The MLOps Podcast

En podkast av Dean Pleban @ DagsHub

Kategorier:

32 Episoder

  1. 🌲 Machine Learning in Agriculture: Scaling AI for Crop Management with Dror Haor

    Publisert: 15.9.2024
  2. 📊 Data-Driven Decisions: ML in E-Commerce Forecasting with Federico Bacci

    Publisert: 15.8.2024
  3. 🚗 Driving Innovation: Machine Learning in Auto Claims Processing

    Publisert: 15.7.2024
  4. 🚑 ML in the Emergency Room with Ljubomir Buturovic

    Publisert: 10.6.2024
  5. 🌊 AI-Native with Idan Gazit – The future of AI products and interfaces + Getting AI to production

    Publisert: 16.5.2024
  6. 🍪 Machine Learning in the cookie-less era with Uri Goren

    Publisert: 18.4.2024
  7. 🛰️ Modern & Realistic MLOps with Han-chung Lee

    Publisert: 18.3.2024
  8. 🩻 AI in Medical Devices & Medicine with Mila Orlovsky

    Publisert: 15.2.2024
  9. ⏪ Making LLMs Backwards Compatible with Jason Liu

    Publisert: 15.1.2024
  10. 🔴 Live MLOps Podcast – Building, Deploying and Monitoring Large Language Models with Jinen Setpal

    Publisert: 6.9.2023
  11. Live MLOps Podcast Episode!

    Publisert: 28.8.2023
  12. ⛹️‍♂️ Large Scale Video ML at WSC Sports with Yuval Gabay

    Publisert: 7.8.2023
  13. 🤖 GPTs & Large Language Models in production with Hamel Husain

    Publisert: 20.6.2023
  14. 🫣 Is Data Science a dying job? with Almog Baku

    Publisert: 23.5.2023
  15. 🏃‍♀️Moving Fast and Breaking Data with Shreya Shankar

    Publisert: 30.3.2023
  16. 🚴‍♀️ Quick & Dirty Machine Learning with Noa Weiss

    Publisert: 21.2.2023
  17. ✍️ Building ML Teams and Platforms with Assaf Pinhasi

    Publisert: 23.1.2023
  18. 🎨 Stable Diffusion and generative models with David Marx

    Publisert: 19.1.2023
  19. 🔴🟢🟣Julia Language in Production with Logan Kilpatrick

    Publisert: 21.11.2022
  20. 🛠 Building tools for MLOps with Guy Smoilovsky

    Publisert: 18.10.2022

1 / 2

A podcast from DagsHub about bringing machine learning into the real world. Each episode features a conversation with top data science and machine learning practitioners, who'll share their thoughts, best practices, and tips for promoting machine learning to production

Visit the podcast's native language site