Podcast Special Episode 2 – The Future of AI with Dr. Ed Felten

Special Episode 2: Unveiling the Future of AI with Dr. Ed Felten in our Podcast

Introduction:

In this special episode of the Becoming a Data Scientist Podcast, we bring you an interview with Dr. Ed Felten, the Deputy U.S. Chief Technology Officer, where we discuss the future of artificial intelligence. This interview, conducted at The White House, offers valuable insights into the advancements and implications of AI. You can stream or download the audio through the provided link, or listen to it on popular podcast platforms like iTunes and Stitcher. Don’t miss out on this opportunity to gain a deeper understanding of AI’s potential impact. Explore the show notes for additional resources and follow Dr. Felten on Twitter for the latest updates.

Full Article: Special Episode 2: Unveiling the Future of AI with Dr. Ed Felten in our Podcast

The Future of Artificial Intelligence: Interview with Dr. Ed Felten

In this special episode of the Becoming a Data Scientist Podcast, Dr. Ed Felten, Deputy U.S. Chief Technology Officer, discusses the future of artificial intelligence. The interview takes place at the White House, offering unique insights into this fascinating topic.

Podcast Availability

You can listen to the full audio of the interview by streaming or downloading it from this link. To download, simply right-click on the player and choose “Save As”. The podcast is also available on popular podcast platforms such as iTunes and Stitcher.

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Show Notes

During the interview, Dr. Felten references several resources that augment the conversation. These resources include:

– The White House Names Dr. Ed Felten as Deputy U.S. Chief Technology Officer (Source: The White House)
– Edward W. Felten at Princeton University (Source: Princeton University)
– Dr. Edward Felten on Wikipedia (Source: Wikipedia)
– White House Office of Science and Technology Policy (OSTP) (Source: The White House)
– The Administration’s Report on the Future of Artificial Intelligence (Source: The White House, October 2016)
– Artificial Intelligence, Automation, and the Economy (Source: The White House, December 2016)
– Freedom to Tinker blog (Source: Freedom to Tinker)

Other Podcasts in the Government Data Series

This interview is part of a government data series exploring various aspects of data science and technology. Other episodes in the series include:

– Partially Derivative White House Special – with DJ Patil, US Chief Data Scientist
– Not So Standard Deviations – Standards are Like Toothbrushes – with Daniel Morgan, Chief Data Officer for the U.S. Department of Transportation and Terah Lyons, Policy Advisor to the Chief Technology Officer of the U.S.
– Linear Digressions – Data + Healthcare + Government = The Future of Medicine – with Precision Medicine Initiative researcher Matt Might

More episodes in this series are on their way, so stay tuned for more insightful discussions.

Support the Becoming a Data Scientist Podcast

If you enjoy the podcast, consider supporting it through the Becoming a Data Scientist Patreon Campaign. Your support will help provide more valuable content and interviews in the future.

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Conclusion

This special episode of the Becoming a Data Scientist Podcast features an enlightening interview with Dr. Ed Felten, Deputy U.S. Chief Technology Officer. The discussion delves into the future of artificial intelligence, offering valuable insights from a notable expert in the field. Don’t miss the opportunity to listen to this thought-provoking interview and gain a deeper understanding of the exciting world of AI.

Summary: Special Episode 2: Unveiling the Future of AI with Dr. Ed Felten in our Podcast

In this special episode of the Becoming a Data Scientist Podcast, Dr. Ed Felten, Deputy U.S. Chief Technology Officer, discusses the Future of Artificial Intelligence (AI) from The White House. The podcast can be streamed or downloaded at a provided link, or listened to on popular podcasting platforms like iTunes and Stitcher. The show notes include relevant links to resources like The White House’s report on the future of AI and Dr. Felten’s Twitter profile. This episode is part of a series on government data, with more episodes to come. Visit the Patreon campaign to support the Becoming a Data Scientist podcast.

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