60 Episodes

  1. What machine learning engineers need to know

    Published: 29/03/2018
  2. How to train and deploy deep learning at scale

    Published: 15/03/2018
  3. Using machine learning to monitor and optimize chatbots

    Published: 06/03/2018
  4. Unleashing the potential of reinforcement learning

    Published: 01/03/2018
  5. Graphs as the front end for machine learning

    Published: 15/02/2018
  6. Machine learning needs machine teaching

    Published: 01/02/2018
  7. How machine learning can be used to write more secure computer programs

    Published: 18/01/2018
  8. Bringing AI into the enterprise

    Published: 04/01/2018
  9. How machine learning will accelerate data management systems

    Published: 21/12/2017
  10. Machine learning at Spotify: You are what you stream

    Published: 07/12/2017
  11. The current state of Apache Kafka

    Published: 22/11/2017
  12. Building a natural language processing library for Apache Spark

    Published: 09/11/2017
  13. Machine intelligence for content distribution, logistics, smarter cities, and more

    Published: 26/10/2017
  14. Vehicle-to-vehicle communication networks can help fuel smart cities

    Published: 12/10/2017
  15. Transforming organizations through analytics centers of excellence

    Published: 28/09/2017
  16. The state of machine learning in Apache Spark

    Published: 14/09/2017
  17. Effective mechanisms for searching the space of machine learning algorithms

    Published: 31/08/2017
  18. How Ray makes continuous learning accessible and easy to scale

    Published: 17/08/2017
  19. Why AI and machine learning researchers are beginning to embrace PyTorch

    Published: 03/08/2017
  20. How big data and AI will reshape the automotive industry

    Published: 20/07/2017

3 / 3

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

Visit the podcast's native language site