Loading…
Tuesday November 12, 2024 3:20pm - 3:45pm MST
Embracing machine learning on edge devices brings unprecedented challenges, particularly in enhancing models over time while safeguarding data privacy. Enter Federated Machine Learning, a paradigm enabling model training across multiple edge devices or servers without data exchange. This talk elucidates the fundamentals of ML on decentralized data and highlights the disparities in conventional approaches. Leveraging Kubernetes, we demonstrate how to orchestrate Federated Machine Learning at scale, facilitating ML model training and diverse computations. A live demo showcases image classification, showcasing lower latency, reduced power consumption, and enhanced privacy—all achievable at scale with Kubernetes. Join us to revolutionize model development with privacy-preserving, Kubernetes-powered Federated Machine Learning.
Speakers
avatar for Haardik Dharma

Haardik Dharma

Developer, NYU
Haardik is currently working as a Software Developer at Civo. Before joining Civo, he worked with the Kubernetes Working Group Policy as part of the Linux Foundation Mentorship. Haardik is passionate about all things cloud-native and open-source software. When he is not working, he... Read More →
avatar for Ekansh Gupta

Ekansh Gupta

SDE, SigNoz
Ekansh is a Software Development Engineer with SigNoz, with active involvement in various open-source and cloud native communities for upwards two years now. He was previously an SDE Intern at SteamLabs. He is also a speaker for a couple of talks at PyCon, KubeCon and MozFests. Ekansh... Read More →
Tuesday November 12, 2024 3:20pm - 3:45pm MST
Salt Palace | Level 2 | 250 A
Feedback form is now closed.

Sign up or log in to save this to your schedule, view media, leave feedback and see who's attending!

Share Modal

Share this link via

Or copy link