Towards Data Science

A podcast by The TDS team

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131 Episodes

  1. 131. Jeremie Harris - TDS Podcast Finale: The future of AI, and the risks that come with it

    Published: 10/19/2022
  2. 130. Edouard Harris - New Research: Advanced AI may tend to seek power *by default*

    Published: 10/12/2022
  3. 129. Amber Teng - Building apps with a new generation of language models

    Published: 10/5/2022
  4. 128. David Hirko - AI observability and data as a cybersecurity weakness

    Published: 9/28/2022
  5. 127. Matthew Stewart - The emerging world of ML sensors

    Published: 9/21/2022
  6. 126. JR King - Does the brain run on deep learning?

    Published: 9/14/2022
  7. 125. Ryan Fedasiuk - Can the U.S. and China collaborate on AI safety?

    Published: 9/7/2022
  8. 124. Alex Watson - Synthetic data could change everything

    Published: 5/18/2022
  9. 123. Ala Shaabana and Jacob Steeves - AI on the blockchain (it actually might just make sense)

    Published: 5/12/2022
  10. 122. Sadie St. Lawrence - Trends in data science

    Published: 5/4/2022
  11. 121. Alexei Baevski - data2vec and the future of multimodal learning

    Published: 4/27/2022
  12. 120. Liam Fedus and Barrett Zoph - AI scaling with mixture of expert models

    Published: 4/20/2022
  13. 119. Jaime Sevilla - Projecting AI progress from compute trends

    Published: 4/13/2022
  14. 118. Angela Fan - Generating Wikipedia articles with AI

    Published: 4/6/2022
  15. 117. Beena Ammanath - Defining trustworthy AI

    Published: 3/30/2022
  16. 116. Katya Sedova - AI-powered disinformation, present and future

    Published: 3/23/2022
  17. 115. Irina Rish - Out-of-distribution generalization

    Published: 3/9/2022
  18. 114. Sam Bowman - Are we *under-hyping* AI?

    Published: 3/2/2022
  19. 113. Yaron Singer - Catching edge cases in AI

    Published: 2/9/2022
  20. 112. Tali Raveh - AI, single cell genomics, and the new era of computational biology

    Published: 2/2/2022

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Note: The TDS podcast's current run has ended. Researchers and business leaders at the forefront of the field unpack the most pressing questions around data science and AI.