EPISODE · Nov 13, 2025 · 6 MIN
AI Physics Deep Dive: NVIDIA Industrial Engineering
from Steven AI Talk · host Steven
The sources contain excerpts from an NVIDIA Developer YouTube live stream focused on AI physics and industrial engineering, particularly within computational fluid dynamics (CFD) and finite element analysis (FEA). Distinguished engineer Neil Ashton and AI physics expert Rishi discuss how AI surrogate models are used to create real-time digital twins, accelerating design analysis for sectors like automotive and aerospace by quickly predicting changes in complex physical systems. The speakers compare traditional solver methods (which are expensive and slow) with modern data-driven and physics-driven AI models (such as MeshGraphNets and neural operators), explaining how these machine learning approaches provide faster, physically consistent predictions. The discussion highlights NVIDIA's Physics Nemo framework, an AI physics framework built on PyTorch, which provides tools, utilities, and model architectures for developing, training, and deploying these sophisticated AI models, including running hybrid training that incorporates both data and physics-based constraints like the Navier-Stokes equations.“Steven AI Talk” — delivering the clearest conversations on cutting-edge AI, technology, innovation, business, and entrepreneurship with AI summarizations on various high quality source contents.🔗 Support the Creator & Access All Linkshttps://linktr.ee/learnbydoingwithsteven
What this episode covers
The sources contain excerpts from an NVIDIA Developer YouTube live stream focused on AI physics and industrial engineering, particularly within computational fluid dynamics (CFD) and finite element analysis (FEA). Distinguished engineer Neil Ashton and AI physics expert Rishi discuss how AI surrogate models are used to create real-time digital twins, accelerating design analysis for sectors like automotive and aerospace by quickly predicting changes in complex physical systems. The speakers compare traditional solver methods (which are expensive and slow) with modern data-driven and physics-driven AI models (such as MeshGraphNets and neural operators), explaining how these machine learning approaches provide faster, physically consistent predictions. The discussion highlights NVIDIA's Physics Nemo framework, an AI physics framework built on PyTorch, which provides tools, utilities, and model architectures for developing, training, and deploying these sophisticated AI models, including running hybrid training that incorporates both data and physics-based constraints like the Navier-Stokes equations.“Steven AI Talk” — delivering the clearest conversations on cutting-edge AI, technology, innovation, business, and entrepreneurship with AI summarizations on various high quality source contents.🔗 Support the Creator & Access All Linkshttps://linktr.ee/learnbydoingwithsteven
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AI Physics Deep Dive: NVIDIA Industrial Engineering
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