Topological Data Analysis with Gunnar Carlsson

800 800 The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)

The show you’re about to hear is part of a series of shows recorded in San Francisco at the Artificial Intelligence Conference. My guest for this show is Gunnar Carlsson, professor emeritus of mathematics at Stanford University and president and co-founder of machine learning startup Ayasdi.

Gunnar joined me after his session at the conference on “Topological data analysis as a framework for machine intelligence.” In our talk, we take a super deep dive on the mathematical underpinnings of TDA and its practical application through software. Nerd alert!

TWIML Online Meetup

The details for the upcoming TWIML Online Meetup have been set!! On Oct 18 at 3pm PT, We will discuss the paper Visual Attribute Transfer through Deep Image Analogy, by Jing Liao and others from Microsoft Research. The discussion will be led by Duncan Stothers. (Thanks Duncan!) For anyone who’s has missed the last two meetups, or for those that haven’t yet joined the group, please visit There you’ll find Video Recaps of the last 2 meetups, along with a link to the paper we’ll be reviewing next month. If you’d like to present your favorite paper, we’d love to have you do it. Just shoot us an email at to get the ball rolling.

Thanks to our Sponsor

Intel Nervana LogoA big thank you to Intel Nervana for their continued support of the podcast! At the AI Conference, Intel Nervana announced the DevCloud, a cloud-hosted hardware and software platform for learning, sandboxing and accelerating the development of AI solutions. The Intel Nervana DevCloud will be available to 200,000 developers, researchers, academics and startups via the Intel Nervana AI Academy this month. For more information on the DevCloud or the AI Academy, visit Be sure to let them know via Twitter @IntelNervana how much you appreciate their support of the podcast.

About Gunnar

Mentioned in the Interview

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