Description
PINNs with NVIDIA Modulus Course. This is an introductory course that will prepare you to work with physics-based neural networks (PINN) using the NVIDIA Modulus. We will cover the fundamentals of solving partial differential equations (PDEs) using physics-based neural networks (PINNs) from the basics through MARCH to solving PINNs using the Nvidia Modulus. What skills you will learn: In this course, you will learn the following skills:
- Understand the mathematics behind solving partial differential equations (PDEs) with pins.
- Write and build machine learning algorithms to solve pins using Pytorch.
- Write and build machine learning algorithms to solve pins using Nvidia modules.
- Results after processing
- Use open source libraries.
- Define your own PDEs to solve them or use built-in equations (e.g. the NS equations in Nvidia Modulus).
We will cover:
- Pytorch basics.
- How to deploy Nvidia Modulus on your PC GPU and in Google Collab.
- Physically informed neural networks (PINN) solution for the 1D Burger equation using Pytorch.
- Physics Informed Neural Networks (PINN) solution for the 1D wave equation using the Nvidia module.
- A Physically Informed Neural Networks (PINN) solution to the cavity flow problem using the Nvidia module.
- A physically informed neural network (PINN) solution for the 2D heatsink flow problem using the Nvidia module.
If you don’t have any experience in machine learning or computational engineering, that’s not a problem. This course is comprehensive and concise and covers the fundamentals of machine learning/Physically Based Neural Networks (PINN). Let’s learn the Nvidia module together.
What you will learn in the PINNs with NVIDIA Modulus course
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Create a pin-based PDE solver.
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Understand the theory behind pin PDE solvers.
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Creating the model with the NVIDIA module
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Deploy the NVIDIA module with GoogleColab and your own NVIDIA GPU
This course is suitable for people who
- Engineers and programmers who want to learn PINs
- Learn NVIDIA Modulus
PINNs using NVIDIA Modulus course specifications
- Editor: Udemy
- Teacher: Dr. Mohammad Samara
- Training level: beginner to advanced
- Training duration: 9 hours and 7 minutes
- Number of courses: 49
Course headings
PINNs Using NVIDIA Modulus Course Prerequisites
- Upper secondary mathematics
- Basic Python knowledge
Course pictures
Sample video of the course
installation Guide
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Subtitles: None
Quality: 720p
Download link
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Size
11.8GB