Building Scalable, Observable MLOps Systems on Google Cloud

Building Scalable, Observable MLOps Systems on Google Cloud

Conf42 via YouTube Direct link

GCP Managed Service Stack: Vertex AI, Dataflow, Cloud Run, BigQuery

5 of 13

5 of 13

GCP Managed Service Stack: Vertex AI, Dataflow, Cloud Run, BigQuery

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Building Scalable, Observable MLOps Systems on Google Cloud

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Welcome & the ML-to-Production Journey on GCP
  2. 2 Why Production ML Is Hard
  3. 3 The 4 Core Barriers: Infra, Tooling, Drift, Governance
  4. 4 End-to-End MLOps Framework on Google Cloud
  5. 5 GCP Managed Service Stack: Vertex AI, Dataflow, Cloud Run, BigQuery
  6. 6 Choosing Deployment Patterns: Real-time vs Batch vs Streaming
  7. 7 Automotive Case Study: Oil Change Prognostics Architecture
  8. 8 Production Observability: Seeing Model + System Health
  9. 9 Model Monitoring Deep Dive: Drift, Skew, Performance Loops
  10. 10 Infrastructure Telemetry & Incident Response in Practice
  11. 11 CI/CD for Models: Progressive Rollouts, Monitoring & Rollback
  12. 12 Governance, Retraining Pipelines & Human-in-the-Loop Approvals
  13. 13 Wrap-Up: Blueprint to Scale Reliable MLOps

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.