Overview
Syllabus
Intro
What are containers?
What is kubernetes
Kubernetes desired state management
What is machine learning?
What is kubeflow?
Kubeflow components
What's new in 0.6?
Meet Kubeflow
Cluster view
Motivating example
Collaborative filtering
Rating Matrix
Using Minio as a centralized storage
Kubeflow options for machine learning and model serving
Using Jupiter for creating implementation
Converting implementation to TF Job
Running TF Job
Deploying TF-serving
Using TF Serving in streaming applications
Concept drift
Continuous model updates implementation
Additional custom components
Argo workflow
Bringing it all together
Try this yourself
Taught by
Linux Foundation