A foundational neural operator that continuously learns without forgetting
Tapas Tripura, Souvik Chakraborty

TL;DR
This paper introduces the Neural Combinatorial Wavelet Neural Operator (NCWNO), a foundational model for scientific computing that continuously learns multiple PDE solution operators without forgetting, enabling rapid adaptation and transfer across diverse physical systems.
Contribution
The NCWNO is the first foundational operator learning model that is robust against catastrophic forgetting and facilitates knowledge transfer across dissimilar tasks in scientific computing.
Findings
Outperforms task-specific models with minimal tuning.
Learns multiple PDE solution operators simultaneously.
Adapts quickly to new PDEs with minimal fine-tuning.
Abstract
Machine learning has witnessed substantial growth, leading to the development of advanced artificial intelligence models crafted to address a wide range of real-world challenges spanning various domains, such as computer vision, natural language processing, and scientific computing. Nevertheless, the creation of custom models for each new task remains a resource-intensive undertaking, demanding considerable computational time and memory resources. In this study, we introduce the concept of the Neural Combinatorial Wavelet Neural Operator (NCWNO) as a foundational model for scientific computing. This model is specifically designed to excel in learning from a diverse spectrum of physics and continuously adapt to the solution operators associated with parametric partial differential equations (PDEs). The NCWNO leverages a gated structure that employs local wavelet experts to acquire shared…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training
