openhackathons-org/End-to-End-AI-for-Science
This repository containts materials for End-to-End AI for Science
This bootcamp teaches researchers how to build robust scientific models by combining physics and AI. It guides you through using NVIDIA PhysicsNeMo to create models from physical equations or existing data, and you'll visualize the results of these simulations using ParaView. The intended users are researchers with a background in differential equations and Python.
234 stars.
Use this if you are a researcher who wants to apply advanced AI techniques to scientific simulations and weather forecasting, understanding both physics-driven and data-driven modeling approaches.
Not ideal if you lack a strong mathematical background in differential equations, Python proficiency, or familiarity with deep learning fundamentals.
Stars
234
Forks
79
Language
Jupyter Notebook
License
Apache-2.0
Category
Last pushed
Feb 26, 2026
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