Data-Efficient Operator Learning via Unsupervised Pretraining and In-Context Learning
| Proceedings of the Conference on Neural Information Processing Systems (NeurIPS), 2024. |
Abstract
Recent years have witnessed the promise of coupling machine learning methods and
physical domain-specific insights for solving scientific problems based on partial
differential equations (PDEs). However, being data-intensive, these methods still
require a large amount of PDE data. This reintroduces the need for expensive numerical
PDE solutions, partially undermining the original goal of avoiding these expensive
simulations. In this work, seeking data efficiency, we design unsupervised pretraining
for PDE operator learning. To reduce the need for training data with heavy simulation
costs, we mine unlabeled PDE data without simulated solutions,and we pretrain neural
operators with physics-inspired reconstruction-based proxy tasks. To improve out-of-
distribution performance, we further assist neural operators in flexibly leveraging a
similarity-based method that learns in-context examples, without incurring extra
training costs or designs. Extensive empirical evaluations on a diverse set of PDEs
demonstrate that our method is highly data-efficient, more generalizable, and even
outperforms conventional vision-pretrained models. We provide our code at
https://github.com/delta-lab-ai/data efficient nopt.