Completed
Implementation Challenges: the Digital Divide
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Delivery of Deep Transformer NLP Models Using MLflow and AWS SageMaker for Enterprise AI
Automatically move to the next video in the Classroom when playback concludes
- 1 Intro
- 2 Presentation Outline
- 3 Sales Engagement Platform (SEP)
- 4 ML/NLP/Al Roles in Enterprise Sales Scenarios
- 5 Implementation Challenges: the Digital Divide
- 6 Dev-Prod Divide
- 7 Dev-Prod Differences
- 8 Arbitrary Uniqueness
- 9 A Use Case: Guided Engagement
- 10 Six Stages of ML Full Life Cycle
- 11 Model Development and Offline Experimentation
- 12 Creating a transformer flavor model
- 13 Saving and Loading Transformer Artifacts
- 14 Productionizing Code and Git Repos
- 15 Flexible Execution Mode
- 16 Models: trained, wrapped, private-wheeled
- 17 Model Registry to Track Deployed Model Provenance
- 18 Conclusions and Future Work