Vivek Oommen
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RiemannONets: Interpretable neural operators for Riemann problems

Jan 1, 2024ยท
Ahmad Peyvan
,
Vivek Oommen
,
Ameya D. Jagtap
,
George Em Karniadakis
ยท 0 min read
Cite URL
Type
Journal article
Last updated on Jan 1, 2024

← Rethinking materials simulations: Blending direct numerical simulations with neural operators Jan 1, 2024
Real-time Inference and Extrapolation via a Diffusion-inspired Temporal Transformer Operator (DiTTO) Dec 8, 2023 →

ยฉ 2024 Me. This work is licensed under CC BY NC ND 4.0

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