Workshop
From Molecules to Materials: ICLR 2023 Workshop on Machine learning for materials (ML4Materials)
Tian Xie · Xiang Fu · Simon Batzner · Hanchen Wang · Adji Dieng · Ekin Cubuk · Elsa Olivetti · Kristin Persson · Tommi Jaakkola · Max Welling
Virtual
Thu 4 May, 6 a.m. PDT
The discovery of new materials drives the development of key technologies like solar cells, batteries, carbon capture, and catalysis. While there has been growing interest in materials discovery with machine learning, the specific modeling challenges posed by materials have been largely unknown to the broader community. Compared with drug-like molecules and proteins, the modeling of materials has the following two major challenges. First, materials-specific inductive biases are needed to develop successful ML models. For example, materials often don’t have a handy representation like 2D graphs for molecules or sequences for proteins. Second, there exists a broad range of interesting materials classes, such as inorganic crystals, polymers, catalytic surfaces, nanoporous materials, and more. Each class of materials demands a different approach to represent their structures, and new tasks/data sets to enable rapid ML developments.This workshop aims at bringing together the community to discuss and tackle these two types of challenges. In the first session, we will feature speakers to discuss the latest progress in developing ML models for materials focusing on algorithmic challenges, covering topics like representation learning, generative models, pre-training, etc. In particular, what can we learn from the more developed field of ML for molecules and 3D geometry and where might challenges differ and opportunities for novel developments lie? In the second session, we will feature speakers to discuss unique challenges for each sub-field of materials design and how to define meaningful tasks that are relevant to the domain, covering areas including inorganic materials, polymers, nanoporous materials, catalysis, etc. More specifically, what are the key materials design problems that ML can help tackle?
Schedule
Thu 6:00 a.m. - 6:10 a.m.
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Openning
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Openning
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Thu 6:10 a.m. - 6:40 a.m.
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Invited talk
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Invited talk
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SlidesLive Video |
Boris Kozinsky 🔗 |
Thu 6:40 a.m. - 7:10 a.m.
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Machine learning approaches to improve the exchange and correlation functional in Density functional Theory
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Invited talk
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SlidesLive Video |
Marivi Fernandez-Serra 🔗 |
Thu 7:10 a.m. - 7:30 a.m.
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Break
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Thu 7:30 a.m. - 8:00 a.m.
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Harnessing the properties of equivariant neural networks to understand and design materials
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Invited talk
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SlidesLive Video |
Tess Smidt 🔗 |
Thu 8:00 a.m. - 8:30 a.m.
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Machine learning-guided directed evolution of functional proteins
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Invited talk
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SlidesLive Video |
Andrew Ferguson 🔗 |
Thu 8:30 a.m. - 8:40 a.m.
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JAX-XC: Exchange Correlation Functionals Library in Jax
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Spotlight
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SlidesLive Video |
Kunhao Zheng · Min Lin 🔗 |
Thu 8:40 a.m. - 8:50 a.m.
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Crystal Structure Prediction by Joint Equivariant Diffusion on Lattices and Fractional Coordinates
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Spotlight
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SlidesLive Video |
Rui Jiao · Wenbing Huang · Peijia Lin · Jiaqi Han · Pin Chen · Yutong Lu · Yang Liu 🔗 |
Thu 8:50 a.m. - 9:00 a.m.
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Cross-Quality Few-Shot Transfer for Alloy Yield Strength Prediction: A New Material Science Benchmark and An Integrated Optimization Framework
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Spotlight
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SlidesLive Video |
Xuxi Chen · Tianlong Chen · Everardo Olivares · Kate Elder · Scott McCall · Aurelien Perron · Joseph McKeown · Bhavya Kailkhura · Zhangyang Wang · Brian Gallagher 🔗 |
Thu 9:00 a.m. - 10:00 a.m.
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Poster Session 1
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Poster Session
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Thu 10:00 a.m. - 10:30 a.m.
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Break
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Thu 10:30 a.m. - 11:00 a.m.
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Machine learning to generate molecules and materials and their synthesis predictions
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Invited talk
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SlidesLive Video |
Yousung Jung 🔗 |
Thu 11:00 a.m. - 11:30 a.m.
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Invited talk
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Invited talk
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SlidesLive Video |
Rafael Gomez-Bombarelli 🔗 |
Thu 11:30 a.m. - 11:50 a.m.
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Break
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Thu 11:50 a.m. - 12:20 p.m.
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A potential of everything
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Invited talk
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SlidesLive Video |
Shyue Ping Ong 🔗 |
Thu 12:20 p.m. - 12:50 p.m.
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Open datasets/models in catalysis: recent progress their use to massively accelerate adsorption energy workflows
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Invited talk
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SlidesLive Video |
Zachary Ulissi 🔗 |
Thu 12:50 p.m. - 1:00 p.m.
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Break
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Thu 1:00 p.m. - 2:00 p.m.
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Panel Discussion
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Panel Discussion
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SlidesLive Video |
Boris Kozinsky · Tess Smidt · Rafael Gomez-Bombarelli · Marivi Fernandez-Serra · Zachary Ulissi · Shyue Ping Ong · Yousung Jung · Andrew Ferguson 🔗 |
Thu 2:00 p.m. - 2:55 p.m.
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Poster Session 2
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Poster Session
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Thu 2:55 p.m. - 3:00 p.m.
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Closing remarks
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Closing remarks
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Constructing and Compressing Global Moment Descriptors from Local Atomic Environments ( Poster ) > link | Vahe Gharakhanyan · Max Aalto · Aminah Alsoulah · Nongnuch Artrith · Alexander Urban 🔗 |
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SimuStruct: Simulated Structural Plate with Holes Dataset with Machine Learning Applications ( Poster ) > link | João Alves Ribeiro · Bruno Alves Ribeiro 🔗 |
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Expanding the Extrapolation Limits of Neural Network Force Fields using Physics-Based Data Augmentation ( Poster ) > link | Yuliia Orlova · Gavin Ridley · Frederick Zhao · Rafael Gomez-Bombarelli 🔗 |
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Forward and Inverse design of high $T_C$ superconductors with DFT and deep learning ( Poster ) > link | Daniel Wines · Kevin Garrity · Tian Xie · Kamal Choudhary 🔗 |
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MatKB: Semantic Search for Polycrystalline Materials Synthesis Procedures ( Poster ) > link | Xianjun Yang · Stephen Wilson · Linda Petzold 🔗 |
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A framework for fully autonomous design of materials via multiobjective optimization and active learning: challenges and next steps ( Poster ) > link | Tyler Chang · Jakob Elias · Stefan Wild · Santanu Chaudhuri · Joseph Libera 🔗 |
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Behavioral Cloning for Crystal Design ( Poster ) > link | Prashant Govindarajan · Santiago Miret · Jarrid Rector-Brooks · mariano Phielipp · Janarthanan Rajendran · Sarath Chandar 🔗 |
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Designing Nonlinear Photonic Crystals for High-Dimensional Quantum State Engineering ( Poster ) > link |
11 presentersEyal Rozenberg · Aviv Karnieli · Ofir Yesharim · Joshua Foley-Comer · Sivan Trajtenberg-Mills · Sarika Mishra · Shashi Prabhakar · Ravindra Singh · Daniel Freedman · Alex Bronstein · Ady Arie |
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Controlling Dynamic Spatial Light Modulators using Equivariant Neural Networks ( Poster ) > link | Sumukh Vasisht Shankar · Darrel D'Souza · Jonathan Singer · Robin Walters 🔗 |
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In-situ Anomaly Detection in Additive Manufacturing with Graph Neural Networks ( Poster ) > link | Sebastian Larsen · Paul Hooper 🔗 |
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Machine Learning for XRD Spectra Interpretation in High-Throughput Material Science ( Poster ) > link | Hilary Egan · Davi Febba · Andriy Zakutayev 🔗 |
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Matbench Discovery - Can machine learning identify stable crystals? ( Poster ) > link | Janosh Riebesell · Rhys Goodall · Anubhav Jain · Kristin Persson · Alpha Lee 🔗 |
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Graph-informed simulation-based inference for models of active matter ( Poster ) > link | Namid Stillman · Silke Henkes · Roberto Mayor · Gilles Louppe 🔗 |
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Predicting Density of States via Multi-modal Transformer ( Poster ) > link | Namkyeong Lee · Heewoong Noh · Sungwon Kim · Dongmin Hyun · Gyoung S. Na · Chanyoung Park 🔗 |
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Latent Conservative Objective Models for Offline Data-Driven Crystal Structure Prediction ( Poster ) > link | Han Qi · Stefano Rando · Xinyang Geng · Iku Ohama · Aviral Kumar · Sergey Levine 🔗 |
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Compositional and elemental descriptors for perovskite materials ( Poster ) > link | Jiri Hostas · Maicon Lourenço · John Garcia · Hatef Shahmohamadi · Alain Tchagang · Karthik Shankar · Venkataraman Thangadurai · Dennis Salahub 🔗 |
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Cooperative data-driven modeling: continual learning of different material behavior ( Poster ) > link | Aleksandr Dekhovich · Ozgur Turan · Jiaxiang Yi · Miguel A. Bessa 🔗 |
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3D Graph Conditional Distributions via Semi-Equivariant Continuous Normalizing Flows ( Poster ) > link | Eyal Rozenberg · Ehud Rivlin · Daniel Freedman 🔗 |
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CrysGNN : Distilling pre-trained knowledge to enhance property prediction for crystalline materials. ( Poster ) > link | KISHALAY DAS · Bidisha Samanta · Pawan Goyal · Seung-Cheol Lee · Satadeep Bhattacharjee · Niloy Ganguly 🔗 |
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Learning single-step retrosynthesis with pseudo-reactions ( Poster ) > link | Shuan Chen · Yousung Jung 🔗 |
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Fragment-based Multi-view Molecular Contrastive Learning ( Poster ) > link | Seojin Kim · Jaehyun Nam · Junsu Kim · Hankook Lee · Sungsoo Ahn · Jinwoo Shin 🔗 |
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Transfer Learning with Diffusion Model for Polymer Property Prediction ( Poster ) > link | Gang Liu · Meng Jiang 🔗 |
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Machine learning-assisted close-set X-ray diffraction phase identification of transition metals ( Poster ) > link | Maksim Zhdanov · Andrey Zhdanov 🔗 |
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JAX-XC: Exchange Correlation Functionals Library in Jax ( Poster ) > link | Kunhao Zheng · Min Lin 🔗 |
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Cross-Quality Few-Shot Transfer for Alloy Yield Strength Prediction: A New Material Science Benchmark and An Integrated Optimization Framework ( Poster ) > link | Xuxi Chen · Tianlong Chen · Everardo Olivares · Kate Elder · Scott McCall · Aurelien Perron · Joseph McKeown · Bhavya Kailkhura · Zhangyang Wang · Brian Gallagher 🔗 |
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Crystal Structure Prediction by Joint Equivariant Diffusion on Lattices and Fractional Coordinates ( Poster ) > link | Rui Jiao · Wenbing Huang · Peijia Lin · Jiaqi Han · Pin Chen · Yutong Lu · Yang Liu 🔗 |