Build Accelerated, Differentiable Computational Physics Code for AI with NVIDIA Warp
Mirrored from NVIDIA Developer Blog for archival readability. Support the source by reading on the original site.
Computer-aided engineering (CAE) is shifting from human-driven workflows toward AI-driven ones, including physics foundation models that generalize across...
Computer-aided engineering (CAE) is shifting from human-driven workflows toward AI-driven ones, including physics foundation models that generalize across geometries and operating conditions. Unlike LLMs, these models depend on large volumes of high-fidelity, physics-compliant data. Recent scaling-law work on computational fluid dynamics (CFD) surrogates indicates that simulation-generated…
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