All times are in EDT.
Time | Details | |
---|---|---|
Tuesday, April 26, 2022 | ||
10:30 - 10:45 a.m. | Welcome Remarks: Doug Kothe, Oak Ridge National Laboratory | |
10:45 - 11:45 a.m. | Panel Discussion: Digital Twins and Artificial Intelligence - Overview of Needs and Challenges Yousu Chen, Pacific Northwest National Laboratory Scott Collis, Argonne National Laboratory Matt Juckes, Aimsun, Inc. Tom Kurfess, Georgia Institute of Technology Matthew Nielson, GE Global Research | |
11:45 - 12:00 p.m. | Group Photo | |
12:00 - 1:00 p.m. | Working Lunch: Invited Speaker 1-1 - Saiph Savage, Northeastern University The Future of A.I. for Social Good | |
1:00 - 2:00 p.m. | Keynote Speaker: Vipin Kumar, University of Minnesota Knowledge-Guided Machine Learning: A New Framework for Accelerating Scientific Discovery | |
2:00 - 2:15 p.m. | Speaker 1-1: Farinaz Koushanfar, University of California San Diego Holistic Co-Design and Optimization of Robust AI | |
2:15 - 2:30 p.m. | Speaker 1-2: Guannan Zhang, Oak Ridge National Laboratory Level Set Learning with Pseudo-Reversible Neural Networks for Dimension Reduction in Building High-Dimensional Twins | |
2:30 - 2:45 p.m. | Speaker 1-3: Ravi Patel, Sandia National Laboratories Error-in-Variables Modeling for Operator Learning | |
2:45 - 3:15 p.m. | Break | |
3:15 - 4:15 p.m. | Flash Talks
| |
4:15 - 5:30 p.m. | Breakout Sessions | |
5:30 - 7:30 p.m. | Reception for onsite attendees | |
Wednesday, April 27, 2022 | ||
10:30 - 10:45 a.m. | Day 2 Welcome and Introduction: David Womble, Oak Ridge National Laboratory | |
10:45 - 11:15 a.m. | Invited Speaker 2-2: Christopher Rackauckas, Massachusetts Institute of Technology The Continuing Advances of Differentiable Simulation | |
11:15 - 11:45 a.m. | Invited Speaker: Stephan Mandt, University of California, Irvine Deep Latent Variable Models for Sequential Data | |
11:45 - 12:00 p.m. | Speaker 2-4: Nathaniel Trask, Sandia National Laboratories Physics-Informed Multimodal ML for High-Throughput Scientific Discovery | |
12:00 - 12:15 p.m. | Speaker 2-5: Mehmet Belviranli, Colorado School of Mines Energy-Aware Execution of Neural Network Interference on Multi-Accelerator Heterogeneous SoCs | |
12:15 - 1:15 p.m. | Working Lunch: David Stracuzzi, Sandia National Laboratories Trusted Artificial Intelligence Research Campaign | |
1:15 - 1:45 p.m. | Invited Speaker 2-4: Paris Perdikaris, University of Pennsylvania Data-efficient Operator Learning with Quantified Uncertainty | |
1:45 - 2:15 p.m. | Invited Speaker 2-5: Carianne Martinez, Sandia National Laboratories How to Train Your Digital Twin: Practical Deep Learning Approaches to Modeling As-built Components | |
2:15 - 2:30 p.m. | Speaker 2-6: Satish Karra, Los Alamos National Laboratory Constraining Machine Learning with Physics-Based Codes | |
2:30 - 2:45 p.m. | Speaker 2-7: Joseph Bakarji, University of Washington Constraining Machine Learning Algorithms with Fundamental Theorems to Discover Differential Equations from Data | |
2:45 - 3:15 p.m. | Break | |
3:15 - 4:15 p.m. | Flash Talks
| |
4:15 - 5:30 p.m. | Breakout Sessions | |
Thursday, April 28, 2022 | ||
10:30 - 10:45 a.m. | Day 3 Welcome and Introduction: Pradeep Ramuhalli, Oak Ridge National Laboratory | |
10:45 - 11:15 a.m. | Invited Speaker 3-6: Olga Fink, École Polytechnique Fédérale de Lausanne Hybrid Operational Digital Twins for Complex Systems: Fusing Physics-Based and Deep Learning Algorithms for Fault Diagnostics and Prognostics | |
11:15 - 11:45 a.m. | Invited Speaker 3-7: Mihai Anitescu, Argonne National Laboratory Scalable Physics-based Maximum Likelihood Estimation using Hierarchical Matrices | |
11:45 - 12:00 p.m. | Speaker 3-8: Kris Villez, Oak Ridge National Laboratory Shape-Constrained Function Fitting as a Way to Satisfy Prior Knowledge | |
12:00 - 12:15 p.m. | Speaker 3-9: Ben Hodges, University of Texas at Austin Challenges and Opportunities for AI with Physics-Based Models of River Networks and Urban Flooding | |
12:15 - 1:15 p.m. | Working Lunch: Ben Mintz, Oak Ridge National Laboratory An Interconnected Science Ecosystem for Smart Laboratories of the Future | |
1:15 - 1:30 p.m. | Speaker 3-10: Salvador Sosa Guitron, University of New Mexico AI-Assisted Design and Virtual Diagnostic for the Initial Conditions and Operation of a Storage-Ring-Based Quantum Information System | |
1:30 - 1:45 p.m. | Speaker 3-11: Qizhi He, University of Minnesota Enhanced Physics-Constrained Deep Neural Networks for the Redox Flow Battery Modeling | |
1:45 - 2:00 p.m. | Speaker 3-12: Po-Lun Ma, Pacific Northwest National Laboratory Better and Faster AI-Assisted Aerosol-Cloud Processes in Earth System Models | |
2:00 - 3:00 p.m. | Breakout Sessions | |
3:00 - 3:30 p.m. | Break | |
3:30 - 5:00 p.m. | Breakout Session Out-briefs | |
5:00 p.m. | Adjourn |