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Diffusion Generative Inverse Design

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arxiv 2309.02040 v2 pith:XTD7Q32A submitted 2023-09-05 cs.LG cs.AI

Diffusion Generative Inverse Design

classification cs.LG cs.AI
keywords designinverseproblemssimulatordiffusiondynamicsfunctionmany
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Inverse design refers to the problem of optimizing the input of an objective function in order to enact a target outcome. For many real-world engineering problems, the objective function takes the form of a simulator that predicts how the system state will evolve over time, and the design challenge is to optimize the initial conditions that lead to a target outcome. Recent developments in learned simulation have shown that graph neural networks (GNNs) can be used for accurate, efficient, differentiable estimation of simulator dynamics, and support high-quality design optimization with gradient- or sampling-based optimization procedures. However, optimizing designs from scratch requires many expensive model queries, and these procedures exhibit basic failures on either non-convex or high-dimensional problems. In this work, we show how denoising diffusion models (DDMs) can be used to solve inverse design problems efficiently and propose a particle sampling algorithm for further improving their efficiency. We perform experiments on a number of fluid dynamics design challenges, and find that our approach substantially reduces the number of calls to the simulator compared to standard techniques.

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