Deep Neural Nets for Visual Recognition with Matt Zeiler - TWiML Talk #22

Published: May 5, 2017, 3:56 p.m.

b'Today we bring you our final interview from backstage at the NYU FutureLabs AI Summit. Our guest this week is Matt Zeiler. Matt graduated from the University of Toronto where he worked with deep learning researcher Geoffrey Hinton and went on to earn his PhD in machine learning at NYU, home of Yann Lecun. In 2013 Matt\\u2019s founded Clarifai, a startup whose cloud-based visual recognition system gives developers a way to integrate visual identification into their own products, and whose initial image classification algorithm achieved top 5 results in that year\\u2019s ImageNet competition. I caught up with Matt after his talk \\u201cFrom Research to the Real World\\u201d. Our conversation focused on the birth and growth of Clarifai, as well as the underlying deep neural network architectures that enable it. If you\\u2019ve been listening to the show for a while, you\\u2019ve heard me ask several guests how they go about evolving the architectures of their deep neural networks to enhance performance. Well, in this podcast Matt gives the most satisfying answer I\\u2019ve received to date by far. Check it out. I think you\\u2019ll enjoy it. The show notes can be found at twimlai.com/talk/22.'