
Sign up to save your podcasts
Or


In this first of a two part series of episodes on federated learning, we dive into the evolving world of federated learning and distributed AI frameworks with Patrick Foley from Intel. We explore how frameworks like OpenFL and Flower are enabling secure, collaborative model training across silos, especially in sensitive fields like healthcare. The conversation touches on real-world use cases, the challenges of distributed ML/AI experiments, and why privacy-preserving techniques may become essential for deploying AI to production.
Featuring:
Links:
Sponsors:
By Practical AI LLC4.4
189189 ratings
In this first of a two part series of episodes on federated learning, we dive into the evolving world of federated learning and distributed AI frameworks with Patrick Foley from Intel. We explore how frameworks like OpenFL and Flower are enabling secure, collaborative model training across silos, especially in sensitive fields like healthcare. The conversation touches on real-world use cases, the challenges of distributed ML/AI experiments, and why privacy-preserving techniques may become essential for deploying AI to production.
Featuring:
Links:
Sponsors:

289 Listeners

1,101 Listeners

169 Listeners

438 Listeners

300 Listeners

347 Listeners

312 Listeners

97 Listeners

138 Listeners

98 Listeners

227 Listeners

649 Listeners

105 Listeners

54 Listeners

34 Listeners