Using AI to Design Energy-Efficient AI Accelerators for the Edge

Using AI to Design Energy-Efficient AI Accelerators for the Edge

tinyML via YouTube Direct link

Problem Statement

15 of 25

15 of 25

Problem Statement

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Using AI to Design Energy-Efficient AI Accelerators for the Edge

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

  1. 1 Intro
  2. 2 Next tiny ML Talks
  3. 3 Computing Hardware Has Been in Every Corner
  4. 4 Today's New Challenges
  5. 5 One Network Cannot work for All Platforms
  6. 6 Datasets/Applications, Hardware, and Neural Networks
  7. 7 Outline of Talk
  8. 8 AutoML: Neural Architecture Search (NAS)
  9. 9 AutoML: Differentiable Architecture Search
  10. 10 AutoML: Hardware-Aware NAS
  11. 11 AutoML: Network-FPGA Co-Design Using NAS
  12. 12 Two Paths from Cloud to Tiny ML
  13. 13 Motivation: Template Pool
  14. 14 Motivation: Heterogeneous ASICS
  15. 15 Problem Statement
  16. 16 ASICNAS Framework
  17. 17 ASICNAS: Controller and Selector
  18. 18 ASICNAS: Evaluator
  19. 19 Results: Design Space Exploration
  20. 20 Comparison Results on Multi-Dataset Workloads
  21. 21 Future Work: Network-CIM Co-Design to Resolve Memory Bot
  22. 22 Conclusion: Take Away (1)
  23. 23 Arm: The Software and Hardware Foundation for tiny
  24. 24 TinyML for all developers Dataset
  25. 25 Qeexo AutoML for.Embedded Al

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.