LGNAOct 29, 2025

Mixture-of-Experts Operator Transformer for Large-Scale PDE Pre-Training

arXiv:2510.25803v26 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses performance and efficiency issues in solving PDEs with neural operators, offering a domain-specific improvement for computational science and engineering applications.

The paper tackles the challenges of data scarcity and high inference costs in pre-training neural operators for PDEs by proposing a Mixture-of-Experts Pre-training Operator Transformer (MoE-POT), which achieves up to a 40% reduction in zero-shot error with 90M parameters compared to existing models with 120M parameters.

Pre-training has proven effective in addressing data scarcity and performance limitations in solving PDE problems with neural operators. However, challenges remain due to the heterogeneity of PDE datasets in equation types, which leads to high errors in mixed training. Additionally, dense pre-training models that scale parameters by increasing network width or depth incur significant inference costs. To tackle these challenges, we propose a novel Mixture-of-Experts Pre-training Operator Transformer (MoE-POT), a sparse-activated architecture that scales parameters efficiently while controlling inference costs. Specifically, our model adopts a layer-wise router-gating network to dynamically select 4 routed experts from 16 expert networks during inference, enabling the model to focus on equation-specific features. Meanwhile, we also integrate 2 shared experts, aiming to capture common properties of PDE and reduce redundancy among routed experts. The final output is computed as the weighted average of the results from all activated experts. We pre-train models with parameters from 30M to 0.5B on 6 public PDE datasets. Our model with 90M activated parameters achieves up to a 40% reduction in zero-shot error compared with existing models with 120M activated parameters. Additionally, we conduct interpretability analysis, showing that dataset types can be inferred from router-gating network decisions, which validates the rationality and effectiveness of the MoE architecture.

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