Practical AI: Machine Learning, Data Science

A podcast by Changelog Media

Categories:

275 Episodes

  1. 🌍 AI in Africa - Makerere AI Lab

    Published: 19/10/2021
  2. Federated Learning 📱

    Published: 12/10/2021
  3. The mathematics of machine learning

    Published: 5/10/2021
  4. Balancing human intelligence with AI

    Published: 28/09/2021
  5. From notebooks to Netflix scale with Metaflow

    Published: 21/09/2021
  6. Trends in data labeling

    Published: 14/09/2021
  7. Stellar inference speed via AutoNAS

    Published: 7/09/2021
  8. Anaconda + Pyston and more

    Published: 1/09/2021
  9. Exploring a new AI lexicon

    Published: 24/08/2021
  10. NLP to help pregnant mothers in Kenya

    Published: 17/08/2021
  11. SLICED - will you make the (data science) cut?

    Published: 10/08/2021
  12. AI is creating never before heard sounds! 🎵

    Published: 3/08/2021
  13. Building a data team

    Published: 27/07/2021
  14. Towards stability and robustness

    Published: 20/07/2021
  15. From symbols to AI pair programmers 💻

    Published: 13/07/2021
  16. Vector databases for machine learning

    Published: 22/06/2021
  17. Multi-GPU training is hard (without PyTorch Lightning)

    Published: 15/06/2021
  18. Learning to learn deep learning 📖

    Published: 8/06/2021
  19. The fastest way to build ML-powered apps

    Published: 1/06/2021
  20. Elixir meets machine learning

    Published: 26/05/2021

7 / 14

Making artificial intelligence practical, productive & accessible to everyone. Practical AI is a show in which technology professionals, business people, students, enthusiasts, and expert guests engage in lively discussions about Artificial Intelligence and related topics (Machine Learning, Deep Learning, Neural Networks, GANs, MLOps, AIOps, LLMs & more). The focus is on productive implementations and real-world scenarios that are accessible to everyone. If you want to keep up with the latest advances in AI, while keeping one foot in the real world, then this is the show for you!

Visit the podcast's native language site