Completed
[] Batch API
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Accelerating ML with Kubeflow for Autonomous Vehicles
Automatically move to the next video in the Classroom when playback concludes
- 1 [] Introduction to Ankit Aggarwal, Vinay Anantharaman, and Maurizio Vitale
- 2 [] Team Aurora's Introduction
- 3 [] Agenda
- 4 [] Introduction
- 5 [] Aurora Innovation is hiring!
- 6 [] AV Development Workflow
- 7 [] Pain points
- 8 [] Designing ML Orchestration Layer
- 9 [] Kubeflow Overview
- 10 [] Kubeflow Pipelines
- 11 [] Kubeflow Components Overview
- 12 [] Batch API
- 13 [] Sagemaker
- 14 [] GitHub PR Comments
- 15 [] Slack Notifier
- 16 [] Pipeline design
- 17 [] Developer Workflow
- 18 [] End-to-end Pipeline
- 19 [] Unified UI
- 20 [] Benefits
- 21 [] Kubeflow Infrastructure
- 22 [] Local Deployment
- 23 [] Multi-User
- 24 [] RDS
- 25 [] IAM
- 26 [] Vault
- 27 [] S3
- 28 [] User Autehntication
- 29 [] Groups
- 30 [] High Availability
- 31 [] Lessons Learned
- 32 [] Pipeline Runs
- 33 [] AVG Runs Per User
- 34 [] Pull Requests Verified
- 35 [] Back-end storage Opt-out
- 36 [] Other main competitors
- 37 [] Happiness on Kubeflow
- 38 [] TFX Tensorflow Serving
- 39 [] Track database access back to an individual user differentiating between individual users
- 40 [] Open-source Kubeflow
- 41 [] Open-source Community aligning values
- 42 [] Sagemaker components of Kubeflow
- 43 [] Kubeflow pipeline syntax
- 44 [] Recommendations to Starters
- 45 [] Vertex as a managed service
- 46 [] Deploying service to teams across the organization
- 47 [] Wrap up