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Universal and efficient graph neural networks with dynamic attention for machine learning interatomic potentials

About

The core of molecular dynamics simulation fundamentally lies in the interatomic potential. Traditional empirical potentials lack accuracy, while first-principles methods are computationally prohibitive. Machine learning interatomic potentials (MLIPs) promise near-quantum accuracy at linear cost, but existing models still face challenges in efficiency and stability. We presents Machine Learning Advances Neural Network (MLANet), an efficient and robust graph neural network framework. MLANet introduces a dual-path dynamic attention mechanism for geometry-aware message passing and a multi-perspective pooling strategy to construct comprehensive system representations. This design enables highly accurate modeling of atomic environments while achieving exceptional computational efficiency, making high-fidelity simulations more accessible. Tested across a wide range of datasets spanning diverse systems, including organic molecules (e.g., QM7, MD17), periodic inorganic materials (e.g., Li-containing crystals), two-dimensional materials (e.g., bilayer graphene, black phosphorus), surface catalytic reactions (e.g., formate decomposition), and charged systems, MLANet maintains competitive prediction accuracy while its computational cost is markedly lower than mainstream equivariant models, and it enables stable long-time molecular dynamics simulations. MLANet provides an efficient and practical tool for large-scale, high-accuracy atomic simulations.

Shuyu Bi, Zhede Zhao, Qiangchao Sun, Tao Hu, Xionggang Lu, Hongwei Cheng• 2026

Related benchmarks

TaskDatasetResultRank
Atomization energy predictionQM7 (10-fold cross validation)
MAE3.07
27
Energy PredictionBilayer graphene
Sliding Energy RMSE (meV/atom)0.5
10
Energy Predictionwater dataset (test)
Energy RMSE (meV/atom)0.47
9
Energy and force predictionWater (test)
Force RMSE (meV/Å)60
9
Molecular property predictionQM9S
Dipole Moment MAE (D/Å)0.0188
7
Energy and force predictionFormate Decomposition
Force MAE (meV/Å)44.9
6
Force PredictionNa8/9Cl8+ (test)
Force RMSE (eV/Å)0.012
4
Force PredictionC10H2 C10H3+ (test)
Force RMSE (eV/Å)0.074
4
Force PredictionAg3+/- (test)
Force RMSE (eV/Å)0.024
3
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