Главная
Study mode:
on
1
Intro
2
What does Istio do?
3
Istio Architectural Components
4
Multi-tenant ML Workloads
5
Challenges on Multi-Tenancy
6
Case Study: Kubeflow
7
User Access Isolation: End User Authentication
8
User Access Isolation: Authorization
9
Istio Traffic Management
10
Demo
11
Come Participatel
Description:
Explore how Istio can be integrated into multi-tenant machine learning pipelines like Kubeflow in this informative conference talk. Discover the benefits of using Istio for managing multi-tenant ML workloads on Kubernetes, including workload isolation and protection through identity, access, and API management. Learn about Istio's architectural components, challenges in multi-tenancy, and practical applications in Kubeflow. Gain insights into user access isolation through end-user authentication and authorization, as well as Istio's traffic management capabilities. Watch a demonstration and find out how to participate in this growing field of machine learning workload management on Kubernetes.

Manage Multi-tenant ML Workloads Using Istio

Linux Foundation
Add to list
0:00 / 0:00