Deep learning is the powerhouse behind the AI industry that enables AI to learn by itself, powered by GPUs that are designed to run machine learning algorithms at scale. However, the invention of deep learning was based on hardware that was not explicitly intended for this type of computing. Nvidia CEO Jensen Huang revealed on the Joe Rogan podcast that researchers who first developed deep learning did it all on a pair of 3GB GTX 580s in SLI way back in 2012.

Researchers at the University of Toronto invented deep learning to improve image detection in computer vision. In 2011, Alex Krizhevsky, Ilya Sutskever, and Geoffrey Hinton were researching better ways to build image recognition tools. At the time, there was no such thing as a neural network; instead, developers used manually designed algorithms to detect edges, corners, and textures for image recognition.

Joe Rogan Experience #2422 – Jensen Huang – YouTube
Joe Rogan Experience #2422 - Jensen Huang - YouTube

Watch On

DGX in 2016, which was shipped to Elon Musk, the Volta architecture with first-gen Tensor cores, and DLSS. If it were not for a pair of GTX 580s running AlexNet, Nvidia might not be the AI giant it is today.

Google Preferred Source

Follow Tom’s Hardware on Google News, or add us as a preferred source, to get our latest news, analysis, & reviews in your feeds.