āļø Enjoy the podcast? Leave a 5-star review here :)
š About The Episode
Physics-Informed Neural Networks (PINNs) integrate known physical laws into neural network learning, particularly for solving differential equations. They embed these laws into the network's loss function, guiding the learning process beyond just data fitting.
This integration helps the network predict solutions that are not only data-driven but also align with physical principles, making PINNs especially useful in fields like fluid dynamics and heat transfer. By blending data with established physics, PINNs offer more accurate and robust predictions, especially in data-scarce scenarios.
š Connect with Conor
š» Full tutorial: Physics-Informed Neural Networks (PIN...
āļø Leave a Review
If you enjoy listening to the podcast, please do leave a 5-star review on iTunes / Apple Podcasts ā ping me on my socials and tell me who you want to see next!
You can also Tweet @EngineeredM and tell me parts of the podcast you enjoyed the most. Feel free to share the podcasts in your network ā¤ļø