A K8s-Based Workload Allocation Optimizer for Minimizing Power Consumption

A K8s-Based Workload Allocation Optimizer for Minimizing Power Consumption

CNCF [Cloud Native Computing Foundation] via YouTube Direct link

WAO power saving operation strategy

8 of 23

8 of 23

WAO power saving operation strategy

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

A K8s-Based Workload Allocation Optimizer for Minimizing Power Consumption

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

  1. 1 Intro
  2. 2 Who are we: Matsuoka Lab at Osaka Univ.
  3. 3 Our technology: Liquid immersion cooling
  4. 4 Our technology: optimal task allocation
  5. 5 The complexity of edge computing systems
  6. 6 Spread of Microservices & Power consumption increases
  7. 7 Our Approach: WAO on K8s
  8. 8 WAO power saving operation strategy
  9. 9 Scheduler Framework on K8s
  10. 10 Architecture of WAO Based Scheduler
  11. 11 Architecture of WAO Based Load Balancer
  12. 12 Setting of Machine Learning Power consumption (PC) model
  13. 13 How does it work? How is the performance? Environment
  14. 14 Preset Temperature of Air Conditioner
  15. 15 Power Consumption Model
  16. 16 Evaluation Value in WAO Based Load Balancer
  17. 17 Evaluation of Power Consumption Reduction
  18. 18 Evaluation of "WAO Scheduler" + MetalLB
  19. 19 Evaluation of Kube Scheduler + "WAOLB"
  20. 20 Evaluation of complete K8s-WAO solution
  21. 21 Evaluation of Kubernetes-based WAO
  22. 22 Evaluation of Response Time
  23. 23 Conclusion

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.