
Facebook, too, has done quite a bit of work in the area and today, the company is open-sourcing some of its projects around the Torch7 computing framework for machine learning. Torch has long been at the center of many machine learning and artificial intelligence projects in academic labs and at companies like Google, Twitter and Intel.
![torch[1]](https://tctechcrunch2011.files.wordpress.com/2015/01/torch1.png?w=398&h=239)
In addition, Facebook is launching a number of additional tools that bring more speed to other parts of Torch, as well. Some of these are modest, but many of Facebook’s projects results in 3 to 10x improvements over the default tools.
What matters, though, is that deep learning techniques (or at least their results) are slowly starting to show up in a lot of the software we use every day.
Google+ Photos, for example, uses it to allow you to find images in your photo library. And at CES last week, Nvidia spent most of its keynote discussing how it uses deep learning to classify objects that a camera on a car may see in order to further its research in autonomous driving.