The American healthcare system is one of the most innovative in the world. But it’s also riddled with complex challenges, such as access to affordable medications, inefficiency and administrative burdens, and communication barriers between providers. There’s clearly a better way—and at Surescripts, we have a unique sightline into what that may be. In this series, host Melanie Marcus, Chief Marketing Officer of Surescripts, sits down with today’s most inspiring and innovative leaders in healt ...
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9. Fair synthetic data and ethical algorithms: the fairness conversation with Paul Tiwald, Head of Data Science at MOSTLY AI
MP3•Episode home
Manage episode 293972165 series 2895967
Content provided by Alexandra Ebert (MOSTLY AI). All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Alexandra Ebert (MOSTLY AI) or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.
Paul Tiwald has been part of the MOSTLY AI team since the beginning. He is the mastermind behind the team's research into fairness and the idea of fair synthetic data.
In this episode, you will hear about:
- what it's like to work in the field of artificial intelligence (spoiler: it's really fun!)
- how the idea of fair synthetic data came up
- how to create machine learning models that are private and fair by design
- why is it so challenging to remove bias from an algorithm
- what are proxy variables, and why are they dangerous
- what is the definition of fairness, and why do we need one in the first place
- how should companies start implementing fairness and ethical approaches into their AI development
- why it's impossible to fix bias without fair synthetic data and algorithmic fairness
52 episodes
9. Fair synthetic data and ethical algorithms: the fairness conversation with Paul Tiwald, Head of Data Science at MOSTLY AI
Data Democratization Podcast: Stories about AI, Data, and Privacy
MP3•Episode home
Manage episode 293972165 series 2895967
Content provided by Alexandra Ebert (MOSTLY AI). All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Alexandra Ebert (MOSTLY AI) or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.
Paul Tiwald has been part of the MOSTLY AI team since the beginning. He is the mastermind behind the team's research into fairness and the idea of fair synthetic data.
In this episode, you will hear about:
- what it's like to work in the field of artificial intelligence (spoiler: it's really fun!)
- how the idea of fair synthetic data came up
- how to create machine learning models that are private and fair by design
- why is it so challenging to remove bias from an algorithm
- what are proxy variables, and why are they dangerous
- what is the definition of fairness, and why do we need one in the first place
- how should companies start implementing fairness and ethical approaches into their AI development
- why it's impossible to fix bias without fair synthetic data and algorithmic fairness
52 episodes
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