Systems and Software for Machine Learning at Scale with Jeff Dean
EPISODE 124
|
APRIL
2,
2018
Watch
Follow
Share
About this Episode
In this episode I'm joined by Jeff Dean, Google Senior Fellow and head of the company's deep learning research team Google Brain, who I had a chance to sit down with last week at the Googleplex in Mountain View.
As you'll hear, I was very excited for this interview, because so many of Jeff's contributions since he started at Google in ‘99 have touched my life and work. In our conversation, Jeff and I dig into a bunch of the core machine learning innovations we've seen from Google. Of course we discuss TensorFlow, and its origins and evolution at Google. We also explore AI acceleration hardware, including TPU v1, v2 and future directions from Google and the broader market in this area. We talk through the machine learning toolchain, including some things that Googlers might take for granted, and where the recently announced Cloud AutoML fits in. We also discuss Google's process for mapping problems across a variety of domains to deep learning, and much, much more. This was definitely one of my favorite conversations, and I'm pumped to be able to share it with you.
About the Guest
Jeff Dean
Resources
- Sanjay Ghemawat
- ISCA Paper - In-Datacenter Performance Analysis of a Tensor
- Cloud AutoML
- Optimization and other update rules - Deep Learning with Theano
- Advanced Guide to Inception v3 on Cloud TPU
- National Academy of Engineers - 14 Grand Challenges for Engineering in the 21st Century
- Ryan Poplin - Predicting Cardiovascular Risk Factors from Eye Images
- Check out @ShirinGlander's Great TWIML Sketches!
- TWIML Presents: Series page
