60 Episoder

  1. Machine learning for operational analytics and business intelligence

    Publisert: 10.10.2019
  2. Machine learning and analytics for time series data

    Publisert: 26.9.2019
  3. Understanding deep neural networks

    Publisert: 12.9.2019
  4. Becoming a machine learning practitioner

    Publisert: 29.8.2019
  5. Labeling, transforming, and structuring training data sets for machine learning

    Publisert: 15.8.2019
  6. Make data science more useful

    Publisert: 1.8.2019
  7. Acquiring and sharing high-quality data

    Publisert: 18.7.2019
  8. Tools for machine learning development

    Publisert: 3.7.2019
  9. Enabling end-to-end machine learning pipelines in real-world applications

    Publisert: 20.6.2019
  10. Bringing scalable real-time analytics to the enterprise

    Publisert: 9.6.2019
  11. Applications of data science and machine learning in financial services

    Publisert: 23.5.2019
  12. Real-time entity resolution made accessible

    Publisert: 9.5.2019
  13. Why companies are in need of data lineage solutions

    Publisert: 25.4.2019
  14. What data scientists and data engineers can do with current generation serverless technologies

    Publisert: 11.4.2019
  15. It’s time for data scientists to collaborate with researchers in other disciplines

    Publisert: 28.3.2019
  16. Algorithms are shaping our lives—here’s how we wrest back control

    Publisert: 14.3.2019
  17. Why your attention is like a piece of contested territory

    Publisert: 28.2.2019
  18. The technical, societal, and cultural challenges that come with the rise of fake media

    Publisert: 14.2.2019
  19. Using machine learning and analytics to attract and retain employees

    Publisert: 31.1.2019
  20. How machine learning impacts information security

    Publisert: 17.1.2019

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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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