How to use NVIDIA PhysicsNeMo Framework to Develop Physics ML Models

, Sr. Software Engineer, AI-HPC, NVIDIA
高度评价
High-fidelity simulations in science and engineering are computationally expensive and time-prohibitive for quick iterative use cases, from design analysis to optimization. NVIDIA PhysicsNeMo, the physics machine learning platform, turbocharges such use cases by building physics-based deep learning models that are 100,000 times faster than traditional methods and offer high-fidelity simulation results. In this hands-on workshop, you'll learn the basics of physics-informed deep learning and data-driven deep learning applied to problems having roots in physics, and understand the unique techniques that PhysicsNeMo brings that help you apply deep learning to modeling multi-physics simulations systems.
Prerequisite(s):

Basic familiarity with Computational methods and Partial Differential Equations (PDEs).
Basic familiarity with Python.
Basic familiarity Neural Networks Neural networks.


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活动: GTC 24
日期: March 2024
话题: 气候 / 天气 / 海洋建模
行业: HPC / 科学计算
级别: 中级技术
NVIDIA 技术: PhysicsNeMo,Omniverse
语言: 英语
所在地: