Please login or sign up to post and edit reviews.
Catherine Yeo: Fairness in AI and Algorithms
Publisher |
Charlie You
Media Type |
audio
Categories Via RSS |
Business
Careers
Science
Technology
Publication Date |
Sep 23, 2020
Episode Duration |
01:03:27

Catherine Yeo is a Harvard undergrad studying Computer Science. She's previously worked for Apple, IBM, and MIT CSAIL in AI research and engineering roles. She writes about machine learning in Towards Data Science and in her new publication Fair Bytes.

Learn more about Catherine: http://catherineyeo.tech/

Read Fair Bytes: http://fairbytes.org/

Want to level-up your skills in machine learning and software engineering? Subscribe to our newsletter: https://mlengineered.ck.page/943aa3fd46

Take the Giving What We Can Pledge: https://www.givingwhatwecan.org/

Subscribe to ML Engineered: https://mlengineered.com/listen

Follow Charlie on Twitter: https://twitter.com/CharlieYouAI

Timestamps:

(02:48) How she was first exposed to CS and ML

(07:06) Teaching a high school class on AI fairness

(10:12) Definition of AI fairness

(16:14) Adverse outcomes if AI bias is never addressed

(22:50) How do "de-biasing" algorithms work?

(27:42) Bias in Natural Language Generation

(36:46) State of AI fairness research

(38:22) Interventions needed?

(43:18) What can individuals do to reduce model bias?

(45:28) Publishing Fair Bytes

(52:42) Rapid Fire Questions

Links:

Defining and Evaluating Fair Natural Language Generation

Man is to Computer Programmer as Woman is to Homemaker?

Gender Shades

GPT-3 Paper: Language Models are Few Shot Learners

How Biased is GPT-3?

Reading List for Fairness in AI Topics

Machine Learning’s Obsession with Kids’ TV Show Characters

Catherine Yeo discusses AI and algorithmic fairness—what it is, why it matters, and how we can work to reduce biases in our own models.

Catherine Yeo is a Harvard undergrad studying Computer Science. She's previously worked for Apple, IBM, and MIT CSAIL in AI research and engineering roles. She writes about machine learning in Towards Data Science and in her new publication Fair Bytes.

Learn more about Catherine: http://catherineyeo.tech/

Read Fair Bytes: http://fairbytes.org/

Want to level-up your skills in machine learning and software engineering? Subscribe to our newsletter: https://mlengineered.ck.page/943aa3fd46

Take the Giving What We Can Pledge: https://www.givingwhatwecan.org/

Subscribe to ML Engineered: https://mlengineered.com/listen

Follow Charlie on Twitter: https://twitter.com/CharlieYouAI

Timestamps:

(02:48) How she was first exposed to CS and ML

(07:06) Teaching a high school class on AI fairness

(10:12) Definition of AI fairness

(16:14) Adverse outcomes if AI bias is never addressed

(22:50) How do "de-biasing" algorithms work?

(27:42) Bias in Natural Language Generation

(36:46) State of AI fairness research

(38:22) Interventions needed?

(43:18) What can individuals do to reduce model bias?

(45:28) Publishing Fair Bytes

(52:42) Rapid Fire Questions

Links:

Defining and Evaluating Fair Natural Language Generation

Man is to Computer Programmer as Woman is to Homemaker?

Gender Shades

GPT-3 Paper: Language Models are Few Shot Learners

How Biased is GPT-3?

Reading List for Fairness in AI Topics

Machine Learning’s Obsession with Kids’ TV Show Characters

This episode currently has no reviews.

Submit Review
This episode could use a review!

This episode could use a review! Have anything to say about it? Share your thoughts using the button below.

Submit Review