Behavioural Economics Reading Group
Room B18.413 & online
We introduce Flowers, a neural architecture for learning PDE solution operators built entirely from multihead warps. Aside from pointwise channel mixing and a multiscale scaffold, Flowers use no Fourier multipliers, no dot-product attention, and no convolutional mixing. Each head predicts a displacement field and warps the mixed input features. Motivated by physics and computational efficiency, displacements are predicted pointwise, without any spatial aggregation, and nonlocality enters only through sparse sampling at source coordinates, one per head. Stacking warps in multiscale residual blocks yields Flowers, which implement adaptive, global interactions at linear cost. We theoretically motivate this design through three complementary lenses: flow maps for conservation laws, waves in inhomogeneous media, and a kinetic-theoretic continuum limit. Flowers achieve excellent performance on a broad suite of 2D and 3D time-dependent PDE benchmarks, particularly flows and waves. A compact 17M-parameter model consistently outperforms Fourier, convolution, and attention-based baselines of similar size, while a 150M-parameter variant improves over recent transformer-based foundation models with much more parameters, data, and training compute.
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Ivan Dokmanić is an Associate Professor in the Department of Mathematics and Computer Science at the University of Basel. He previously served as an Assistant Professor at the Coordinated Science Laboratory at the University of Illinois at Urbana-Champaign from 2016 to 2019, where he now holds an adjunct appointment. He earned an electrical engineering degree from the University of Zagreb in 2007 and a PhD in computer science from EPFL in 2015, followed by a postdoctoral position at Institut Langevin and École Normale Supérieure in Paris. His research interests lie at the intersection of inverse problems, machine learning, and signal processing. He has received several awards, including an ERC Starting Grant in 2019.