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Omar Sanseviero on Transformer Models and Democratizing Good ML Practices

Omar Sanseviero on Transformer Models and Democratizing Good ML Practices

FromThe InfoQ Podcast


Omar Sanseviero on Transformer Models and Democratizing Good ML Practices

FromThe InfoQ Podcast

ratings:
Length:
33 minutes
Released:
Jul 19, 2022
Format:
Podcast episode

Description

Live from the venue of the QCon London Conference we are talking with Omar Sanseviero about Hugging Face, the limitations and biases of machine learning models, the carbon emitted when training large scale machine learning models, and democratizing good ML practices.

Read a transcript of this interview: https://bit.ly/3yTMFjc

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Released:
Jul 19, 2022
Format:
Podcast episode

Titles in the series (75)

Software engineers, architects and team leads have found inspiration to drive change and innovation in their team by listening to the weekly InfoQ Podcast. They have received essential information that helped them validate their software development map. We have achieved that by interviewing some of the top CTOs, engineers and technology directors from companies like Uber, Netflix and more. Over 1,200,000 downloads in the last 3 years.