Linear Digressions

En podcast av Ben Jaffe and Katie Malone

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289 Avsnitt

  1. Network effects re-release: when the power of a public health measure lies in widespread adoption

    Publicerades: 2020-03-15
  2. Causal inference when you can't experiment: difference-in-differences and synthetic controls

    Publicerades: 2020-03-09
  3. Better know a distribution: the Poisson distribution

    Publicerades: 2020-03-02
  4. The Lottery Ticket Hypothesis

    Publicerades: 2020-02-23
  5. Interesting technical issues prompted by GDPR and data privacy concerns

    Publicerades: 2020-02-17
  6. Thinking of data science initiatives as innovation initiatives

    Publicerades: 2020-02-10
  7. Building a curriculum for educating data scientists: Interview with Prof. Xiao-Li Meng

    Publicerades: 2020-02-02
  8. Running experiments when there are network effects

    Publicerades: 2020-01-27
  9. Zeroing in on what makes adversarial examples possible

    Publicerades: 2020-01-20
  10. Unsupervised Dimensionality Reduction: UMAP vs t-SNE

    Publicerades: 2020-01-13
  11. Data scientists: beware of simple metrics

    Publicerades: 2020-01-05
  12. Communicating data science, from academia to industry

    Publicerades: 2019-12-30
  13. Optimizing for the short-term vs. the long-term

    Publicerades: 2019-12-23
  14. Interview with Prof. Andrew Lo, on using data science to inform complex business decisions

    Publicerades: 2019-12-16
  15. Using machine learning to predict drug approvals

    Publicerades: 2019-12-08
  16. Facial recognition, society, and the law

    Publicerades: 2019-12-02
  17. Lessons learned from doing data science, at scale, in industry

    Publicerades: 2019-11-25
  18. Varsity A/B Testing

    Publicerades: 2019-11-18
  19. The Care and Feeding of Data Scientists: Growing Careers

    Publicerades: 2019-11-11
  20. The Care and Feeding of Data Scientists: Recruiting and Hiring Data Scientists

    Publicerades: 2019-11-04

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In each episode, your hosts explore machine learning and data science through interesting (and often very unusual) applications.

Visit the podcast's native language site