Responsible and Explainable AI - Supreet Kaur

DataTalks.Club

We talked about:

  • Supreet’s background
  • Responsible AI
  • Example of explainable AI
  • Responsible AI vs explainable AI
  • Explainable AI tools and frameworks (glass box approach)
  • Checking for bias in data and handling personal data
  • Understanding whether your company needs certain type of data
  • Data quality checks and automation
  • Responsibility vs profitability
  • The human touch in AI
  • The trade-off between model complexity and explainability
  • Is completely automated AI out of the question?
  • Detecting model drift and overfitting
  • How Supreet became interested in explainable AI
  • Trustworthy AI
  • Reliability vs fairness
  • Bias indicators
  • The future of explainable AI
  • About DataBuzz
  • The diversity of data science roles
  • Ethics in data science
  • Conclusion

Links:

  •  LinkedIn: https://www.linkedin.com/in/supreet-kaur1995/
  • Databuzz page: https://www.linkedin.com/company/databuzz-club/
  • Medium Blog Page: https://medium.com/@supreetkaur_66831

ML Zoomcamp: https://github.com/alexeygrigorev/mlbookcamp-code/tree/master/course-zoomcamp

Join DataTalks.Club: https://datatalks.club/slack.html

Our events: https://datatalks.club/events.html

To listen to explicit episodes, sign in.

Stay up to date with this show

Sign in or sign up to follow shows, save episodes, and get the latest updates.

Select a country or region

Africa, Middle East, and India

Asia Pacific

Europe

Latin America and the Caribbean

The United States and Canada