All accepted work 🌟 denotes spotlight Work
Learning the Language of NMR: Structure Elucidation from NMR spectra using Transformer Models
Search strategies for asynchronous parallel self-driving laboratories with pending points
Data Distillation for Neural Network Potentials toward Foundational Dataset
🌟Capturing Formulation Design of Battery Electrolytes with Chemical Large Language Model
Connectivity Optimized Nested Graph Networks for Crystal Structures
Beyond Chemical Language: A Multimodal Approach to Enhance Molecular Property Prediction
🌟Graph-to-String Variational Autoencoder for Synthetic Polymer Design
Haldane Bundles: A Dataset for Learning to Predict the Chern Number of Line Bundles on the Torus
Impacts of Data and Models on Unsupervised Pre-training for Molecular Property Prediction
MHG-GNN: Combination of Molecular Hypergraph Grammar with Graph Neural Network
🌟Enhancing Extrapolation in Materials Science through Contrastive Learning of Chemical Compositions
Automatic Generation of Mechanistic Pathways of Organic Reactions with Dual Templates
CURATOR: Autonomous Batch Active-Learning Workflow for Catalysts
🌟Discovery of Novel Reticular Materials for Carbon Dioxide Capture using GFlowNets
Data Efficient Training for Materials Property Prediction Using Active Learning Querying
🌟Learning Silicon Dopant Transitions in Graphene using Scanning Transmission Electron Microscopy
Demonstrating ChemGymRL: An Interactive Framework for Reinforcement Learning for Digital Chemistry
Accurate Prediction of Experimental Band Gaps from Large Language Model-Based Data Extraction
🌟Fine-Tuned Language Models Generate Stable Inorganic Materials as Text
Searching for High-Value Molecules Using Reinforcement Learning and Transformers
Distributed Reinforcement Learning for Molecular Design: Antioxidant case
Phonon predictions with E(3)-equivariant graph neural networks
Understanding Experimental Data by Identifying Symmetries with Deep Learning
Extremely Noisy 4D-TEM Strain Mapping Using Cycle Consistent Spatial Transforming Autoencoders
MatKG-2: Unveiling precise material science ontology through autonomous committees of LLMs
Active Causal Machine Learning for Molecular Property Prediction
🌟HoneyBee: Progressive Instruction Finetuning of Large Language Models for Materials Science
🌟MatSciML: A Broad, Multi-Task Benchmark for Solid-State Materials Modeling
🌟EGraFFBench: Evaluation of Equivariant Graph Neural Network Force Fields for Atomistic Simulations
Learning Conditional Policies for Crystal Design Using Offline Reinforcement Learning
Unveiling the Secrets of $^1$H-NMR Spectroscopy: A Novel Approach Utilizing Attention Mechanisms
Latent Conservative Objective Models for Data-Driven Crystal Structure Prediction
Eco-Comp: Towards Responsible Computing in Materials Science
Multi-objective Evolutionary Design of Microstructures using Diffusion Autoencoders
AdsorbRL: Deep Reinforcement Learning for Inverse Catalyst Design
Active learning for excited states dynamics simulations to discover molecular degradation pathways
🌟ExPT: Synthetic Pretraining for Few-Shot Experimental Design
MOFDiff: Coarse-grained Diffusion for Metal-Organic Framework Design
Deep inverse design of hydrophobic patches on DNA origami for mesoscale assembly of superlattices
Out of Domain Stress Prediction on a Dataset of Simulated 3D Polycrystalline Microstructures
🌟Crystal-GFlowNet: sampling materials with desirable properties and constraints
Self-supervised Crack Detection in X-ray Computed Tomography Data of Additive Manufacturing Parts
🌟Accelerated Sampling of Rare Events using a Neural Network Bias Potential
Reconstructing Materials Tetrahedron: Challenges in Materials Information Extraction
Towards equilibrium molecular conformation generation with GFlowNets
Accelerated Modelling of Interfaces for Electronic Devices using Graph Neural Networks
Tree-based Quantile Active Learning for automated discovery of MOFs
MTENCODER: A Multi-task Pretrained Transformer Encoder for Materials Representation Learning
CoNO: Complex Neural Operator for Continuous Dynamical Systems
CoDBench: A Critical Evaluation of Data-driven Models for Continuous Dynamical Systems
Inverse-design of organometallic catalysts with guided equivariant diffusion
PIHLoRA: Physics-informed hypernetworks for low-ranked adaptation
Retrieval of synthesis parameters of polymer nanocomposites using LLMs
HEPOM: A predictive framework for accelerated Hydrolysis Energy Predictions of Organic Molecules
Predicting and Interpreting Energy Barriers of Metallic Glasses with Graph Neural Networks