Artwork

Inhoud geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.
Player FM - Podcast-app
Ga offline met de app Player FM !

Dog in the Machine (Ep 118)

46:03
 
Delen
 

Manage episode 408155708 series 1941323
Inhoud geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.

How should biologists deal with the massive amounts of population genetic data that are now routinely available? Will AIs make biologists obsolete?

In this episode, we talk with Andy Kern, an Associate Professor of Biology at the University of Oregon. Andy has spent much of his career applying machine learning methods in population genetics. We talk with him about the fundamental questions that population genetics aims to answer and about older theoretical and empirical approaches We then turn to the promise of machine learning methods, which are increasingly being used to estimate population genetic structure, patterns of migration, and the geographic origins of trafficked samples. These methods are powerful because they can leverage high dimensional genomic data. Andy also talks about the implications of AI and machine learning for the future of biology research.

Cover Art by Keating Shahmehri. Find a transcript of this episode at our website.

--- Support this podcast: https://podcasters.spotify.com/pod/show/bigbiology/support
  continue reading

157 afleveringen

Artwork

Dog in the Machine (Ep 118)

Big Biology

442 subscribers

published

iconDelen
 
Manage episode 408155708 series 1941323
Inhoud geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Art Woods, Cam Ghalambor, and Marty Martin, Art Woods, Cam Ghalambor, and Marty Martin of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.

How should biologists deal with the massive amounts of population genetic data that are now routinely available? Will AIs make biologists obsolete?

In this episode, we talk with Andy Kern, an Associate Professor of Biology at the University of Oregon. Andy has spent much of his career applying machine learning methods in population genetics. We talk with him about the fundamental questions that population genetics aims to answer and about older theoretical and empirical approaches We then turn to the promise of machine learning methods, which are increasingly being used to estimate population genetic structure, patterns of migration, and the geographic origins of trafficked samples. These methods are powerful because they can leverage high dimensional genomic data. Andy also talks about the implications of AI and machine learning for the future of biology research.

Cover Art by Keating Shahmehri. Find a transcript of this episode at our website.

--- Support this podcast: https://podcasters.spotify.com/pod/show/bigbiology/support
  continue reading

157 afleveringen

Alle afleveringen

×
 
Loading …

Welkom op Player FM!

Player FM scant het web op podcasts van hoge kwaliteit waarvan u nu kunt genieten. Het is de beste podcast-app en werkt op Android, iPhone en internet. Aanmelden om abonnementen op verschillende apparaten te synchroniseren.

 

Korte handleiding