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Offered By: IBMSkillsNetwork

Building a Physics-Informed Neural Network for realworld app

In the age of AI, neural networks solve complex problems, such as Computer Vision (CV) and Large Language Model (LLM), but don't forget the real world—physical principles. Integrating these physics principles into machine learning ensures precise understanding. What happens when we bring the power of networks together with the timeless principles of physics? The result is Physics-Informed Neural Networks (PINNs), an innovative approach that allows us to solve challenging differential equations with the precision of physics and the flexibility of machine learning.

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Guided Project

Data Science

4.8
(9 Reviews)

At a Glance

In the age of AI, neural networks solve complex problems, such as Computer Vision (CV) and Large Language Model (LLM), but don't forget the real world—physical principles. Integrating these physics principles into machine learning ensures precise understanding. What happens when we bring the power of networks together with the timeless principles of physics? The result is Physics-Informed Neural Networks (PINNs), an innovative approach that allows us to solve challenging differential equations with the precision of physics and the flexibility of machine learning.

A look at the project ahead

In today’s rapidly evolving technological landscape, one of the most exciting frontiers is the intersection of artificial intelligence and the physical sciences. Physics-Informed Neural Networks (PINNs) represent a groundbreaking advancement in this area, where machine learning models are not just trained on data but are also informed by the physical principles that govern our world. This synergy between data and physics allows AI to develop a more precise understanding of complex systems, from fluid dynamics to material deformation, making it a powerful tool for scientists, engineers, and AI practitioners alike.

In this project, you will embark on a journey to harness the power of PINNs, a method that not only accelerates the learning process but also enhances the accuracy and reliability of AI predictions by embedding physical laws directly into the model. By the end of this project, you’ll have a solid grasp of how to implement these advanced models and apply them to solve real-world problems more efficiently and effectively.

By completing this project, you will not only gain a deeper understanding of how AI can be informed by the physical world, but you will also acquire the skills to implement these powerful models in your own work, opening new possibilities in scientific research, engineering, and beyond.

What you'll learn

  • Understand the fundamental concepts behind Physics-Informed Neural Networks and how they integrate physical principles into machine learning models.
  • Gain hands-on experience in building and training PINNs using PyTorch, and apply them to solve differential equations that model real-world phenomena.

What you'll need

Before you begin, it's important to ensure that you have the necessary tools and skills to get the most out of this project. Here’s what you’ll need:
  • Prerequisites: A basic understanding of neural networks and machine learning principles. Familiarity with differential equations and physical laws will be beneficial.
  • Technology requirements: This project will be conducted using Python, with a focus on the PyTorch library. We recommend using the IBM Skills Network Labs environment, which comes pre-installed with the necessary tools, including Docker, to simplify your setup process. This platform is optimized for use with the latest versions of Chrome, Edge, Firefox, Internet Explorer, or Safari.

Estimated Effort

45 Minutes

Level

Beginner

Industries

Information Technology

Skills You Will Learn

Machine Learning

Language

English

Course Code

GPXX0PQIEN

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