Privacy-Preserving Decentralized Data Science with Andrew Trask - TWiML Talk #241
Today we’re joined by Andrew Trask, PhD student at the University of Oxford and Leader of the OpenMined Project.
OpenMined is an open-source community focused on researching, developing, and promoting tools for secure, privacy-preserving, value-aligned artificial intelligence. Andrew and I caught up back at NeurIPS to dig into why OpenMined is important and explore some of the basic research and technologies supporting Private, Decentralized Data Science. We touch on ideas such as Differential Privacy, and Secure Multi-Party Computation, and how these ideas come into play in, for example, federated learning.
Thanks to PegaSystems for sponsoring today's show! I'd like to invite you to join me at PegaWorld, the company’s annual digital transformation conference, which takes place this June in Las Vegas. To learn more about the conference or to register, visit pegaworld.com and use TWIML19 in the promo code field when you get there for $200 off.
The complete show notes for this episode can be found at https://twimlai.com/talk/241.
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