Optimizing Resilience and Availability by Migrating from JupyterHub to Kubeflow Notebook Controller
Offered By: USENIX via YouTube
Course Description
Overview
Explore a detailed presentation on Capital One's migration from JupyterHub to the Kubeflow Notebook Controller, focusing on optimizing resilience and availability. Learn about the limitations of JupyterHub's backend-agnostic architecture in Kubernetes environments and discover how the Kubernetes-native Kubeflow Notebook Controller addresses these shortcomings. Gain insights into the benefits of adopting a truly Kubernetes-native solution, including reduced complexity, improved scalability, and enhanced user satisfaction. Understand how this transition enabled Capital One to support four times as many users and ten times more concurrent executions while reducing operational overhead for platform engineers.
Syllabus
SREcon24 Americas - Optimizing Resilience and Availability by Migrating from JupyterHub to the...
Taught by
USENIX
Related Courses
Building End-to-end Machine Learning Workflows with KubeflowPluralsight Smart Analytics, Machine Learning, and AI on GCP
Pluralsight Leveraging Cloud-Based Machine Learning on Google Cloud Platform: Real World Applications
LinkedIn Learning Distributed TensorFlow - TensorFlow at O'Reilly AI Conference, San Francisco '18
TensorFlow via YouTube KFServing - Model Monitoring with Apache Spark and Feature Store
Databricks via YouTube