JB55Matthews/PinnDE
PinnDE: A Python library for solving differential equations with physics informed neural networks and deep operator networks
PinnDE helps engineers, scientists, and students solve complex ordinary and partial differential equations, which are common in fields like physics and engineering, using AI. You input the equations and boundary conditions, and it provides numerical solutions. This tool is designed for those who need to understand and apply these advanced computational methods without deep programming expertise.
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Use this if you need to solve differential equations and want a user-friendly way to apply physics-informed neural networks or deep operator networks, especially for educational purposes or collaborative projects with non-experts.
Not ideal if you require the most powerful and complex state-of-the-art computational methods, as this library prioritizes ease of use over cutting-edge complexity.
Stars
29
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2
Language
Python
License
LGPL-2.1
Category
Last pushed
Aug 21, 2025
Commits (30d)
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