60 Episoder

  1. In the age of AI, fundamental value resides in data

    Publisert: 3.1.2019
  2. Trends in data, machine learning, and AI

    Publisert: 20.12.2018
  3. Tools for generating deep neural networks with efficient network architectures

    Publisert: 6.12.2018
  4. Building tools for enterprise data science

    Publisert: 21.11.2018
  5. Lessons learned while helping enterprises adopt machine learning

    Publisert: 8.11.2018
  6. Machine learning on encrypted data

    Publisert: 25.10.2018
  7. How social science research can inform the design of AI systems

    Publisert: 11.10.2018
  8. Why it’s hard to design fair machine learning models

    Publisert: 27.9.2018
  9. Using machine learning to improve dialog flow in conversational applications

    Publisert: 13.9.2018
  10. Building accessible tools for large-scale computation and machine learning

    Publisert: 30.8.2018
  11. Simplifying machine learning lifecycle management

    Publisert: 16.8.2018
  12. How privacy-preserving techniques can lead to more robust machine learning models

    Publisert: 2.8.2018
  13. Specialized hardware for deep learning will unleash innovation

    Publisert: 19.7.2018
  14. Data regulations and privacy discussions are still in the early stages

    Publisert: 5.7.2018
  15. Managing risk in machine learning models

    Publisert: 21.6.2018
  16. The real value of data requires a holistic view of the end-to-end data pipeline

    Publisert: 7.6.2018
  17. The evolution of data science, data engineering, and AI

    Publisert: 24.5.2018
  18. Companies in China are moving quickly to embrace AI technologies

    Publisert: 10.5.2018
  19. Teaching and implementing data science and AI in the enterprise

    Publisert: 26.4.2018
  20. The importance of transparency and user control in machine learning

    Publisert: 12.4.2018

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The O'Reilly Data Show Podcast explores the opportunities and techniques driving big data, data science, and AI.

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