ML-Powered IoT - From Warehouse Data to Production Intelligence in Real Time

ML-Powered IoT - From Warehouse Data to Production Intelligence in Real Time

Conf42 via YouTube Direct link

MLOps Architecture for Scale: Containers, Versioning, Monitoring

9 of 17

9 of 17

MLOps Architecture for Scale: Containers, Versioning, Monitoring

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

ML-Powered IoT - From Warehouse Data to Production Intelligence in Real Time

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

  1. 1 Welcome & Elevator Pitch: ML + IoT for Real-Time Production Intelligence
  2. 2 Meet the Speaker: Digital Supply Chain IT at Honeywell
  3. 3 The Real Problem: Tons of Warehouse Data, Little Actionable Insight
  4. 4 Why Traditional ML Fails in Production Data, Integration, Performance
  5. 5 Deep Dive: Data Quality Issues—Sensor Failures, Drift, Interference
  6. 6 Integration Headaches: APIs, Latency, and Sync Problems
  7. 7 From Raw IoT Data to ML Features: Rolling Windows, Events, Anomalies
  8. 8 Handling Messy/Missing Data: Imputation, Sensor Fusion, Metadata
  9. 9 MLOps Architecture for Scale: Containers, Versioning, Monitoring
  10. 10 Safer Go-Live: Shadow Mode, Canary Releases, A/B Tests, Rollouts
  11. 11 Model Drift Reality: Detection, Retraining, and Staying Current
  12. 12 Edge vs Cloud vs Hybrid ML: Latency vs Accuracy Tradeoffs
  13. 13 High-Value Use Cases: Predictive Maintenance, Forecasting, Smart Picking
  14. 14 Responsible AI in Operations: Fairness, Explainability, Validation
  15. 15 Trends Reshaping Warehouses: AutoML, 5G, Green/Lean Computing
  16. 16 Lessons from the Field: What Makes Production ML Projects Win
  17. 17 From Insights to Implementation: Practical Next Steps & Closing

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.