petrie, C. Anderson, C. Maekawa, T. Maekawa, and M. K. Transtrum (2021). The supremum principle selects simple, transferable models. Manuscript submitted for publication.
Presenters
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Cody L Petrie
- Brigham Young University
Authors
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Cody L Petrie
- Brigham Young University
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Christian N Anderson
- Brigham Young University
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Casie Maekawa
- Brigham Young University
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Travis Maekawa
- Brigham Young University
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Mark K Transtrum
- Brigham Young University
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Evidence for Griffiths Phase Criticality in Residual Neural Networks
ORAL
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Presenters
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Maxwell Anderson
- Cornell University
Authors
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Logan G Wright
- Cornell University
- Cornell University & NTT Research
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Maxwell Anderson
- Cornell University
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Peter L McMahon
- Cornell University
- Stanford Univ
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Capturing Strain Induced Orthotropy Through a Novel Free Energy Density Definition
ORAL
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Publication: Planned White Paper: Strain Induced Orthotropy, Thermomechanics, and Nonlinear Viscoelasticity: A Unified Theory
Presenters
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Alex G Arzoumanidis
- Psylotech, Inc.
Authors
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Alex G Arzoumanidis
- Psylotech, Inc.
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