Episode

How machines learn right from wrong

Podcast
Chat GPT Podcast
Published
Jun 3, 2026
Duration seconds
1279
Processing state
not_requested
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https://www.spreaker.com/episode/how-machines-learn-right-from-wrong--72256772
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/v1/public/podcasts/chat-gpt-podcast-5983061/episodes/how-machines-learn-right-from-wrong
Markdown
/podcast/chat-gpt-podcast-5983061/how-machines-learn-right-from-wrong.md

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Summary

Today we examine content based on a user's name or dialect. To combat these issues, experts propose integrating clinical expertise and dynamic rationality parameters into the training process to filter out unreliable data. Ultimately, the texts warn that without robust safeguards, AI may reinforce existing social inequalities and cognitive fallacies. Careful monitoring and intervention remain essential as these tools are increasingly used for high-stakes tasks like medical diagnosis and employment evaluations.