Placeholder Image

Subtitles section Play video

  • ♪♪♪

  • Deep learning is this branch of machine learning

  • loosely inspired by how the brain works.

  • We have had experience building software for

  • deep learning over the last few years.

  • Although it was initially a research project, we've since

  • collaborated with about 50 different teams at Google

  • and deployed these systems in real products

  • across a really wide spectrum of areas.

  • Today, it's used heavily in our speech recognition systems,

  • in the new Google Photos product, in Gmail, in search.

  • Weve really taken all that experience and built that into TensorFlow

  • TensorFlow is this machine learning library that's used across Google

  • for applying deep learning to a lot of different areas.

  • Doing both artificial intelligence research

  • and deploying these production models.

  • They're really powerful at doing various kinds of perceptual

  • and language understanding tasks.

  • These models are able to actually make it so computers can actually see.

  • And are actually able to understand

  • what is in an image when you're looking at it.

  • What is in a short video clip.

  • And that enables all kinds of powerful product features.

  • Machine learning is the secret sauce for the products of tomorrow.

  • It no longer makes sense to have separate tools

  • for researchers in machine learning and people who are

  • developing real products.

  • There should really be one set of tools that researchers can use

  • to try out their crazy ideas and if those ideas work,

  • they can move them directly into products

  • without having to rewrite code.

  • On the research side, the goal is to

  • bring new understanding to existing problems,

  • advance the state of the art on existing problems,

  • understand new problems that were considered before.

  • Then on the engineering side, the goal is to take those insights

  • from the research community

  • and use them to enable products and product features

  • that wouldn't have been possible before.

  • Part of the point of TensorFlow is to allow collaboration

  • and communication between researchers.

  • It allows the researcher on one location to develop an idea and explore it.

  • And then just send code that someone else can use at the other side of the world.

  • We are making it a lot easier for humans

  • to be able to use the devices around them.

  • We think having this as an open source tool really helps that

  • and speeds that effort up.

  • So we expect developers to be able to do a lot more than they can do today.

  • We think we have the best machine learning infrastructure in the world

  • and we have the opportunity to share that.

  • And that's what we want to do here.

♪♪♪

Subtitles and vocabulary

Click the word to look it up Click the word to find further inforamtion about it